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EXTENSIONS OF BAYESIAN RELIABILITY ANALYSIS BY USING IMPRECISE DIRICHLET MODEL

机译:使用不精确的Dirichlet模型延伸贝叶斯可靠性分析

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Bayesian approaches have been demonstrated as effective methods for reliability analysis of complex systems with small-amount data, which integrate prior information and sample data using Bayes' theorem. However, there is an assumption that precise prior probability distributions are available for unknown parameters, yet these prior distributions are sometimes unavailable in practical engineering. A possible way to avoiding this assumption is to generalize Bayesian reliability analysis approach by using imprecise probability theory. In this paper, we adopt a set of imprecise Dirichlet distributions as priors to quantify uncertainty of unknown parameters and extend traditional Bayesian reliability analysis approach by introducing an imprecise Dirichlet model (IDM). When the prior information is rare, the result of imprecise Bayesian analysis method is too rough to support engineering decision-making, so we proposed an optimization model to reduce the imprecision of the new method. Spindles are crucial for machine tools and reliability data related to spindles of new-developed machine tools are often rare. We can then use the imprecise Bayesian reliability analysis method to assess its reliability. In this paper, we mainly investigate the reliability assessment of a motorized spindle to illustrate the effectiveness of the proposed method.
机译:贝叶斯方法已被证明是具有小型数据的复杂系统可靠性分析的有效方法,其使用贝叶斯定理集成了先前的信息和样本数据。然而,假设确切的现有概率分布可用于未知参数,但这些先前的分布有时在实际工程中是不可用的。避免这种假设的可能方法是通过使用不精确的概率理论概括贝叶斯可靠性分析方法。在本文中,我们采用一组不精确的Dirichlet分布作为前沿,以量化未知参数的不确定性,并通过引入不精确的Dirichlet模型(IDM)来扩展传统的贝叶斯可靠性分析方法。当先前的信息很少罕见时,不精确的贝叶斯分析方法的结果太粗糙,无法支持工程决策,因此我们提出了一种优化模型来减少新方法的不精确。主轴对于机床和与新开发的机床主轴相关的可靠性数据至关重要。然后我们可以使用不精确的贝叶斯可靠性分析方法来评估其可靠性。在本文中,我们主要研究机动主轴的可靠性评估,以说明所提出的方法的有效性。

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