一个与位置无关的直连神经形态接口

Alexander D. Rast, J. Partzsch, C. Mayr, J. Schemmel, Stefan Hartmann, L. Plana, S. Temple, D. Lester, R. Schüffny, S. Furber
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引用次数: 18

摘要

随着神经形态硬件迅速向能够在硬件中实现脑尺度神经模型的大规模、可能不可移动的系统发展,出现了能够在分布式、多站点配置上集成传感器和皮质处理器的多系统组合的需求。如果有一个标准的、直接的接口允许大型系统使用本地信号进行通信,就有可能根据它们的任务适用性有效地使用异构资源。我们提出了一个基于udp的AER尖峰接口,允许在标准网络上直接双向尖峰通信,并演示了两个大型神经形态系统BrainScaleS和SpiNNaker的实际实现。在内部,两端的接口作为拦截器出现,以标准化的AER地址格式解码和编码尖峰到UDP帧。该系统能够运行分布在两个系统上的峰值神经网络,既可以通过直接电缆连接并排设置,也可以通过互联网在两个间隔很宽的站点之间运行。该模型不仅实现了将远程传感器或处理器连接到大型中枢神经形态仿真平台的解决方案,而且为大型复杂神经系统的自动化远程神经控制(如参数整定)开辟了可能性,并提出了克服不同平台之间时间尺度和仿真模型差异的方法。凭借其完全标准的协议和物理层,接口使大型神经形态系统成为所有人可用的分布式、可访问的资源。
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A location-independent direct link neuromorphic interface
With neuromorphic hardware rapidly moving towards large-scale, possibly immovable systems capable of implementing brain-scale neural models in hardware, there is an emerging need to be able to integrate multi-system combinations of sensors and cortical processors over distributed, multisite configurations. If there were a standard, direct interface allowing large systems to communicate using native signalling, it would be possible to use heterogeneous resources efficiently according to their task suitability. We propose a UDP-based AER spiking interface that permits direct bidirectional spike communications over standard networks, and demonstrate a practical implementation with two large-scale neuromorphic systems, BrainScaleS and SpiNNaker. Internally, the interfaces at either end appear as interceptors which decode and encode spikes in a standardised AER address format onto UDP frames. The system is able to run a spiking neural network distributed over the two systems, in both a side-by-side setup with a direct cable link and over the Internet between 2 widely spaced sites. Such a model not only realises a solution for connecting remote sensors or processors to a large, central neuromorphic simulation platform, but also opens possibilities for interesting automated remote neural control, such as parameter tuning, for large, complex neural systems, and suggests methods to overcome differences in timescale and simulation model between different platforms. With its entirely standard protocol and physical layer, the interface makes large neuromorphic systems a distributed, accessible resource available to all.
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