WO1995026008A1 - Detecting and classifying contaminants in water - Google Patents

Detecting and classifying contaminants in water Download PDF

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Publication number
WO1995026008A1
WO1995026008A1 PCT/US1995/003624 US9503624W WO9526008A1 WO 1995026008 A1 WO1995026008 A1 WO 1995026008A1 US 9503624 W US9503624 W US 9503624W WO 9526008 A1 WO9526008 A1 WO 9526008A1
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WO
WIPO (PCT)
Prior art keywords
data
measuring
sample
contaminants
sensors
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Application number
PCT/US1995/003624
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French (fr)
Inventor
Stephen G. Motron
Original Assignee
Intelligent Monitoring Systems
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Intelligent Monitoring Systems filed Critical Intelligent Monitoring Systems
Priority to AU22728/95A priority Critical patent/AU2272895A/en
Publication of WO1995026008A1 publication Critical patent/WO1995026008A1/en

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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N33/00Investigating or analysing materials by specific methods not covered by groups G01N1/00 - G01N31/00
    • G01N33/18Water
    • CCHEMISTRY; METALLURGY
    • C02TREATMENT OF WATER, WASTE WATER, SEWAGE, OR SLUDGE
    • C02FTREATMENT OF WATER, WASTE WATER, SEWAGE, OR SLUDGE
    • C02F1/00Treatment of water, waste water, or sewage
    • C02F1/008Control or steering systems not provided for elsewhere in subclass C02F

Definitions

  • This invention relates to an environmental monitoring system, hereinafter EMS, and more particularly to a method and apparatus to detect and measure contaminants in water.
  • U.S. Patent No. 4,586,136 entitled Digital Computer for Determining Scuba Diving Parameters for a Particular Diver to Lewis describes a device designed to measure ambient water pressure and pressure of the air in a tank.
  • the subject invention is intended to detect and report contaminants in water solutions and is not intended to be restricted to measurements of water and air pressures in a tank.
  • an apparatus for remotely detecting and monitoring contaminants in water comprising at least one remote monitor site for detecting and measuring water quality parameters of a sample and a user site for communicating with the at least one remote monitor site and for correlating the detected and measured water quality parameters with predetermined characteristics.
  • the preferred at least one remote monitor site comprises structure for preconditioning the sample for analysis for heavy metals, structure for measuring organic contaminants in the sample and structure for measuring metal contaminants in the preconditioned sample, structure for retrieving data from the measuring structures and a transmitter for transmitting the data to the user site.
  • the preferred preconditioning structure comprises structure for adding a preselected acid to the sample and structure for adding a standard solution to the sample.
  • the preferred structure for measuring metal contaminants comprises structure for applying a specific voltage to sensors contiguous with the preconditioned sample in a measurement cell and structure for measuring oxidation of the preconditioned sample.
  • the structure for measuring oxidation comprises structure for creating a surge current that is related to a metal concentration.
  • the preferred structure for measuring for metal contaminants comprises the structure measuring metal contaminants in parts per billion.
  • the preferred structure for measuring organic contaminants comprises at least one member selected from the group of pH sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors.
  • the structure for measuring organic contaminants comprises measuring cells.
  • the structure for measuring organic contaminants can also comprise structure for detecting and measuring radiation nuclei.
  • the preferred structure for retrieving data comprises an apparatus for retrieving raw data from contaminant sensors.
  • the preferred structure for transmitting comprises an apparatus for digitizing the data from contaminant sensors and a transmitter for transmitting the digitized data.
  • the apparatus can further comprise a fuzzy correlator for performing an iterative comparison of reference measurements and measurements from the structure for measuring organic contaminants and the structure for measuring metal contaminants over preselected time periods.
  • the apparatus can further comprise a neural network for varying a classification process of contaminant measurements.
  • the preferred structure for retrieving comprises an apparatus for archiving data from the structure for measuring organic contaminants and the structure for measuring metal contaminants.
  • the preferred user site comprises structure for controlling a configuration of the at least one remote monitor site, structure for processing data from the at least one remote monitor site and an alarm that signals the detection of selected contaminants in the sample.
  • the preferred structure for controlling a configuration comprises structure for activating measurement sensors according to predetermined sampling periods.
  • the preferred structure for processing comprises a receiver for receiving data from the at least one remote monitor site, structure for comparing the data with data from known samples and an apparatus for determining whether tolerances for the contaminants have been exceeded.
  • the structure for comparing comprises a structure for comparing data from the at least one remote monitor site with reference samples.
  • the structure for comparing can also comprise structure for comparing data from the at least one remote monitor site with predetermined values.
  • the apparatus for determining comprises an apparatus for classifying contaminant tolerance levels.
  • the preferred apparatus for determining further comprises an apparatus for notifying an operator of out of tolerance conditions.
  • the preferred method of remotely detecting and monitoring contaminants in water comprises the steps of providing at least one remote monitor site for detecting and measuring water quality parameters of a sample and providing a user site for communicating with the at least one remote monitor site and for correlating the detected and measured water quality parameters with predetermined characteristics.
  • the preferred step of providing at least one remote monitor site comprises preconditioning the sample for analysis for heavy metals, measuring organic contaminants in the sample, measuring the preconditioned sample for metal contaminants, retrieving measured organic contaminant data and measured metal contaminant data analyzing the measured data and transmitting the data to the user site.
  • the preferred step of preconditioning comprises adding a preselected acid to the sample and adding a known standard solution to the sample.
  • the preferred step of measuring the preconditioned sample comprises applying a specific voltage to sensors contiguous with the preconditioned sample in a measurement cell and measuring oxidation of the preconditioned sample.
  • the step of measuring oxidation comprises creating a surge current that is related to a metal concentration.
  • the preferred step of measuring the preconditioned sample for metal contaminants comprises measuring metal contaminants in parts per billion.
  • the preferred step of measuring organic contaminants comprises providing at least one member from the group • consisting of pH sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors.
  • the step of measuring organic contaminants also comprises providing measuring cells.
  • the step of measuring organic contaminants can also comprise detecting and measuring radiation nuclei.
  • the preferred step of retrieving measured organic contaminant data and metal contaminant data comprises retrieving raw data from contaminant sensors.
  • the preferred step of transmitting comprises digitizing the data from contaminant sensors.
  • the method can further comprise the step of providing a fuzzy correlator for performing an iterative comparison of reference measurements and retrieved measured organic contaminant data and metal contaminant data over preselected time periods.
  • This method can further comprise the step of providing a neural network for varying a classification process of contaminant measurements.
  • the preferred step of retrieving measured organic contaminant data and metal contaminant data comprises archiving the measured data.
  • the preferred step of providing a user site comprises controlling a configuration of the at least one remote monitor site, processing data from the at least one remote monitor site and providing an alarm upon detection of selected contaminants in the sample.
  • the step of controlling a configuration comprises activating measurement sensors according to predetermined sampling periods.
  • the step of processing data comprises receiving data from the at least one remote monitor site, comparing the data with data from known samples and determining whether tolerances for the contaminants have been exceeded.
  • the preferred step of comparing comprises comparing data from the at least one remote monitor site with reference samples.
  • the alternative step of comparing comprises comparing data from the at least one remote monitor site with predetermined values.
  • the preferred step of determining comprises classifying contaminant tolerance levels.
  • the step of determining can further comprise notifying an operator of out of tolerance conditions.
  • a primary object of the present invention is to provide a near real time field deployable environmental monitoring system, to report water quality parameters to include but not limited to pH, temperature, metal concentration, and organic concentration.
  • a primary advantage of the present invention is that of reduced costs over current methods of field testing and monitoring of water quality parameters.
  • a further advantage of the present invention is a reduced time in determining contaminant concentration.
  • Fig. 1 is a block diagram of the preferred environmental monitoring system
  • Fig. 2 is a schematic diagram of the preferred remote monitor site and the preferred user site
  • Fig. 3 is a diagram illustrating a preferred method and apparatus for extracting ground and surface water samples at a remote monitor site and presenting these samples to the sensors for measurement of contaminants;
  • Fig. 4 is a flow diagram of the processes within the fuzzy correlator for a water sample at a remote monitor site
  • Fig. 5 schematically depicts the preferred optional EMS method and apparatus for the water sample classification process at a remote monitor site
  • Fig. 6 is a flow diagram illustrating the preferred optional processes within the EMS neural network in the water sample contaminant classification process at a remote monitor site;
  • Fig. 7 is a block diagram the EMS apparatus resident at the user site;
  • Fig. 8 is flow diagram illustrating the preferred remote monitor site health and status monitoring function performed at the user site;
  • Fig. 9 is a flow diagram illustrating the preferred user site functions needed to supervise the operations at the remote sites.
  • Fig. 10 is a flow diagram illustrating the preferred process employed at the user site to provide user site operator monitor cues and to transmit process control commands;
  • Fig. 11 is a voltagram graph of a typical contaminant measurement.
