A comparative study for adaptive surrogate-model-based reliability evaluation method of automobile components

IF 3.5 Q1 ENGINEERING, MULTIDISCIPLINARY International Journal of Structural Integrity Pub Date : 2023-05-23 DOI:10.1108/ijsi-03-2023-0020
S. Yang, Debiao Meng, Hongtao Wang, Zhipeng Chen, Bing Xu
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引用次数: 5

Abstract

PurposeThis study conducts a comparative study on the performance of reliability assessment methods based on adaptive surrogate models to accurately assess the reliability of automobile components, which is critical to the safe operation of vehicles.Design/methodology/approachIn this study, different adaptive learning strategies and surrogate models are combined to study their performance in reliability assessment of automobile components.FindingsBy comparing the reliability evaluation problems of four automobile components, the Kriging model and Polynomial Chaos-Kriging (PCK) have better robustness. Considering the trade-off between accuracy and efficiency, PCK is optimal. The Constrained Min-Max (CMM) learning function only depends on sample information, so it is suitable for most surrogate models. In the four calculation examples, the performance of the combination of CMM and PCK is relatively good. Thus, it is recommended for reliability evaluation problems of automobile components.Originality/valueAlthough a lot of research has been conducted on adaptive surrogate-model-based reliability evaluation method, there are still relatively few studies on the comprehensive application of this method to the reliability evaluation of automobile component. In this study, different adaptive learning strategies and surrogate models are combined to study their performance in reliability assessment of automobile components. Specially, a superior surrogate-model-based reliability evaluation method combination is illustrated in this study, which is instructive for adaptive surrogate-model-based reliability analysis in the reliability evaluation problem of automobile components.
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基于自适应代理模型的汽车零部件可靠性评价方法的比较研究
目的本研究对基于自适应代理模型的可靠性评估方法的性能进行了比较研究,以准确评估对车辆安全运行至关重要的汽车零部件的可靠性。设计/方法/方法在本研究中,将不同的自适应学习策略和代理模型相结合,研究它们在汽车零部件可靠性评估中的性能。通过对四种汽车零部件的可靠性评估问题进行比较,克里格模型和多项式混沌克里格(PCK)具有较好的鲁棒性。考虑到精度和效率之间的权衡,PCK是最优的。约束最小-最大(CMM)学习函数只依赖于样本信息,因此它适用于大多数代理模型。在四个计算实例中,CMM与PCK相结合的计算性能相对较好。因此,建议对汽车零部件的可靠性评估问题进行研究。原创性/价值尽管基于自适应代理模型的可靠性评估方法已经进行了大量的研究,但将该方法综合应用于汽车零部件可靠性评估的研究仍然相对较少。本研究将不同的自适应学习策略和代理模型相结合,研究它们在汽车零部件可靠性评估中的性能。特别是,本文阐述了一种基于高级代理模型的可靠性评估方法组合,对汽车零部件可靠性评估问题中基于自适应代理模型的可靠度分析具有指导意义。
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来源期刊
International Journal of Structural Integrity
International Journal of Structural Integrity ENGINEERING, MULTIDISCIPLINARY-
CiteScore
5.40
自引率
14.80%
发文量
42
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