Soft Partition-based KAPI-ELM for Multi-Scale PDEs
- URL: http://arxiv.org/abs/2601.08719v1
- Date: Tue, 13 Jan 2026 16:43:38 GMT
- Title: Soft Partition-based KAPI-ELM for Multi-Scale PDEs
- Authors: Vikas Dwivedi, Monica Sigovan, Bruno Sixou,
- Abstract summary: This work introduces a soft partition-based Kernel-Adaptive Physics-Informed Extreme Learning Machine.<n>A signed-distance-based weighting stabilizes least-squares learning on irregular frequencies.<n>Although demonstrated on steady linear PDEs, the results show that soft-partition kernel adaptation provides a fast, architecture-free approach for multiscale PDEs.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Physics-informed machine learning holds great promise for solving differential equations, yet existing methods struggle with highly oscillatory, multiscale, or singularly perturbed PDEs due to spectral bias, costly backpropagation, and manually tuned kernel or Fourier frequencies. This work introduces a soft partition--based Kernel-Adaptive Physics-Informed Extreme Learning Machine (KAPI-ELM), a deterministic low-dimensional parameterization in which smooth partition lengths jointly control collocation centers and Gaussian kernel widths, enabling continuous coarse-to-fine resolution without Fourier features, random sampling, or hard domain interfaces. A signed-distance-based weighting further stabilizes least-squares learning on irregular geometries. Across eight benchmarks--including oscillatory ODEs, high-frequency Poisson equations, irregular-shaped domains, and stiff singularly perturbed convection-diffusion problems-the proposed method matches or exceeds the accuracy of state-of-the-art Physics-Informed Neural Network (PINN) and Theory of Functional Connections (TFC) variants while using only a single linear solve. Although demonstrated on steady linear PDEs, the results show that soft-partition kernel adaptation provides a fast, architecture-free approach for multiscale PDEs with broad potential for future physics-informed modeling. For reproducibility, the reference codes are available at https://github.com/vikas-dwivedi-2022/soft_kapi
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