Uncertainty quantification for noisy inputs-outputs in physics-informed neural networks and neural operators
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Publication:6663284
DOI10.1016/j.cma.2024.117479MaRDI QIDQ6663284
Zongren Zou, George Em. Karniadakis, Xuhui Meng
Publication date: 14 January 2025
Published in: Computer Methods in Applied Mechanics and Engineering (Search for Journal in Brave)
Bayesian inferenceuncertainty quantificationneural operatorsPINNsnoisy inputs-outputssynergistic learning
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