Multi-Level Bayesian Calibration of a Multi-Component Dynamic System Model

Author:

Kapusuzoglu Berkcan1,Mahadevan Sankaran1,Matsumoto Shunsaku2,Miyagi Yoshitomo3,Watanabe Daigo2

Affiliation:

1. Vanderbilt University Department of Civil, and Environmental Engineering, , Nashville, TN 37235

2. Mitsubishi Heavy Industries, Ltd. Strength Research Department, Research and Innovation Center, , Nagasaki 851-0392 , Japan

3. Mitsubishi Heavy Industries, Ltd. Strength Research Department, Research and Innovation Center, , Takasago 676-8686 , Japan

Abstract

Abstract This paper proposes a multi-level Bayesian calibration approach that fuses information from heterogeneous sources and accounts for uncertainties in modeling and measurements for time-dependent multi-component systems. The developed methodology has two elements: quantifying the uncertainty at component and system levels, by fusing all available information, and corrected model prediction. A multi-level Bayesian calibration approach is developed to estimate component-level and system-level parameters using measurement data that are obtained at different time instances for different system components. Such heterogeneous data are consumed in a sequential manner, and an iterative strategy is developed to calibrate the parameters at the two levels. This calibration strategy is implemented for two scenarios: offline and online. The offline calibration uses data that is collected over all the time-steps, whereas online calibration is performed in real-time as new measurements are obtained at each time-step. Analysis models and observation data for the thermo-mechanical behavior of gas turbine engine rotor blades are used to analyze the effectiveness of the proposed approach.

Publisher

ASME International

Subject

Industrial and Manufacturing Engineering,Computer Graphics and Computer-Aided Design,Computer Science Applications,Software

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