基于神经网络的近最优路由算法

C. Ahn, R. S. Ramakrishna, In-Chan Choi, C. Kang
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引用次数: 6

摘要

提出了一种基于神经网络的近最优路由算法。它采用改进的Hopfield神经网络(MHNN)作为解决最短路径问题的手段。它还保证了适合多跳无线网络的快速计算。MHNN除了使用局部神经元上的高度相关信息外,还使用周围神经元上可用的每一条信息。因此,每个神经元迅速收敛到最优的稳定状态。这种收敛速度比使用传统Hopfield神经网络的算法要快。计算机模拟支持所指出的主张。对于几乎所有的源-目的对,其结果相对独立于网络拓扑结构。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network based near-optimal routing algorithm
Presents a neural network based near-optimal routing algorithm. It employs a modified Hopfield neural network (MHNN) as a means to solve the shortest path problem. It also guarantees a speedy computation that is appropriate to multi-hop radio networks. The MHNN uses every piece of information that is available at the peripheral neurons in addition to the highly correlated information that is available at the local neuron. Consequently, every neuron converges speedily and optimally to a stable state. The convergence is faster than what is usually found in algorithms that employ conventional Hopfield neural networks. Computer simulations support the indicated claims. The results are relatively independent of network topology for almost all source-destination pairs.
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