Optimal design of monitoring networks for multiple groundwater quality parameters using a Kalman filter: application to the Irapuato-Valle aquifer
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A new method for the optimal design of groundwater quality monitoring networks is introduced in this paper. Various indicator parameters were considered simultaneously and tested for the Irapuato-Valle aquifer in Mexico. The steps followed in the design were (1) establishment of the monitoring network objectives, (2) definition of a groundwater quality conceptual model for the study area, (3) selection of the parameters to be sampled, and (4) selection of a monitoring network by choosing the well positions that minimize the estimate error variance of the selected indicator parameters. Equal weight for each parameter was given to most of the aquifer positions and a higher weight to priority zones. The objective for the monitoring network in the specific application was to obtain a general reconnaissance of the water quality, including water types, water origin, and first indications of contamination. Water quality indicator parameters were chosen in accordance with this objective, and for the selection of the optimal monitoring sites, it was sought to obtain a low-uncertainty estimate of these parameters for the entire aquifer and with more certainty in priority zones. The optimal monitoring network was selected using a combination of geostatistical methods, a Kalman filter and a heuristic optimization method. Results show that when monitoring the 69 locations with higher priority order (the optimal monitoring network), the joint average standard error in the study area for all the groundwater quality parameters was approximately 90 %25 of the obtained with the 140 available sampling locations (the set of pilot wells). This demonstrates that an optimal design can help to reduce monitoring costs, by avoiding redundancy in data acquisition. © 2015, Springer International Publishing Switzerland.
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Geostatistics; Groundwater quality; Kalman filter; Optimal monitoring network; Priority zones Aquifers; Data acquisition; Design; Groundwater; Groundwater resources; Heuristic methods; Kalman filters; Optimal systems; Optimization; Uncertainty analysis; Water quality; Geo-statistics; Geostatistical method; Groundwater quality monitoring; Heuristic optimization method; Indicator parameters; Optimal monitoring; Uncertainty estimates; Water quality indicators; Monitoring; ground water; ground water; water pollutant; data acquisition; design; environmental monitoring; geostatistics; groundwater; heuristics; Kalman filter; optimization; sampling; water quality; aquifer; Article; controlled study; environmental monitoring; geostatistical analysis; hydrodynamics; Kalman filter; mathematical computing; Mexico; water contamination; water quality; water temperature; chemistry; environmental monitoring; procedures; standards; uncertainty; water pollutant; water quality; Guanajuato; Irapuato; Mexico [North America]; Environmental Monitoring; Groundwater; Mexico; Uncertainty; Water Pollutants; Water Quality
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