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Construction of a Hierarchical Feature Enhancement Network and Its Application in Fault Recognition

Zhe Chen, Huimin Lu, Shiqing Tian, Junlin Qiu, Tohru Kamiya, Seiichi Serikawa, Lizhong Xu

2020IEEE Transactions on Industrial Informatics71 citationsDOI

Abstract

Industrial Internet of Things (IIoT) provide significant support for observing and controlling industrial machinery. In this article, a novel hierarchical feature enhancement network (HFEN) is proposed by combining signal processing and representation learning. The signal processing block extracts features with definite physical significance. Then, the representability of the physical features is improved by connecting stacked denoising autoencoders and squeeze-and-excitation networks. A novel two-stream architecture is designed for HFEN to fuse two types of features. Consequently, HFEN can extract features that can be analyzed for physical significance and that are also representative in terms of recognizable patterns. The experimental results prove that the performance of HFEN is satisfactory in terms of accuracy and efficiency when compared to other methods. Finally, this article also aims to demonstrate the potential of a new pairing that fuses the model- and data-driven strategies for IIoT.

Topics & Concepts

Fuse (electrical)Computer scienceFeature (linguistics)Artificial intelligencePattern recognition (psychology)Signal processingFeature extractionBlock (permutation group theory)Representation (politics)Feature learningFault (geology)Data miningMachine learningEngineeringComputer hardwarePhilosophyPoliticsSeismologyDigital signal processingGeologyLawPolitical scienceLinguisticsElectrical engineeringGeometryMathematicsFault Detection and Control SystemsMachine Fault Diagnosis TechniquesAnomaly Detection Techniques and Applications
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