Routing in computer networks using artificial neural networks

S. Pierre , H. Said , W.G. Probst
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引用次数: 9

Abstract

This paper proposes a heuristic approach based on Hopfield model of neural networks to solve the problem of routing which constitutes one of the key aspects of the topological design of computer networks. Adaptive to changes in link costs and network topology, the proposed approach relies on the utilization of an energy function which simulates the objective function used in network optimization while respecting the constraints imposed by the network designers. This function must converge toward a solution which, if not the best is at least as close as possible to the optimum. The simulation results reveal that the end-to-end delay computed according to this neural network approach is usually better than those determined by the conventional routing heuristics, in the sense that our routing algorithm realizes a better trade-off between end-to-end delay and running time, and consequently gives a better performance than many other well-known optimal algorithms.

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使用人工神经网络的计算机网络路由
本文提出了一种基于神经网络Hopfield模型的启发式方法来解决路由问题,路由问题是计算机网络拓扑设计的关键问题之一。该方法可以适应链路成本和网络拓扑结构的变化,它利用能量函数模拟网络优化中的目标函数,同时尊重网络设计者施加的约束。这个函数必须收敛于一个解,即使不是最优解,至少也要尽可能接近最优解。仿真结果表明,基于神经网络方法计算的端到端延迟通常优于传统的路由启发式算法,因为我们的路由算法在端到端延迟和运行时间之间实现了更好的权衡,从而比许多已知的最优算法具有更好的性能。
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