Optimized Q-learning model for distributing traffic in on-Chip Networks

F. Farahnakian, M. Ebrahimi, M. Daneshtalab, J. Plosila, P. Liljeberg
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引用次数: 16

Abstract

Many adaptive routing protocols have been developed for Networks -on-Chip to improve the network performance by traffic reduction. In this paper, we present an adaptive routing algorithm based upon the Q-routing, which distributes traffic by a learning method in the entire network. The learning method utilizes local and global traffic information and can select the minimum latency path to the destination. Since the routing table sizes become one of the main sources of area consumption in the Q-routing algorithm, we propose a clustering approach in order to reduce the area overhead. Furthermore, this approach improves the observability of the traffic condition. Experimental results for different traffic patterns and network loads show that the proposed method achieves significant performance improvement over the Q-routing, C-routing, DBAR and Dynamic XY algorithms.
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片上网络流量分布的优化q学习模型
为了通过减少通信量来提高网络性能,已经为片上网络开发了许多自适应路由协议。本文提出了一种基于q路由的自适应路由算法,该算法通过学习的方法在整个网络中分配流量。该学习方法利用本地和全局的交通信息,选择到达目的地的最小延迟路径。由于路由表的大小成为q路由算法中面积消耗的主要来源之一,我们提出了一种聚类方法来减少面积开销。此外,该方法提高了交通状况的可观测性。在不同流量模式和网络负载下的实验结果表明,该方法比Q-routing、C-routing、DBAR和Dynamic XY算法的性能有显著提高。
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