{"corpus_id":44755927,"paper_sha":"b2857e1c5c7c144f8e226a7319dd2d9d796deae9","doi":"10.3390/APP7040414","arxiv_id":null,"pmid":null,"pmcid":null,"mag_id":2607330859,"dblp_id":null,"acl_id":null,"title":"Research on the Blind Source Separation Method Based on Regenerated Phase-Shifted Sinusoid-Assisted EMD and Its Application in Diagnosing Rolling-Bearing Faults","year":2017,"publication_date":"2017-04-19","venue":"","journal":{"name":"Applied Sciences","pages":"414","volume":"7"},"journal_issn":null,"journal_title":null,"publication_types":[],"pubmed_pub_types":null,"s2_fields_of_study":["Engineering"],"reference_count":45,"citation_count":26,"influential_citation_count":0,"is_open_access":true,"arxiv_categories":null,"arxiv_license":null,"arxiv_journal_ref":null,"mesh_headings":null,"chemicals":null,"comments_corrections":null,"source_flags":1,"s2_open_access_pdf_url":"https://www.mdpi.com/2076-3417/7/4/414/pdf?version=1492599232","s2_open_access_landing_url":"https://www.semanticscholar.org/paper/b2857e1c5c7c144f8e226a7319dd2d9d796deae9","s2_open_access_license":"CCBY","s2_open_access_status":"GOLD","pmc_open_access_pdf_url":null,"pmc_open_access_landing_url":null,"pmc_open_access_license":null,"pmc_open_access_status":null,"unpaywall_open_access_pdf_url":null,"unpaywall_open_access_landing_url":null,"unpaywall_open_access_license":null,"unpaywall_open_access_status":null,"abstract":"To improve the performance of single-channel, multi-fault blind source separation (BSS), a novel method based on regenerated phase-shifted sinusoid-assisted empirical mode decomposition (RPSEMD) is proposed in this paper. The RPSEMD method is used to decompose the original single-channel vibration signal into several intrinsic mode functions (IMFs), with the obtained IMFs and original signal together forming a new observed signal for the dimensional lifting. Therefore, an undetermined problem is transformed into a positive definite problem. Compared with the existing EMD method and its improved version, the proposed RPSEMD method performs better in solving the mode mixing problem (MMP) by employing sinusoid-assisted technology. Meanwhile, it can also reduce the computational load and reconstruction errors. The number of source signals is estimated by adopting singular value decomposition (SVD) and Bayes information criterion (BIC). Simulation analysis has demonstrated the superiority of this method being applied in multi-fault BSS. Furthermore, its effectiveness in identifying the multi-fault features of rolling-bearing has been also verified based on a test rig.","claims":[{"public_id":"cl_4c8016ed4c501a3dfc7fad4ff20767c3","status":"active","text":"Compared with the existing EMD method and its improved version, RPSEMD better alleviates mode mixing while reducing computational load and reconstruction errors.","confidence":0.93,"contributors":[{"id":1,"public_id":"12632b8b5f","public_label":"Anonymous (12632b8b5f)","roles":["extraction"],"url":"https://sah.borca.ai/u/12632b8b5f"}],"url":"https://sah.borca.ai/claims/cl_4c8016ed4c501a3dfc7fad4ff20767c3"},{"public_id":"cl_76af4295183b29a2efc3ce551ddccc5b","status":"active","text":"RPSEMD is proposed as a blind source separation method for single-channel, multi-fault vibration signals.","confidence":0.98,"contributors":[{"id":1,"public_id":"12632b8b5f","public_label":"Anonymous 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