Lee Yoon Kyeung, Jeon Jeong Woo, Park Eui-Sang, Yoo Chanyoung, Kim Woohyun, Ha Manick, Hwang Cheol Seong
Department of Materials Science and Engineering at Seoul National University, Seoul 08826, Korea.
Micromachines (Basel). 2019 May 7;10(5):306. doi: 10.3390/mi10050306.
Recent advances in nanoscale resistive memory devices offer promising opportunities for in-memory computing with their capability of simultaneous information storage and processing. The relationship between current and memory conductance can be utilized to perform matrix-vector multiplication for data-intensive tasks, such as training and inference in machine learning and analysis of continuous data stream. This work implements a mapping algorithm of memory conductance for matrix-vector multiplication using a realistic crossbar model with finite cell-to-cell resistance. An iterative simulation calculates the matrix-specific local junction voltages at each crosspoint, and systematically compensates the voltage drop by multiplying the memory conductance with the ratio between the applied and real junction potential. The calibration factors depend both on the location of the crosspoints and the matrix structure. This modification enabled the compression of Electrocardiographic signals, which was not possible with uncalibrated conductance. The results suggest potential utilities of the calibration scheme in the processing of data generated from mobile sensing or communication devices that requires energy/areal efficiencies.
纳米级电阻式存储器件的最新进展为内存计算提供了充满希望的机遇,因为它们具备同时进行信息存储和处理的能力。电流与存储电导之间的关系可用于执行矩阵向量乘法,以处理数据密集型任务,如机器学习中的训练和推理以及连续数据流分析。这项工作使用具有有限单元间电阻的实际交叉阵列模型,实现了用于矩阵向量乘法的存储电导映射算法。迭代模拟计算每个交叉点处特定于矩阵的局部结电压,并通过将存储电导与施加的和实际的结电位之比相乘来系统地补偿电压降。校准因子既取决于交叉点的位置,也取决于矩阵结构。这种修正使得心电图信号的压缩成为可能,而未校准的电导则无法做到这一点。结果表明,该校准方案在处理来自需要能量/面积效率的移动传感或通信设备生成的数据时具有潜在用途。