This paper presents a new method for rolling bearing fault diagnosis. The novel vibration feature extraction is learned with local temporal self-similarities (TSS) continuously from collected vibration signals. The bag-of-words (BoW) scheme is then employed for fault classification taking advantages of these features. We investigated the effectiveness of the framework on the publicly-available Case Western Reserve University (CWRU) data set. We also compare the method with state-of-the-art approaches. The result demonstrates excellent performance of the proposed method, outperforming those compared state-of-the-art approaches.
Li SunLi ZhangYong Bo YangDa Bo ZhangLi Wu
Qiang XueBoyu XuChangbo HeFang LiuBin JuSiliang LuYongbin Liu
Tao WangShin Yee KhooZhi Chao OngPei Yi SiowTeng Wang
Wenyu HuoKun ZhangZuhua JiangMiaorui YangYonggang Xu
Kaicheng ZhaoJunqing XiaoChun LiZifei XuMinnan Yue