Contaminant source identification in groundwater by means of artificial neural network
Daniele Secci, Laura Molino, Andrea Zanini

TL;DR
This paper develops a fast, data-driven neural network model to identify groundwater contaminant sources and release histories, effectively handling complex scenarios with low uncertainty, aiding immediate remediation strategies.
Contribution
The paper introduces a novel neural network approach for groundwater contamination source identification, capable of handling multiple nonlinear scenarios efficiently.
Findings
Successfully identified pollutant concentrations at observation points.
Effectively determined source location and release history.
Achieved low computational burden and uncertainty.
Abstract
In a desired environmental protection system, groundwater may not be excluded. In addition to the problem of over-exploitation, in total disagreement with the concept of sustainable development, another not negligible issue concerns the groundwater contamination. Mainly, this aspect is due to intensive agricultural activities or industrialized areas. In literature, several papers have dealt with transport problem, especially for inverse problems in which the release history or the source location are identified. The innovative aim of the paper is to develop a data-driven model that is able to analyze multiple scenarios, even strongly non-linear, in order to solve forward and inverse transport problems, preserving the reliability of the results and reducing the uncertainty. Furthermore, this tool has the characteristic of providing extremely fast responses, essential to identify…
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