  • the method and apparatus of the present invention comprise hardware components and associated software for providing a user the ability to monitor water quality in real time.
  • the principal benefit of the EMS is that it embodies within one entity the ability to remotely detect, in real-time, unacceptable concentrations of contaminants in water and to notify the user of the types (i.e., species) and concentrations of detected contaminants.
  • the EMS can ensure that the environmental consequence of these processes remain consistent with user requirements.
  • the EMS has immediate application in the operation of municipal utilities, industrial processes, and the detection of unplanned releases of contaminants in the surrounding water supply systems. With sensors capable of the detection of trace metals, agricultural pesticides, petrochemicals, and toxic radioactive elements and compounds the EMS is capable of monitoring the total compliance of any process with established quality standards for water.
  • the EMS can be enhanced to include an adaptive capability providing its users timely information upon which to base appropriate remediation corrective actions.
  • the EMS can also be employed as a simulator, permitting the user to perform environmental impact analyses and operator training.
  • the environmental monitoring system consists of two major components. These include user site 12 and remote monitor site 14.
  • Remote monitor site 14 is designed to determine water quality parameters to include analysis of the presence of metals, organics, radiation, pH, temperature and other water quality parameters.
  • User site 12 is designed to receive data from remote monitor site 14 via standard communication systems 16 which are commercially available and well know in the art. Both remote monitor site 14 and user site 12 can perform contaminant analysis along with data archiving by data loggers and recorders 18 and determine whether or not contaminants exist in samples such as ground water sample 20a or surface or industrial water sources 20b.
  • User site 12 can network one or more (not shown) remote monitor sites 14 which may be involved in an environmental monitoring system network. Geographical information and environmental information is analyzed via an expert system 22 (optional) to determine the relationship of contaminant propagation in an environmental monitoring system network.
  • the remote monitor site 12 consists of two major subsystems: hydraulic module 24, Fig. 3 and electronic module 26, Fig 2.
  • Surface and industrial water 20b or ground water samples 20a are pumped into the system through sample pumps 28a and 28b.
  • Ground water sample 20a and surface and industrial water 20b goes into hydraulic module 24 which consists of sample pretreatment 30 and measuring cell 32.
  • sample pretreatment 30 and measuring cell 32 consists of sample pretreatment 30 and measuring cell 32.
  • sample 20 is analyzed for metal concentrations and water quality parameters. After the analysis is complete the sample is output from hydraulic module 24 as illustrated via water outputs 34 and 36.
  • Electronic module 26 consists of eight major subsystems, which include hydraulic module interface 38, fuzzy correlator 40, communication system 16, microcontroller 42, data logger and recorder 18, fuzzy controller 44, neural network 46 and personal computer on a card 48.
  • Hydraulic module interface 38 is responsible for providing all required voltage and current signals, control signals and status signals which are either applied from or received to hydraulic module 24.
  • Hydraulic module 24 receives its commands which are sent from microcontroller 42, and responsible for all hydraulic module synchronization, control and measurements of raw data. From microcontroller 42, the contaminant measurement raw data is reported through communication system 16 to user site 12. From microcontroller 42, the digitized contaminant raw data is recorded on data logger and recorder 18 for future retrieval.
  • Optional personal computer on a card 48 performs the contaminant recognition and contaminant concentration calculations. Contaminant recognition and concentration calculation can also be accomplished at user site 12 using a standard personal computer or the like.
  • Fuzzy correlator 40, fuzzy controller 44 and neural network 46 are enhancements to the EMS for the purpose of signal recognition, sensor interrelationships, encoding of human expertise and a prior knowledge relating to the sample being analyzed. These subcomponents allow the EMS to autonomously adapt to dynamic circumstances.
  • Fig. 2 is a schematic diagram of both electronic module 26 and hydraulic module 24.
  • configuration data is sent from user site 12 to remote monitor site 14 through communication system 16, in which telemetry packets are utilized to formulate status, control and raw data reporting.
  • Microcontroller 42 interprets telemetry packets and sets up the various subsystems in electronic module 26. These subsystems include digital to analog converter 50, oxidation reduction control pump valve 52, analog subsystem 54, multiplexer 56 and analog to digital converter 58.
  • Microcontroller 42 also synchronizes opening and closing of valves, pumping of solution and the application of excitation voltage to measuring cell working electrode sensors which are installed in each measuring cell 32a and 32b.
  • Microcontroller 42 also synchronizes the conversion of the contaminant signal which is accomplished by analog to digital converter 58.
  • Water quality measurements, including pH and temperature measurements and radiation counts requires an analog signal which is converted to digital through analog subsyste 54.
  • Variable amplifier 62a is designed to either attenuate or amplify the voltage signal applied to measuring cell 32a and 32b working electrodes (not shown) if the metal contaminant concentration is either too high or too low. Absorptive stripping voltage is the electrochemical technique used, combined with a unique voltage applied to measuring cell working electrodes, thus reducing the effect of organic contamination on the electrode surfaces.
  • Variable amplifier 62b is designed to either attenuate or amplify the analog signal received from reference electrode (not shown) which is related to the presence of metal contamination, if the metal concentration in ground water sample 20a surface and industrial water source 20b is either too high or too low.
  • Multiplexer 56 is programmed by microcontroller 42 to enable selection of analog signals received from each measuring cell 32a and 32b reference electrode. The selection of analog signaling from measuring cell 32 is dependent upon the length of time in which the individual measuring cell is in operation.
  • Control pump valve radiation counter 76 receives synchronization commands from microcontroller 42.
  • hydraulic module 24 controls hydraulic module 24 and its subcomponents to include input valve 64 and output valve 66 open and closure, the pumping of sample by sample pump 68a and radiation counter pump 68b, acid pump 70, standard solution pump 72, and plating solution pump 74.
  • hydraulic module 24 consists of the following subsystems: radiation counter 124, pH and temperature measurement 78, acid solution 80, acid pump 70, standard solution 82, standard solution pump 72, sample pump 68a and radiation counter pump 68b, sample pretreatment 30, input valve 64, measuring cells 32, output valve 66 , plating solution pump 74, and plating solution 84. As illustrated in Fig.
  • sample pump 68a and radiation counter pump 68b is turned on by control pump valve radiation counter 76, and ground water sample 20a or surface and industrial water 20b is pumped up to pH/temperature measurement 78.
  • Water sample pH and temperature results are forwarded to analog subsystem 54, converted to digital and read into microcontroller 42.
  • Groundwater 20a or surface industrial water 20b is then combined with acid by turning on acid pump 70.
  • the combined acid and water sample is then pumped through sample pretreatment 30 where a voltage and current is applied. This voltage and current is responsible for breaking complex metallic organic bonds which may exist in the sample and as a result, go undetected by the sensors in measuring cell 32.
  • the pretreated sample is then routed out of sample pretreatment 30 and combined with a known quantity of metals by turning on standard solution pump 72. This allows the accurate addition of metals necessary to perform the sample analysis.
  • the combined sample and standard addition is then routed to the measuring cell 32 by opening select valves determined by and initiated through commands via microcontroller 42.
  • the plating cycle consists of microcontroller 42 issuing commands to prepare input valve 64 and output valve 66.
  • the preferred sequence of valve openings is as follows: open valves 64a, 64c, 66a, 66c, 64f, 64e and close valves 64b, 64d, 66b, 66e.
  • Microcontroller 42 issues a command to digital to analog converter 50 establishing the required plating voltage which is applied to the working electrode installed in measurement cell 32.
  • Pump plating solution 74 is then commanded to pump plating solution 84 via commands being sent from microcontroller 42 to control pump radiation counter 76.
  • valve 66e is opened and valve 66f is closed as air is pumped from plating solution 84 via plating solution pump 74 thus purging the tubes and measuring cell 32 of plating solution.
  • ground water 20a and surface and industrial water 20b is routed through sample pretreatment 30 through valve 64a back through sample pretreatment 30 to water output 36.
  • microcontroller 42 issues a series of control signals via control pump valve radiation counter 76 to input valve 64 and output valve 66.
  • valve opening and closure is as follows: Open valves 64b, 64c, 66a, 66d and close valves 64a, 64e, 64d, 66c, 66e, and 66f.
  • ground water 20a and surface and industrial water 2Ob is pumped by sample pump 68a through sample pretreatment 30 and flows to measurement cell 32.
  • Microcontroller 42 issues a series of commands to analog to digital converter 58, digital to analog converter 50, oxidation reduction 52, and multiplexer 56.
  • digital to analog converter 50 Through digital to analog converter 50, a waveform is applied to the working electrode installed in measurement cell 32, thereby oxidizing the metals which are absorbed into the plated electrode.
  • Multiplexer 56 is programmed to select which measuring cell 32 reference electrode is used for the purpose of detecting the current which is proportionately related to the metal concentration. The current registered by the reference electrode flows through multiplexer 56 into variable amplifier 62 and is converted to a digital signal by analog to digital converter 58. The signal is then stored in the memory of microcontroller 42.
