将矩阵-操作径向基函数模型与矩阵-操作混合优化算法相结合的高维小失效概率问题主动学习方法

IF 4.8 2区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Xufeng Yang , Yu Zhang , Pengzhi Chen , Fan Yang
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引用次数: 0

摘要

针对小失效概率高维可靠性问题的计算难题,提出了一种基于矩阵-操作径向基函数模型和矩阵-操作混合优化算法的主动学习可靠性方法。该方法在替代极限状态面上搜索最可能的点,构造最优的仪器概率密度函数,生成候选样本。通过不断更新实验设计和重新训练矩阵运算径向基函数模型,代理极限状态面逐步逼近真实极限状态面。为了有效地识别高维空间中最可能的点,将基于矩阵的遗传算法与基于伴随梯度的顺序二次规划方法相结合,提出了一种矩阵-运算混合优化算法。基于矩阵的遗传算法利用矩阵运算显著缩短了全局搜索时间,而基于伴随梯度的序贯二次规划利用矩阵运算径向基函数模型预测的伴随梯度信息,减少了局部优化中梯度计算的计算成本。通过四个高维可靠性问题验证了该方法的有效性。与现有的各种高维可靠性分析方法相比,该方法具有较强的竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An active learning method for high-dimensional and small failure probability problems combining matrix-operation radial basis function model with matrix-operation hybrid optimization algorithm
To address the computational challenges in high-dimensional reliability problems with small failure probabilities, this paper proposes an active learning reliability method based on a matrix-operation radial basis function model and a matrix-operation hybrid optimization algorithm. The method searches for the most probable point on the surrogate limit state surface to construct an optimal instrumental probability density function and generate candidate samples. By continuously updating the design of experiments and retraining the matrix-operation radial basis function model, the surrogate limit state surface progressively approaches the true limit state surface. To efficiently identify the most probable point in high-dimensional space, a matrix-operation hybrid optimization algorithm is developed by integrating the matrix-based genetic algorithm with the adjoint gradient-based sequential quadratic programming method. The matrix-based genetic algorithm significantly reduces the global search time by leveraging matrix operations, while the adjoint gradient-based sequential quadratic programming leverages the adjoint gradient information of the matrix-operation radial basis function model predictions to reduce the computational cost of gradient evaluations in local optimization. The effectiveness of the proposed method is validated through four high-dimensional reliability problems. The proposed method demonstrates strong competitiveness compared to various existing high-dimensional reliability analysis approaches.
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来源期刊
Computers & Structures
Computers & Structures 工程技术-工程:土木
CiteScore
8.80
自引率
6.40%
发文量
122
审稿时长
33 days
期刊介绍: Computers & Structures publishes advances in the development and use of computational methods for the solution of problems in engineering and the sciences. The range of appropriate contributions is wide, and includes papers on establishing appropriate mathematical models and their numerical solution in all areas of mechanics. The journal also includes articles that present a substantial review of a field in the topics of the journal.
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