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A Generalized Method for the Transient Analysis of Markov Models of Fault-Tolerant Systems with Deferred Repair

机译:延后维修容错系统的马尔可夫模型瞬态分析的通用方法

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Randomization is an attractive alternative for the transient analysis of continuous time Markov models. The main advantages of the method are numerical stability, well-controlled computation error, and ability to specify the computation error in advance. However, the fact that the method can be computationally expensive limits its applicability. Recently, a variant of the (standard) randomization method, called split regenerative randomization has been proposed for the efficient analysis of reliability-like models of fault-tolerant systems with deferred repair. In this article, we generalize that method so that it covers more general reward measures: the expected transient reward rate and the expected averaged reward rate. The generalized method has the same good properties as the standard randomization method and, for large models and large values of the time t at which the measure has to be computed, can be significantly less expensive. The method requires the selection of a subset of states and a regenerative state satisfying some conditions. For a class of continuous time Markov models, class C'_2, including typical failure/repair reliability models with exponential failure and repair time distributions and deferred repair, natural selections for the subset of states and the regenerative state exist and results are available assessing approximately the computational cost of the method in terms of "visible" model characteristics. Using a large model class C'_2 example, we illustrate the performance of the method and show that it can be significantly faster than previously proposed randomization-based methods.
机译:对于连续时间马尔可夫模型的瞬态分析,随机化是一种有吸引力的替代方法。该方法的主要优点是数值稳定性,控制良好的计算误差以及预先指定计算误差的能力。然而,该方法可能在计算上昂贵的事实限制了其适用性。最近,已经提出了一种(标准)随机化方法的变体,称为分裂再生随机化,用于有效分析具有延期修复功能的容错系统的可靠性模型。在本文中,我们对该方法进行了概括,以使其涵盖更一般的奖励措施:预期的瞬时奖励率和预期的平均奖励率。通用方法具有与标准随机化方法相同的良好属性,并且对于大型模型和必须计算测度的时间t的较大值,可以大大降低成本。该方法需要选择状态的子集和满足某些条件的再生状态。对于一类连续时间马尔可夫模型,C'_2类,包括具有指数故障和修复时间分布以及递延修复的典型故障/修复可靠性模型,存在状态子集和再生状态的自然选择,并且可以评估结果就“可见”模型特征而言,该方法的计算成本。使用大型模型类C'_2示例,我们说明了该方法的性能,并表明它可以比以前提出的基于随机化的方法快得多。

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