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Local estimation of failure probability function and its confidence interval with maximum entropy principle

机译:最大熵原理的失效概率函数局部估计及其置信区间

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摘要

An approach is developed to locally estimate the failure probability of a system under various design values. Although it seems to require numerous reliability analysis runs to locally estimate the failure probability function, which is a function of the design variables, the approach only requires a single reliability analysis run. The approach can be regarded as an extension of that proposed by Au [Au SK. Reliability-based design sensitivity by efficient simulation. Computers and Structures 2005;83(14): 1048-61], but it proposes a better framework in estimating the failure probability function. The key idea is to implement the maximum entropy principle in estimating the failure probability function. The resulting local failure probability function estimate is more robust; moreover, it is possible to find the confidence interval of the failure probability function as well as estimate the gradient of the logarithm of that function with respect to the design variables. The use of the new approach is demonstrated with several simulated examples. The results show that the new approach can effectively locally estimate the failure probability function and the confidence interval with one single Subset Simulation run. Moreover, the new approach is applicable when the dimension of the uncertainties is high and when the system is highly nonlinear. The approach should be valuable for reliability-based optimization and reliability sensitivity analysis.
机译:开发了一种方法来局部估计各种设计值下系统的故障概率。尽管似乎需要进行大量的可靠性分析来局部估计故障概率函数,该函数是设计变量的函数,但是该方法仅需要进行一次可靠性分析。该方法可以看作是Au [Au SK。通过有效的仿真实现基于可靠性的设计敏感性。 Computers and Structures 2005; 83(14):1048-61],但它提出了一个更好的框架来估计失效概率函数。关键思想是在估计故障概率函数时实施最大熵原理。结果得出的局部故障概率函数估计值更可靠;此外,有可能找到失效概率函数的置信区间,并估计该函数对数相对于设计变量的梯度。几个模拟示例演示了新方法的使用。结果表明,该新方法可以通过一次子集仿真运行有效地局部估计故障概率函数和置信区间。此外,当不确定性的维数较高且系统高度非线性时,可以使用新方法。该方法对于基于可靠性的优化和可靠性敏感性分析应该是有价值的。

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