COMP-PHLGMar 23

SPINONet: Scalable Spiking Physics-informed Neural Operator for Computational Mechanics Applications

arXiv:2603.2167494.21 citationsh-index: 9
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This addresses energy efficiency for deploying physics-informed models in power-constrained settings like edge devices, though it is incremental as it builds on existing operator learning approaches.

The paper tackles the energy inefficiency of physics-informed operator learning models in computational mechanics by introducing SPINONet, a neuroscience-inspired framework that uses spiking neurons for sparse, event-driven computation, achieving predictive performance comparable to conventional methods while reducing computational load and energy consumption.

Energy efficiency remains a critical challenge in deploying physics-informed operator learning models for computational mechanics and scientific computing, particularly in power-constrained settings such as edge and embedded devices, where repeated operator evaluations in dense networks incur substantial computational and energy costs. To address this challenge, we introduce the Separable Physics-informed Neuroscience-inspired Operator Network (SPINONet), a neuroscience-inspired framework that reduces redundant computation across repeated evaluations while remaining compatible with physics-informed training. SPINONet incorporates regression-friendly neuroscience-inspired spiking neurons through an architecture-aware design that enables sparse, event-driven computation, improving energy efficiency while preserving the continuous, coordinate-differentiable pathways required for computing spatio-temporal derivatives. We evaluate SPINONet on a range of partial differential equations representative of computational mechanics problems, with spatial, temporal, and parametric dependencies in both time-dependent and steady-state settings, and demonstrate predictive performance comparable to conventional physics-informed operator learning approaches despite the induced sparse communication. In addition, limited data supervision in a hybrid setup is shown to improve performance in challenging regimes where purely physics-informed training may converge to spurious solutions. Finally, we provide an analytical discussion linking architectural components and design choices of SPINONet to reductions in computational load and energy consumption.

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