We report the experimental details on the successful application of the electronic nose approach to identify and quantify components in ternary vapor mixtures. Preliminary results have been presented recently (L. A. Pinnaduwage et al., Appl. Phys. Lett. 91, 044105 (2007)). Our MEMS-based electronic nose is composed of a microcantilever sensor array with seven individual sensors used for vapor detection and an artificial neural network (ANN) for the pattern recognition. A set of custom vapor generators generated reproducible vapor mixtures in different compositions for training and testing of the neural network. The sensor array was selected to be capable to generating different response patterns to mixtures with different component proportions. Therefore, once the electronic nose was trained using the response patterns to various compositions of the mixture, it was able to predict the composition of “unknown” mixtures. We have studied two vapor systems: one included the nerve gas simulant dimethylmethyl phosphonate (DMMP) at parts-per-billion (ppb) concentrations and water and ethanol at parts-per-million (ppm) concentrations; the other system included acetone, water and ethanol all of which were at ppm concentrations. In both systems, individual, binary and ternary mixtures were analyzed with good reproducibility. ud
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机译:我们报告了成功应用电子鼻法识别和量化三元蒸气混合物中成分的实验细节。最近已经给出了初步结果(L.A.Pinnaduwage等人,Appl.Phys.Lett.91,044105(2007))。我们基于MEMS的电子鼻由一个微悬臂梁传感器阵列和七个用于蒸汽检测的独立传感器以及一个用于模式识别的人工神经网络(ANN)组成。一组定制的蒸汽发生器生成了具有不同成分的可再现蒸汽混合物,用于训练和测试神经网络。选择传感器阵列以能够对具有不同组分比例的混合物产生不同的响应模式。因此,一旦使用对混合物的各种成分的响应模式训练了电子鼻,就可以预测“未知”混合物的成分。我们研究了两种蒸气系统:一种包括神经气体模拟物二甲基甲基膦酸酯(DMMP),浓度为十亿分之几(ppb),另一种是水和乙醇,浓度为百万分之几(ppm)。另一个系统包括丙酮,水和乙醇,所有浓度均为ppm。在这两种系统中,均以良好的重现性分析了单个,二元和三元混合物。 ud
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