  • variable amplifier 62 is programmed to either attenuate or amplify the oxidation current received from measuring cell 32.
  • microcontroller 42 issues a command to oxidation reduction 52 , thereby selecting the required current value to be applied to the sample pretreatment 30 necessary to effectively break the organic metallic complex bond.
  • Additional water quality measurements to include pH/temperature and radiation count is performed by microcontroller 42 issuing a command to analog subsystem 54, whereby the pH, temperature, and radiation count of the sample is measured by pH/temperature sensor 78 and radiation counter 124 resulting in an analog signal which is converted to a digital signal via analog subsystem 54 and is read into microcontroller 42 memory.
  • Analog subsystem 54 can be expanded to monitor other contaminants which impact water quality. Consequently, the EMS can be applied to a vast number of contaminant problems, and is not limited to the application cited above.
  • Fig. 3 is a diagram showing the preferred method of sample extraction to the sensor and is an illustration of a typical EMS hydraulic system for extracting water samples at a remote monitor site.
  • Groundwater 20a surface and industrial water 20b is pumped through water filter 90 filtering out any sediment that might exist in groundwater 20a surface water and industrial water 20b and is collected in water chamber 92, where the pH and temperature of the water is measured 78.
  • Water chamber 92 can also house additional sensors for the purpose of measuring other water quality parameters (not shown) .
  • Water level detector 94 determines the sample level in water chamber 92 and shuts off sample pump 68a, in the event that the water level exceeds the specified limits.
  • Groundwater 20a or surface and industrial water 20b is combined with acid solution 80 in order to make fresh water electrolytic.
  • microcontroller 42 issuing a command via control pump valve radiation counter 124 to turn on acid pump 70. This is not required in the case of salt water since saltwater is already electrolytic.
  • the combined solution is then routed to sample pretreatment 30 which contains oxidation module 96 and reduction module 98.
  • sample pretreatment 30 contains oxidation module 96 and reduction module 98.
  • a voltage and oxidation current is applied between anode electrode 100 and cathode electrode 102 concurrently to break the complex metallic organic bonds.
  • the oxidation current flows through metallic contact 104 to the waterproof graphite contact 106 and into the sample solution.
  • the current also flows through an anion exchange membrane 108, waterproof graphite contact 106 and to metallic contact 104 which comprises cathode 102.
  • Oxidation module 96 oxidizes the acid solution, releasing anions which sever any bonds which may exist with organic compounds. Residual anions are passed through anion exchange membrane 108 and released into the water sample output 36. Positively charged metal ions are thus released into the solution which is then routed to reduction module 98.
  • Reduction module 98 reduces any positively charged metal ions that might exist into a stable metal form which is later collected onto the placed working electrodes which are installed in measuring cell 32. The reduction of the positively charged metal is accomplished by applying a reduction current and voltage through reduction module 98 which flows through anode electrode 100 via metallic contacts 104, graphite contact 106, and metal contact 104, waterproof graphite contact 106, into the sample solution.
  • Any remaining anions which are generated by oxidation module 96 are passed through membrane 108 into water sample output 36.
  • the reduction current then flows into the sample, reducing the positively charged metal ions.
  • the current further flows through anion exchange membrane 108, cathode electrode 102, graphite contact 106, to metal contact 104.
  • Silver/silver chloride comparison electrode 116 is used as a reference to establish the reduction voltage and current.
  • a standard solution containing known metal concentration is pumped from standard pump 72 downward until it meets the pretreated sample. The two are combined prior to passing through valve 64b. Valve 64a is closed during the sample cycle.
  • the pretreated sample is routed to measuring cell 32 through valve 64c and passes through a thin layer 118, while voltage is applied to graphite working electrode 112a and second graphite working electrode 112b.
  • a silver/silver chloride electrode 116 is used as a reference electrode and is used in the process of determining the oxidation current generated by oxidizing metal ions absorbed in the plated working electrode 112a and 112b.
  • Silver/silver chloride comparison electrode 116 serves as an accurate reference enabling accurate determination of oxidation current which is a function of metal concentration.
  • Oxidation occurs at this juncture due to voltage applied through the working electrodes 112a and 112b. A current surge occurs, which is proportionately related to the metal ion concentration in the solution. Following oxidation, the sample emerges through valve 66a, downward through valve 64a up through sample pretreatment 30 and back down to water sample output 36.
  • Auxiliary electrode 120 is optional and can be for the purpose of electrically dissolving known concentrations of metals into measuring cell 32 whereby serving as a calibrated standard metal addition.
  • Fig. 4 is a flow diagram of the preferred method within the fuzzy correlator for a water sample at a remote site.
  • the fuzzy correlator is an optional feature which enhances the capability of the EMS enabling the remote monitor site to change its operational configuration during normal field operation.
  • the fuzzy correlator enables a test of the sensors used in the remote monitor site to accurately provide and measure contaminant found in the sample. For example, reference measurement data for each measurement cell, are loaded into fuzzy correlator 200 by microcontroller at a time during the remote monitor site operation.
  • the reference measurements are obtained by using the standard solution (i.e., known concentration of metal ions) as the sample to be analyzed.
  • the reference measurements are used as a baseline measurement of the degree of correlation during the course of operation of the remote monitor site.
  • the degree of correlation between initial reference measurement 200 and subsequent measurement values 202 would result in less correlation, thus the determination would be made to switch over to the next measurement cell for further operation of the remote monitor site.
  • Subsequent values of the reference measurements 200 are the previous raw data measured. Actual measurements for all the sensors, Si at time t and measurements made at the sensor over a period of time t, are loaded into fuzzy correlator 200.
  • Fuzzy correlator performs an iterative comparison of each set of reference values 204, XR (ti) with the measured values, xm at the time ti+i, or xm (ti+i) which results in the determination of the elements of a co- variance matrix representing the correlation between measurements at a given sensor over the period of time t.
  • an iterative comparison is made of the measurements for all sensors, Si at time t 206.
  • the results of this comparison comprise the elements of another covalence matrix which represents the correlation among sensor measurements Xi , at the given time t 208a and 208b.
  • These covalence matrices are also used to adjust the weight wi , for a given sensor within the neural network's classification process (see Fig. 6) .
  • the fuzzy correlator enables the encoding of human knowledge in the form of membership functions and if the rules which are derived from known phenomena and interpreted by a expert, so as to enable the remote monitor site to adopt to changing environmental condition in the detection process of contaminant concentration determination.
  • the membership functions for each sensor detection specie of interest at a given sensor Si , and the raw measurements Xi , made at the sensor, are loaded into the fuzzy controller 214 by the microcontroller as are experiential derived rules 216 for: 1) classifying each specie at the sensor Si ; and 2) for establishing the membership of measurement parameters under ' ⁇ fuzzy" conditions.
  • the membership functions are applied to the raw measurements of Ii (max) and Ei, where Ii (max) is the peak current for the specie detected at the working electrode, and Ei is the applied potential at which Ii (max) is achieved.
  • Ii (max) is the peak current for the specie detected at the working electrode
  • Ei is the applied potential at which Ii (max) is achieved.
  • a level of confidence in the specie classification at the sensor Si is determined.
  • Expert rules define a priority to effectively deal with the possibility that inconclusive results are obtained from the membership tests 230.
  • the expert rules are then applied to conclusively determine whether the specie of interest is either present or absent. This determination affects the definition of the confidence level for cases where other than a clear decision (i . e . , (yes, yes) or (no, no) ) results form the previously applied membership tests 230. Expert rules are also applied to the measurements in an if-then-else context and result in a qualitative classification of the specie at the sensor which is independent of that of the neural network.
  • the results of the fuzzy controller classification process are compared with the previous classification results 220 for sensor, Si. If the results are consistent with previous classifications 220, this gives a greater measure of confidence 222 in the current classification of fuzzy controller.
  • the confidence levels determined from previous samples 228 are also examined within fuzzy controller to determine what impact, if any, the results of fuzzy controller's operations should have upon the preprocessing strategy being employed at the sample pretreatment. If the confidence level 222 has increased or at least remained the same since the prior classification, then the sample pretreatment strategy employed for the current measurements is kept the same. If the confidence level 222 has decreased since the prior measurement, then the sample pretreatment strategy may be changed thus either increasing or decreasing oxidation/reduction current. A change in the preprocessing strategy results in a change in the weights, wi , referred to below.
  • the neural network is an optional feature which enhances the capability of the EMS enabling the remote site to change its operational configuration during normal field operations.
  • the neural network utilizes a training set of data 230 which is derived under various conditions in which contaminants are presumed to exist in known concentrations in the environment.
  • the neural network learns about the environmental contaminants and make adjustments to both the weights and bias variables associated with each contaminant specie of interest.
  • the weights (wi) and bias terms (oi) are loaded into neural network 232 for sensors (Si) by microcontroller.
