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A Reconfigurable and Biologically Inspired Paradigm for Computation Using Network-On-Chip and Spiking Neural Networks

机译:使用芯片网络和尖峰神经网络计算的可重构和生物启发的范式。

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摘要

FPGA devices have emerged as a popular platform for the rapid prototyping of biological Spiking Neural Networks (SNNs) applications, offering the key requirement of reconfigurability. However, FPGAs do not efficiently realise the biologically plausible neuron and synaptic models of SNNs, and current FPGA routing structures cannot accommodate the high levels of interneuron connectivity inherent in complex SNNs. This paper highlights and discusses the current challenges of implementing scalable SNNs on reconfigurable FPGAs. The paper proposes a novel field programmable neural network architecture (EMBRACE), incorporating low-power analogue spiking neurons, interconnected using a Network-on-Chip architecture. Results on the evaluation of the EMBRACE architecture using the XOR benchmark problem are presented, and the performance of the architecture is discussed. The paper also discusses the adaptability of the EMBRACE architecture in supporting fault tolerant computing.
机译:FPGA器件已成为生物尖峰神经网络(SNNS)应用的快速原型设计的流行平台,提供了重新配置性的关键要求。然而,FPGA没有有效地实现SNNS的生物合理的神经元和突触模型,并且目前的FPGA路由结构不能容纳复合SNN中固有的高水平的中间连接性。本文突出显示并讨论了在可重构的FPGA上实施可扩展SNN的当前挑战。本文提出了一种新颖的现场可编程神经网络架构(接受),包含低功率模拟尖峰神经元,使用网络架构互连。结果介绍了使用XOR基准问题的应用架构的评估,并讨论了架构的性能。本文还讨论了拥抱体系结构在支持容错计算方面的适应性。

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