Abstract

Degradation state recognition and failure prediction are the key steps of prognostic and health management (PHM), which directly affect the reliability of the equipment and the selection of preventive maintenance strategy. Given the problem that the distinction between feature vectors is not obvious and the accuracy of fault prediction is low, a method based on multi-class Gaussian process classification and Gaussian process regression (GPR) is studied by the vibration signal and flow signal in six degraded states of the axial piston pump. For degradation state recognition, the variational mode decomposition (VMD) was used to decompose the vibration signal, and obtaining intrinsic mode function (IMF) components with rich information. Subsequently, multi-scale permutation entropy (MPE) was employed to select feature vectors of IMF components in different states. In order to reduce feature dimensions and improve recognition performance, ReliefF was used to select feature vectors with high weight, then a method based on multi-class Gaussian process classification was established by using these feature vectors to realize the research on the degradation state recognition. The test results demonstrate that the method can effectively identify the degradation state. Its recognition rate reaches 98.9%. Besides, for failure prediction, through the analysis of the wear process and wear mechanism of the valve plate, the curve fitting between the flow and the wear amount was performed by GPR to realize the failure prediction of the axial piston pump. Depending on the evaluation index, the GPR obtained a better failure prediction effect. The results will assist in the realization of predictive maintenance, and which also has significant practical value in project items.

Highlights

  • As the most commonly used hydraulic pump, the axial piston pump directly affects the stability of the entire hydraulic system

  • Aiming at the state recognition of axial piston pump, this paper used in variational mode decomposition (VMD) method to select the best intrinsic mode function (IMF) to remove the influence of noise by kurtosis index, the suitable feature vectors were obtained by multi-scale permutation entropy (MPE) and ReliefF

  • In order to evaluate the estimation effect, this paper introduced three evaluation indexes: square sum of error (SSE), root mean square error (RMSE) and correlation coefficient R2

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Summary

Introduction

As the most commonly used hydraulic pump, the axial piston pump directly affects the stability of the entire hydraulic system. For studies of the state recognition and failure prediction of equipment, the literature [5] proposed a feature extraction method of the gear vibration signals by combining wavelet coefficients and local. Aiming at the nonlinear dynamic characteristics of degraded signals, there are many methods in the field of failure prediction and state recognition, such as correlation dimension [16], approximate entropy [17,18], sample entropy [19], fuzzy entropy [20], PE [21], all of them have achieved some results. Aiming at the state recognition of axial piston pump, this paper used in variational mode decomposition (VMD) method to select the best IMF to remove the influence of noise by kurtosis index, the suitable feature vectors were obtained by MPE and ReliefF.

Selection of Degenerative Characteristics of Piston Pump
Binary Gaussian Process Classification
Gaussian Process Regression
Performance Degradation Test of Axial Piston Pump
VMD-Based Test Data Processing
Feature Extraction Method Based on MPE
Classification Method
Reduction Method
Test Data Processing of Flow Signals
Evaluation Index
Conclusions
Full Text
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