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A unified framework for simulating Markovian models of highly dependable systems

机译:用于模拟高度可靠系统的马尔可夫模型的统一框架

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The authors present a unified framework for simulating Markovian models of highly dependable systems. It is shown that a variance reduction technique called importance sampling can be used to speed up the simulation by many orders of magnitude over standard simulation. This technique can be combined very effectively with regenerative simulation to estimate measures such as steady-state availability and mean time to failure. Moveover, it can be combined with conditional Monte Carlo methods to quickly estimate transient measures such as reliability, expected interval availability, and the distribution of interval availability. The authors show the effectiveness of these methods by using them to simulate large dependability models. They discuss how these methods can be implemented in a software package to compute both transient and steady-state measures simultaneously from the same sample run.
机译:作者提出了一个用于模拟高度可靠系统的马尔可夫模型的统一框架。结果表明,与标准模拟相比,可以使用称为重要性采样的方差减少技术将模拟速度提高许多数量级。该技术可以非常有效地与再生仿真结合起来,以评估诸如稳态可用性和平均故障时间之类的措施。移动时,可以将其与条件蒙特卡罗方法结合使用,以快速估算瞬态测量值,例如可靠性,预期间隔可用性和间隔可用性的分布。作者通过使用它们来模拟大型可靠性模型来显示这些方法的有效性。他们讨论了如何在软件包中实施这些方法,以从同一样本运行中同时计算瞬态和稳态测量值。

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