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Estimation of Concentration Values of Different Gases Based on Long Short-Term Memory by Using Electronic Nose

机译:用电子鼻子估计基于长短期记忆的不同气体浓度值

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An electronic nose (e-nose) is commonly used in different areas. In the e-nose studies, one of the most important subjects is the estimation of the different concentration values of different gases. An accurate estimation of gas concentrations plays a very important role in sensitive issues such as disease detection. This study has been carried out to increase the classification and regression successes of concentration values of four different gases detected by 4 metal oxide gas sensors. The different methods are used to compare the success of the classification of the concentration levels and the success of the estimation of concentration values of these all gases. In order to realize these classification and regression processes, first a preprocessing and a feature extraction steps were applied to the raw data. The focus of this study is to increase the success achieved in classification and regression by performing the feature extraction using the proposed method. In the proposed method, "Fully Connected Layer" of Long Short-Term Memory networks was used as a feature extraction. Then, these extracted features were used. The results of the proposed method are compared the other traditional methods. It was observed that there was an improvement in both the classification and regression results with the proposed method. The highest accuracy rate in the classification were obtained in the Support Vector Machine method with 90.8% and in the regression problem, the best mean square errors were obtained with Gaussian Process Regression by using the proposed method.
机译:电子鼻子(E-鼻子)通常用于不同的区域。在E-鼻子研究中,最重要的受试者之一是估计不同气体的不同浓度值。准确估计气体浓度在诸如疾病检测等敏感问题中起着非常重要的作用。已经进行了该研究,以提高由4个金属氧化物气体传感器检测到的四种不同气体的浓度值的分类和回归成功。不同的方法用于比较浓度水平分类的成功和这些所有气体的浓度值的估计的成功。为了实现这些分类和回归过程,首先将预处理和特征提取步骤应用于原始数据。本研究的重点是通过使用该方法进行特征提取来增加分类和回归的成功。在所提出的方法中,使用长短期存储网络的“完全连接层”作为特征提取。然后,使用这些提取的特征。该方法的结果比较了其他传统方法。观察到,随着所提出的方法,分类和回归结果都有改善。在支持向量机方法中获得了最高精度率,在含有90.8%和回归问题中,通过使用所提出的方法,通过高斯过程回归获得最佳均方误差。

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