Mahalanobis semi-supervised mapping and beetle antennae search based support vector machine for wind turbine rolling bearings fault diagnosis
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Jun Zhang | Wang Zhenya | Ligang Yao | Yongwu Cai | L. Yao | Jun Zhang | Wang Zhenya | Yongwu Cai
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