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New approach for gas identification using supervised learning methods (SVM and LVQ)

机译:使用监督学习方法(SVM和LVQ)进行气体识别的新方法

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This article proposes a new approach for gas identification, this approach relies on applying supervised learning methods to identify a single gas as well as a mixture of two gases. The gas is trapped in a gas discharge tube, it is then ionized at a relatively low pressure using an HV transformer. The images captured after the ionization of each single gas is then captured and transformed into a database after being treated in order to be classified. The obtained results were very satisfying for SVM as well as for LVQ. For the case of identification of a single gas, the learning rate as well as the validation rate for both methods were 100%. However, for the case of mixture of two gases, a Multi-Layer Perceptron neural network was used to identify the gases, the learning rate as well as the validation rate were 98.59% and 98.77% respectively. The program developed on MATLAB takes the captured image as an input and outputs the identified gases for the user. The gases used in the experiments are Argon (Ar), oxygen (O2), Helium (He) and carbon dioxide (CO2).
机译:本文提出了一种新的气体识别方法,该方法依赖于应用监督学习方法来识别一种气体以及两种气体的混合物。气体被捕集在排气管中,然后通过高压变压器在相对较低的压力下被电离。然后将每种气体电离后捕获的图​​像进行处理,然后捕获并转换成数据库,以便进行分类。获得的结果对于SVM和LVQ都非常令人满意。对于鉴定单一气体的情况,两种方法的学习率和验证率均为100%。但是,对于两种气体混合的情况,使用多层Perceptron神经网络识别气体,学习率和验证率分别为98.59%和98.77%。在MATLAB上开发的程序将捕获的图像作为输入,并向用户输出识别出的气体。实验中使用的气体为氩气(Ar),氧气(O2),氦气(He)和二氧化碳(CO2)。

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