用非线性优化的网络级聚合方法求解分层GSPN的性能评价

G. Klas
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引用次数: 1

摘要

提出了一种大型广义随机Petri网模型的分层求解方法。该方法基于子模型的聚合来替代网络。通过匹配子模型和聚合网络中令牌的流动时间分布,实现了这些模型之间的随机等价。这导致了寻找最佳聚合网络的非线性优化问题。作为主要结果,对从原始网的流动时间分布估计合适的聚合网参数的关键点提供了一些见解。最后通过一个算例对该方法进行了验证。
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Net level aggregation using nonlinear optimization for the solution of hierarchical GSPN in performance evaluation
An approach for the hierarchical solution of large generalized stochastic Petri net models is presented. The method is based on the aggregation of submodels to substitute networks. The stochastic equivalence between these models is achieved by matching the flow time distributions of tokens in the submodel and in the aggregate net. This leads to a nonlinear optimization problem for finding the best aggregate net. As the main result, some insight is provided into the crucial point of estimating the parameters of a suitable aggregate net from a flow time distribution of the original net. The approach is demonstrated by means of an example.<>
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