Bayesian updating and model class selection with Subset Simulation
F.A. DiazDelaO, A. Garbuno-Inigo, S.K. Au, I. Yoshida

TL;DR
This paper introduces a revised Bayesian updating method called BUS, leveraging Subset Simulation for efficient model parameter inference and model selection, especially in complex systems with many uncertain parameters.
Contribution
It provides a new formulation of BUS that removes the need for choosing a multiplier, enhancing the robustness and practicality of Bayesian updating using Subset Simulation.
Findings
Revised BUS formulation eliminates the need for a multiplier.
Demonstrated efficiency of BUS in complex model parameter estimation.
Validated approach through illustrative examples.
Abstract
Identifying the parameters of a model and rating competitive models based on measured data has been among the most important but challenging topics in modern science and engineering, with great potential of application in structural system identification, updating and development of high fidelity models. These problems in principle can be tackled using a Bayesian probabilistic approach, where the parameters to be identified are treated as uncertain and their inference information are given in terms of their posterior (i.e., given data) probability distribution. For complex models encountered in applications, efficient computational tools robust to the number of uncertain parameters in the problem are required for computing the posterior statistics, which can generally be formulated as a multi-dimensional integral over the space of the uncertain parameters. Subset Simulation (SuS) has…
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