Abnormal Detection and Fault Diagnosis of Adjustment Hydraulic Servomotor Based on Genetic Algorithm to Optimize Support Vector Data Description with Negative Samples and One-Dimensional Convolutional Neural Network

Author:

Yang Xukang12,Jiang Anqi3,Jiang Wanlu12,Zhao Yonghui12,Tang Enyu12,Chang Shangteng12

Affiliation:

1. Hebei Provincial Key Laboratory of Heavy Machinery Fluid Power Transmission and Control, Yanshan University, Qinhuangdao 066004, China

2. Key Laboratory of Advanced Forging & Stamping Technology and Science, Yanshan University, Ministry of Education of China, Qinhuangdao 066004, China

3. School of Electrical Engineering, Yanshan University, Qinhuangdao 066004, China

Abstract

Because of the difficulty in fault detection for and diagnosing the adjustment hydraulic servomotor, this paper uses feature extraction technology to extract the time domain and frequency domain features of the pressure signal of the adjustment hydraulic servomotor and splice the features of multiple pressure signals through the Multi-source Information Fusion (MSIF) method. The comprehensive expression of device status information is obtained. After that, this paper proposes a fault detection Algorithm GA-SVDD-neg, which uses Genetic Algorithm (GA) to optimize Support Vector Data Description with negative examples (SVDD-neg). Through joint optimization with the Mutual Information (MI) feature selection algorithm, the features that are most sensitive to the state deterioration of the adjustment hydraulic servomotor are selected. Experiments show that the MI algorithm has a better performance than other feature dimensionality reduction algorithms in the field of the abnormal detection of adjustment hydraulic servomotors, and the GA-SVDD-neg algorithm has a stronger robustness and generality than other anomaly detection algorithms. In addition, to make full use of the advantages of deep learning in automatic feature extraction and classification, this paper realizes the fault diagnosis of the adjustment hydraulic servomotor based on 1D Convolutional Neural Network (1DCNN). The experimental results show that this algorithm has the same superior performance as the traditional algorithm in feature extraction and can accurately diagnose the known faults of the adjustment hydraulic servomotor. This research is of great significance for the intelligent transformation of adjustment hydraulic servomotors and can also provide a reference for the fault warning and diagnosis of the Electro-Hydraulic (EH) system of the same type of steam turbine.

Funder

National Natural Science Foundation of China

Province Natural Science Foundation of Hebei, China

Publisher

MDPI AG

Reference35 articles.

1. Yang, X. (2021). Research on State Monitoring and Fault Prediction and Diagnosis System of Adjustment Hydraulic Servomotor Based on 1D-CNN and SVDD. [Master’s Thesis, Yanshan University].

2. Online Detection of Valve Stem Sticking Faults in Turbine Regulation System;Yu;Chin. J. Electr. Eng.,2001

3. Li, W., Yang, K., and Yu, D. (2000). Research on Networked Fault Diagnosis System for Turbine Regulation System. [Master’s Thesis, North China Electric Power University].

4. Analysis on Oscillation in Electro-Hydraulic Regulating System of Steam Turbine and Fault Diagnosis Based on PSOBP;Wang;Expert Syst. Appl.,2010

5. Xu, P. (2011). Model-Based Fault Diagnosis Research on Turbine Regulation System. [Master’s Thesis, Harbin Institute of Technology].

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