Adaptive Reliability Analysis for Multi-fidelity Models using a Collective Learning Strategy
Chi Zhang, Chaolin Song, Abdollah Shafieezadeh

TL;DR
This paper introduces an adaptive multi-fidelity Gaussian process method with a collective learning function for efficient and accurate reliability analysis across multiple model fidelities, reducing computational costs.
Contribution
It proposes a novel collective learning function that simultaneously selects training points and information sources, enhancing multi-fidelity reliability analysis efficiency.
Findings
Achieves comparable or higher accuracy than existing methods.
Reduces computational costs in reliability analysis.
Demonstrated on engineering and mathematical examples.
Abstract
In many fields of science and engineering, models with different fidelities are available. Physical experiments or detailed simulations that accurately capture the behavior of the system are regarded as high-fidelity models with low model uncertainty, however, they are expensive to run. On the other hand, simplified physical experiments or numerical models are seen as low-fidelity models that are cheaper to evaluate. Although low-fidelity models are often not suitable for direct use in reliability analysis due to their low accuracy, they can offer information about the trend of the high-fidelity model thus providing the opportunity to explore the design space at a low cost. This study presents a new approach called adaptive multi-fidelity Gaussian process for reliability analysis (AMGPRA). Contrary to selecting training points and information sources in two separate stages as done in…
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Taxonomy
MethodsGaussian Process
