This paper is available on arxiv.org/abs/2312.09403 under CC BY 4.0 DEED license. The physics-informed deep learning framework is able to solve both forward and inverse problems to reasonable accuracy. Verification is an essential first step to ensure credible results 20, 12.
Authors:
(1) Cody Rucker, Department of Computer Science, University of Oregon and Corresponding author;
(2) Brittany A. Erickson, Department of Computer Science, University of Oregon and Department of Earth Sciences, University of Oregon.
Abstract and 1. Context and Motivation
When computational methods for physical problems are used to address science questions, verification is an essential first step to ensure credible results [20, 12]. While validation with observational data is the focus of future work, we must first verify that our physics-informed deep learning framework is able to solve both forward and inverse problems to reasonable accuracy.