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Physics-informed machine learning

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

Papers

Showing 151175 of 192 papers

TitleStatusHype
A physics-informed machine learning model for reconstruction of dynamic loads0
A Physics-informed machine learning model for time-dependent wave runup prediction0
Applying physics-based loss functions to neural networks for improved generalizability in mechanics problems0
A Review of Physics-Informed Machine Learning Methods with Applications to Condition Monitoring and Anomaly Detection0
Beyond Accuracy: EcoL2 Metric for Sustainable Neural PDE Solvers0
Breaking the Diffraction Barrier for Passive Sources: Parameter-Decoupled Superresolution Assisted by Physics-Informed Machine Learning0
BridgeNet: A Hybrid, Physics-Informed Machine Learning Framework for Solving High-Dimensional Fokker-Planck Equations0
Calibrating constitutive models with full-field data via physics informed neural networks0
Data-driven AC Optimal Power Flow with Physics-informed Learning and Calibrations0
Data-driven Optimal Power Flow: A Physics-Informed Machine Learning Approach0
DeepONet for Solving Nonlinear Partial Differential Equations with Physics-Informed Training0
Discovering Artificial Viscosity Models for Discontinuous Galerkin Approximation of Conservation Laws using Physics-Informed Machine Learning0
Discovering nonlinear resonances through physics-informed machine learning0
Discrete-Time Nonlinear Feedback Linearization via Physics-Informed Machine Learning0
Efficient Bayesian Physics Informed Neural Networks for Inverse Problems via Ensemble Kalman Inversion0
Empirical modeling and hybrid machine learning framework for nucleate pool boiling on microchannel structured surfaces0
Enhancing predictive skills in physically-consistent way: Physics Informed Machine Learning for Hydrological Processes0
Neural Operator: Is data all you need to model the world? An insight into the impact of Physics Informed Machine Learning0
Feature-adjacent multi-fidelity physics-informed machine learning for partial differential equations0
Filtered Partial Differential Equations: a robust surrogate constraint in physics-informed deep learning framework0
FMEnets: Flow, Material, and Energy networks for non-ideal plug flow reactor design0
Fourier-Invertible Neural Encoder (FINE) for Homogeneous Flows0
From PINNs to PIKANs: Recent Advances in Physics-Informed Machine Learning0
Further Exploration of Precise Binding Energies from Physics Informed Machine Learning and the Development of a Practical Ensemble Model0
Generalizable and Fast Surrogates: Model Predictive Control of Articulated Soft Robots using Physics-Informed Neural Networks0
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