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Journal of Computers EIMEDLINEScopus

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篇名 Fault Diagnosis of Single Yaw Damper Utilizing Hierarchical Multi-class Classifier
卷期 28:5
作者 Daochao TangNa QinWeidong JinPeizhen Xu
頁次 094-104
關鍵字 Bayesian error estimatorfault diagnosishierarchical classifieryaw damperEIMEDLINEScopus
出刊日期 201710
DOI 10.3966/199115992017102805009

中文摘要

英文摘要

In this paper, we propose a hierarchical multi-class classification approach which is optimized for single yaw damper fault problems. This novel approach associates with an original process of fault detection and localization which is arranged into support vector machine (SVM) with binary tree architecture. In fault detection, the developed method based on concatenated One-Against-One SVMs can significantly reduce the miss rate. Then, the hierarchical structure is built via iteratively partitioning the car bogie structure during fault location. This algorithm is very appealing as it takes advantage of the decision tree architecture and of SVM. Furthermore, the selection of error penalty factor C affects the precision of SVM due to its ability to avoid over fitting. In this paper, the Bayesian error estimator (BEE) which describes the error in a Bayesian framework is applied to obtain the optimal value of C . The effectiveness of this approach is illustrated experimentally on CRH3 EMU vehicle system.

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