An efficient importance sampling approach for reliability analysis of time-variant structures subject to time-dependent stochastic load

authored by
Xiukai Yuan, Shaolong Liu, Matthias Faes, Marcos A. Valdebenito, Michael Beer
Abstract

Structural performance is affected by deterioration processes and external loads. Both effects may change over time, posing a challenge for conducting reliability analysis. In such context, this contribution aims at assessing the reliability of structures where some of its parameters are modeled as random variables, possibly including deterioration processes, and which are subjected to stochastic load processes. The approach is developed within the framework of importance sampling and it is based on the concept of composite limit states, where the time-dependent reliability problem is transformed into a series system with multiple performance functions. Then, an efficient two-step importance sampling density function is proposed, which splits time-invariant parameters (random variables) from the time-variant ones (stochastic processes). This importance sampling scheme is geared towards a particular class of problems, where the performance of the structural system exhibits a linear dependency with respect to the stochastic load for fixed time. This allows calculating the reliability associated with the series system most efficiently. Practical examples illustrate the performance of the proposed approach.

Organisation(s)
Institute for Risk and Reliability
External Organisation(s)
Xiamen University
KU Leuven
Universidad Adolfo Ibanez
University of Liverpool
Tongji University
Type
Article
Journal
Mechanical Systems and Signal Processing
Volume
159
ISSN
0888-3270
Publication date
10.2021
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Control and Systems Engineering, Signal Processing, Civil and Structural Engineering, Aerospace Engineering, Mechanical Engineering, Computer Science Applications
Electronic version(s)
https://lirias.kuleuven.be/handle/123456789/668966 (Access: Open)
https://doi.org/10.1016/j.ymssp.2021.107699 (Access: Closed)