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Remarks on neural network-based tea aroma recognition with a mass-sensitive chemical sensor using plasma-organic-polymer-film-coated quartz crystal resonators

机译:使用等离子体 - 有机聚合物 - 聚合物 - 膜涂层石英晶体谐振器与质敏化学传感器的神经网络茶叶芳香识别的备注

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This study investigates a method for recognition of tea aroma using a multilayer neural network. A gas-sensing system utilising an array of quartz crystal resonators coated with plasma-organic-polymer-films is designed. Three teas, oolong, jasmine and puerh, are used as the sources of sample gas. Wavelet transform frequency analysis is applied to the signals from the gas-sensing system, and the features of the sensor response are extracted. These features are used as input vectors to a neural network. The neural network achieves an average recognition rate of 96.7% for the three tea samples. Our experimental results demonstrate the effectiveness of the gas-sensing system and neural network in this application.
机译:本研究研究了使用多层神经网络识别茶香的方法。设计了利用涂有等离子体 - 有机聚合物膜的石英晶体谐振器阵列的气体传感系统。三茶,乌龙,茉莉和普洱用作样品气体的来源。小波变换频率分析应用于来自气体传感系统的信号,提取传感器响应的特征。这些功能用作神经网络的输入向量。神经网络达到三种茶样品的平均识别率为96.7%。我们的实验结果表明了本申请中的气体传感系统和神经网络的有效性。

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