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In-Memory Computing with Memristor Arrays

机译:忆阻器阵列的内存中计算

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Memristors with tunable non-volatile resistance states offer the potential for in-memory computing that mitigates the von-Neumann bottleneck. We build a large scale memristor array by integrating a transistor array with Ta/HfO2memristors that have stable multilevel resistance states and linear IV characteristic. With off-chip peripheral driving circuits, the memristor chip is capable of high-precision analog computing and online learning. We demonstrate a weight-update scheme that provides linear and symmetric potentiation and depression with no more than two pulses for each cell. We train the array as a single-layer fully-connected feedforward neural network for the WDBC data base and achieve 98% classification accuracy. We further partition the array into a two-layer network, which achieves 91.71% classification accuracy for MNIST database experimentally. The system demonstrates high defect tolerance and excellent speed-energy efficiency.
机译:具有可调的非易失性电阻状态的忆阻器为减轻von-Neumann瓶颈的内存计算提供了潜力。我们通过将晶体管阵列与Ta / HfO集成来构建大规模忆阻器阵列 2 具有稳定的多级电阻状态和线性IV特性的忆阻器。借助片外外围驱动电路,忆阻器芯片能够进行高精度模拟计算和在线学习。我们演示了一个权重更新方案,该方案提供线性和对称的增强和抑制作用,每个细胞的脉冲数不超过两个。我们将阵列训练为WDBC数据库的单层全连接前馈神经网络,并达到98%的分类精度。我们进一步将该阵列划分为两层网络,通过实验,该网络对MNIST数据库的分类精度达到91.71%。该系统显示出较高的缺陷容忍度和出色的速度能量效率。

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