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VOC RECOGNITION WITH SENSOR ARRAY AND NEURO-FUZZY NETWORK

机译:带有传感器阵列和神经网络的VOC识别

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摘要

A sensor array with ten sensors integrated on a substrate was developed to recognize various kinds and quantities of volatile organic compounds (VOCs), such as benzene, toluene, ethyl alcohol, methyl alcohol, and acetone. The sensor array consists of gas-sensing materials using SnO_2 as the base material, plus a heating element based on a meandered platinum layer, all deposited on the substrate. The sensors on the sensor array are designed to produce a uniform thermal distribution and show a high and broad sensitivity and reproductivity to low concentrations through the usage of nano-sized sensing materials with high surface areas and different additives. By utilizing the sensing signals of the array with a neuro-fuzzy network, a recognition system can then be implemented for the classification and quantification of VOCs. We implemented a gas species recognizer using a multi-layer neural network with error back propagation learning algorithm and a gas concentration recognizer using a neuro-fuzzy network. The neuro-fuzzy network for gas concentration recognizer shows good generalization results for the test data as well as the learning data.
机译:开发了在基板上集成了十个传感器的传感器阵列,以识别各种种类和数量的挥发性有机化合物(VOC),例如苯,甲苯,乙醇,甲醇和丙酮。传感器阵列由使用SnO_2作为基础材料的气敏材料,以及基于曲折铂层的加热元件组成,所有元件均沉积在基板上。传感器阵列上的传感器设计为产生均匀的热分布,并通过使用具有高表面积和不同添加剂的纳米尺寸传感材料,对低浓度显示出高而宽的灵敏度和再现性。通过利用神经模糊网络利用阵列的感测信号,可以实现识别系统来对VOC进行分类和定量。我们使用带有误差反向传播学习算法的多层神经网络实现了气体种类识别器,并使用了神经模糊网络实现了气体浓度识别器。气体浓度识别器的神经模糊网络对测试数据和学习数据显示出良好的概括结果。

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