Reinforcement Learning Based Path Selection and Wavelength Selection in Optical Burst Switched Networks

Y. Kiran, T. Venkatesh, C. Murthy
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引用次数: 8

Abstract

Optical burst switching (OBS) is a promising technology that exploits the benefits of optical communication and supports statistical multiplexing of data traffic at a fine granularity making it a suitable technology for the next generation Internet. Development of efficient algorithms for path selection and wavelength selection is crucial in minimizing the burst loss probability (BLP) in OBS networks. In this paper, we present novel Reinforcement Learning algorithms for path selection and wavelength selection in the context of OBS networks. We develop an online path selection algorithm based on Q-learning to minimize the BLP by choosing an optimal path among a set of predetermined routes between every pair of ingress and egress nodes. We also propose a Q-learning algorithm for wavelength selection that selects an optimal wavelength among the available wavelengths in a pre-routed path with an objective of minimizing the BLP. We assume no wavelength conversion and buffering to be available at the core nodes of the OBS network. We simulate the proposed algorithms under dynamic load to demonstrate that they reduce the BLP compared to the best known adaptive techniques for path selection and wavelength selection available in the literature.
基于强化学习的光突发交换网络路径选择和波长选择
光突发交换(OBS)是一项很有前途的技术,它利用了光通信的优点,并支持数据流量的细粒度统计复用,使其成为下一代互联网的合适技术。开发有效的路径选择和波长选择算法对于最小化OBS网络的突发损失概率(BLP)至关重要。在本文中,我们提出了一种新的用于OBS网络中路径选择和波长选择的强化学习算法。我们开发了一种基于q学习的在线路径选择算法,通过在每一对入口节点和出口节点之间的一组预定路径中选择最优路径来最小化BLP。我们还提出了一种用于波长选择的q -学习算法,该算法以最小化BLP为目标,在预路由路径中的可用波长中选择最优波长。我们假设在OBS网络的核心节点没有波长转换和缓冲可用。我们在动态负载下模拟了所提出的算法,以证明与文献中最著名的路径选择和波长选择自适应技术相比,它们降低了BLP。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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