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A reinforcement learning-based algorithm for deflection routing in optical burst-switched networks

机译:基于增强学习的光突发交换网络中的偏转路由算法

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In this paper, we propose a Q-learning based deflection routing algorithm that may be employed to resolve contention in optical burst-switched networks. The main goal of deflection routing is to successfully deflect a burst based only on a limited knowledge that network nodes possess about their environment. Q-learning, one of the reinforcement learning algorithms, has been proposed in the past to help generate deflection decisions. The complexity of existing reinforcement learning-based deflection routing algorithms depends on the number of nodes in the network. The proposed algorithm scales well for larger networks because its complexity depends on the node degree rather than the network size. The algorithm is implemented using the ns-3 network simulator. Simulation results show that it has comparable performance to an existing reinforcement learning deflection routing scheme while having lower memory requirements.
机译:在本文中,我们提出了一种基于Q学习的偏转路由算法,该算法可用于解决光突发交换网络中的竞争。偏转路由的主要目标是仅基于网络节点对环境的有限了解才能成功偏转突发。过去已经提出了Q学习作为强化学习算法之一,以帮助产生偏转决策。现有的基于强化学习的偏转路由算法的复杂性取决于网络中节点的数量。所提出的算法对于较大的网络具有良好的伸缩性,因为其复杂度取决于节点的程度而不是网络的大小。该算法是使用ns-3网络模拟器实现的。仿真结果表明,它具有与现有增强学习偏转路由方案相当的性能,同时具有较低的内存需求。

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