  • microcontroller 42 loads in the raw sensor measurements consisting of the maximum current (Imax) measured at sensor Si at time t, and the corresponding value of the applied potential (E) 234.
  • Microcontroller also loads in information from fuzzy controller which is used to update or change the weights used in neural network's classification process.
  • This weight updating process is accomplished through a weight update algorithm 236 derived from experiential knowledge of the contaminant detection process.
  • a training set consisting of experience derived from all possible combinations and permutations of contaminant species at the sampling source(s) is developed in the laboratory. The training set provides the basis for the weight update algorithm 236 used in neural network.
  • Each neuron within neural network is dedicated to a specie of interest.
  • a qualitative classification criterion derived from the training set rules is applied concurrently in all neurons 238. This criterion is the sum, over all sensors, of the product of the weight for each sensor WI and the measurement Xi to which is added the bias Oi , for each sensor.
  • the synaptic output of the neuron is valued 1 and the specie of interest is declared to be present 240. If the criterion is not satisfied, then the synaptic output is 0, and the specie is declared not to be present at the sensor, Si 242. This is the qualitative classification. Once a specie has been determined to be present, the values of Xi or Ii versus Ei for the sensor over the period that the potential was applied are loaded into microcontroller and a contaminant concentration calculation proceeds 244. Fig. 11 graphically shows this process. This is the quantitative classification.
  • data logger and recorder 18 at remote monitor site 14 will transmit the raw measured values of data over the sampling period results from fuzzy controller 44 and fuzzy correlator 40, and neural network 46 coded decisions as to most likely species and concentration to user site 12.
  • the received data will be input into a data base for post transmission processing.
  • This processing is designed to accomplish the following: 1) serve as a check to compare the results of the decisions a each remote monitor site 14 with an expert system at the user site 12; 2) supervise the operations at remote monitor sites 14; and 3) and provide user site 12 operator with cues as to appropriate responses to remediate or correct the contamination effects or its sources.
  • the comparison of remote monitor site classification decisions is accomplished using an expert system at user site.
  • the expert system represents an expert analysts' decisions 254 regarding classification of species of contaminants at each sensor installed at remote monitor site based upon the raw data observed by the sensor 250.
  • These expert system based classification decisions 256 are compared with those determined at remote monitor site 252.
  • the results of the comparison forms the basis for an assessment of the overall health and status of the total system, including all of remote monitor sites. From these comparisons over time 252, a level of confidence in quality of the accuracy and reliability of the measurements is established at user site.
  • Data from a suspect sensor or sensors can be flagged 258 in user site permanent archive and the suspect data can be downweighted or removed from the sensor's input in subsequent classification at the site or sites via commands issued to microcontroller at each remote monitor site 14 via user site supervisory program.
  • the data will also serve to key operations personnel as to the need for site maintenance and upkeep.
  • Another application resident at user site is the centralized control of remote monitor sites.
  • the comparative data results are also used to determine the most likely causes for poor quality data at a remote monitor site 262 and 264 and the need for changes or updating 260 to the monitoring schemes at each site.
  • the characteristics of the measurements over time from the same sensor and other sensors will be examined via a set of expert rules 266 with regard to frequency of observations, stationarity, seasonal, temporal, spatial, and other factors. These characteristics will comprise the basis for decisions regarding changes 260 at each remote monitor site. Referring to Fig.
  • each user site will consist of a user interface to provide management protocols or cues 268 to a centrally located human operator/monitor and to provide feedback control inputs to a process control system 270 in order to define appropriate actions to be taken in light of the types and levels of contamination detected.
  • management protocols or cues 268 to a centrally located human operator/monitor and to provide feedback control inputs to a process control system 270 in order to define appropriate actions to be taken in light of the types and levels of contamination detected.
  • process control system 270 in order to define appropriate actions to be taken in light of the types and levels of contamination detected.
  • the present environmental monitoring system invention is capable of detecting, on a continuing basis, unacceptable concentrations of contaminants in water. This unique system will enable every manager of a federal installation, a municipal utility, or an industrial plant to monitor (on-site and in real-time) compliance with federal, state, and local quality standards for water. The cost of the EMS is projected to be 70 to 80% less than that spent on current techniques to measure the levels of contaminants in water.
  • the principal benefit of the EMS is that it embodies within one entity the ability to remotely detect, in real-time, unacceptable concentrations of contaminants in water and to notify the user of the types (i.e., species) and concentrations of detected contaminants.
  • the EMS can ensure that the environmental consequences of these processes remain consistent with established health and safety standards for water.
  • the types (species) and levels of contaminants (concentrations) detected for each sampled source are the basis for a permanent archive within a central data processing system. These data elements can be used to establish both geographical and environmental information systems for the monitored sites. With such a capability, the EMS can also be employed by federal, state and local agencies to monitor and enforce compliance with established health and safety standards for water.

Abstract

A method and apparatus for a remote environmental monitoring system (EMS) (14) designed to sample, detect, measure, and report in real time to a user (12) the presence of contaminants, e.g. pollution, in water (20b) and thereby monitor the conformance of water (20b) with established health and safety standards. When the EMS (14) is integrated with a process control system (268, 270) it provides feedback to the process control system (268, 270) to ensure that the sampled water (20b) conforms to established health and safety standards.

Description

DETECTING AND CLASSIFYING CONTAMINANTS IN WATER
BACKGROUND OF THE INVENTION
Field of the Invention (Technical Field) :
This invention relates to an environmental monitoring system, hereinafter EMS, and more particularly to a method and apparatus to detect and measure contaminants in water.
Background Art:
Monitoring and detection of contaminants in the environment has become an important necessity around the world. This is especially true with the increased use of industrial chemicals and toxic materials. Government regulations for compliance with certain quality standards has given birth to a search for methods to comply with these quality standards and to seek methods for detection of certain contaminants, heretofore undetectable, and less costly and cumbersome methods of contaminant monitoring than are presently available.
Under present compliance practices water samples are taken at remote sites, transported to and analyzed in a lab, where the results are subsequently determined and then reported back to the operating entity. By the time all of these activities are completed, the damage, if any, has already been done, and the only alternatives available are to enter into immediate and costly efforts to clean up the polluted sources of water.
The system and process described in U.S. Patent No. 4,626,992, entitled Water Quality Early Warning System to Greaves, et al . , is confined to the detection and identification, via video monitoring techniques of living organisms in sources of water supplies. The system and process of the subject invention is designed to detect the presence of contaminants other than living organisms.
U.S. Patent No. 4,586,136 entitled Digital Computer for Determining Scuba Diving Parameters for a Particular Diver to Lewis describes a device designed to measure ambient water pressure and pressure of the air in a tank. The subject invention is intended to detect and report contaminants in water solutions and is not intended to be restricted to measurements of water and air pressures in a tank.
Of the known field deployable and permanently installable water monitoring systems and processes, the only process and implementing system whereby contaminants are detected and measured down to the parts per billion level is the one described in the subject invention.
SUMMARY OF THE INVENTION (DISCLOSURE OF THE INVENTION) In accordance with the present invention, there is provided an apparatus for remotely detecting and monitoring contaminants in water comprising at least one remote monitor site for detecting and measuring water quality parameters of a sample and a user site for communicating with the at least one remote monitor site and for correlating the detected and measured water quality parameters with predetermined characteristics.
The preferred at least one remote monitor site comprises structure for preconditioning the sample for analysis for heavy metals, structure for measuring organic contaminants in the sample and structure for measuring metal contaminants in the preconditioned sample, structure for retrieving data from the measuring structures and a transmitter for transmitting the data to the user site.
The preferred preconditioning structure comprises structure for adding a preselected acid to the sample and structure for adding a standard solution to the sample. The preferred structure for measuring metal contaminants comprises structure for applying a specific voltage to sensors contiguous with the preconditioned sample in a measurement cell and structure for measuring oxidation of the preconditioned sample. The structure for measuring oxidation comprises structure for creating a surge current that is related to a metal concentration.
The preferred structure for measuring for metal contaminants comprises the structure measuring metal contaminants in parts per billion.
The preferred structure for measuring organic contaminants comprises at least one member selected from the group of pH sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors. The structure for measuring organic contaminants comprises measuring cells. The structure for measuring organic contaminants can also comprise structure for detecting and measuring radiation nuclei.
The preferred structure for retrieving data comprises an apparatus for retrieving raw data from contaminant sensors.
The preferred structure for transmitting comprises an apparatus for digitizing the data from contaminant sensors and a transmitter for transmitting the digitized data.
The apparatus can further comprise a fuzzy correlator for performing an iterative comparison of reference measurements and measurements from the structure for measuring organic contaminants and the structure for measuring metal contaminants over preselected time periods. The apparatus can further comprise a neural network for varying a classification process of contaminant measurements.
The preferred structure for retrieving comprises an apparatus for archiving data from the structure for measuring organic contaminants and the structure for measuring metal contaminants.
