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Design and Hardware Implementation of Neuromorphic Systems With RRAM Synapses and Threshold-Controlled Neurons for Pattern Recognition

机译:具有RRAM突触和阈值控制神经元的模式识别神经形态系统的设计和硬件实现

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摘要

In this paper, a hardware-realized neuromorphic system for pattern recognition is presented. The system directly captures images from the environment, and then conducts classification using a single layer neural network. Metal-oxide resistive random access memory (RRAM) is used as electronic synapses, and threshold-controlled neurons are proposed as postsynaptic neurons to save the system area and simplify the operation. In the proposed threshold-controlled neuron, no capacitor is utilized, which contributes to higher integration density. The total energy consumption of RRAM synapses for classifying an example is 0.31μJ on average. The proposed system has been implemented on hardware, and has been experimentally demonstrated to show the capability of pattern recognition.
机译:本文提出了一种用于模式识别的硬件实现的神经形态系统。该系统直接从环境中捕获图像,然后使用单层神经网络进行分类。金属氧化物电阻随机存取存储器(RRAM)用作电子突触,而阈值控制神经元则被提出作为突触后神经元,以节省系统面积并简化操作。在提出的阈值控制神经元中,不使用电容器,这有助于更高的集成密度。用于分类示例的RRAM突触的总能耗平均为0.31μJ。所提出的系统已在硬件上实现,并已通过实验证明具有模式识别能力。

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