A two-level Kriging-based approach with active learning for solving time-variant risk optimization problems

07/08/2020
by   H. M. Kroetz, et al.
0

Several methods have been proposed in the literature to solve reliability-based optimization problems, where failure probabilities are design constraints. However, few methods address the problem of life-cycle cost or risk optimization, where failure probabilities are part of the objective function. Moreover, few papers in the literature address time-variant reliability problems in life-cycle cost or risk optimization formulations; in particular, because most often computationally expensive Monte Carlo simulation is required. This paper proposes a numerical framework for solving general risk optimization problems involving time-variant reliability analysis. To alleviate the computational burden of Monte Carlo simulation, two adaptive coupled surrogate models are used: the first one to approximate the objective function, and the second one to approximate the quasi-static limit state function. An iterative procedure is implemented for choosing additional support points to increase the accuracy of the surrogate models. Three application problems are used to illustrate the proposed approach. Two examples involve random load and random resistance degradation processes. The third problem is related to load-path dependent failures. This subject had not yet been addressed in the context of risk-based optimization. It is shown herein that accurate solutions are obtained, with extremely limited numbers of objective function and limit state functions calls.

READ FULL TEXT
research
04/14/2023

CSP-free adaptive Kriging surrogate model method for reliability analysis with small failure probability

In the field of reliability engineering, the Active learning reliability...
research
02/06/2020

Value of Information Analysis via Active Learning and Knowledge Sharing in Error-Controlled Adaptive Kriging

Large uncertainties in many phenomena of interest have challenged the re...
research
11/18/2020

Adaptive modeling strategy for constrained global optimization with application to aerodynamic wing design

Surrogate models are often used to reduce the cost of design optimizatio...
research
04/19/2011

Reliability-based design optimization using kriging surrogates and subset simulation

The aim of the present paper is to develop a strategy for solving reliab...
research
08/28/2019

Machine-learning techniques for the optimal design of acoustic metamaterials

Recently, an increasing research effort has been dedicated to analyse th...
research
01/13/2021

Certifiable Risk-Based Engineering Design Optimization

Reliable, risk-averse design of complex engineering systems with optimiz...
research
04/25/2019

Threshold shift method for reliability-based design optimization

We present a novel approach, referred to as the 'threshold shift method'...

Please sign up or login with your details

Forgot password? Click here to reset