脉冲潜伏期在人工嗅觉系统中的作用研究。

Frontiers in neuroengineering Pub Date : 2011-12-20 eCollection Date: 2011-01-01 DOI:10.3389/fneng.2011.00016
Eugenio Martinelli, Davide Polese, Francesca Dini, Roberto Paolesse, Daniel Filippini, Ingemar Lundström, Corrado Di Natale
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引用次数: 19

摘要

实验研究表明,对外界刺激的反应可能在刺激物与适当的受体发生物理相互作用后仅几百毫秒就会出现。这种行为表明,神经元在第一个尖峰中传输最大的有意义的信号部分,并且尖峰延迟是生物神经网络中信息内容的一个很好的描述符。本文在人工感觉系统中研究了这一特性,其中单层尖峰神经元使用基于大量化学传感器的人工嗅觉平台生成的数据进行训练。研究了具有和不具有横向抑制的脉冲神经网络区分不同化学物质及其混合物的能力,并将脉冲延迟和平均发射率作为网络的输出特征。结果表明,输出脉冲序列的平均发射速率在所经历的蒸汽中表现出最好的分离,而延迟码能够在较短的时间内正确区分所有被测挥发性化合物。这种行为在性质上与最近在自然嗅觉中发现的行为相似,值得注意的是,它为跟踪人工嗅觉系统的测量条件提供了实用的建议,为每个特定情况定义了适当的测量时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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An investigation on the role of spike latency in an artificial olfactory system.

Experimental studies have shown that the reactions to external stimuli may appear only few hundreds of milliseconds after the physical interaction of the stimulus with the proper receptor. This behavior suggests that neurons transmit the largest meaningful part of their signal in the first spikes, and than that the spike latency is a good descriptor of the information content in biological neural networks. In this paper this property has been investigated in an artificial sensorial system where a single layer of spiking neurons is trained with the data generated by an artificial olfactory platform based on a large array of chemical sensors. The capability to discriminate between distinct chemicals and mixtures of them was studied with spiking neural networks endowed with and without lateral inhibitions and considering as output feature of the network both the spikes latency and the average firing rate. Results show that the average firing rate of the output spikes sequences shows the best separation among the experienced vapors, however the latency code is able in a shorter time to correctly discriminate all the tested volatile compounds. This behavior is qualitatively similar to those recently found in natural olfaction, and noteworthy it provides practical suggestions to tail the measurement conditions of artificial olfactory systems defining for each specific case a proper measurement time.

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