A VLSI Design for Neuromorphic Computing

Mark E. Dean, Christopher Daffron
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引用次数: 11

Abstract

Dynamic Adaptive Neural Network Arrays (DANNAs) are neuromorphic systems that exhibit spiking behaviors and can be designed using evolutionary optimization. Array elements are rapidly reconfigurable and can function as either neurons, synapses or fan-out elements with programmable interconnections and parameters. Currently, DANNAs are implemented using Field Programmable Gate Arrays (FPGAs) and are constrained in capacity and performance by this technology. To alleviate these constraints and introduce new and improved features, a semi-custom Very Large Scale Integration (VLSI) design has been created. This VLSI design improves upon the FPGA implementations in three key areas: 50x improvement in element capacity, 10x improvement in clock speed, and a significant reduction in power consumption. Finally, the VLSI design allows for near real time monitoring of the individual elements in the array.
神经形态计算的VLSI设计
动态自适应神经网络阵列(Dynamic Adaptive Neural Network Arrays, DANNAs)是一种表现出尖峰行为的神经形态系统,可以使用进化优化方法进行设计。阵列元件可以快速重新配置,可以作为神经元、突触或具有可编程互连和参数的扇出元件。目前,danna是使用现场可编程门阵列(fpga)实现的,并且受该技术的容量和性能限制。为了减轻这些限制并引入新的和改进的功能,已经创建了半定制的超大规模集成电路(VLSI)设计。该VLSI设计在FPGA实现的三个关键领域进行了改进:元件容量提高50倍,时钟速度提高10倍,功耗显著降低。最后,VLSI设计允许对阵列中的各个元件进行近乎实时的监控。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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