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RRAM-based parallel computing architecture using k-nearest neighbor classification for pattern recognition

机译:基于k近邻分类的基于RRAM的并行计算架构用于模式识别

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摘要

Resistive switching memory (RRAM) is considered as one of the most promising devices for parallel computing solutions that may overcome the von Neumann bottleneck of today’s electronic systems. However, the existing RRAM-based parallel computing architectures suffer from practical problems such as device variations and extra computing circuits. In this work, we propose a novel parallel computing architecture for pattern recognition by implementing k-nearest neighbor classification on metal-oxide RRAM crossbar arrays. Metal-oxide RRAM with gradual RESET behaviors is chosen as both the storage and computing components. The proposed architecture is tested by the MNIST database. High speed (~100 ns per example) and high recognition accuracy (97.05%) are obtained. The influence of several non-ideal device properties is also discussed, and it turns out that the proposed architecture shows great tolerance to device variations. This work paves a new way to achieve RRAM-based parallel computing hardware systems with high performance.
机译:电阻切换存储器(RRAM)被认为是并行计算解决方案中最有希望的设备之一,可以克服当今电子系统的冯·诺依曼瓶颈。但是,现有的基于RRAM的并行计算体系结构会遇到实际问题,例如设备变化和额外的计算电路。在这项工作中,我们提出了一种新颖的并行计算架构,用于通过在金属氧化物RRAM交叉开关阵列上实现k最近邻分类来进行模式识别。选择具有渐进式RESET行为的金属氧化物RRAM作为存储和计算组件。 MNIST数据库对提出的体系结构进行了测试。获得了高速度(每个示例约100µns)和高识别精度(97.05%)。还讨论了几种非理想设备特性的影响,结果表明,所提出的体系结构对设备变化表现出很大的容忍度。这项工作为实现基于RRAM的高性能并行计算硬件系统铺平了道路。

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