The preferred user site comprises structure for controlling a configuration of the at least one remote monitor site, structure for processing data from the at least one remote monitor site and an alarm that signals the detection of selected contaminants in the sample.
The preferred structure for controlling a configuration comprises structure for activating measurement sensors according to predetermined sampling periods. The preferred structure for processing comprises a receiver for receiving data from the at least one remote monitor site, structure for comparing the data with data from known samples and an apparatus for determining whether tolerances for the contaminants have been exceeded. The structure for comparing comprises a structure for comparing data from the at least one remote monitor site with reference samples. The structure for comparing can also comprise structure for comparing data from the at least one remote monitor site with predetermined values. The apparatus for determining comprises an apparatus for classifying contaminant tolerance levels. The preferred apparatus for determining further comprises an apparatus for notifying an operator of out of tolerance conditions.
The preferred method of remotely detecting and monitoring contaminants in water comprises the steps of providing at least one remote monitor site for detecting and measuring water quality parameters of a sample and providing a user site for communicating with the at least one remote monitor site and for correlating the detected and measured water quality parameters with predetermined characteristics.
The preferred step of providing at least one remote monitor site comprises preconditioning the sample for analysis for heavy metals, measuring organic contaminants in the sample, measuring the preconditioned sample for metal contaminants, retrieving measured organic contaminant data and measured metal contaminant data analyzing the measured data and transmitting the data to the user site.
The preferred step of preconditioning comprises adding a preselected acid to the sample and adding a known standard solution to the sample.
The preferred step of measuring the preconditioned sample comprises applying a specific voltage to sensors contiguous with the preconditioned sample in a measurement cell and measuring oxidation of the preconditioned sample. The step of measuring oxidation comprises creating a surge current that is related to a metal concentration. The preferred step of measuring the preconditioned sample for metal contaminants comprises measuring metal contaminants in parts per billion.
The preferred step of measuring organic contaminants comprises providing at least one member from the group • consisting of pH sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors. The step of measuring organic contaminants also comprises providing measuring cells. The step of measuring organic contaminants can also comprise detecting and measuring radiation nuclei.
The preferred step of retrieving measured organic contaminant data and metal contaminant data comprises retrieving raw data from contaminant sensors.
The preferred step of transmitting comprises digitizing the data from contaminant sensors.
The method can further comprise the step of providing a fuzzy correlator for performing an iterative comparison of reference measurements and retrieved measured organic contaminant data and metal contaminant data over preselected time periods. This method can further comprise the step of providing a neural network for varying a classification process of contaminant measurements.
The preferred step of retrieving measured organic contaminant data and metal contaminant data comprises archiving the measured data.
The preferred step of providing a user site comprises controlling a configuration of the at least one remote monitor site, processing data from the at least one remote monitor site and providing an alarm upon detection of selected contaminants in the sample. The step of controlling a configuration comprises activating measurement sensors according to predetermined sampling periods. The step of processing data comprises receiving data from the at least one remote monitor site, comparing the data with data from known samples and determining whether tolerances for the contaminants have been exceeded. The preferred step of comparing comprises comparing data from the at least one remote monitor site with reference samples. The alternative step of comparing comprises comparing data from the at least one remote monitor site with predetermined values. The preferred step of determining comprises classifying contaminant tolerance levels. The step of determining can further comprise notifying an operator of out of tolerance conditions.
A primary object of the present invention is to provide a near real time field deployable environmental monitoring system, to report water quality parameters to include but not limited to pH, temperature, metal concentration, and organic concentration.
A primary advantage of the present invention is that of reduced costs over current methods of field testing and monitoring of water quality parameters. A further advantage of the present invention is a reduced time in determining contaminant concentration.
Other objects, advantages and novel features, and further scope of applicability of the present invention will be set forth in part in the detailed description to follow, taken in conjunction with the accompanying drawings, and in part will become apparent to those skilled in the art upon examination of the following, or may be learned by practice of the invention. The objects and advantages of the invention may be realized and attained by means of the instrumentalities and combinations particularly pointed out in the appended claims.
BRIEF DESCRIPTION OF THE DRAWINGS The accompanying drawings, which are incorporated into and form a part of the specification, illustrate several embodiments of the present invention and, together with the description, serve to explain the principles of the invention. The drawings are only for the purpose of illustrating a preferred embodiment of the invention and are not to be construed as limiting the invention. In the drawings:
Fig. 1 is a block diagram of the preferred environmental monitoring system;
Fig. 2 is a schematic diagram of the preferred remote monitor site and the preferred user site;
Fig. 3 is a diagram illustrating a preferred method and apparatus for extracting ground and surface water samples at a remote monitor site and presenting these samples to the sensors for measurement of contaminants;
Fig. 4 is a flow diagram of the processes within the fuzzy correlator for a water sample at a remote monitor site;
Fig. 5 schematically depicts the preferred optional EMS method and apparatus for the water sample classification process at a remote monitor site;
Fig. 6 is a flow diagram illustrating the preferred optional processes within the EMS neural network in the water sample contaminant classification process at a remote monitor site;
Fig. 7 is a block diagram the EMS apparatus resident at the user site; Fig. 8 is flow diagram illustrating the preferred remote monitor site health and status monitoring function performed at the user site;
Fig. 9 is a flow diagram illustrating the preferred user site functions needed to supervise the operations at the remote sites;
Fig. 10 is a flow diagram illustrating the preferred process employed at the user site to provide user site operator monitor cues and to transmit process control commands; and
Fig. 11 is a voltagram graph of a typical contaminant measurement.
DESCRIPTION OF THE PREFERRED EMBODIMENTS (BEST MODES FOR CARRYING OUT THE INVENTION)
The method and apparatus of the present invention comprise hardware components and associated software for providing a user the ability to monitor water quality in real time. The principal benefit of the EMS is that it embodies within one entity the ability to remotely detect, in real-time, unacceptable concentrations of contaminants in water and to notify the user of the types (i.e., species) and concentrations of detected contaminants. When integrated with a process control or a supervisory control and data acquisition system, the EMS can ensure that the environmental consequence of these processes remain consistent with user requirements.
The EMS has immediate application in the operation of municipal utilities, industrial processes, and the detection of unplanned releases of contaminants in the surrounding water supply systems. With sensors capable of the detection of trace metals, agricultural pesticides, petrochemicals, and toxic radioactive elements and compounds the EMS is capable of monitoring the total compliance of any process with established quality standards for water. The EMS can be enhanced to include an adaptive capability providing its users timely information upon which to base appropriate remediation corrective actions. The EMS can also be employed as a simulator, permitting the user to perform environmental impact analyses and operator training.
The preferred embodiment for performing the preferred method of the invention is illustrated in Fig. 1. The environmental monitoring system (EMS) consists of two major components. These include user site 12 and remote monitor site 14. Remote monitor site 14 is designed to determine water quality parameters to include analysis of the presence of metals, organics, radiation, pH, temperature and other water quality parameters. User site 12, is designed to receive data from remote monitor site 14 via standard communication systems 16 which are commercially available and well know in the art. Both remote monitor site 14 and user site 12 can perform contaminant analysis along with data archiving by data loggers and recorders 18 and determine whether or not contaminants exist in samples such as ground water sample 20a or surface or industrial water sources 20b. User site 12 can network one or more (not shown) remote monitor sites 14 which may be involved in an environmental monitoring system network. Geographical information and environmental information is analyzed via an expert system 22 (optional) to determine the relationship of contaminant propagation in an environmental monitoring system network.
The remote monitor site 12 consists of two major subsystems: hydraulic module 24, Fig. 3 and electronic module 26, Fig 2. Surface and industrial water 20b or ground water samples 20a are pumped into the system through sample pumps 28a and 28b. Ground water sample 20a and surface and industrial water 20b goes into hydraulic module 24 which consists of sample pretreatment 30 and measuring cell 32. Although the figures indicate two measuring cells 32, this disclosure is intended to include several measuring cell(s) , the number being dependent on the length of time of system operation without servicing. Here, sample 20 is analyzed for metal concentrations and water quality parameters. After the analysis is complete the sample is output from hydraulic module 24 as illustrated via water outputs 34 and 36.
Electronic module 26 consists of eight major subsystems, which include hydraulic module interface 38, fuzzy correlator 40, communication system 16, microcontroller 42, data logger and recorder 18, fuzzy controller 44, neural network 46 and personal computer on a card 48. Hydraulic module interface 38 is responsible for providing all required voltage and current signals, control signals and status signals which are either applied from or received to hydraulic module 24. Hydraulic module 24 receives its commands which are sent from microcontroller 42, and responsible for all hydraulic module synchronization, control and measurements of raw data. From microcontroller 42, the contaminant measurement raw data is reported through communication system 16 to user site 12. From microcontroller 42, the digitized contaminant raw data is recorded on data logger and recorder 18 for future retrieval. Optional personal computer on a card 48 performs the contaminant recognition and contaminant concentration calculations. Contaminant recognition and concentration calculation can also be accomplished at user site 12 using a standard personal computer or the like. Fuzzy correlator 40, fuzzy controller 44 and neural network 46 are enhancements to the EMS for the purpose of signal recognition, sensor interrelationships, encoding of human expertise and a prior knowledge relating to the sample being analyzed. These subcomponents allow the EMS to autonomously adapt to dynamic circumstances.
