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Physics-informed machine learning

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

Papers

Showing 151192 of 192 papers

TitleStatusHype
Physics-informed neural networks for pathloss prediction0
Multi-scale Digital Twin: Developing a fast and physics-informed surrogate model for groundwater contamination with uncertain climate models0
Physics Informed Machine Learning for Chemistry Tabulation0
Valuation of Public Bus Electrification with Open Data0
How important are activation functions in regression and classification? A survey, performance comparison, and future directions0
Physics-informed Machine Learning of Parameterized Fundamental Diagrams0
Neural modal ordinary differential equations: Integrating physics-based modeling with neural ordinary differential equations for modeling high-dimensional monitored structuresCode0
Physics-informed machine learning for Structural Health Monitoring0
Noise-aware Physics-informed Machine Learning for Robust PDE DiscoveryCode0
Residual-based physics-informed transfer learning: A hybrid method for accelerating long-term CFD simulations via deep learning0
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
AdjointNet: Constraining machine learning models with physics-based codes0
Physics-Informed Machine Learning Method for Large-Scale Data Assimilation ProblemsCode0
Grey-box models for wave loading prediction0
Numerical Gaussian process Kalman filtering for spatiotemporal systems0
Applying physics-based loss functions to neural networks for improved generalizability in mechanics problems0
Discovering nonlinear resonances through physics-informed machine learning0
Enhancing predictive skills in physically-consistent way: Physics Informed Machine Learning for Hydrological Processes0
NETWORK COMPRESSION FOR MACHINE-LEARNT FLUID SIMULATIONS0
A Physics-Informed Machine Learning Model for Porosity Analysis in Laser Powder Bed Fusion Additive Manufacturing0
AutoMat: Accelerated Computational Electrochemical systems Discovery0
A Physics-Informed Machine Learning Approach for Solving Heat Transfer Equation in Advanced Manufacturing and Engineering Applications0
QRnet: optimal regulator design with LQR-augmented neural networks0
Physics-informed machine learning for the COVID-19 pandemic: Adherence to social distancing and short-term predictions for eight countriesCode0
Physics-Informed Deep Neural Networks for Transient Electromagnetic AnalysisCode0
Universal Battery Performance and Degradation Model for Electric Aircraft0
Physics-informed machine learning for sensor fault detection with flight test data0
Data-driven Optimal Power Flow: A Physics-Informed Machine Learning Approach0
Physics-informed machine learning for composition-process-property alloy design: shape memory alloy demonstration0
Learning ergodic averages in chaotic systems0
Tensor Basis Gaussian Process Models of Hyperelastic Materials0
Physics-Informed Machine Learning Models for Predicting the Progress of Reactive-Mixing0
Prediction of Reynolds Stresses in High-Mach-Number Turbulent Boundary Layers using Physics-Informed Machine Learning0
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