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Application of Random Forest Classifier by Means of a QCM-Based E-Nose in the Identification of Chinese Liquor Flavors

机译:基于QCM的电子鼻随机森林分类器在中国白酒风味鉴定中的应用

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摘要

Chinese liquors from different plants have unique flavors attributable to the use of various bacteria and fungi, raw materials, and production processes. Accurately identifying the flavor of Chinese liquors is not always possible through the subjective consciousness of a taster. A quartz crystal microbalance (QCM)-based electronic nose (e-nose) can perform this task because of its keen ability to imitate human senses. It does so by using a sensor array and a pattern-recognition system. In this paper, the behavior of a pattern-recognition system based on a random forest (RF) classifier is optimized by revising the number of decision trees and the number of variables in the decision trees of the RF. Raw data from the characteristics of Chinese liquors collected from the QCM-based e-nose were used by the RF classifier without processes of feature extraction and data pretreatment, which can reserve detailed information as much as possible. The prediction accuracies and computation times indicate a superior performance by the RF classifier over three other classifiers (linear discriminant analysis, backpropagation artificial neural network, and support vector machine). Taking both the application of the e-nose and the validation of the RF classifier into account, an available method is obtained to identify flavors of Chinese liquors.
机译:来自不同植物的白酒具有独特的风味,这归因于各种细菌和真菌的使用,原材料和生产工艺。并非总是通过品尝者的主观意识来准确识别中国白酒的味道。基于石英微天平(QCM)的电子鼻(e-nose)可以执行此任务,因为它具有模仿人类感官的敏锐能力。它通过使用传感器阵列和模式识别系统来实现。本文通过修改决策树的数量和决策树中变量的数量,优化了基于随机森林(RF)分类器的模式识别系统的行为。 RF分类器使用从基于QCM的电子鼻中收集的白酒的特征获取的原始数据,无需进行特征提取和数据预处理的过程,从而可以尽可能保留详细信息。预测准确性和计算时间表明,RF分类器的性能优于其他三个分类器(线性判别分析,反向传播人工神经网络和支持向量机)。考虑到电子鼻的应用和RF分类器的验证,获得了一种识别中国白酒风味的可用方法。

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