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Electronic nose sensor drift compensation based on deep belief network

机译:基于深度置信网络的电子鼻传感器漂移补偿

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Gas sensors drift is a serious limit on the appliance and development of electronic noses. To a certain extent, adaptive methods based on machine learning overcome the impact of drift. However, existing machine learning methods conduct drift compensation from the classification level, rather than the analysis and expression of the depth characteristics of gas sensors. For this reason, deep belief network(DBN) is adopted to preprocess gas sensor data, to make the characteristics of sensor data associated and combined with each other. In this way, the coupling between each characteristic of sensor data will be strengthened. Depth characteristics of the data are extracted and expressed effectively, so as to be classified conductively. At last, through a numerical experiment, this method combined with support vectors machine (SVM) was proved to be effective. Meanwhile principal component analysis (PCA) was applied to the depth characteristics, extracted by DBN, to interpret its advantages in improving gas recognition under drift.
机译:气体传感器的漂移严重限制了电器和电子鼻的发展。在某种程度上,基于机器学习的自适应方法克服了漂移的影响。但是,现有的机器学习方法从分类级别进行漂移补偿,而不是对气体传感器的深度特征进行分析和表达。为此,采用深度信念网络(DBN)对气体传感器数据进行预处理,以使传感器数据的特性相互关联和组合。这样,将加强传感器数据的每个特性之间的耦合。数据的深度特征被有效地提取和表达,从而可以进行导电分类。最后,通过数值实验证明了该方法与支持向量机(SVM)的结合是有效的。同时,将主成分分析法(PCA)应用于DBN提取的深度特征,以解释其在改善漂移下气体识别方面的优势。

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