Fig. 2 is a schematic diagram of both electronic module 26 and hydraulic module 24. In electronic module 26, configuration data is sent from user site 12 to remote monitor site 14 through communication system 16, in which telemetry packets are utilized to formulate status, control and raw data reporting. Microcontroller 42 then interprets telemetry packets and sets up the various subsystems in electronic module 26. These subsystems include digital to analog converter 50, oxidation reduction control pump valve 52, analog subsystem 54, multiplexer 56 and analog to digital converter 58. Microcontroller 42 also synchronizes opening and closing of valves, pumping of solution and the application of excitation voltage to measuring cell working electrode sensors which are installed in each measuring cell 32a and 32b. Microcontroller 42 also synchronizes the conversion of the contaminant signal which is accomplished by analog to digital converter 58. Water quality measurements, including pH and temperature measurements and radiation counts requires an analog signal which is converted to digital through analog subsyste 54. Variable amplifier 62a is designed to either attenuate or amplify the voltage signal applied to measuring cell 32a and 32b working electrodes (not shown) if the metal contaminant concentration is either too high or too low. Absorptive stripping voltage is the electrochemical technique used, combined with a unique voltage applied to measuring cell working electrodes, thus reducing the effect of organic contamination on the electrode surfaces. Variable amplifier 62b is designed to either attenuate or amplify the analog signal received from reference electrode (not shown) which is related to the presence of metal contamination, if the metal concentration in ground water sample 20a surface and industrial water source 20b is either too high or too low. Multiplexer 56 is programmed by microcontroller 42 to enable selection of analog signals received from each measuring cell 32a and 32b reference electrode. The selection of analog signaling from measuring cell 32 is dependent upon the length of time in which the individual measuring cell is in operation. Control pump valve radiation counter 76 receives synchronization commands from microcontroller 42. These commands control hydraulic module 24 and its subcomponents to include input valve 64 and output valve 66 open and closure, the pumping of sample by sample pump 68a and radiation counter pump 68b, acid pump 70, standard solution pump 72, and plating solution pump 74. Along with what was previously discussed hydraulic module 24 consists of the following subsystems: radiation counter 124, pH and temperature measurement 78, acid solution 80, acid pump 70, standard solution 82, standard solution pump 72, sample pump 68a and radiation counter pump 68b, sample pretreatment 30, input valve 64, measuring cells 32, output valve 66 , plating solution pump 74, and plating solution 84. As illustrated in Fig. 2, sample pump 68a and radiation counter pump 68b is turned on by control pump valve radiation counter 76, and ground water sample 20a or surface and industrial water 20b is pumped up to pH/temperature measurement 78. Water sample pH and temperature results are forwarded to analog subsystem 54, converted to digital and read into microcontroller 42. Groundwater 20a or surface industrial water 20b is then combined with acid by turning on acid pump 70. The combined acid and water sample is then pumped through sample pretreatment 30 where a voltage and current is applied. This voltage and current is responsible for breaking complex metallic organic bonds which may exist in the sample and as a result, go undetected by the sensors in measuring cell 32. The pretreated sample is then routed out of sample pretreatment 30 and combined with a known quantity of metals by turning on standard solution pump 72. This allows the accurate addition of metals necessary to perform the sample analysis. The combined sample and standard addition is then routed to the measuring cell 32 by opening select valves determined by and initiated through commands via microcontroller 42.
In the case of determining metal contaminants in water, two cycles exist in the operation of hydraulic module 24. One is the plating cycle of the working electrodes installed in measuring cell 32, and the other is the sampling cycle. The plating cycle consists of microcontroller 42 issuing commands to prepare input valve 64 and output valve 66. The preferred sequence of valve openings is as follows: open valves 64a, 64c, 66a, 66c, 64f, 64e and close valves 64b, 64d, 66b, 66e. Microcontroller 42 issues a command to digital to analog converter 50 establishing the required plating voltage which is applied to the working electrode installed in measurement cell 32. Pump plating solution 74 is then commanded to pump plating solution 84 via commands being sent from microcontroller 42 to control pump radiation counter 76. Once the solution has flowed through measurement cell 32 and the electrodes have been plated, valve 66e is opened and valve 66f is closed as air is pumped from plating solution 84 via plating solution pump 74 thus purging the tubes and measuring cell 32 of plating solution. During this cycle ground water 20a and surface and industrial water 20b is routed through sample pretreatment 30 through valve 64a back through sample pretreatment 30 to water output 36. In the sampling cycle method for metal contaminant concentration analysis, microcontroller 42 issues a series of control signals via control pump valve radiation counter 76 to input valve 64 and output valve 66. The sequence of valve opening and closure is as follows: Open valves 64b, 64c, 66a, 66d and close valves 64a, 64e, 64d, 66c, 66e, and 66f. During this cycle ground water 20a and surface and industrial water 2Ob is pumped by sample pump 68a through sample pretreatment 30 and flows to measurement cell 32.
Microcontroller 42 issues a series of commands to analog to digital converter 58, digital to analog converter 50, oxidation reduction 52, and multiplexer 56. Through digital to analog converter 50, a waveform is applied to the working electrode installed in measurement cell 32, thereby oxidizing the metals which are absorbed into the plated electrode. Multiplexer 56 is programmed to select which measuring cell 32 reference electrode is used for the purpose of detecting the current which is proportionately related to the metal concentration. The current registered by the reference electrode flows through multiplexer 56 into variable amplifier 62 and is converted to a digital signal by analog to digital converter 58. The signal is then stored in the memory of microcontroller 42. Depending upon the metallic concentration in the solution, variable amplifier 62 is programmed to either attenuate or amplify the oxidation current received from measuring cell 32. In preparing the sample where known organic metallic bonds might exist, microcontroller 42, issues a command to oxidation reduction 52 , thereby selecting the required current value to be applied to the sample pretreatment 30 necessary to effectively break the organic metallic complex bond.
Additional water quality measurements to include pH/temperature and radiation count, is performed by microcontroller 42 issuing a command to analog subsystem 54, whereby the pH, temperature, and radiation count of the sample is measured by pH/temperature sensor 78 and radiation counter 124 resulting in an analog signal which is converted to a digital signal via analog subsystem 54 and is read into microcontroller 42 memory. Analog subsystem 54, can be expanded to monitor other contaminants which impact water quality. Consequently, the EMS can be applied to a vast number of contaminant problems, and is not limited to the application cited above.
Fig. 3 is a diagram showing the preferred method of sample extraction to the sensor and is an illustration of a typical EMS hydraulic system for extracting water samples at a remote monitor site. Groundwater 20a surface and industrial water 20b is pumped through water filter 90 filtering out any sediment that might exist in groundwater 20a surface water and industrial water 20b and is collected in water chamber 92, where the pH and temperature of the water is measured 78. Water chamber 92 can also house additional sensors for the purpose of measuring other water quality parameters (not shown) . Water level detector 94 determines the sample level in water chamber 92 and shuts off sample pump 68a, in the event that the water level exceeds the specified limits. Groundwater 20a or surface and industrial water 20b is combined with acid solution 80 in order to make fresh water electrolytic. This is accomplished by microcontroller 42 , issuing a command via control pump valve radiation counter 124 to turn on acid pump 70. This is not required in the case of salt water since saltwater is already electrolytic. The combined solution is then routed to sample pretreatment 30 which contains oxidation module 96 and reduction module 98. Here a voltage and oxidation current is applied between anode electrode 100 and cathode electrode 102 concurrently to break the complex metallic organic bonds. In this process the oxidation current flows through metallic contact 104 to the waterproof graphite contact 106 and into the sample solution. The current also flows through an anion exchange membrane 108, waterproof graphite contact 106 and to metallic contact 104 which comprises cathode 102. Oxidation module 96 oxidizes the acid solution, releasing anions which sever any bonds which may exist with organic compounds. Residual anions are passed through anion exchange membrane 108 and released into the water sample output 36. Positively charged metal ions are thus released into the solution which is then routed to reduction module 98. Reduction module 98 reduces any positively charged metal ions that might exist into a stable metal form which is later collected onto the placed working electrodes which are installed in measuring cell 32. The reduction of the positively charged metal is accomplished by applying a reduction current and voltage through reduction module 98 which flows through anode electrode 100 via metallic contacts 104, graphite contact 106, and metal contact 104, waterproof graphite contact 106, into the sample solution. Any remaining anions which are generated by oxidation module 96 are passed through membrane 108 into water sample output 36. The reduction current then flows into the sample, reducing the positively charged metal ions. The current further flows through anion exchange membrane 108, cathode electrode 102, graphite contact 106, to metal contact 104. Silver/silver chloride comparison electrode 116 is used as a reference to establish the reduction voltage and current.
