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Q-learning based congestion-aware routing algorithm for on-chip network

机译:基于Q学习的片上网络拥塞感知路由算法

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摘要

Network congestion can limit performance of NoC due to increased transmission latency and power consumption. Congestion-aware adaptive routing can greatly improve the network performance by balancing the traffic load over the network. In this paper, we present a reinforcement learning method, Q-learning, for NoC to alleviate congestion in the network. In the proposed method, local and nonlocal congestion information is propagated over the network utilizing learning packets. This learning approach results in better routing decisions due to up-to-date and more reliable congestion values. According to this congestion information, a path is chosen for a packet which is less congested. Experimental results with synthetic test cases demonstrate that the on-chip network utilizing the proposed method outperforms a conventional scheme, Dynamic XY, (28% for uniform traffic and 17% for hotspot traffic) with a 12% of area overhead.
机译:由于增加的传输延迟和功耗,网络拥塞会限制NoC的性能。拥塞感知的自适应路由可以通过平衡网络上的流量负载来极大地提高网络性能。在本文中,我们提出了一种增强的学习方法,即Q学习,用于NoC来减轻网络中的拥塞。在所提出的方法中,利用学习分组在网络上传播本地和非本地拥塞信息。由于最新且更可靠的拥塞值,这种学习方法可导致更好的路由决策。根据该拥塞信息,为较少拥塞的分组选择路径。综合测试用例的实验结果表明,利用所提出方法的片上网络优于传统方案动态XY(均匀流量为28%,热点流量为17%),且具有12%的区域开销。

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