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Sampling Spiking Neural Network electronic nose on a tiny-chip

机译:在微型芯片上采样尖刺神经网络电子鼻

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Chemicals classification using a new Sampling Spiking Neural Network (SSNN) approach is presented in this paper with experimental measurements using the Cyranose 320 sensor array. The network is unique in its minimal yet powerful design which implements on chip learning and parallel monitoring to detect binary odor patterns with high noise environment. The SSNN architecture is further implemented on a 0.5 um CMOS technology tiny-chip designed to work in conjunction with a 256K external SRAM memory. It handles the routing of spike signal among 32,000 synapses and 255 neurons. At the same time, it tracks and records learning statistics. The chip can be used in parallel with other SSNN co processors for very large systems. Experimental measurements of our SSNN E-Nose classifier, compared to other E-nose systems proved superior in capability, size, and correctness.
机译:本文介绍了使用新的采样尖峰神经网络(SSNN)方法进行化学分类,并使用Cyranose 320传感器阵列进行了实验测量。该网络的独特之处在于其最小但功能强大的设计,可实现片上学习和并行监控,以检测具有高噪声环境的二进制气味模式。 SSNN架构进一步在设计为与256K外部SRAM存储器配合工作的0.5 um CMOS技术微型芯片上实现。它处理32,000个突触和255个神经元之间的尖峰信号路由。同时,它跟踪和记录学习统计数据。该芯片可与其他SSNN协处理器并行使用,用于超大型系统。与其他E-nose系统相比,我们的SSNN E-Nose分类器的实验测量证明在功能,大小和正确性方面都优越。

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