ARTÍCULO
TITULO

Automotive Signal Fault Diagnostics-Part I: Signal Fault Analysis, Signal Segmentation, Feature Extraction and Quasi-Optimal Feature Selection

Crossman    
J. A. Guo    
H. Murphey    
Y. L. Cardillo    
J.    

Resumen

No disponible

 Artículos similares

       
 
Dacheng Yu, Mingjun Zhang, Feng Yao and Jitao Li    
Variational Mode Decomposition (VMD) has typically been used in weak fault feature extraction in recent years. The problem analyzed in this study is weak fault feature extraction and the enhancement of AUV thrusters based on Artificial Rabbits Optimizati... ver más

 
Fan Zhang, Zhiwei Zhang, Zhonglin Zhang, Tianzhen Wang, Jingang Han and Yassine Amirat    
Electric ships have been developed in recent years to reduce greenhouse gas emissions. In this system, inverters are the key equipment for the permanent-magnet synchronous motor (PMSM) drive system. The cascaded insulated-gated bipolar transistor (IGBT)-... ver más

 
Jun Li, Hongchao Wang, Simin Li, Liang Chen and Qiqian Dang    
To extract the weak fault features hidden in strong background interference in the event of the early failure of rolling bearings, a two-stage based method is proposed. The broadband noise elimination ability of an adaptive morphological filter (AMF) and... ver más
Revista: Applied Sciences

 
Shijie Shan, Jianming Zheng, Kai Wang, Ting Chen and Yuhua Shi    
Aiming at the problems of the low detection accuracy and difficult identification of the early weak fault signals of rolling bearings, this paper proposes a method for detecting the early weak fault signals of rolling bearings based on a double-coupled D... ver más
Revista: Applied Sciences

 
Xiaolong Zhou, Xiangkun Wang, Haotian Wang, Linlin Cao, Zhongyuan Xing and Zhilun Yang    
Rotor fault diagnosis has attracted much attention due to its difficulties such as non-stationarity of fault signals, difficulty in fault feature extraction and low diagnostic accuracy of small samples. In order to extract fault feature information of ro... ver más
Revista: Applied Sciences