基于随机学习自动机的虚拟电路网络分散自适应路由

A. Economides, Petros A. Ioannou, J. Silvester
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引用次数: 26

摘要

研究了虚拟电路分组交换网络中基于动态概率的虚拟电路路由问题。引入了排队网络模型,定义了性能指标。提出了一种基于学习自动机理论的分散异步自适应路由方法。网络中的每个节点都有一个随机学习自动机作为每个目标节点的路由器。分配给网络路径的路由概率在当前网络条件的基础上异步更新。采用了一种适合于路由的学习算法。一些初步的仿真实验,对于一个简单的网络,显示收敛到最优路由。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decentralized adaptive routing for virtual circuit networks using stochastic learning automata
The problem of routing virtual circuits according to dynamical probabilities in virtual-circuit packet-switched networks is considered. Queueing network models are introduced and performance measures are defined. A decentralized asynchronous adaptive routing methodology based on learning automata theory is presented. Every node in the network has a stochastic learning automaton as a router for every destination node. The routing probabilities that are assigned to the network paths are updated asynchronously on the basis of current network conditions. A learning algorithm suitable for routing is used. Some initial simulation experiments, for a simple network, show convergence to optimal routing.<>
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