Event-driven physics-informed operator learning for reliability analysis
Shailesh Garg, Souvik Chakraborty

TL;DR
NeuroPOL is a novel neuroscience-inspired physics-informed operator learning framework that uses event-driven spiking neurons to create energy-efficient, scalable surrogates for reliability analysis of complex engineering systems.
Contribution
It introduces the first neuroscience-inspired, energy-efficient physics-informed operator learning framework for reliability analysis, incorporating variable spiking neurons to reduce computational load.
Findings
Achieves accuracy comparable to standard physics-informed operators.
Significantly reduces communication and energy consumption.
Supports real-time reliability assessment on edge devices.
Abstract
Reliability analysis of engineering systems under uncertainty poses significant computational challenges, particularly for problems involving high-dimensional stochastic inputs, nonlinear system responses, and multiphysics couplings. Traditional surrogate modeling approaches often incur high energy consumption, which severely limits their scalability and deployability in resource-constrained environments. We introduce NeuroPOL, \textit{the first neuroscience-inspired physics-informed operator learning framework} for reliability analysis. NeuroPOL incorporates Variable Spiking Neurons into a physics-informed operator architecture, replacing continuous activations with event-driven spiking dynamics. This innovation promotes sparse communication, significantly reduces computational load, and enables an energy-efficient surrogate model. The proposed framework lowers both computational and…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Model Reduction and Neural Networks · Adversarial Robustness in Machine Learning
