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A Hybrid-Mode On-Chip Router for the Large-Scale FPGA-Based Neuromorphic Platform

IEEE transactions on circuits and systems I, Regular papers(2022)

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摘要
Large-scale neuromorphic computing requires the multi-chip network to provide high computing power. Efficient routing schemes and on-chip router design are necessary for handling various inter-chip transmission patterns. In this paper, we propose a hybrid-mode on-chip router that supports both multicast and unicast routing for the large-scale neuromorphic simulation. Two routing schemes, namely Cache-like Spike Weight Indexing and General Unicast Flow Control, are proposed to accommodate the chip-to-chip transmission of spike and non-spike data. This work is evaluated on a neuromorphic platform built with an $8\times 8$ FPGA chips array. Running a simulation of 1M neurons at 200MHz, the proposed router achieves a processing latency of 25ns and a chip-to-chip latency of 287ns. Working in the unicast mode, the router can synchronize status flags of all chips within $5 ~\mu \text{s}$ . Moreover, it reduces the peak spike traffic by 25.65% with the help of Load-aware Multicast Routing, compared with other multicast routing strategies.
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关键词
Routing,Neurons,Neuromorphics,Unicast,Data models,Data communication,System-on-chip,Multi-chip network,multicast,unicast,spiking neural network,address event representation,load-aware multicast routing algorithm,cache-like spike weight indexing,general unicast flow control,hybrid-mode router
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