REAK: Reliability analysis through Error rate-based Adaptive Kriging

02/04/2020
by   Zeyu Wang, et al.
0

As models in various fields are becoming more complex, associated computational demands have been increasing significantly. Reliability analysis for these systems when failure probabilities are small is significantly challenging, requiring a large number of costly simulations. To address this challenge, this paper introduces Reliability analysis through Error rate-based Adaptive Kriging (REAK). An extension of the Central Limit Theorem based on Lindeberg condition is adopted here to derive the distribution of the number of design samples with wrong sign estimate and subsequently determine the maximum error rate for failure probability estimates. This error rate enables optimal establishment of effective sampling regions at each stage of an adaptive scheme for strategic generation of design samples. Moreover, it facilitates setting a target accuracy for failure probability estimation, which is used as stopping criterion for reliability analysis. These capabilities together can significantly reduce the number of calls to sophisticated, computationally demanding models. The application of REAK for four examples with varying extent of nonlinearity and dimension is presented. Results indicate that REAK is able to reduce the computational demand by as high as 50 state-of-the-art methods of Adaptive Kriging with Monte Carlo Simulation (AK-MCS) and Improved Sequential Kriging Reliability Analysis (ISKRA).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/30/2020

Variance based sensitivity analysis for Monte Carlo and importance sampling reliability assessment with Gaussian processes

Running a reliability analysis on engineering problems involving complex...
research
05/10/2023

Generalized Stratified Sampling for Efficient Reliability Assessment of Structures Against Natural Hazards

Performance-based engineering for natural hazards facilitates the design...
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
09/11/2021

Adaptive network reliability analysis: Methodology and applications to power grid

Flow network models can capture the underlying physics and operational c...
research
07/15/2019

Reliability-Latency Performance of Frameless ALOHA with and without Feedback

This paper presents a finite length analysis of multi-slot type frameles...
research
04/11/2023

Failure Probability Estimation and Detection of Failure Surfaces via Adaptive Sequential Decomposition of the Design Domain

We propose an algorithm for an optimal adaptive selection of points from...
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...

Please sign up or login with your details

Forgot password? Click here to reset