基于互补电阻开关的内存二进制矢量矩阵乘法

T. Ziegler, R. Waser, D. Wouters, S. Menzel
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引用次数: 10

摘要

本文研究了基于互补电阻开关(CRS)的二进制乘法累加运算的内存计算概念。通过利用单个CRS器件的内存布尔异或(XOR)运算,如果多个CRS单元的中心电极连接,则可以计算汉明距离(HD)。该HD在公共电极的电压降中被线性编码,并从它可以计算出二进制乘法累加运算的结果。实验实现了一个小尺度的演示,并证实了内存计算概念的可行性。仿真研究表明,低阻状态(LRS)变异性是导致输出电压变化的主要原因。研究了其作为二值神经网络推理步骤的潜在硬件加速器的应用。因此,在MNIST数据集的二值化版本上训练1层全连接神经网络,并模拟测试数据集的推理步骤。该概念的预测精度约为86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In‐Memory Binary Vector–Matrix Multiplication Based on Complementary Resistive Switches
This work studies a computation in‐memory concept for binary multiply‐accumulate operations based on complementary resistive switches (CRS). By exploiting the in‐memory boolean exclusive OR (XOR) operation of single CRS devices, the Hamming Distance (HD) can be calculated if the center electrodes of multiple CRS cells are connected. This HD is linearly encoded in the voltage drop of the common electrode, and from it the result of a binary multiply‐accumulate operation can be calculated. A small‐scale demonstration is experimentally realized and the feasibility of the in‐memory computation concept is confirmed. A simulation study identifies the low resistance state (LRS) variability as the main reason for the variations in the output voltage. The application as a potential hardware accelerator for the inference step of binary neural networks is investigated. Therefore, a 1‐layer fully connected neural network is trained on a binarized version of the MNIST data set and the inference step of the test data set is simulated. The concept achieves a prediction accuracy of approximately 86%.
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