使用因果推理来验证随机模型

A. Chandra, C.-L. Wu, J. Abraham
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引用次数: 0

摘要

讨论了验证随机模型的一个重要问题。对随机模型进行验证是建立高性能、高可靠性计算机模型的必要条件。本文开发了一种使用因果推理的模型验证方法。更具体地说,该技术使用来自系统规范的结构和行为知识,以及用于验证目的的因果推理机制。本研究的范围仅限于马尔可夫模型的概念验证。与经验验证相反,概念验证不需要使用数据。验证过程主要包括生成参考对象,将给定模型转换为通用格式,并比较两个对象以识别漏洞和不一致之处。事件树被用作通用格式。通过对五个实例系统的模型验证,验证了该方法的有效性。为了测试的目的,在这些系统的模型中引入了误差
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using causal reasoning to validate stochastic models
An important problem of validating stochastic models is addressed. Validating stochastic models is necessary for modeling high-performance and highly dependable computers accurately. This paper develops a model validation methodology using causal reasoning. More specifically, this technique uses the structural and behavioral knowledge derived from the system specification and a causal reasoning mechanism for validation purposes. The scope of this research is limited to the conceptual validation of Markov models. Conceptual validation, as opposed to empirical validation, does not require the use of data. The validation process primarily involves generating a reference object, translating the given model into a common format, and comparing the two objects to identify holes and inconsistencies. Event trees are used as the common format. The effectiveness of this methodology is tested by validating models of five example systems. For testing purposes, errors are introduced into the models of these systems.<>
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