Publication detail

Active Learning for Efficient Rare Event Probability Estimation and Sensitivity Analyses in Highly Nonlinear Systems

VOŘECHOVSKÝ, M.

Original Title

Active Learning for Efficient Rare Event Probability Estimation and Sensitivity Analyses in Highly Nonlinear Systems

Type

conference paper

Language

English

Original Abstract

This paper presents a robust method for rare event probability estimation in highly nonlinear systems. Utilizing a nearest-neighbor approximation of the true performance function and an adaptively extended experimental design, we introduce a simple yet effective active learning function. This function dynamically balances global exploration and local exploitation through sequential adaptive selection of points from the input domain. The resulting surrogate model, refined based on distances, serves the dual purpose of estimating failure probability and selecting optimal candidates for further model evaluations. Our adaptive design supports accurate real-time estimation of failure probability and failure probability sensitivity to individual variables, especially in cases of non-smooth or highly nonlinear functions. Even in scenarios with smooth functions, our method outperforms existing approaches utilizing the function gradients in estimation accuracy for a given computational budget. The adaptively constructed surrogate model excels in handling intricate failure surfaces, multiple design points, and systems with bifurcations. This approach is particularly suitable for random vectors with small to moderate dimensions.

Keywords

Categorical limit state function; Failure surface refinement; Nearest neighbor surrogate model; Importance sampling; Global sensitivity

Authors

VOŘECHOVSKÝ, M.

Released

1. 5. 2024

Publisher

SPRINGER INTERNATIONAL PUBLISHING AG

Location

CHAM

ISBN

978-3-031-60271-9

Book

Lecture Notes in Civil Engineering

ISBN

2366-2557

Periodical

Lecture Notes in Civil Engineering

Year of study

494

State

Swiss Confederation

Pages from

324

Pages to

333

Pages count

10

BibTex

@inproceedings{BUT194145,
  author="Miroslav {Vořechovský}",
  title="Active Learning for Efficient Rare Event Probability Estimation and Sensitivity Analyses in Highly Nonlinear Systems",
  booktitle="Lecture Notes in Civil Engineering",
  year="2024",
  journal="Lecture Notes in Civil Engineering",
  volume="494",
  pages="324--333",
  publisher="SPRINGER INTERNATIONAL PUBLISHING AG",
  address="CHAM",
  doi="10.1007/978-3-031-60271-9\{_}30",
  isbn="978-3-031-60271-9",
  issn="2366-2557"
}

Responsibility: Ing. Marek Strakoš