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首页> 外文期刊>Analytical chemistry >RAPID ANALYTE RECOGNITION IN A DEVICE BASED ON OPTICAL SENSORS AND THE OLFACTORY SYSTEM
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RAPID ANALYTE RECOGNITION IN A DEVICE BASED ON OPTICAL SENSORS AND THE OLFACTORY SYSTEM

机译:基于光学传感器和嗅觉系统的设备中快速分析物识别

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摘要

We report here the development of a new vapor sensing device that is designed as an array of optically based chemosensors providing input to a pattern recognition system incorporating artificial neural networks, Distributed sensors providing inputs to an integrative circuit is a principle derived from studies of the vertebrate olfactory system. In the present device, primary chemosensing input is provided by an array of fiber-optic sensors. The individual fiber sensors, which are broadly yet differentially responsive, were constructed by immobilizing molecules of the fluorescent indicator dye Nile Red in polymer matrices of varying polarity, hydrophobicity, pore size, elasticity, and swelling tendency, creating unique sensing regions that interact differently with vapor molecules, The fluorescent signals obtained from each fiber sensor in response to 2-s applications of different analyte vapors have unique temporal characteristics. Using signals from the fiber array as inputs, artificial neural networks were trained to identify both single analytes and binary mixtures, as well as relative concentrations. Networks trained with integrated response data from the array or with temporal data from a single fiber made numerous errors in analyte identification across concentrations, However, when trained with temporal information from the fiber array, networks using ''name'' or ''characteristic'' output codes performed well in identifying test analytes.
机译:我们在这里报告了一种新的蒸汽感测设备的开发,该设备设计为基于光学的化学传感器的阵列,可为包含人工神经网络的模式识别系统提供输入,分布式传感器为集成电路提供输入是从对脊椎动物的研究中得出的原理嗅觉系统。在本设备中,主要的化学传感输入由光纤传感器阵列提供。通过将荧光指示剂染料尼罗红的分子固定在具有不同极性,疏水性,孔径,弹性和溶胀趋势的聚合物基质中,从而构建了独特的传感区域,这些传感器具有宽泛的响应能力,并且将其固定在不同的相互作用区域中从每个光纤传感器获得的荧光信号,响应不同分析物蒸汽的2-s施加而具有独特的时间特性。使用来自光纤阵列的信号作为输入,对人工神经网络进行了训练,以识别单一分析物和二元混合物以及相对浓度。使用来自阵列的集成响应数据或来自单根光纤的时间数据进行训练的网络在整个浓度范围内对分析物的识别都造成了许多错误,但是,当使用来自光纤阵列的时间信息进行训练时,使用“名称”或“特征”的网络输出代码在识别测试分析物方面表现良好。

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