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Fault Diagnosis Algorithm for Pumping Unit Based on Dual-Branch Time–Frequency Fusion

Fangfang Zhang, Yebin Li, Dongri Shan, Yuanhong Liu, Fengying Ma, Weiyong Yu

2024IEEE Transactions on Reliability29 citationsDOI

Abstract

The collected data of a pumping unit contain environmental noise, which significantly reduces the precision of fault diagnosis. The previous fault detection approach depends on manual feature extraction, which is time-consuming and laborious, and it cannot cope with high-noise conditions. Therefore, we propose a dual-branch time–frequency fusion deep learning model for fault diagnosis of the pumping unit. One branch extracts time-domain information, while the other branch extracts frequency-domain information by employing the fast Fourier transform. The branch information of these two branches is concatenated, and the gate-controlled channel transfer unit module automatically learns the competitive and cooperative relationships between each branch, making the key features more prominent in information fusion. Consequently, an accurate fault diagnosis of the pumping unit can be achieved under high-noise conditions. The results demonstrate that the proposed model outperforms the traditional schemes in terms of noise, with different signal-to-noise ratios.

Topics & Concepts

FusionAlgorithmComputer scienceDual (grammatical number)Unit (ring theory)Fault (geology)MathematicsGeologyLiteratureSeismologyLinguisticsMathematics educationPhilosophyArtAdvanced Algorithms and ApplicationsAdvanced Sensor and Control SystemsSmart Grid and Power Systems
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