基于循环模拟计算的三维堆叠神经网络电路设计

K. Kiyoyama, Y. Horio, T. Fukushima, H. Hashimoto, Takemori Orima, M. Koyanagi
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引用次数: 1

摘要

提出了一种用于三维芯片堆叠(3d)循环信号处理深度神经网络的基于模拟的交叉条形CMOS神经元乘法器加法器电路。为了验证所提出的概念,设计的电路总共是四层堆叠芯片,由两个主要执行模拟乘法累积(MAC)操作的神经元芯片和两个存储神经元电位(激活)和权重数据的存储芯片组成。根据关于神经网络电路加速器的论文和会议报告,模拟MAC操作有可能通过使用交叉条配置的模拟处理来实现高效率。然而,为了克服电噪声和元件非线性导致的计算精度下降,需要采用补偿技术的模拟MAC电路。在本研究中,我们设计并验证了一种用于高效三维循环模拟处理的高线性乘法器加法器电路。本文重点研究了采用开关电容相关双采样(CDS)技术的电流加法器电路,以最大限度地减少非线性、噪声和电路面积。所提出的模拟加法器电路采用180nm和工作电源电压1.8V的CMOS技术设计,并制造了集成64个神经元和64 × 64个突触连接的神经元芯片。分析结果证实,CDS技术采用模拟加法器电路,将噪声输出电压降低到0.1mV以下,电压线性范围在1.6V以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design for 3-D Stacked Neural Network Circuit with Cyclic Analog Computing
An analog-based CMOS neuron with crossbar configuration multiplier-adder circuit for three-dimensional chip stacking (3-D) cyclic signal processing deep neural network is presented. The circuit designed to verify the proposed concept is a total of four-layer stacked chips, consisting of two neuron chips that mainly perform analog multiply-accumulate (MAC) operations and two memory chips that store neuron potential (activation) and weight data. According to papers and conference presentations on accelerators for the neural network circuit, the analog MAC operation has the potential to achieve high efficiency by using the analog processing of the crossbar configuration. However, analog MAC circuit with compensation technique is required to overcome the decrease in computing accuracy due to electrical noise and element nonlinearity. In this study, we have designed and verified a highly linearity multiplier-adder circuit for highly efficient 3-D cyclic analog processing. In this paper, we focus on the current adder circuit with switched capacitor correlated double sampling (CDS) technique, to minimize non-linearity, noise, and circuit area. The proposed the analog adder circuit was designed with 180-nm and operation power supply voltage 1.8V CMOS technology, and the fabricated neuron chip that integrates 64 neurons and $64 \times 64$ synaptic connections. As analysis results, it was confirmed that the CDS technique apply analog adder circuit reduced the noise output voltage less than 0.1mV and the range of voltage linearity was over 1.6V.
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