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.
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