Fault Feature Extraction for Reciprocating Compressors Based on Underdetermined Blind Source Separation.

Jindong Wang, Xin Chen, Haiyang Zhao, Yanyang Li, Zujian Liu
Author Information
  1. Jindong Wang: Mechanical Science and Engineering Institute, Northeast Petroleum University, Daqing 163318, China.
  2. Xin Chen: Mechanical Science and Engineering Institute, Northeast Petroleum University, Daqing 163318, China. ORCID
  3. Haiyang Zhao: Mechanical Science and Engineering Institute, Northeast Petroleum University, Daqing 163318, China.
  4. Yanyang Li: Mechanical Science and Engineering Institute, Northeast Petroleum University, Daqing 163318, China. ORCID
  5. Zujian Liu: Mechanical Science and Engineering Institute, Northeast Petroleum University, Daqing 163318, China. ORCID

Abstract

In practical engineering applications, the vibration signals collected by sensors often contain outliers, resulting in the separation accuracy of source signals from the observed signals being seriously affected. The mixing matrix estimation is crucial to the underdetermined blind source separation (UBSS), determining the accuracy level of the source signals recovery. Therefore, a two-stage clustering method is proposed by combining hierarchical clustering and K-means to improve the reliability of the estimated mixing matrix in this paper. The proposed method is used to solve the two major problems in the K-means algorithm: the random selection of initial cluster centers and the sensitivity of the algorithm to outliers. Firstly, the observed signals are clustered by hierarchical clustering to get the cluster centers. Secondly, the cosine distance is used to eliminate the outliers deviating from cluster centers. Then, the initial cluster centers are obtained by calculating the mean value of each remaining cluster. Finally, the mixing matrix is estimated with the improved K-means, and the sources are recovered using the least square method. Simulation and the reciprocating compressor fault experiments demonstrate the effectiveness of the proposed method.

Keywords

References

  1. Sensors (Basel). 2019 Mar 22;19(6): [PMID: 30909420]
  2. IEEE Trans Neural Netw Learn Syst. 2017 Dec;28(12):3102-3108 [PMID: 28113526]
  3. Entropy (Basel). 2019 Feb 05;21(2): [PMID: 33266868]
  4. Entropy (Basel). 2021 Apr 24;23(5): [PMID: 33923199]
  5. J R Soc Interface. 2005 Dec 22;2(5):443-54 [PMID: 16849204]
  6. Entropy (Basel). 2018 May 21;20(5): [PMID: 33265477]
  7. ISA Trans. 2018 Dec;83:261-275 [PMID: 30268438]
  8. Med Biol Eng Comput. 2017 Nov;55(11):2037-2052 [PMID: 28462498]

Grants

  1. LH2021E021/Natural Science Foundation of Heilongjiang Province
  2. 51505079/National Natural Science Foundation of China
  3. 2018ANC-31/Northeast Petroleum University Youth Foundation

Word Cloud

Created with Highcharts 10.0.0signalsclustersourcemixingmatrixmethodK-meanscentersoutliersseparationclusteringproposedaccuracyobservedestimationunderdeterminedblindhierarchicalestimatedusedinitialreciprocatingcompressorpracticalengineeringapplicationsvibrationcollectedsensorsoftencontainresultingseriouslyaffectedcrucialUBSSdetermininglevelrecoveryThereforetwo-stagecombiningimprovereliabilitypapersolvetwomajorproblemsalgorithm:randomselectionsensitivityalgorithmFirstlyclusteredgetSecondlycosinedistanceeliminatedeviatingobtainedcalculatingmeanvalueremainingFinallyimprovedsourcesrecoveredusingleastsquareSimulationfaultexperimentsdemonstrateeffectivenessFaultFeatureExtractionReciprocatingCompressorsBasedUnderdeterminedBlindSourceSeparationfeatureextraction

Similar Articles

Cited By (2)