可靠性(半导体)
克里金
替代模型
计算机科学
蒙特卡罗方法
差异(会计)
自相关
替代数据
极限(数学)
非线性系统
一阶可靠性方法
极限状态设计
数学优化
可靠性工程
算法
统计
数学
机器学习
工程类
数学分析
功率(物理)
物理
会计
结构工程
量子力学
业务
作者
Hao Wu,Zhifu Zhu,Xiaoping Du
出处
期刊:Journal of Mechanical Design
日期:2020-03-11
卷期号:142 (10)
被引量:51
摘要
Abstract When limit-state functions are highly nonlinear, traditional reliability methods, such as the first-order and second-order reliability methods, are not accurate. Monte Carlo simulation (MCS), on the other hand, is accurate if a sufficient sample size is used but is computationally intensive. This research proposes a new system reliability method that combines MCS and the Kriging method with improved accuracy and efficiency. Accurate surrogate models are created for limit-state functions with minimal variance in the estimate of the system reliability, thereby producing high accuracy for the system reliability prediction. Instead of employing global optimization, this method uses MCS samples from which training points for the surrogate models are selected. By considering the autocorrelation of a surrogate model, this method captures the more accurate contribution of each MCS sample to the uncertainty in the estimate of the serial system reliability and therefore chooses training points efficiently. Good accuracy and efficiency are demonstrated by four examples.
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