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Bandwidth allocation of virtual paths using neural-network-based genetic algorithms

机译:使用基于神经网络的遗传算法分配虚拟路径的带宽

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摘要

The concept of virtual paths has become the key technology in ATM networks. A control scheme based on genetic algorithms and neural networks is proposed and applied to the bandwidth allocation of virtual paths in ATM networks. The proposed control scheme is capable of selecting adaptively optimal step sizes of virtual paths according to the traffic characteristics and network environment. As the optimisation problem is constrained, traditional genetic algorithms are no longer applicable to this problem. The authors propose the masked genetic algorithms with seeds (MGAS) to solve the optimisation problem. Simulation results demonstrate the superiority of the MGAS algorithm. To achieve better performance, the relationships among the QOS measures, the evaluation of seed scores, and the selection of relearning data records are discussed. Finally, a simplified control scheme is proposed to reduce not only the complexity of the neural networks but also the processing time.
机译:虚拟路径的概念已成为ATM网络中的关键技术。提出了一种基于遗传算法和神经网络的控制方案,并将其应用于ATM网络中虚拟路径的带宽分配。所提出的控制方案能够根据业务量特征和网络环境来选择虚拟路径的自适应最佳步长。由于优化问题受到限制,因此传统的遗传算法不再适用于该问题。作者提出了带种子的屏蔽遗传算法(MGAS)来解决优化问题。仿真结果证明了MGAS算法的优越性。为了获得更好的性能,讨论了QOS度量之间的关系,种子分数的评估以及相关数据记录的选择。最后,提出了一种简化的控制方案,不仅可以减少神经网络的复杂性,而且可以减少处理时间。

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