Modeling unobserved geothermal structures using a physics-informed neural network with transfer learning of prior knowledge
Akihiro Shima,
Kazuya Ishitsuka,
Weiren Lin
et al.
Abstract:Deep learning has gained attention as a potentially powerful technique for modeling natural-state geothermal systems; however, its physical validity and prediction inaccuracy at extrapolation ranges are limiting. This study proposes the use of transfer learning in physics-informed neural networks to leverage prior expert knowledge at the target site and satisfy conservation laws for predicting natural-state quantities such as temperature, pressure, and permeability. A neural network pre-trained with multiple n… Show more
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