Identification of Physical Processes and Unknown Parameters of 3D Groundwater Contaminant Problems via Theory-guided U-net
Tianhao He, Haibin Chang, Dongxiao Zhang

TL;DR
This paper introduces a theory-guided U-net framework for efficient surrogate modeling of 3D groundwater contaminant problems, enabling simultaneous identification of physical processes and unknown parameters with high accuracy.
Contribution
The novel TgU-net integrates governing equations into the neural network loss function, allowing modeling of multiple sorption processes within a single framework for groundwater contamination analysis.
Findings
TgU-net accurately predicts groundwater contaminant behavior.
The framework effectively identifies physical processes and parameters.
High generalizability and extrapolability demonstrated.
Abstract
Identification of unknown physical processes and parameters of groundwater contaminant sources is a challenging task due to their ill-posed and non-unique nature. Numerous works have focused on determining nonlinear physical processes through model selection methods. However, identifying corresponding nonlinear systems for different physical phenomena using numerical methods can be computationally prohibitive. With the advent of machine learning (ML) algorithms, more efficient surrogate models based on neural networks (NNs) have been developed in various disciplines. In this work, a theory-guided U-net (TgU-net) framework is proposed for surrogate modeling of three-dimensional (3D) groundwater contaminant problems in order to efficiently elucidate their involved processes and unknown parameters. In TgU-net, the underlying governing equations are embedded into the loss function of U-net…
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Taxonomy
TopicsGroundwater flow and contamination studies
MethodsMax Pooling · Concatenated Skip Connection · *Communicated@Fast*How Do I Communicate to Expedia? · Convolution · U-Net
