Hardware software co-design for leveraging STDP in a memristive neuroprocessor

N. N. Chakraborty, Shelah Ameli, Hritom Das, C. Schuman, Garrett S. Rose
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Abstract

In neuromorphic computing, different learning mechanisms are being widely adopted to improve the performance of a specific application. Among these techniques, Spike-Timing-Dependent Plasticity (STDP) stands out as one of the most favored. STDP is simply managed by the temporal information of an event, which is biologically inspired. However, most of the prior works on STDP are focused on circuit implementation or software simulation for performance evaluation. Previous works also lack a comparative analysis of the performances of different STDP implementations. This study aims to provide a comprehensive assessment of STDP, centering on the performance across various applications such as classification (static and temporal datasets), control, and reservoir computing. Different applications necessitate distinct STDP configurations to achieve optimal performance with the neuroprocessor. Additionally, this work introduces an Application-Specific Integrated Circuit (ASIC) design of STDP circuitry. The design is based on current-controlled memristive synapse principles and utilizes 65nm CMOS technology from IBM. The detailed presentation includes circuitry specifics, layout, and performance parameters such as energy consumption and design area.
在记忆神经处理器中利用 STDP 的硬件软件协同设计
在神经形态计算领域,人们广泛采用不同的学习机制来提高特定应用的性能。在这些技术中,尖峰计时可塑性(STDP)最受青睐。STDP 简单地通过事件的时间信息进行管理,其灵感来源于生物学。然而,之前大多数关于 STDP 的研究都集中在电路实现或软件模拟性能评估方面。以往的研究也缺乏对不同 STDP 实现性能的比较分析。本研究旨在对 STDP 进行全面评估,重点关注分类(静态和时态数据集)、控制和水库计算等各种应用的性能。不同的应用需要不同的 STDP 配置,以实现神经处理器的最佳性能。此外,这项研究还介绍了 STDP 电路的特定应用集成电路 (ASIC) 设计。该设计基于电流控制的忆阻突触原理,采用了 IBM 的 65 纳米 CMOS 技术。详细介绍包括电路细节、布局以及能耗和设计面积等性能参数。
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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CiteScore
5.90
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