A Multi-Performance Reliability Evaluation Approach Based on the Surrogate Model with Cluster Mixing Weight

被引:0
作者
Fan, Xiaoduo [1 ]
Wang, Jiantai [1 ]
Zhang, Jianguo [1 ]
Ni, Ziqi [1 ]
机构
[1] Beihang Univ, Sch Reliabil & Syst Engn, Beijing 100191, Peoples R China
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 13期
关键词
multi-performance reliability; cluster surrogate model; mixing weight importance sampling; learning function; EXPANSION; NETWORK;
D O I
10.3390/app14135813
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Kriging surrogate model has extracted extensive attention in reliability evaluation, owing to its excellent applicability and operability nowadays, which confronts with difficulties in balancing the efficiency and accuracy for complicated mechanical assets with multiple failure modes. Consequently, this paper devises a multi-performance reliability analysis approach within the surrogate model framework, particularly innovative in its use of cluster mixing weight. Specifically, high-value test points are selected to fit the surrogate model after sorting the samples referring to the corresponding values; then, a cluster-based active learning strategy is employed to accomplish rapid convergence, and the particle swarm algorithm is utilized to optimize relevant parameters. Afterwards, the mixing weight for every performance referring to the contributions to the final reliability is determined, and the failure probability is subsequently predicted. Furthermore, the superiority of the proposed approach with the clustering surrogate model and mixing weight, compared with traditional sampling as well as other surrogate models, has been verified via case studies, contributing to overcoming the multi-performance reliability analysis oriented to complicated mechanical assets.
引用
收藏
页数:15
相关论文
共 41 条
[1]   Machine learning-based methods in structural reliability analysis: A review [J].
Afshari, Sajad Saraygord ;
Enayatollahi, Fatemeh ;
Xu, Xiangyang ;
Liang, Xihui .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2022, 219
[2]   NP-hardness of Euclidean sum-of-squares clustering [J].
Aloise, Daniel ;
Deshpande, Amit ;
Hansen, Pierre ;
Popat, Preyas .
MACHINE LEARNING, 2009, 75 (02) :245-248
[3]   Efficient Global Reliability Analysis for Nonlinear Implicit Performance Functions [J].
Bichon, B. J. ;
Eldred, M. S. ;
Swiler, L. P. ;
Mahadevan, S. ;
McFarland, J. M. .
AIAA JOURNAL, 2008, 46 (10) :2459-2468
[4]   Response surface methodology: A review on its applications and challenges in microbial cultures [J].
Breig, Sura Jasem Mohammed ;
Luti, Khalid Jaber Kadhum .
MATERIALS TODAY-PROCEEDINGS, 2021, 42 :2277-2284
[5]   Fast convergence strategy for adaptive structural reliability analysis based on kriging believer criterion and importance sampling [J].
Chen, Zequan ;
He, Jialong ;
Li, Guofa ;
Yang, Zhaojun ;
Wang, Tianzhe ;
Du, Xuejiao .
RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 242
[6]   AK-MCS: An active learning reliability method combining Kriging and Monte Carlo Simulation [J].
Echard, B. ;
Gayton, N. ;
Lemaire, M. .
STRUCTURAL SAFETY, 2011, 33 (02) :145-154
[7]   Reliability Analysis of Cyber-Physical Energy Hubs: A Monte Carlo Approach [J].
Faraji, Jamal ;
Aslani, Mehrdad ;
Hashemi-Dezaki, Hamed ;
Ketabi, Abbas ;
De Greve, Zacharie ;
Vallee, Francois .
IEEE TRANSACTIONS ON SMART GRID, 2024, 15 (01) :848-862
[8]   Physical informed neural network for thermo-hydral analysis of fire-loaded concrete [J].
Gao, Zhiran ;
Fu, Zhuojia ;
Wen, Minjie ;
Guo, Yuan ;
Zhang, Yiming .
ENGINEERING ANALYSIS WITH BOUNDARY ELEMENTS, 2024, 158 :252-261
[9]  
Gong Y., 2024, Acta Aeronaut. Astronaut. Sin, V45, P428982
[10]   Deep transfer network with joint distribution adaptation: A new intelligent fault diagnosis framework for industry application [J].
Han, Te ;
Liu, Chao ;
Yang, Wenguang ;
Jiang, Dongxiang .
ISA TRANSACTIONS, 2020, 97 :269-281