利用嵌入CMOS电路的铁电忆阻器人工突触进行图像识别

Y. Nishitani, Y. Kaneko, M. Ueda
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引用次数: 6

摘要

忆阻器作为脑启发计算硬件(如人工神经网络)的器件引起了人们的关注[1]。典型的神经网络由多个通过突触相互连接的神经元组成。突触调节两个神经元之间的信号传输强度或“重量”。权值可控性是神经网络自适应的关键。因此,有必要建立一个能够调节其自身电导的人工突触,电导代表权重。一些研究者已经将两端忆阻器用作突触[2,3]。然而,在使用传统忆阻器时,由于其双端结构,必须制备与所学内容相对应的形状复杂的脉冲,并同时应用于两个终端[4]。先前,我们发现可编程突触功能可以在单晶氧化物衬底上制造的三端铁电忆阻器(3T-FeMEM)上实现,从而实现简单的学习方案[5]。在这项工作中,通过在CMOS电路上集成3t - femm来制造突触芯片。然后,我们使用这些芯片的神经网络电路演示了片上联想记忆功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial synapses using ferroelectric memristors embedded with CMOS Circuit for image recognition
Memristors have attracted attention as devices for brain-inspired computing hardware, such as artificial neural networks [1]. Typical neural networks comprise multiple neurons interconnected via synapses. A synapse modulates the signal transmission strength or “weight” between two neurons. Weight controllability is essential to neural network adaptability. Therefore, it is necessary to establish an artificial synapse that can modulate its own electric conductance, which represents the weights. Some researchers have used two-terminal memristors as synapses [2,3]. However, when using conventional memristors, pulses with complex shapes corresponding to what is learned must be prepared and applied to both terminals simultaneously because of their two-terminal structures [4]. Previously, we showed that a programmable synapse function could be implemented on a three-terminal ferroelectric memristor (3T-FeMEM) fabricated on a single crystal oxide substrate, which enabled simple learning schemes [5]. In this work, synapse chips were fabricated by integrating 3T-FeMEMs on CMOS circuits. We then demonstrated on-chip associative memory function using a neural network circuit with these chips.
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