神经算法加速器中模拟电阻性存储器件线性度和写入噪声的影响

R. Jacobs-Gedrim, S. Agarwal, K. E. Knisely, J. Stevens, M. V. Heukelom, D. Hughart, J. Niroula, C. James, M. Marinella
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引用次数: 14

摘要

电阻存储器(ReRAM)有望作为模拟突触元件用于节能神经网络算法加速器。一个特别重要的应用是神经网络的训练,因为这是使用神经算法中计算量最大的过程。然而,用模拟的ReRAM突触训练网络会显著降低算法层面的准确性。为了评估这种退化,测量了ReRAM设备的模拟特性,并为使用反向传播的训练建模手写数字识别精度。采用三种材料体系的双极细丝器件进行了测量和比较:一种氧空位体系,Ta-TaOx,以及两种导电金属化体系,Cu-SiO2和Ag/chalcogenide。通过测量对不同电压脉冲特性的响应,优化了器件的模拟特性和电导范围。影响模拟器件精度的主要因素是更新线性度和写入噪声。写入噪声可能会随着器件制造成熟度的提高而改善,但写入非线性在不同的器件材料系统中表现出相对一致,并且被发现是影响精度的最重要因素。这表明可能需要新的材料和/或根本不同的电阻开关机制来改善器件线性度并实现更高的算法训练精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Linearity and Write Noise of Analog Resistive Memory Devices in a Neural Algorithm Accelerator
Resistive memory (ReRAM) shows promise for use as an analog synapse element in energy-efficient neural network algorithm accelerators. A particularly important application is the training of neural networks, as this is the most computationally-intensive procedure in using a neural algorithm. However, training a network with analog ReRAM synapses can significantly reduce the accuracy at the algorithm level. In order to assess this degradation, analog properties of ReRAM devices were measured and hand-written digit recognition accuracy was modeled for the training using backpropagation. Bipolar filamentary devices utilizing three material systems were measured and compared: one oxygen vacancy system, Ta-TaOx, and two conducting metallization systems, Cu-SiO2, and Ag/chalcogenide. Analog properties and conductance ranges of the devices are optimized by measuring the response to varying voltage pulse characteristics. Key analog device properties which degrade the accuracy are update linearity and write noise. Write noise may improve as a function of device manufacturing maturity, but write nonlinearity appears relatively consistent among the different device material systems and is found to be the most significant factor affecting accuracy. This suggests that new materials and/or fundamentally different resistive switching mechanisms may be required to improve device linearity and achieve higher algorithm training accuracy.
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