Spectral Embedding via Chebyshev Bases for Robust DeepONet Approximation
Muhammad Abid, Omer San

TL;DR
This paper introduces SEDONet, a spectral-embedded DeepONet variant using Chebyshev bases, which significantly improves the approximation of PDE operators on bounded domains by capturing non-periodic features more effectively.
Contribution
The paper proposes SEDONet, a novel spectral embedding approach for DeepONet that enhances its ability to model non-periodic PDE features on bounded domains.
Findings
SEDONet achieves 30-40% lower relative L2 errors than baseline DeepONet.
Spectral analysis shows improved high-frequency and boundary feature preservation.
SEDONet outperforms Fourier-embedded variants on non-periodic geometries.
Abstract
Deep Operator Networks (DeepONets) have become a central tool in data-driven operator learning, providing flexible surrogates for nonlinear mappings arising in partial differential equations (PDEs). However, the standard trunk design based on fully connected layers acting on raw spatial or spatiotemporal coordinates struggles to represent sharp gradients, boundary layers, and non-periodic structures commonly found in PDEs posed on bounded domains with Dirichlet or Neumann boundary conditions. To address these limitations, we introduce the Spectral-Embedded DeepONet (SEDONet), a new DeepONet variant in which the trunk is driven by a fixed Chebyshev spectral dictionary rather than coordinate inputs. This non-periodic spectral embedding provides a principled inductive bias tailored to bounded domains, enabling the learned operator to capture fine-scale non-periodic features that are…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Reservoir Computing · Nonlinear Dynamics and Pattern Formation
