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A Novel Hybrid Training Method for Hopfield Neural Networks Applied to Routing in Communications Networks

机译:Hopfield神经网络的一种新的混合训练方法在通信网络中的路由选择

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Efficient routing algorithms are very important for the operation of communication networks, including the Internet. This article proposes a novel hybrid intelligent method for routing which combines Hopfield Neural Networks (HNN) and simulated annealing (SA). The proposed method introduces a modified version of the discrete-time equation used by Bastos-Filho et al [1]. The novel version of the equation aims to improve the HNN convergence, thereby decreasing the computation cost. In our method, the SA algorithm is used to obtain the optimal parameters of the HNN. Simulations reported in this paper shows that the proposed method outperforms the method of Bastos-Filho et al [1], by computing routes using smaller number of iterations and smaller error.
机译:高效路由算法对于包括互联网的通信网络的操作非常重要。本文提出了一种用于路由的新型混合智能方法,其结合了Hopfield神经网络(HNN)和模拟退火(SA)。该方法介绍了Bastos-filho等[1]使用的离散时间方程的修改版本。该等式的新颖版本旨在改善HNN收敛,从而降低计算成本。在我们的方法中,SA算法用于获得HNN的最佳参数。本文报告的模拟表明,该方法通过使用较少数量的迭代和更小的误差来计算Bastos-filho等[1]的方法。

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