Abstract
This work proposes a novel methodology to fulfil the challenging expectation in stochastic model updating to calibrate the probabilistic distributions of parameters without any assumption about the distribution formats. To achieve this task, an approximate Bayesian computation model updating framework is developed by employing staircase random variables and the Bhattacharyya distance. In this framework, parameters with aleatory and epistemic uncertainties are described by staircase random variables. The discrepancy between model predictions and observations is then quantified by the Bhattacharyya distance-based approximate likelihood. In addition, a Bayesian updating using the Euclidian distance is performed as preconditioner to avoid non-unique solutions. The performance of the proposed procedure is demonstrated with two exemplary applications, a simulated shear building model example and a challenging benchmark problem for uncertainty treatment. These examples demonstrate feasibility of the combined application of staircase random variables and the Bhattacharyya distance in stochastic model updating and uncertainty characterization.
Original language | English |
---|---|
Article number | 108195 |
Number of pages | 17 |
Journal | Mechanical Systems and Signal Processing |
Volume | 163 |
Early online date | 13 Jul 2021 |
DOIs | |
Publication status | Published - 15 Jan 2022 |
Keywords
- approximate Bayesian computation
- Bhattacharyya distance
- nonparametric probability-box
- staircase random variable
- stochastic model updating