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A False Alarm Reduction Method for a Gas Sensor Based Electronic Nose

机译:一种基于电子传感器的气体传感器的虚警减少方法

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Electronic noses (E-Noses) are becoming popular for food and fruit quality assessment due to their robustness and repeated usability without fatigue, unlike human experts. An E-Nose equipped with classification algorithms and having open ended classification boundaries such as the k -nearest neighbor ( k -NN), support vector machine (SVM), and multilayer perceptron neural network (MLPNN), are found to suffer from false classification errors of irrelevant odor data. To reduce false classification and misclassification errors, and to improve correct rejection performance; algorithms with a hyperspheric boundary, such as a radial basis function neural network (RBFNN) and generalized regression neural network (GRNN) with a Gaussian activation function in the hidden layer should be used. The simulation results presented in this paper show that GRNN has more correct classification efficiency and false alarm reduction capability compared to RBFNN. As the design of a GRNN and RBFNN is complex and expensive due to large numbers of neuron requirements, a simple hyperspheric classification method based on minimum, maximum, and mean (MMM) values of each class of the training dataset was presented. The MMM algorithm was simple and found to be fast and efficient in correctly classifying data of training classes, and correctly rejecting data of extraneous odors, and thereby reduced false alarms.
机译:电子鼻(E型鼻)由于其坚固性和反复使用性而又不疲劳,因此在食品和水果质量评估中正变得流行,这与人类专家不同。发现配备分类算法并具有开放式分类边界(例如,k近邻(k -NN),支持向量机(SVM)和多层感知器神经网络(MLPNN))的E-Nose遭受错误分类的困扰不相关的气味数据的错误。减少错误分类和错误分类错误,并提高正确的拒绝性能;应该使用具有超球面边界的算法,例如径向基函数神经网络(RBFNN)和在隐藏层中具有高斯激活函数的广义回归神经网络(GRNN)。本文给出的仿真结果表明,与RBFNN相比,GRNN具有更高的正确分类效率和减少误报的能力。由于大量神经元的需求,GRNN和RBFNN的设计既复杂又昂贵,因此提出了一种基于训练数据集每个类别的最小值,最大值和平均值(MMM)值的简单的超球面分类方法。 MMM算法很简单,并且可以快速有效地正确分类训练数据,正确拒绝异味数据,从而减少了误报。

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