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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >VLSI Implementation of a Bio-Inspired Olfactory Spiking Neural Network
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VLSI Implementation of a Bio-Inspired Olfactory Spiking Neural Network

机译:VLSI实施生物启发性嗅觉钉刺神经网络

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摘要

This paper presents a low-power, neuromorphic spiking neural network (SNN) chip that can be integrated in an electronic nose system to classify odor. The proposed SNN takes advantage of sub-threshold oscillation and onset-latency representation to reduce power consumption and chip area, providing a more distinct output for each odor input. The synaptic weights between the mitral and cortical cells are modified according to an spike-timing-dependent plasticity learning rule. During the experiment, the odor data are sampled by a commercial electronic nose (Cyranose 320) and are normalized before training and testing to ensure that the classification result is only caused by learning. Measurement results show that the circuit only consumed an average power of approximately 3.6 $mu{rm W}$ with a 1-V power supply to discriminate odor data. The SNN has either a high or low output response for a given input odor, making it easy to determine whether the circuit has made the correct decision. The measurement result of the SNN chip and some well-known algorithms (support vector machine and the K-nearest neighbor program) is compared to demonstrate the classification performance of the proposed SNN chip.The mean testing accuracy is 87.59% for the data used in this paper.
机译:本文提出了一种低功耗,神经形态刺激神经网络(SNN)芯片,该芯片可以集成到电子鼻系统中以对气味进行分类。所提出的SNN利用亚阈值振荡和延迟开始时间表示来减少功耗和芯片面积,从而为每种气味输入提供了更独特的输出。二尖瓣和皮层细胞之间的突触权重根据峰-时间依赖的可塑性学习规则进行修改。在实验过程中,气味数据通过商用电子鼻(Cyranose 320)进行采样,并在训练和测试之前进行归一化,以确保分类结果仅由学习引起。测量结果表明,使用1-V电源来区分气味数据时,该电路仅消耗了大约3.6μmu{rm W} $的平均功率。对于给定的输入气味,SNN具有较高或较低的输出响应,从而可以轻松确定电路是否做出了正确的决定。比较了SNN芯片的测量结果和一些著名的算法(支持向量机和K最近邻程序),以证明所提出的SNN芯片的分类性能.SNN芯片使用的数据的平均测试精度为87.59%这篇报告。

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