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Neural networks for shortest path computation and routing in computer networks

机译:神经网络,用于计算机网络中的最短路径计算和路由

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The application of neural networks to the optimum routing problem in packet-switched computer networks, where the goal is to minimize the network-wide average time delay, is addressed. Under appropriate assumptions, the optimum routing algorithm relies heavily on shortest path computations that have to be carried out in real time. For this purpose an efficient neural network shortest path algorithm that is an improved version of previously suggested Hopfield models is proposed. The general principles involved in the design of the proposed neural network are discussed in detail. Its computational power is demonstrated through computer simulations. One of the main features of the proposed model is that it will enable the routing algorithm to be implemented in real time and also to be adaptive to changes in link costs and network topology.
机译:解决了神经网络在分组交换计算机网络中最佳路由问题上的应用,该网络的目标是使网络范围内的平均时间延迟最小化。在适当的假设下,最佳路由算法很大程度上取决于必须实时执行的最短路径计算。为此,提出了一种有效的神经网络最短路径算法,该算法是先前建议的Hopfield模型的改进版本。详细讨论了所提出的神经网络设计中涉及的一般原理。通过计算机仿真证明了其计算能力。所提出模型的主要特征之一是,它将使路由算法能够实时实施,并且能够适应链路成本和网络拓扑的变化。

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