随机活动网络的简化基模型构建方法

W. Sanders, J. F. Meyer
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引用次数: 255

摘要

存在一些用于系统评估的模型类,它们能够表示当代分布式计算机体系结构和计算机通信网络所表现出的复杂行为。然而,一些与大规模系统评估相关的问题出现了,因为从底层网络模型衍生的随机过程的大小和复杂性,它作为后续解决所讨论的措施的“基础模型”。如果这个基本模型是用标准的方法来构建的,例如,它被识别为网络的标记行为,那么传统的求解方法很快就会变得难以处理大型系统,限制了它们在中等复杂性系统中的应用。在随机活动网络(SANs)中,通过开发基本模型构建方法来解决这个问题,这些方法考虑了SAN结构中的对称性,并针对所讨论的变量(例如响应时间,故障时间等)进行了定制。研究发现,这种技术可以显著减小状态空间的大小,同时保留实际解决方法所需的随机特性。该技术允许直接构建缩小的基本模型,从而避免了与传统模型放大方法相关的尺寸限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reduced base model construction methods for stochastic activity networks
Several model classes for system evaluation exist and are capable of representing the kind of complex behavior exhibited by contemporary distributed computer architectures and computer-communication networks. However, a number of problems associated with the evaluation of large-scale systems arise because of the size and complexity of the stochastic process derived from the underlying net model, which serves as a 'base model' for subsequent solution of the measures in question. If this base model is constructed by standard means, e.g. it is identified with the marking behavior of the net, traditional methods of solution quickly become intractable for large systems, limiting their application to systems of only moderate complexity. This problem is addressed in the stochastic activity networks (SANs) by developing base model construction methods that account for symmetries in SAN structure and are tailored to the variable in question (e.g. response time, time to failure, etc.). It is found that such a technique can yield dramatic reductions in state-space size while preserving stochastic properties required for practical means of solution. This technique permits direct construction of a reduced base model, thus avoiding size limitations associated with more traditional approaches to model amplification.<>
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