نبذة مختصرة : In this paper, we propose a highly reliable fault diagnosis scheme for incipient low-speed rolling element bearing failures. The scheme consists of fault feature calculation, discriminative fault feature analysis, and fault classification. The proposed approach first computes wavelet-based fault features, including the respective relative wavelet packet node energy and entropy, by applying a wavelet packet transform to an incoming acoustic emission signal. The most discriminative fault features are then filtered from the originally produced feature vector by using discriminative fault feature analysis based on a binary bat algorithm (BBA). Finally, the proposed approach employs one-against-all multiclass support vector machines to identify multiple low-speed rolling element bearing defects. This study compares the proposed BBA-based dimensionality reduction scheme with four other dimensionality reduction methodologies in terms of classification performance. Experimental results show that the proposed methodology is superior to other dimensionality reduction approaches, yielding an average classification accuracy of 94.9%, 95.8%, and 98.4% under bearing rotational speeds at 20 revolutions-per-minute (RPM), 80 RPM, and 140 RPM, respectively.
Relation: https://eprints.qut.edu.au/84157/14/__staffhome.qut.edu.au_staffgroupd%24_dearaugo_Desktop_MS_Reliable%20fault%20Diag%20-BianaryBat%20Algo.pdf; Kang, Myeongsu, Kim, Jaeyoung, Kim, Jong-Myon, Tan, Andy, Kim, Eric, & Choi, Byeong-Kuen (2015) Reliable fault diagnosis for incipient low-speed bearings using fault feature analysis based on a binary bat algorithm. Information Sciences, 294, pp. 423-438.; https://eprints.qut.edu.au/84157/; Institute for Future Environments; Science & Engineering Faculty; School of Chemistry, Physics & Mechanical Engineering
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