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首页> 外文期刊>Mathematical Problems in Engineering >A Kriging-Based Active Learning Algorithm for Mechanical Reliability Analysis with Time-Consuming and Nonlinear Response
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A Kriging-Based Active Learning Algorithm for Mechanical Reliability Analysis with Time-Consuming and Nonlinear Response

机译:基于Kriging的主动学习算法,具有耗时和非线性响应的机械可靠性分析

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摘要

When the reliability analysis of the mechanical products with high nonlinearity and time-consuming response is carried out, there will be the problems of low precision and huge computation using the traditional reliability methods. To solve these issues, the active learning reliability methods have been paid much attention in recent years. It is the key to choose an efficient learning function (such as U, EFF, and ERF). The aim of this study is to further decrease the computation and improve the accuracy of the reliability analysis. Inspired from these learning functions, a new point-selected learning function (called HPF) is proposed to update DOE, and a new point is sequentially added step by step to the DOE. The proposed learning function can consider the features like the sampling density, the probability to be wrongly predicted, and the local and global uncertainty close to the limit state. Based on the stochastic property of the Kriging model, the analytic expression of HPF is deduced by averaging a hybrid indicator throughout the real space. The efficiency of the proposed method is validated by two explicit examples. Finally, the proposed method is applied to the mechanical reliability analysis (involving time-consuming and nonlinear response). By comparing with traditional mechanical reliability methods, the results show that the proposed method can solve the problems of large computation and low precision.
机译:当进行高度非线性和耗时响应的机械产品的可靠性分析时,使用传统可靠性方法将存在低精度和巨大计算的问题。为解决这些问题,近年来,主动学习可靠性方法得到了很多关注。选择高效的学习功能(例如U,EFF和ERF)是关键。本研究的目的是进一步降低计算,提高可靠性分析的准确性。从这些学习功能的启发,提出了一种新的点选择学习功能(称为HPF)来更新DOE,并将新点逐步添加到DOE。所提出的学习功能可以考虑采样密度等特征,错误地预测的概率以及靠近极限状态的本地和全局不确定性。基于Kriging模型的随机性质,通过在整个真实空间中平均混合指示器来推导HPF的分析表达。两个明确的例子验证了所提出的方法的效率。最后,将所提出的方法应用于机械可靠性分析(涉及耗时和非线性响应)。通过与传统的机械可靠性方法进行比较,结果表明,该方法可以解决大量计算和低精度的问题。

著录项

  • 来源
    《Mathematical Problems in Engineering》 |2019年第17期|7672623.1-7672623.14|共14页
  • 作者

    Tong Cao; Wang Jian; Liu Jinguo;

  • 作者单位

    Shenyang Aerosp Univ Sch Mechatron Engn Shenyang 110136 Liaoning Peoples R China|Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Liaoning Peoples R China;

    Northeastern Univ Sch Mech Engn & Automat Shenyang 110819 Liaoning Peoples R China;

    Chinese Acad Sci Shenyang Inst Automat State Key Lab Robot Shenyang 110016 Liaoning Peoples R China;

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  • 正文语种 eng
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