High-dimensional reliability-based design optimization using stochastic emulators
M. Moustapha, B. Sudret

TL;DR
This paper introduces a new high-dimensional RBDO framework using stochastic emulators that directly model system response distributions, significantly reducing computational costs compared to traditional methods.
Contribution
It develops a novel stochastic emulator-based RBDO approach that simplifies the optimization process and enhances efficiency in high-dimensional problems.
Findings
The method outperforms Kriging in high-dimensional settings.
It enables semi-analytical failure probability evaluation.
The approach reduces computational costs substantially.
Abstract
Reliability-based design optimization (RBDO) is traditionally formulated as a nested optimization and reliability problem. Although surrogate models are generally employed to improve efficiency, the approach remains computationally prohibitive in high-dimensional settings. This paper proposes a novel RBDO framework based on a stochastic simulator viewpoint, in which the deterministic limit-state function and the uncertainty in the model inputs are combined into a unified stochastic representation. Under this formulation, the system response conditioned on a given design is modeled directly through its output distribution, rather than through an explicit limit-state function. Stochastic emulators are constructed in the design space to approximate the conditional response distribution, enabling the semi-analytical evaluation of failure probabilities or associated quantiles without…
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