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首页> 外文期刊>RSC Advances >A novel electronic nose for simultaneous quantitative determination of concentrations and odor intensity analysis of benzene, toluene and ethylbenzene mixtures
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A novel electronic nose for simultaneous quantitative determination of concentrations and odor intensity analysis of benzene, toluene and ethylbenzene mixtures

机译:新型电子鼻可同时定量测定苯,甲苯和乙苯混合物的浓度和气味强度

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摘要

Aromatic hydrocarbons (benzene, toluene, ethylbenzene etc.) are part of the main components of air pollution and odor nuisance. However, previous studies on simultaneous detection of aromatic mixtures and odor intensity analysis by an electronic nose (E-nose) are limited. The aim of this study is to develop a novel E-nose system to simultaneously determine chemical concentrations and odor intensity of benzene, toluene and ethylbenzene mixtures. The system consists of a sensor array with 5 gas sensors, a signal converter and a pattern recognition system which is based on a Back Propagation (BP) neural network. 300 groups of aromatic hydrocarbon mixtures (benzene, toluene and ethylbenzene) with different concentrations were determined by sensor array and gas chromatography (GC) to build, test and optimize the BP neural network. Then the optimum structure and functions of the BP network were verified by about 50 runs of contrast tests. The results showed that the average relative error of concentrations measured by the E-nose system was 9.71% relative to the results of GC. Furthermore, six odor intensity prediction models were used to convert the concentrations of the aromatic mixtures to their odor intensity. Based on the comparison with sensory analysis, the Weber-Fechner law model, the vector model and the simplified extended vectorial model were adopted to predict the odor intensity of single, binary and ternary compounds respectively.
机译:芳香烃(苯,甲苯,乙苯等)是空气污染和有害气味的主要成分之一。然而,先前关于通过电子鼻(E-鼻子)同时检测芳香族混合物和气味强度分析的研究是有限的。这项研究的目的是开发一种新颖的电子鼻系统,以同时测定苯,甲苯和乙苯混合物的化学浓度和气味强度。该系统由一个带有5个气体传感器的传感器阵列,一个信号转换器和一个基于反向传播(BP)神经网络的模式识别系统组成。通过传感器阵列和气相色谱仪(GC)确定了300种不同浓度的芳香烃混合物(苯,甲苯和乙苯),以建立,测试和优化BP神经网络。然后通过约50次对比测试验证了BP网络的最佳结构和功能。结果表明,相对于GC结果,E-鼻系统测得的浓度平均相对误差为9.71%。此外,使用六个气味强度预测模型将芳香族混合物的浓度转换为它们的气味强度。在与感官分析进行比较的基础上,采用Weber-Fechner定律模型,矢量模型和简化的扩展矢量模型分别预测单一,二元和三元化合物的气味强度。

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