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Reliability assessment of complex mechatronic systems using a modified nonparametric belief propagation algorithm

机译:改进的非参数置信传播算法对复杂机电系统的可靠性评估

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Various parametric skewed distributions are widely used to model the time-to-failure (TTF) in the reliability analysis of mechatronic systems, where many items are unobservable due to the high cost of testing. Estimating the parameters of those distributions becomes a challenge. Previous research has failed to consider this problem due to the difficulty of dependency modeling. Recently the methodology of Bayesian networks (BNs) has greatly contributed to the reliability analysis of complex systems. In this paper, the problem of system reliability assessment (SRA) is formulated as a BN considering the parameter uncertainty. As the quantitative specification of BN, a normal distribution representing the stochastic nature of TTF distribution is learned to capture the interactions between the basic items and their output items. The approximation inference of our continuous BN model is performed by a modified version of nonparametric belief propagation (NBP) which can avoid using a junction tree that is inefficient for the mechatronic case because of the large treewidth. After reasoning, we obtain the marginal posterior density of each TTF model parameter. Other information from diverse sources and expert priors can be easily incorporated in this SRA model to achieve more accurate results. Simulation in simple and complex cases of mechatronic systems demonstrates that the posterior of the parameter network fits the data well and the uncertainty passes effectively through our BN based SRA model by using the modified NBP.
机译:在机电系统的可靠性分析中,各种参数的偏态分布被广泛用于建模失效时间(TTF),由于测试成本高,许多项目无法观察。估计那些分布的参数成为一个挑战。由于依赖建模的困难,以前的研究未能考虑到此问题。最近,贝叶斯网络(BNs)的方法极大地促进了复杂系统的可靠性分析。在本文中,考虑参数不确定性,将系统可靠性评估(SRA)问题表述为BN。作为BN的定量规范,学习表示TTF分布的随机性质的正态分布以捕获基本项目及其输出项目之间的相互作用。我们的连续BN模型的近似推论是通过非参数置信传播(NBP)的修改版本执行的,该模型可以避免使用因树宽较大而对机电一体化效率不高的结点树。经过推理,我们获得每个TTF模型参数的边缘后验密度。来自不同来源和专家先验的其他信息可以轻松地合并到此SRA模型中,以获得更准确的结果。在机电系统的简单和复杂情况下的仿真表明,参数网络的后部很好地拟合了数据,不确定性通过使用改进的NBP有效地传递到基于BN的SRA模型中。

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