A standard solution containing known metal concentration is pumped from standard pump 72 downward until it meets the pretreated sample. The two are combined prior to passing through valve 64b. Valve 64a is closed during the sample cycle. The pretreated sample is routed to measuring cell 32 through valve 64c and passes through a thin layer 118, while voltage is applied to graphite working electrode 112a and second graphite working electrode 112b. A silver/silver chloride electrode 116 is used as a reference electrode and is used in the process of determining the oxidation current generated by oxidizing metal ions absorbed in the plated working electrode 112a and 112b. Silver/silver chloride comparison electrode 116 serves as an accurate reference enabling accurate determination of oxidation current which is a function of metal concentration. Oxidation occurs at this juncture due to voltage applied through the working electrodes 112a and 112b. A current surge occurs, which is proportionately related to the metal ion concentration in the solution. Following oxidation, the sample emerges through valve 66a, downward through valve 64a up through sample pretreatment 30 and back down to water sample output 36.
Auxiliary electrode 120 is optional and can be for the purpose of electrically dissolving known concentrations of metals into measuring cell 32 whereby serving as a calibrated standard metal addition.
Fig. 4 is a flow diagram of the preferred method within the fuzzy correlator for a water sample at a remote site. The fuzzy correlator is an optional feature which enhances the capability of the EMS enabling the remote monitor site to change its operational configuration during normal field operation. The fuzzy correlator enables a test of the sensors used in the remote monitor site to accurately provide and measure contaminant found in the sample. For example, reference measurement data for each measurement cell, are loaded into fuzzy correlator 200 by microcontroller at a time during the remote monitor site operation. The reference measurements are obtained by using the standard solution (i.e., known concentration of metal ions) as the sample to be analyzed. The reference measurements are used as a baseline measurement of the degree of correlation during the course of operation of the remote monitor site. As an example, in the event of organic compound contamination of the working electrodes installed in the each measurement cell, the degree of correlation between initial reference measurement 200 and subsequent measurement values 202 would result in less correlation, thus the determination would be made to switch over to the next measurement cell for further operation of the remote monitor site. Subsequent values of the reference measurements 200 are the previous raw data measured. Actual measurements for all the sensors, Si at time t and measurements made at the sensor over a period of time t, are loaded into fuzzy correlator 200. Fuzzy correlator performs an iterative comparison of each set of reference values 204, XR (ti) with the measured values, xm at the time ti+i, or xm (ti+i) which results in the determination of the elements of a co- variance matrix representing the correlation between measurements at a given sensor over the period of time t. Similarly, an iterative comparison is made of the measurements for all sensors, Si at time t 206. The results of this comparison comprise the elements of another covalence matrix which represents the correlation among sensor measurements Xi , at the given time t 208a and 208b. These covalence matrices are also used to adjust the weight wi , for a given sensor within the neural network's classification process (see Fig. 6) . Once the covalence matrixes are defined, this data is recorded at remote monitor site 210 and fuzzy correlator process ends 212.
Referring to Fig. 5 the fuzzy correlator enables the encoding of human knowledge in the form of membership functions and if the rules which are derived from known phenomena and interpreted by a expert, so as to enable the remote monitor site to adopt to changing environmental condition in the detection process of contaminant concentration determination. The membership functions for each sensor detection specie of interest at a given sensor Si , and the raw measurements Xi , made at the sensor, are loaded into the fuzzy controller 214 by the microcontroller as are experiential derived rules 216 for: 1) classifying each specie at the sensor Si ; and 2) for establishing the membership of measurement parameters under 'fuzzy" conditions. For example, the membership functions are applied to the raw measurements of Ii (max) and Ei, where Ii (max) is the peak current for the specie detected at the working electrode, and Ei is the applied potential at which Ii (max) is achieved. Based upon whether or not the values of I and/or E are determined to be a member of the specie of interest 218, a level of confidence in the specie classification at the sensor Si , is determined. Expert rules define a priority to effectively deal with the possibility that inconclusive results are obtained from the membership tests 230.
If the results of the membership tests 230 are not conclusive, (i.e., yes, no) or (no, yes) for the current and voltage pair, the expert rules are then applied to conclusively determine whether the specie of interest is either present or absent. This determination affects the definition of the confidence level for cases where other than a clear decision (i . e . , (yes, yes) or (no, no) ) results form the previously applied membership tests 230. Expert rules are also applied to the measurements in an if-then-else context and result in a qualitative classification of the specie at the sensor which is independent of that of the neural network. The results of the fuzzy controller classification process (i.e., specie and confidence level) are compared with the previous classification results 220 for sensor, Si. If the results are consistent with previous classifications 220, this gives a greater measure of confidence 222 in the current classification of fuzzy controller.
The confidence levels determined from previous samples 228 are also examined within fuzzy controller to determine what impact, if any, the results of fuzzy controller's operations should have upon the preprocessing strategy being employed at the sample pretreatment. If the confidence level 222 has increased or at least remained the same since the prior classification, then the sample pretreatment strategy employed for the current measurements is kept the same. If the confidence level 222 has decreased since the prior measurement, then the sample pretreatment strategy may be changed thus either increasing or decreasing oxidation/reduction current. A change in the preprocessing strategy results in a change in the weights, wi , referred to below. Once the confidence level 222 has been determined, the qualitative fuzzy classification is complete and changes preparing strategy are determined, the results of those archives are recorded 224 at remote monitor site and fuzzy controller process ends 226. Referring to Fig. 6, the neural network is an optional feature which enhances the capability of the EMS enabling the remote site to change its operational configuration during normal field operations. The neural network utilizes a training set of data 230 which is derived under various conditions in which contaminants are presumed to exist in known concentrations in the environment. The neural network learns about the environmental contaminants and make adjustments to both the weights and bias variables associated with each contaminant specie of interest. The weights (wi) and bias terms (oi) are loaded into neural network 232 for sensors (Si) by microcontroller. In addition, microcontroller 42 loads in the raw sensor measurements consisting of the maximum current (Imax) measured at sensor Si at time t, and the corresponding value of the applied potential (E) 234. Microcontroller also loads in information from fuzzy controller which is used to update or change the weights used in neural network's classification process. This weight updating process is accomplished through a weight update algorithm 236 derived from experiential knowledge of the contaminant detection process. A training set consisting of experience derived from all possible combinations and permutations of contaminant species at the sampling source(s) is developed in the laboratory. The training set provides the basis for the weight update algorithm 236 used in neural network. Each neuron within neural network is dedicated to a specie of interest. A qualitative classification criterion derived from the training set rules is applied concurrently in all neurons 238. This criterion is the sum, over all sensors, of the product of the weight for each sensor WI and the measurement Xi to which is added the bias Oi , for each sensor. If this value is greater than or equal to the neuron's accumulated threshold value Ni for the specie of interest at that sensor, then the synaptic output of the neuron is valued 1 and the specie of interest is declared to be present 240. If the criterion is not satisfied, then the synaptic output is 0, and the specie is declared not to be present at the sensor, Si 242. This is the qualitative classification. Once a specie has been determined to be present, the values of Xi or Ii versus Ei for the sensor over the period that the potential was applied are loaded into microcontroller and a contaminant concentration calculation proceeds 244. Fig. 11 graphically shows this process. This is the quantitative classification. Once the specie has been determined to be present and its concentration has been calculated these data are recorded on data logger and recorder at remote monitor site 246 and the classification process ends 248. If the specie of interest has been determined not to be present, then this is also recorded a remote monitor site 246, and the classification process ends 248. Referring to Fig. 7, at present intervals, data logger and recorder 18 at remote monitor site 14 will transmit the raw measured values of data over the sampling period results from fuzzy controller 44 and fuzzy correlator 40, and neural network 46 coded decisions as to most likely species and concentration to user site 12. At user site 12, the received data will be input into a data base for post transmission processing. This processing is designed to accomplish the following: 1) serve as a check to compare the results of the decisions a each remote monitor site 14 with an expert system at the user site 12; 2) supervise the operations at remote monitor sites 14; and 3) and provide user site 12 operator with cues as to appropriate responses to remediate or correct the contamination effects or its sources.
Referring to Fig. 8, the comparison of remote monitor site classification decisions is accomplished using an expert system at user site. The expert system represents an expert analysts' decisions 254 regarding classification of species of contaminants at each sensor installed at remote monitor site based upon the raw data observed by the sensor 250. These expert system based classification decisions 256 are compared with those determined at remote monitor site 252. The results of the comparison forms the basis for an assessment of the overall health and status of the total system, including all of remote monitor sites. From these comparisons over time 252, a level of confidence in quality of the accuracy and reliability of the measurements is established at user site. Data from a suspect sensor or sensors can be flagged 258 in user site permanent archive and the suspect data can be downweighted or removed from the sensor's input in subsequent classification at the site or sites via commands issued to microcontroller at each remote monitor site 14 via user site supervisory program. The data will also serve to key operations personnel as to the need for site maintenance and upkeep.
