2022
DOI: 10.21203/rs.3.rs-1833308/v1
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Learning Inverse Problem from Sparse Noisy Data with Operator Split and Physics-Constraints Machine Learning

Abstract: Inverse problems (IPs) begin with measured data and try to estimate the model parameters. In science and engineering, many problems are seen as inverse problems. Partial differential equations (PDEs) or variational problems are also used to characterize similar issues (VPs). A VP is usually an energy functional that is solved by lowering the energy function. Since curvature-driven regularities have been proven to need considerable prior understanding of physics, they have gotten a lot of attention. Unfortunate… Show more

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