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RM5Tree: Radial basis M5 model tree for accurate structural reliability analysis

机译:RM5Tree:径向基M5模型树,用于精确的结构可靠性分析

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摘要

The surrogate models-based prediction of performance functions is an efficient and accurate methodology in structural reliability analyses. In this paper, the M5 model tree (M5Tree) is improved based on radial basis training data set and it is named as Radial basis M5Tree (RM5Tree). To predict the performance function, the random input variables are transferred from ordinal space to radial space using several effective points for nonlinear calibrated model of RM5Tree. The input datasets are controlled using the radial dataset for high dimensional reliability problems to reduce computational efforts to evaluate the performance function. The abilities of RM5Tree using Monte Carlo Simulation (MCS) with respect to accuracy and efficiency are investigated through five nonlinear reliability problems. The results indicate that the proposed RM5Tree performs superior manner in accuracy and efficiency compared to the M5Tree, response surface method (RSM) and first order reliability method.
机译:基于替代模型的性能函数预测是结构可靠性分析中的一种有效而准确的方法。本文基于径向基训练数据集对M5模型树(M5Tree)进行了改进,并命名为径向基M5Tree(RM5Tree)。为了预测性能函数,使用几个有效点对RM5Tree的非线性校准模型将随机输入变量从有序空间转移到径向空间。对于高维可靠性问题,使用径向数据集控制输入数据集,以减少用于评估性能函数的计算工作。通过五个非线性可靠性问题,研究了使用蒙特卡罗模拟(MCS)的RM5Tree的准确性和效率。结果表明,与M5Tree,响应面法(RSM)和一阶可靠性方法相比,所提出的RM5Tree在准确性和效率上具有更好的表现。

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