A double-loop adaptive relevant vector machine combined with Harris Hawks optimization-based importance sampling

IF 1.5 4区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Engineering Computations Pub Date : 2024-05-02 DOI:10.1108/ec-10-2023-0672
Xin Fan, Yongshou Liu, Zongyi Gu, Qin Yao
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引用次数: 0

Abstract

Purpose

Ensuring the safety of structures is important. However, when a structure possesses both an implicit performance function and an extremely small failure probability, traditional methods struggle to conduct a reliability analysis. Therefore, this paper proposes a reliability analysis method aimed at enhancing the efficiency of rare event analysis, using the widely recognized Relevant Vector Machine (RVM).

Design/methodology/approach

Drawing from the principles of importance sampling (IS), this paper employs Harris Hawks Optimization (HHO) to ascertain the optimal design point. This approach not only guarantees precision but also facilitates the RVM in approximating the limit state surface. When the U learning function, designed for Kriging, is applied to RVM, it results in sample clustering in the design of experiment (DoE). Therefore, this paper proposes a FU learning function, which is more suitable for RVM.

Findings

Three numerical examples and two engineering problem demonstrate the effectiveness of the proposed method.

Originality/value

By employing the HHO algorithm, this paper innovatively applies RVM in IS reliability analysis, proposing a novel method termed RVM-HIS. The RVM-HIS demonstrates exceptional computational efficiency, making it eminently suitable for rare events reliability analysis with implicit performance function. Moreover, the computational efficiency of RVM-HIS has been significantly enhanced through the improvement of the U learning function.

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双环自适应相关向量机与基于哈里斯-霍克斯优化的重要性采样相结合
目的确保结构的安全性非常重要。然而,当结构同时具有隐含的性能函数和极小的失效概率时,传统方法很难进行可靠性分析。因此,本文提出了一种可靠性分析方法,旨在利用广受认可的相关向量机(RVM)提高罕见事件分析的效率。设计/方法/途径本文借鉴重要性取样(IS)原理,采用哈里斯鹰优化(HHO)方法确定最佳设计点。这种方法不仅能保证精度,还能帮助 RVM 逼近极限状态面。当为克里金设计的 U 学习函数应用于 RVM 时,会导致实验设计(DoE)中的样本聚类。本文通过采用 HHO 算法,创新性地将 RVM 应用于 IS 可靠性分析,提出了一种称为 RVM-HIS 的新方法。RVM-HIS 具有极高的计算效率,非常适合隐含性能函数的罕见事件可靠性分析。此外,通过改进 U 学习函数,RVM-HIS 的计算效率也得到了显著提高。
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来源期刊
Engineering Computations
Engineering Computations 工程技术-工程:综合
CiteScore
3.40
自引率
6.20%
发文量
61
审稿时长
5 months
期刊介绍: The journal presents its readers with broad coverage across all branches of engineering and science of the latest development and application of new solution algorithms, innovative numerical methods and/or solution techniques directed at the utilization of computational methods in engineering analysis, engineering design and practice. For more information visit: http://www.emeraldgrouppublishing.com/ec.htm
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