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A memristor-based neuromorphic engine with a current sensing scheme for artificial neural network applications

机译:具有电流感应方案的基于忆阻器的神经形态引擎,用于人工神经网络应用

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摘要

By following the big data revolution, neuromorphic computing makes a comeback for its great potential in information processing capability. Despite of many types of architectures reported in conventional CMOS domain, memristor, as an example of emerging devices, demonstrates an intrinsic support of parallel matrix-vector multiplication operation that is widely used in artificial neural network applications. However, its computation accuracy and speed are far from satisfactory, mainly constrained by the features of memristor crossbar array and peripheral circuitry. In this work, we propose a new memristor crossbar based computing engine design by leveraging a current sensing scheme. High parallelism in operation and therefore fast computation can be achieved via simultaneously supplying analog voltages into a memristor crossbar and directly converting the weighted current through a current-to-voltage converter. We implemented and compared the feed-forward neural networks with different array sizes and layer numbers. Our design demonstrates a good computation accuracy, e.g., 96.6% classification accuracy for MNIST handwritten digit in a two-layer design.
机译:通过跟随大数据革命,神经形态计算因其在信息处理能力方面的巨大潜力而​​卷土重来。尽管在常规CMOS域中报告了许多类型的体系结构,但忆阻器作为新兴设备的一个示例,证明了对并行矩阵矢量乘法操作的内在支持,该操作已在人工神经网络应用中广泛使用。但是,其计算精度和速度远远不能令人满意,主要受忆阻器纵横制阵列和外围电路的特性限制。在这项工作中,我们提出了一种利用电流感应方案的基于忆阻器交叉开关的新计算引擎设计。通过将模拟电压同时提供给忆阻器纵横开关并通过电流-电压转换器直接转换加权电流,可以实现操作中的高度并行性,并因此实现快速计算。我们实现并比较了具有不同数组大小和层数的前馈神经网络。我们的设计显示出良好的计算精度,例如在两层设计中MNIST手写数字的分类精度为96.6%。

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