CoNBONet: Conformalized Neuroscience-inspired Bayesian Operator Network for Reliability Analysis

arXiv stat.ML / 3/24/2026

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Key Points

  • The paper introduces CoNBONet, a neuroscience-inspired Bayesian operator network aimed at accelerating time-dependent reliability analysis for nonlinear dynamical systems under stochastic excitation.
  • It targets the computational bottlenecks of approaches like Monte Carlo simulation by using a fast surrogate model that avoids repeated runs of expensive numerical solvers.
  • CoNBONet provides uncertainty-aware predictions with calibrated uncertainty quantification using split conformal prediction and claims theoretical guarantees for coverage.
  • The method is positioned as more scalable for high-dimensional, time-dependent problems than common surrogate techniques such as Gaussian processes, polynomial chaos expansions, and support vector regression.
  • Validation across multiple nonlinear dynamical systems reports preserved predictive fidelity and reliable coverage of failure probabilities, supporting its use for robust and scalable engineering design reliability analysis.

Abstract

Time-dependent reliability analysis of nonlinear dynamical systems under stochastic excitations is a critical yet computationally demanding task. Conventional approaches, such as Monte Carlo simulation, necessitate repeated evaluations of computationally expensive numerical solvers, leading to significant computational bottlenecks. To address this challenge, we propose \textit{CoNBONet}, a neuroscience-inspired surrogate model that enables fast, energy-efficient, and uncertainty-aware reliability analysis, providing a scalable alternative to techniques such as Monte Carlo simulations. CoNBONet, short for \textbf{Co}nformalized \textbf{N}euroscience-inspired \textbf{B}ayesian \textbf{O}perator \textbf{Net}work, leverages the expressive power of deep operator networks while integrating neuroscience-inspired neuron models to achieve fast, low-power inference. Unlike traditional surrogates such as Gaussian processes, polynomial chaos expansions, or support vector regression, that may face scalability challenges for high-dimensional, time-dependent reliability problems, CoNBONet offers \textit{fast and energy-efficient inference} enabled by a neuroscience-inspired network architecture, \textit{calibrated uncertainty quantification with theoretical guarantees} via split conformal prediction, and \textit{strong generalization capability} through an operator-learning paradigm that maps input functions to system response trajectories. Validation of the proposed CoNBONet for various nonlinear dynamical systems demonstrates that CoNBONet preserves predictive fidelity, and achieves reliable coverage of failure probabilities, making it a powerful tool for robust and scalable reliability analysis in engineering design.