Electric doors have been applied in urban trains since 2007 and operated for a long time. Recently, the failure of mechanical devices in electric doors have been increasing. The door is a device that is directly related to the safety of passengers. The rivet breakage of a ball/nut assembly may occur to an accident during train operation. In this study, the operating voltage and acceleration data of the door were collected for rivet condition monitoring, and 4 features were extracted in the frequency domain using the acceleration data. The classification performance of the rivet condition according to the axial direction of the acceleration data and 4 kernel functions was evaluated using SVM algorithm. When the X-axis data and Gaussian kernel function were used, the highest classification performance was shown for the electric door’s rivet with 90% accuracy.
목차
ABSTRACT 1. Introduction 2. Data collection for condition diagnosis 3. State diagnosis according to rivet fracture 3.1 Data characteristic extraction 3.2 Data analysis for condition diagnosis 4. Conclusion References
키워드
전기식 출입문상태진단진동SVMElectric doorCBMVibrationSVM
저자
Jun-Woo Kim [ Member, Dept. of Warranty Audit, MSX International Australia, Auditor ]
Sung-Cheon Park [ Member, Dept. of Smart Automotive Engineering, Seoil University, Associate Professor ]
Corresponding Author