Abstract

Aiming at the problem that the vibration signals of the hydrogenerator unit are nonlinear and nonstationary and it is difficult to extract the signal features due to strong background noise and complex electromagnetic interference, this paper proposes a dual noise reduction method based on intrinsic time-scale decomposition (ITD) and permutation entropy (PE) combined with singular value decomposition (SVD). Firstly, the vibration signals are decomposed by ITD to obtain a series of PRC components, and the permutation entropy of each component is calculated. Secondly, according to the set permutation entropy threshold, the PRC components are selected for reconstruction to achieve a noise reduction effect. On this basis, SVD is carried out, and the appropriate reconstruction order is selected according to the position of the singular value difference spectrum mutation point for reconstruction, so as to achieve the secondary noise reduction effect. The proposed method is compared with the LMD-PE-SVD and EMD-PE-SVD dual noise reduction method by simulation, taking the correlation coefficient and signal-to-noise ratio to evaluate the noise reduction performance and finding that the ITD-PE-SVD noise reduction has good noise reduction and pulse effect. Furthermore, this method is applied to the analysis of the upper guide swing data in the X-direction and Y-direction of a unit in a hydropower station in China, and it is found that this method can effectively reduce noise and accurately extract signal features, thus determining the vibration cause, which is helpful to improve the turbine fault recognition rate.

Highlights

  • As a clean and renewable energy, hydropower has mature development technology, which meets the needs of China’s energy strategic development

  • It can be seen that after ITDPE-singular value decomposition (SVD) denoising method is used to process the data containing noise and pulse, the data correlation is as high as 0.9956 and the signal-to-noise ratio is larger, and the comprehensive performance index is better than local mean decomposition (LMD)-PESVD and empirical mode decomposition (EMD)-permutation entropy (PE)-SVD, which shows the effectiveness of this method

  • By combining the advantages of inherent timescale decomposition, permutation entropy, and singular value decomposition, a denoising method based on intrinsic time-scale decomposition (ITD)-PESVD is proposed to solve the problem that it is difficult to extract the vibration signal features of hydrogenerator unit under the background of strong background noise and complex electromagnetic interference

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Summary

Introduction

As a clean and renewable energy, hydropower has mature development technology, which meets the needs of China’s energy strategic development. Based on the above analysis, aiming at the problem that it is difficult to extract the vibration signal characteristics of hydrogenerator units under the background of strong noise and complex electromagnetic interference, combined with the advantages of inherent time-scale decomposition, permutation entropy and singular value, a dual noise reduction method based on ITD-PE-SVD is proposed. Singular value decomposition (SVD) is based on matrix decomposition and transformation; it decomposes the signal into the superposition of a series of linear components and has the advantages that the waveform is not easy to be distorted, and the zero-phase shift is small It can effectively detect the weak information mutation in the signal under complex background and has outstanding effect in feature information extraction and noise reduction [27,28,29]. The application of this method in vibration signal feature extraction of hydrogenerator units under strong noise background is summarized and prospected

Principle of the ITD-PE-SVD Method
Simulation Signal and Analysis
Engineering Examples
Conclusion
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