分析替代模型评估光网络阻塞概率

Danilo R. B. Araújo, C. Bastos-Filho, J. Martins-Filho
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引用次数: 1

摘要

近年来的研究证明了基于人工神经网络(ann)的替代方法评估光网络的可行性。然而,替代方法在准确性和资源利用效率(如计算时间)之间进行了不同的权衡。在本文中,我们分析了使用人工神经网络来预测部署的光网络的阻塞概率(BP),考虑到潜在的替代方法的不同架构。我们还分析了所采用的物理层模型和训练人工神经网络所需的光网络数量的影响。我们将我们的建议的结果与离散事件网络模拟器的结果进行了比较。从我们的结果中我们可以得出结论,人工神经网络是一种很有前途的估计透明光网络BP的技术,但是用于训练人工神经网络和物理层模型的数据集对于这种类型工具的正确设计至关重要。
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Analyzing surrogate models to assess Blocking Probability of optical networks
Recent studies demonstrated the feasibility of surrogate methods to assess optical networks based on Artificial Neural Networks (ANNs). However, surrogate methods present different trade offs between accuracy and resource utilization efficiency, such as computational time. In this paper we analyze the use of ANN to forecast the Blocking Probability (BP) of deployed optical networks considering different architectures for the underlying alternative method. We also analyze the impact of the adopted physical layer model and the number of optical networks needed to train the ANN. We compare the results of our proposal with the outcome of a discrete event network simulator. From our results we can conclude that ANN is a promising technique to estimate the BP of transparent optical networks, but the dataset used to train the ANN and the physical layer model are crucial for the proper design of this type of tool.
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