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A bivariate two-state Markov modulated Poisson process for failure modeling

机译:一款双透明的双态马尔可夫调制泊松工艺故障建模

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摘要

Motivated by a real failure dataset in a two-dimensional context, this paper presents an extension of the Markov modulated Poisson process (MMPP) to two dimensions. The one-dimensional MMPP has been proposed for the modeling of dependent and non-exponential inter-failure times (in contexts as queuing, risk or reliability, among others). The novel two-dimensional MMPP allows for dependence between the two sequences of interfailure times, while at the same time preserves the MMPP properties, marginally. The generalization is based on the Marshall-Olkin exponential distribution. Inference is undertaken for the new model through a method combining a matching moments approach with an Approximate Bayesian Computation (ABC) algorithm. The performance of the method is shown on simulated and real datasets representing times and distances covered between consecutive failures in a public transport company. For the real dataset, some quantities of importance associated with the reliability of the system are estimated as the probabilities and expected number of failures at different times and distances covered by trains until the occurrence of a failure.
机译:在二维上下文中,由真正的失败数据集动机,本文提出了马尔可夫调制泊松过程(MMPP)的扩展到两个维度。已经提出了一维MMPP,用于建模依赖性和非指数的失败次数(在语境中作为排队,风险或可靠性等)。新颖的二维MMPP允许依赖于两个间隙时间序列,而同时保留MMPP属性略微。泛化基于马歇尔-OLKIN指数分布。通过与近似贝叶斯计算(ABC)算法相结合的方法对新模型进行推断。该方法的性能显示在代表公共交通公司在连续故障之间涵盖的时间和距离的模拟和真实数据集上。对于真实数据集,与系统可靠性相关的一些重要性估计为不同时间和由列车覆盖的距离的概率和预期的故障次数,直到发生故障。

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