Automated Analysis of Simulation Traces - Separating Progress from Repetitive Behavior

P. Kemper, C. Tepper
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引用次数: 13

Abstract

Among the many stages of a simulation study, debugging a simulation model is the one that is hardly reported on but that may consume a considerable amount of time and effort. In this paper, we describe a novel technique that helps a modeler to gain insight in the dynamic behavior of a complex stochastic discrete event simulation model based on trace analysis. We propose algorithms to distinguish progressive from repetitive behavior in a trace and to extract a minimal progressive fragment of a trace. The implied combinatorial optimization problem for trace reduction is solved in linear time with dynamic programming. We present and compare several approximate and one exact solution method. Information on the reduction operation as well as the reduced trace itself helps a modeler to recognize the presence of certain errors and to identify their cause. We track down a subtle modeling error in a dependability model of a multi-class server system to illustrate the effectiveness of our approach in revealing the cause of an observed effect. The proposed technique has been implemented and integrated in Traviando, a trace analyzer to debug stochastic simulation models.
模拟轨迹的自动分析-从重复行为中分离进度
在仿真研究的许多阶段中,调试仿真模型是一个很少被报道的阶段,但它可能会消耗大量的时间和精力。在本文中,我们描述了一种新的技术,可以帮助建模者深入了解基于轨迹分析的复杂随机离散事件模拟模型的动态行为。我们提出了算法来区分跟踪中的渐进行为和重复行为,并提取跟踪的最小渐进片段。采用动态规划方法,在线性时间内求解隐式组合优化问题。我们提出并比较了几种近似解和一种精确解的方法。关于缩减操作以及缩减跟踪本身的信息有助于建模人员识别某些错误的存在并确定其原因。我们在多类服务器系统的可靠性模型中跟踪了一个细微的建模错误,以说明我们的方法在揭示观察到的效果的原因方面的有效性。所提出的技术已在Traviando中实现并集成,Traviando是一个用于调试随机仿真模型的跟踪分析仪。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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