Optimal design of aquifer cleanup systems under uncertainty using a neural network and a genetic algorithm

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Abstract

We present a methodology to account for the stochastic nature of hydraulic conductivity during the design of pump-and-treat systems for aquifer cleanup. The methodology (1) uses a genetic algorithm to find the global optimal solution and (2) incorporates a neural network to model the response surface within the genetic algorithm. We apply the methodology for a real example and different optimization scenarios. The employed optimization formulation requires few hydraulic conductivity realizations. The presented approach produces a trade-off curve between reliability and treatment facility size.

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Aly, A. H., & Peralta, R. C. (1999). Optimal design of aquifer cleanup systems under uncertainty using a neural network and a genetic algorithm. Water Resources Research, 35(8), 2523–2532. https://doi.org/10.1029/98WR02368

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