Xulei Wang’s research while affiliated with PetroChina Company Limited and other places

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Publications (1)


Figure 1. The flow chart of AUPLMD.
Figure 9. Flow chart of fault diagnosis.
The kurtosis values of each PF component under different valve states.
Identification results of the four states of the valve.
Fault Diagnosis Method Based on AUPLMD and RTSMWPE for a Reciprocating Compressor Valve
  • Article
  • Full-text available

October 2022

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53 Reads

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2 Citations

Meiping Song

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Xulei Wang

In order to effectively extract the key feature information hidden in the original vibration signal, this paper proposes a fault feature extraction method combining adaptive uniform phase local mean decomposition (AUPLMD) and refined time-shift multiscale weighted permutation entropy (RTSMWPE). The proposed method focuses on two aspects: solving the serious modal aliasing problem of local mean decomposition (LMD) and the dependence of permutation entropy on the length of the original time series. First, by adding a sine wave with a uniform phase as a masking signal, adaptively selecting the amplitude of the added sine wave, the optimal decomposition result is screened by the orthogonality and the signal is reconstructed based on the kurtosis value to remove the signal noise. Secondly, in the RTSMWPE method, the fault feature extraction is realized by considering the signal amplitude information and replacing the traditional coarse-grained multi-scale method with a time-shifted multi-scale method. Finally, the proposed method is applied to the analysis of the experimental data of the reciprocating compressor valve; the analysis results demonstrate the effectiveness of the proposed method.

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Citations (1)


... By optimizing the coarse-graining process in multi-scale permutation entropy, TSMWPE is less affected by the length of the signal. As a result, the entropy values obtained from feature extraction using TSMWPE are more stable, regardless of the length of the time series (Bandt and Pompe 2002;Dong et al. 2019;Song et al. 2022). The calculations involve defining y k,β for the original time series X = {x 1 , x 2 , . . . ...

Reference:

Runoff prediction using a multi-scale two-phase processing hybrid model
Fault Diagnosis Method Based on AUPLMD and RTSMWPE for a Reciprocating Compressor Valve