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An evolvable NoC-based spiking neural network architecture

机译:一种可进化的基于NOC的尖峰神经网络架构

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Nature employs bio-inspired concepts such as evolution and learning to develop complex and intelligent organisms, capable of adaptation and fault tolerance. Brain-inspired paradigms such as Spiking Neural Networks (SNNs) offer the potential of elegant, low-power and robust methods of performing computing. Previous work by the authors reports a reconfigurable mixed signal Network on Chip (NoC)-based SNN architecture, with reconfigurable analogue neuron cell and digital NoC. The SNN architecture includes an array of neural tiles, each incorporating a NoC router for packet-based neuron interconnect. This paper presents a Genetic Algorithm (GA) based evolution framework which interacts with the SNN architecture to evolve SNN-based solutions to problems. Simulation results are presented which verify the adaptability of the reconfigurable NoC-based SNN architecture in evolving a solution for the XOR benchmark problem. Results on the synthesised neural tile area utilisation for FPGAs are also presented. This work contributes to the realisation of a large scale reconfigurable mixed signal hardware platform for SNNs.
机译:自然采用生物启发的概念,例如进化和学习,以发展复杂和智能的生物,能够适应和容错。脑卒中的神经网络(SNNS)等脑启发的范式提供了优雅,低功耗和性能计算的潜力。上一项工作由作者报告了基于芯片(NOC)的可重新配置的混合信号网络,具有可重新配置的模拟神经元细胞和数字NOC。 SNN架构包括一系列神经图块,每个阵列包括基于分组的神经元互连的NOC路由器。本文提出了一种基于遗传算法(GA)的演进框架,其与SNN架构交互,以发展基于SNN的解决方案。提出了仿真结果,该结果验证了基于NOC的SNN架构在演化解决方案中的解决方案的适应性验证了XOR基准问题的解决方案。结果还介绍了FPGA的合成神经瓷砖区域利用。这项工作有助于实现SNNS的大规模可重构混合信号硬件平台。

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