Adaptive Water Sensor Signal Processing: Experimental Results and Implications for Online Contaminant Warning Systems

A real-time event adaptive detection, identification and warning (READiw) system has two principal functions. First, signal treatment using adaptive algorithms reduces background noise and enhances contaminant signals, leading to accurate detection of water quality changes of as low as 1%. Second, its forensic classification technique relates changes of water quality parameters to the reactivity of contaminants and hereby their chemical classes. To test these detection functionalities, contaminant transport experiments in a pilot-scale single pass pipe were conducted for 16 herbicides and pesticide, inorganic and biological contaminants. Sensor outputs (free and total chlorine, chloride, pH, DO, conductivity, ORP, and turbidity) were analyzed with the adaptive procedures. The results show unique changes of water quality parameters and the reactivity differences among the tested contaminants, based on which an effective READiw system can be configured.

[1]  M. Lemasle,et al.  Chlorination kinetics of glyphosate and its by-products: modeling approach. , 2006, Water Research.

[2]  B. M. Huey,et al.  Strategies to Protect the Health of Deployed U.S. Forces: Detecting, Characterizing, and Documenting Exposures , 2000 .

[3]  Peter C. Young,et al.  Data assimilation and uncertainty analysis of environmental assessment problems - an application of Stochastic Transfer Function and Generalised Likelihood Uncertainty Estimation techniques , 2003, Reliab. Eng. Syst. Saf..

[4]  D. H. Dye Sensors for Screening and Surveillance , 2002 .

[5]  David J. Marchette,et al.  Data Mining Strategies for the Detection of Chemical Warfare Agents , 2003 .

[6]  Salvatore J. Stolfo,et al.  Real time data mining-based intrusion detection , 2001, Proceedings DARPA Information Survivability Conference and Exposition II. DISCEX'01.

[7]  Stéphane Canu,et al.  Advanced Spatial Data Analysis and Modelling with Support Vector Machines , 2000 .

[8]  R. Murray,et al.  Model for Estimating Acute Health Impacts from Consumption of Contaminated Drinking Water , 2006 .

[9]  James A. Goodrich,et al.  Adaptive monitoring to enhance water sensor capabilities for chemical and biological contaminant detection in drinking water systems , 2006, SPIE Defense + Commercial Sensing.

[10]  C. Rav-Acha,et al.  Carbamate insecticides: removal from water by chlorination and ozonation. , 1990 .

[11]  Salvatore J. Stolfo,et al.  Adaptive Model Generation for Intrusion Detection Systems , 2000 .

[12]  Joseph J. Pignatello,et al.  Degradation of selected pesticide active ingredients and commercial formulations in water by the photo-assisted Fenton reaction , 1999 .