Analysis of RRAM Reliability Soft-Errors on the Performance of RRAM-Based Neuromorphic Systems

Amr M. S. Tosson, Shimeng Yu, M. Anis, Lan Wei
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引用次数: 11

Abstract

Due to the limitation in speed and throughput of the traditional Von Neumann architecture, the interest in braininspired neuromorphic systems has been the focus of recent research activities. RRAM device has been extensively used as synapses in neuromorphic systems due to its many advantages including small size and compatibility with CMOS fabrication process. However, the RRAM device suffers from reliability soft-errors resulting from the stochastic nature of the oxygen vacancies of its conductive filaments. In this article, for the first time, using a combination of SPICE-based and BRIAN-based simulations, a novel framework is developed to model and assess the impact of RRAM reliability soft-errors on the performance of the neuromorphic systems. Simulation results show that the accuracy of a multi-perceptron RRAM-based neuromorphic system drops from 91.6% to 43% when the reliability softerrors are considered. To overcome this degradation in the system performance, a detailed analysis is conducted to modify the way the RRAM resistive state changes. In addition to this, a list of recommendations for the design of neuromorphic systems is also provided to overcome the RRAM reliability soft-errors.
RRAM可靠性软误差对基于RRAM的神经形态系统性能影响分析
由于传统冯诺依曼架构在速度和吞吐量上的限制,对脑启发神经形态系统的兴趣一直是近年来研究活动的焦点。RRAM器件由于具有体积小、兼容CMOS制造工艺等优点,在神经形态系统中被广泛应用于突触。然而,RRAM器件由于其导电丝的氧空位的随机性而遭受可靠性软误差。本文首次结合基于spice和基于brian的仿真,开发了一个新的框架来建模和评估RRAM可靠性软误差对神经形态系统性能的影响。仿真结果表明,考虑可靠性误差时,基于rram的多感知器神经形态系统的准确率从91.6%下降到43%。为了克服这种系统性能的下降,进行了详细的分析,以改变RRAM电阻状态的变化方式。此外,还对神经形态系统的设计提出了一些建议,以克服RRAM可靠性软误差。
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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