2023
DOI: 10.46690/ager.2023.04.04
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Physics-informed machine learning for solving partial differential equations in porous media

Abstract: Physical phenomenon in nature is generally simulated by partial differential equations. Among different sorts of partial differential equations, the problem of two-phase flow in porous media has been paid intense attention. As a promising direction, physics-informed neural networks shed new light on the solution of partial differential equations. However, current physics-informed neural networks' ability to learn partial differential equations relies on adding artificial diffusion or using prior knowledge to i… Show more

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Cited by 5 publications
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“…In contrast, ML techniques have made remarkable progress, supported by advances in hardware, algorithms, and data. Given the continuous accumulation and refinement of data in materials computation, ML has emerged as a powerful tool and has been used to solve equations, [220][221][222] design force fields, [223] and analyze multiscale characterization experiments. [224] Artificial intelligence methods are increasingly recognized as the "fourth paradigm" in the field of materials science.…”
Section: Ai Assisted Materials Discoverymentioning
confidence: 99%
“…In contrast, ML techniques have made remarkable progress, supported by advances in hardware, algorithms, and data. Given the continuous accumulation and refinement of data in materials computation, ML has emerged as a powerful tool and has been used to solve equations, [220][221][222] design force fields, [223] and analyze multiscale characterization experiments. [224] Artificial intelligence methods are increasingly recognized as the "fourth paradigm" in the field of materials science.…”
Section: Ai Assisted Materials Discoverymentioning
confidence: 99%