SUPPORT VECTOR MACHINE FOR STRUCTURAL RELIABILITY ANALYSIS

被引:2
作者
李洪双
吕震宙
岳珠峰
机构
[1] SchoolofAeronautics,NorthwesternPolytechnicalUniversity,Xi'an,PRChina
关键词
structural reliability; implicit performance function; support vector machine;
D O I
暂无
中图分类号
TB114.3 [可靠性理论];
学科分类号
1201 ;
摘要
<正>Support vector machine (SVM) was introduced to analyze the reliability of the implicit performance function, which is difficult to implement by the classical methods such as the first order reliability method (FORM) and the Monte Carlo simulation (MCS). As a classification method where the underlying structural risk minimization inference rule is employed, SVM possesses excellent learning capacity with a small amount of information and good capability of generalization over the complete data. Hence, two approaches, i.e., SVM-based FORM and SVM-based MCS, were presented for the structural reliability analysis of the implicit limit state function. Compared to the conventional response surface method (RSM) and the artificial neural network (ANN), which are widely used to replace the implicit state function for alleviating the computation cost, the more important advantages of SVM are that it can approximate the implicit function with higher precision and better generalization under the small amount of information and avoid the "curse of dimensionality". The SVM-based reliability approaches can approximate the actual performance function over the complete sampling data with the decreased number of the implicit performance function analysis (usually finite element analysis), and the computational precision can satisfy the engineering requirement, which are demonstrated by illustrations.
引用
收藏
页码:1295 / 1303
页数:9
相关论文
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Benefit of splines and neural networks in simulation based structural reliability analysis. Schueremans L,Gemert D V. Structural Safety . 2005