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Research on Twin Extreme Learning Fault Diagnosis Method Based on Multi-Scale Weighted Permutation Entropy

Xuyi Yuan, Yugang Fan, Chengjiang Zhou, Xiaodong Wang, Guanghui Zhang

2022Entropy10 citationsDOIOpen Access PDF

Abstract

Due to the complicated engineering operation of the check valve in a high-pressure diaphragm pump, its vibration signal tends to show non-stationary and non-linear characteristics. These leads to difficulty extracting fault features and, hence, a low accuracy for fault diagnosis. It is difficult to extract fault features accurately and reliably using the traditional MPE method, and the ELM model has a low accuracy rate in fault classification. Multi-scale weighted permutation entropy (MWPE) is based on extracting multi-scale fault features and arrangement pattern features, and due to the combination of extracting a sequence of amplitude features, fault features are significantly enhanced, which overcomes the deficiency of the single-scale permutation entropy characterizing the complexity of vibration signals. It establishes the check valve fault diagnosis model from the twin extreme learning machine (TELM). The TELM fault diagnosis model established, based on MWPE, aims to find a pair of non-parallel classification hyperplanes in the equipment state space to improve the model's applicability. Experiments show that the proposed method effectively extracts the characteristics of the vibration signal, and the fault diagnosis model effectively identifies the fault state of the check valve with an accuracy rate of 97.222%.

Topics & Concepts

Computer scienceAlgorithmFault (geology)Extreme learning machineEntropy (arrow of time)VibrationPattern recognition (psychology)Artificial intelligenceArtificial neural networkQuantum mechanicsSeismologyPhysicsGeologyFault Detection and Control SystemsMachine Learning and ELMAdvanced Algorithms and Applications
Research on Twin Extreme Learning Fault Diagnosis Method Based on Multi-Scale Weighted Permutation Entropy | Litcius