Kernel-Adaptive PI-ELMs for Forward and Inverse Problems in PDEs with Sharp Gradients
Vikas Dwivedi, Balaji Srinivasan, Monica Sigovan, Bruno Sixou

TL;DR
The paper introduces KAPI-ELM, a kernel-adaptive physics-informed machine learning method that effectively solves PDEs with sharp gradients by Bayesian hyperparameter optimization, outperforming existing methods in accuracy and efficiency.
Contribution
It proposes KAPI-ELM, a novel adaptive framework that refines kernel parameters in PDE problems with sharp gradients, enhancing solution accuracy and robustness over prior non-adaptive PI-ELMs.
Findings
Accurately resolves steep layers in benchmark PDE problems.
Improves solution fidelity in smooth regimes by kernel tuning.
Successfully solves nonlinear Navier-Stokes equations with stability.
Abstract
Physics-informed machine learning frameworks such as Physics-Informed Neural Networks (PINNs) and Physics-Informed Extreme Learning Machines (PI-ELMs) have shown great promise for solving partial differential equations (PDEs) but struggle with localized sharp gradients and singularly perturbed regimes, PINNs due to spectral bias and PI-ELMs due to their single-shot, non-adaptive formulation. We propose the Kernel-Adaptive Physics-Informed Extreme Learning Machine (KAPI-ELM), which performs Bayesian optimization over a low-dimensional, physically interpretable hyperparameter space governing the distribution of Radial Basis Function (RBF) centers and widths. This converts high-dimensional weight optimization into a low-dimensional distributional search, enabling targeted kernel refinement in regions with sharp gradients while also improving baseline solutions in smooth-flow regimes by…
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Taxonomy
TopicsNumerical methods in inverse problems · Radiative Heat Transfer Studies · Differential Equations and Numerical Methods
