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Fault Diagnosis for Hydraulic Servo System Using Compressed Random Subspace Based ReliefF

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  • Yu Ding
  • Fei Wang
  • Zhen-ya Wang
  • Wen-jin Zhang

Abstract

Playing an important role in electromechanical systems, hydraulic servo system is crucial to mechanical systems like engineering machinery, metallurgical machinery, ships, and other equipment. Fault diagnosis based on monitoring and sensory signals plays an important role in avoiding catastrophic accidents and enormous economic losses. This study presents a fault diagnosis scheme for hydraulic servo system using compressed random subspace based ReliefF (CRSR) method. From the point of view of feature selection, the scheme utilizes CRSR method to determine the most stable feature combination that contains the most adequate information simultaneously. Based on the feature selection structure of ReliefF, CRSR employs feature integration rules in the compressed domain. Meanwhile, CRSR substitutes information entropy and fuzzy membership for traditional distance measurement index. The proposed CRSR method is able to enhance the robustness of the feature information against interference while selecting the feature combination with balanced information expressing ability. To demonstrate the effectiveness of the proposed CRSR method, a hydraulic servo system joint simulation model is constructed by HyPneu and Simulink, and three fault modes are injected to generate the validation data.

Suggested Citation

  • Yu Ding & Fei Wang & Zhen-ya Wang & Wen-jin Zhang, 2018. "Fault Diagnosis for Hydraulic Servo System Using Compressed Random Subspace Based ReliefF," Complexity, Hindawi, vol. 2018, pages 1-14, February.
  • Handle: RePEc:hin:complx:8740989
    DOI: 10.1155/2018/8740989
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    References listed on IDEAS

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    1. Kar Hoou Hui & Ching Sheng Ooi & Meng Hee Lim & Mohd Salman Leong & Salah Mahdi Al-Obaidi, 2017. "An improved wrapper-based feature selection method for machinery fault diagnosis," PLOS ONE, Public Library of Science, vol. 12(12), pages 1-10, December.
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