SOTAVerified

Physics-informed machine learning

Machine learning used to represent physics-based and/or engineering models

Papers

Showing 161170 of 192 papers

TitleStatusHype
Grid-SiPhyR: An end-to-end learning to optimize framework for combinatorial problems in power systems0
Towards Size-Independent Generalization Bounds for Deep Operator NetsCode0
Physics-informed machine learning techniques for edge plasma turbulence modelling in computational theory and experimentCode0
Scalable algorithms for physics-informed neural and graph networks0
When Physics Meets Machine Learning: A Survey of Physics-Informed Machine Learning0
Calibrating constitutive models with full-field data via physics informed neural networks0
Physics-informed ConvNet: Learning Physical Field from a Shallow Neural Network0
Numerical Approximation in CFD Problems Using Physics Informed Machine Learning0
Towards Model Reduction for Power System Transients with Physics-Informed PDE0
A Metalearning Approach for Physics-Informed Neural Networks (PINNs): Application to Parameterized PDEs0
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