PINNs fail on spurious solutions admitted by the residual loss; adaptive pseudo-time stepping with Jacobian-based step selection improves accuracy and robustness on PDE benchmarks.
Self-adaptive physics-informed neural networks using a soft attention mechanism
5 Pith papers cite this work. Polarity classification is still indexing.
citation-role summary
citation-polarity summary
roles
background 2polarities
background 2representative citing papers
A PINN with learnable loss balancing and transfer learning predicts heat transfer in miniature heat sinks to under 8% error using only 87 data points, outperforming standard baselines.
A diffusion-enhanced version of the NSCH-Oldroyd system is locally well-posed, with PINN numerics confirming energy decay for representative thrombus models.
Introduces Laplace-approximated Bayesian PINNs for automatic loss-weight optimization when solving PDEs such as heat, wave, and Burgers equations.
A systematic review of Kolmogorov-Arnold Networks that maps their relation to Kolmogorov superposition theory, MLPs, and kernels, examines basis-function design choices, summarizes performance advances, and supplies a practitioner's selection guide plus open challenges.
citing papers explorer
-
When PINNs Go Wrong: Pseudo-Time Stepping Against Spurious Solutions
PINNs fail on spurious solutions admitted by the residual loss; adaptive pseudo-time stepping with Jacobian-based step selection improves accuracy and robustness on PDE benchmarks.
-
Physics-Informed Neural Networks with Learnable Loss Balancing and Transfer Learning
A PINN with learnable loss balancing and transfer learning predicts heat transfer in miniature heat sinks to under 8% error using only 87 data points, outperforming standard baselines.
-
Local Well-Posedness of a Modified NSCH-Oldroyd System: PINN-Based Numerical Computation
A diffusion-enhanced version of the NSCH-Oldroyd system is locally well-posed, with PINN numerics confirming energy decay for representative thrombus models.
-
Bayesian Reasoning for Physics Informed Neural Networks
Introduces Laplace-approximated Bayesian PINNs for automatic loss-weight optimization when solving PDEs such as heat, wave, and Burgers equations.
-
A Practitioner's Guide to Kolmogorov-Arnold Networks
A systematic review of Kolmogorov-Arnold Networks that maps their relation to Kolmogorov superposition theory, MLPs, and kernels, examines basis-function design choices, summarizes performance advances, and supplies a practitioner's selection guide plus open challenges.