Developing a cost-effective emulator for groundwater flow modeling using deep neural operators
Maria Luisa Taccari, He Wang, Somdatta Goswami, Jonathan Nuttall,, Xiaohui Chen, Peter K. Jimack

TL;DR
This paper introduces a deep neural operator-based emulator that significantly reduces computational costs while accurately modeling groundwater flow, including complex scenarios like varying conductivity and well locations.
Contribution
The work presents a novel DeepONet architecture extension for efficient, accurate groundwater flow predictions across diverse conditions unseen during training.
Findings
High accuracy in predicting hydraulic head distribution
Effective handling of varied hydraulic conductivity fields
Fast inference suitable for repetitive simulations
Abstract
Current groundwater models face a significant challenge in their implementation due to heavy computational burdens. To overcome this, our work proposes a cost-effective emulator that efficiently and accurately forecasts the impact of abstraction in an aquifer. Our approach uses a deep neural operator (DeepONet) to learn operators that map between infinite-dimensional function spaces via deep neural networks. The goal is to infer the distribution of hydraulic head in a confined aquifer in the presence of a pumping well. We successfully tested the DeepONet on four problems, including two forward problems, an inverse analysis, and a nonlinear system. Additionally, we propose a novel extension of the DeepONet-based architecture to generate accurate predictions for varied hydraulic conductivity fields and pumping well locations that are unseen during training. Our emulator's predictions…
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Taxonomy
TopicsGroundwater flow and contamination studies · Model Reduction and Neural Networks · Hydrological Forecasting Using AI
