利用多层感知器和复杂网络度量来估计光网络的性能

Danilo R. B. De Araújo, J. Martins-Filho, C. Bastos-Filho
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引用次数: 4

摘要

考虑物理损伤的波分复用网络的性能评估是一项艰巨的任务,通常需要使用耗时的计算模拟来完成。另一方面,我们观察到已经提出了几个指标来评估网络结构的不同方面。在本文中,我们提出了一组指标可以组合在一起,以获得基于网络历史数据库的WDM网络性能的快速估计。该估计量是通过最常用的人工神经网络(ANN)结构——多层感知器获得的,该结构使用经典的反向传播算法进行训练。根据我们的研究结果,有可能建立一个基于网络指标的估计器,考虑到处理时间和结果精度之间的权衡,评估WDM网络。我们的研究还表明,这种估计器可以很容易地适应于WDM网络的其他场景,因为人工神经网络具有有趣的特性,如适应性和灵活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Multi-Layer Perceptron and complex network metrics to estimate the performance of optical networks
The performance assessment of a WDM network considering physical impairments is a difficult task and is frequently accomplished by using time consuming computational simulations. On the other hand, we observed that several metrics have been proposed to assess different aspects of a network structure. In this paper we propose that a set of metrics can be combined in order to obtain a fast estimation of a WDM network performance, based on a historical database of networks. The estimator was obtained by means of the most used Artificial Neural Network (ANN) architecture, called Multi-Layer Perceptron, that was trained using the classical back-propagation algorithm. According to our results, it is possible to build an estimator based on network metrics that assess WDM networks considering the trade-off between the processing time and the precision of the results. Our study also suggests that this kind of estimator can be easily adapted to other scenarios of WDM networks since Artificial Neural Networks present interesting characteristics, such as adaptation and flexibility.
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