Referring to Fig. 9, another application resident at user site is the centralized control of remote monitor sites. The comparative data results are also used to determine the most likely causes for poor quality data at a remote monitor site 262 and 264 and the need for changes or updating 260 to the monitoring schemes at each site. To accomplish this, the characteristics of the measurements over time from the same sensor and other sensors will be examined via a set of expert rules 266 with regard to frequency of observations, stationarity, seasonal, temporal, spatial, and other factors. These characteristics will comprise the basis for decisions regarding changes 260 at each remote monitor site. Referring to Fig. 10, each user site will consist of a user interface to provide management protocols or cues 268 to a centrally located human operator/monitor and to provide feedback control inputs to a process control system 270 in order to define appropriate actions to be taken in light of the types and levels of contamination detected. These operator cues will be based upon experiential knowledge and are descriptions of fact applied to the history of the contaminants at a given sampling source, their likely sources of origin, and their effects upon the environment over time.
The present environmental monitoring system invention is capable of detecting, on a continuing basis, unacceptable concentrations of contaminants in water. This unique system will enable every manager of a federal installation, a municipal utility, or an industrial plant to monitor (on-site and in real-time) compliance with federal, state, and local quality standards for water. The cost of the EMS is projected to be 70 to 80% less than that spent on current techniques to measure the levels of contaminants in water.
The principal benefit of the EMS is that it embodies within one entity the ability to remotely detect, in real-time, unacceptable concentrations of contaminants in water and to notify the user of the types (i.e., species) and concentrations of detected contaminants. When integrated with a process control or a supervisory control and data acquisition system the EMS can ensure that the environmental consequences of these processes remain consistent with established health and safety standards for water.
Further, the types (species) and levels of contaminants (concentrations) detected for each sampled source are the basis for a permanent archive within a central data processing system. These data elements can be used to establish both geographical and environmental information systems for the monitored sites. With such a capability, the EMS can also be employed by federal, state and local agencies to monitor and enforce compliance with established health and safety standards for water.
The disclosure of the invention described hereinabove represents the embodiments of the invention; however, variations thereof, in the form, construction, and arrangement of the various components thereof and the modified application are possible without departing from the spirit and scope of the appended claims.

Claims

CLAIMSWhat is claimed is:
1. An apparatus for remotely detecting and monitoring contaminants in water, the apparatus comprising: at least one remote monitor site means for detecting and measuring water quality parameters of a sample; and a user site means for communicating with said at least one remote monitor site means and for correlating said detected and measured water quality parameters with predetermined characteristics.
2. The invention of claim 1 wherein said at least one remote monitor site means comprises: means for preconditioning said sample for analysis for heavy metals; means for measuring organic contaminants in said sample and a means for measuring metal contaminants in said preconditioned sample; means for retrieving data from said means for measuring; and means for transmitting said data to said user site means.
3. The invention of claim 2 wherein said means for preconditioning comprises: means for adding a preselected acid to said sample; and means for adding a standard solution to said sample.
4. The invention of claim 3 wherein said means for measuring metal contaminants comprises: means for applying a specific voltage to sensors contiguous with said preconditioned sample in a measurement cell; and means for measuring oxidation of said preconditioned sample.
5. The invention of claim 4 wherein said means for measuring oxidation comprises means for creating a surge current that is related to a metal concentration.
6. The invention of claim 2 wherein said means for measuring for metal contaminants comprises means for measuring metal contaminants in parts per billion.
7. The invention of claim 2 wherein said means for measuring organic contaminants comprises at least on member selected from the group of Ph sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors.
8. The invention of claim 2 wherein said means for measuring organic contaminants comprises measuring cells.
9. The invention of claim 2 wherein said means for measuring organic contaminants comprises means for detecting and measuring radiation nuclei.
10. The invention of claim 2 wherein said means for retrieving data comprises means for retrieving raw data from contaminant sensors.
11. The invention of claim 2 wherein said means for transmitting comprises: means for digitizing said data from contaminant sensors; and a transmitter for transmitting said digitized data.
12. The invention of claim 2 further comprising a fuzzy correlator means for performing an iterative comparison of reference measurements and measurements from said means for measuring organic contaminants and said means for measuring metal contaminants over preselected time periods.
13. The invention of claim 12 further comprising neural network means for varying a classification process of contaminant measurements.
14. The invention of claim 2 wherein said means for retrieving comprises means for archiving data from said means for measuring organic contaminants and said means for measuring metal contaminants.
15. The invention of claim 1 wherein said user site means comprises: means for controlling a configuration of said at least one remote monitor site means; means for processing data from said at least one remote monitor site means; and means for providing an alarm upon detection of selected contaminants in said sample.
16. The invention of claim 15 wherein said means for controlling a configuration comprises means for activating measurement sensors according to predetermined sampling periods.
17. The invention of claim 15 wherein said means for processing comprises; means for receiving data from said at least one remote monitor site means; means for comparing said data with data from known samples; and means for determining whether tolerances for said contaminants have been exceeded.
18. The invention of claim 17 wherein said means for comparing comprises a means for comparing data from said at least one remote monitor site with reference samples.
19. The invention of claim 17 wherein said means for comparing comprises comparing data from said at least one remote monitor site with predetermined values.
20. The invention of claim 17 wherein said means for determining comprises means for classifying contaminant tolerance levels.
21. The invention of claim 17 wherein said means for determining further comprises means for notifying an operator of out of tolerance conditions.
22. An method of remotely detecting and monitoring contaminants in water, the method comprising the steps of: a) providing at least one remote monitor site for detecting and measuring water quality parameters of a sample; and b) providing a user site for communicating with the at least one remote monitor site and for correlating the detected and measured water quality parameters with predetermined characteristics.
23. The method of claim 22 wherein the step of providing at least one remote monitor site comprises: a) preconditioning the sample for analysis for heavy metals; b) measuring organic contaminants in the sample; c) measuring the preconditioned sample for metal contaminants; d) retrieving measured organic contaminant data and measured metal contaminant data; e) analyzing the measured data; and f) transmitting the data to the user site.
24. The method of claim 23 wherein the step of preconditioning comprises: a) adding a preselected acid to the sample; and b) adding a known standard solution to the sample.
25. The method of claim 23 wherein the step of measuring the preconditioned sample comprises: a) applying a specific voltage to sensors contiguous with the preconditioned sample in a measurement cell; and b) measuring oxidation of the preconditioned sample.
26. The method of claim 25 wherein the step of measuring oxidation comprises creating a surge current that is related to a metal concentration.
27. The method of claim 23 wherein the step of measuring the preconditioned sample for metal contaminants comprises measuring metal contaminants in parts per billion.
28. The method of claim 23 wherein the step of measuring organic contaminants comprises providing at least one member from the group consisting of Ph sensors, temperature sensors, organic sensors, fiber optic sensors and bio-sensors.
29. The method of claim 23 wherein the step of measuring organic contaminants comprises providing measuring cells.
30. The method of claim 23 wherein the step of measuring organic contaminants comprises detecting and measuring radiation nuclei.
31. The method of claim 23 wherein the step of retrieving measured organic contaminant data and metal contaminant data comprises retrieving raw data from contaminant sensors.
32. The method of claim 23 wherein the step of transmitting comprises digitizing the data from contaminant sensors.
33. The method of claim 23 further comprising the step of providing a fuzzy correlator for performing an iterative comparison of reference measurements and retrieved measured organic contaminant data and metal contaminant data over preselected time periods.
34. The method of claim 33 further comprising the step of providing a neural network for varying a classification process of contaminant measurements.
35. The method of claim 23 wherein the step of retrieving measured organic contaminant data and metal contaminant data comprises archiving the measured data.
36. The method of claim 22 wherein the step of providing a user site comprises: a) controlling a configuration of the at least one remote monitor site; b) processing data from the at least one remote monitor site ; and c) providing an alarm upon detection of selected contaminants in the sample.
37. The method of claim 36 wherein the step of controlling a configuration comprises activating measurement sensors according to predetermined sampling periods.
38. The method of claim 36 wherein the step of processing data comprises: a) receiving data from the at least one remote monitor site; b) comparing the data with data from known samples; and c) determining whether tolerances for the contaminants have been exceeded.
39. The method of claim 38 wherein the step of comparing comprises comparing data from the at least one remote monitor site with reference samples.
40. The method of claim 38 wherein the step of comparing comprises comparing data from the at least one remote monitor site with predetermined values.
41. The method of claim 38 wherein the step of determining comprises classifying contaminant tolerance levels.
42. The method of claim 38 wherein the step of determining further comprises notifying an operator of out of tolerance conditions.
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