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A Novel Sparse Subspace Correlation Analysis-Based Domain Adaptation Method for Sensor Drift Suppression in E-nose

机译:基于稀疏子空间相关分析的基于稀疏子空间相关性分析,用于电子鼻中的传感器漂移抑制的畴适应方法

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Sensor drift caused by the sensor aging and environmental factors is an urgent problem that seriously affects the detection performance and service life of electronic nose (E-nose). It is necessary to research the sensor drift suppression methods to realize the long-term and stable detection of E-nose. In this paper, a highly efficient sparse subspace correlation analysis-based domain adaptation(SSCA-DA) method is proposed to suppress the sensor drift. This method is to find the optimal subspace for each dataset, and the transformed data after transforming to the optimal subspace is sparsely reconstructed, which can realize the knowledge transfer in the data domains with and without drift information. From the experiment results, it can be found that the sensor drift can be satisfactorily solved by the proposed method.
机译:传感器老化和环境因素引起的传感器漂移是一种迫切的问题,严重影响了电子鼻的检测性能和使用寿命(电子鼻子)。 有必要研究传感器漂移抑制方法,以实现电子鼻的长期和稳定检测。 本文提出了一种高效的稀疏子空间相关分析域适配(SSCA-DA)方法来抑制传感器漂移。 该方法是为每个数据集找到最佳子空间,并且将变换的数据转换为最佳子空间后稀疏地重建,这可以实现具有漂移信息的数据域中的知识传输。 从实验结果来看,可以发现传感器漂移可以通过所提出的方法令人满意地解决。

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