Research on Expert System for Electric Locomotives Fault Diagnosis

Article Preview

Abstract:

The complexity of locomotive onboard devices and their coupling relationship are increasing along with the high-speed development of our nation’s railway vehicle technology. By combining diagnostic technique with expert system and using fault trees and rules, a new monitor and diagnosis method has been proposed on the overall view of railway vehicles to enhance the diagnosis accuracy. This research is supported by the National High Technology Research and Development Program ("863" Program) of China, the result of this research has been statically tested on relevant electric locomotives.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 562-564)

Pages:

927-932

Citation:

Online since:

August 2012

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2012 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Liwei, Chen Te-fang, Chengshu. Research on Multi-Sensors Distributed Fault Diagnosis Theory of Locomotive Electric System[J]. Journal of the China Railway Society. 2010. 5: 70-76.

Google Scholar

[2] Chen Te-fang. The Electric Traction System and Its Fault Diagnosis Technology. [M]. Changsha: Central South University Publishing House,(2009).

Google Scholar

[3] Mao Zhen-ping. Handbook of fault emergency treatment for SS series electric locomotives [M]. Beijing:Chinese Railway Publishing House, (1999).

Google Scholar

[4] Wang Yi,Feng Xiao-yun. Electric locomotive fault diagnosis expert system based on Fault Tree [J]. Electric Locomotives & Mass Transit Vehicles,2004, 27(6):35-36.

Google Scholar

[5] Chen WenBin, Liu XiaoLing, Fang Yu, Zhang Jian. Inference Engine Design of Expert System Based on Blackboard Model and Fault Tree[J], 2009 Asia-Pacific Conference on Information Processing, 2009, 18-20.

DOI: 10.1109/apcip.2009.12

Google Scholar

[6] JIANG Lianxiang, LI Huawang, YANG Genqing, et al. Knowledge Acquisition Model for Satellite Fault Diagnosis Expert System[J], Proceedings-2009 International Conference on Computational Intelligence and Software Engineering, CiSE (2009).

DOI: 10.1109/cise.2009.5366271

Google Scholar

[7] Huang Cai-lun,Fan Xiao-ping,Chen Te-fang. The Online Fault Diagnosis and Application of Train[M]. Beijing:National Defense Industry Publishing House,(2006).

Google Scholar

[8] Tang Jian-xiang, Chen Te-fang, Chengshu. Study of Traction Electromotor Fault Diagnosis Expert System. Computer Measurement & Control. 2007. 15(05): 595-599.

Google Scholar

[9] Qiu Dong-yuan, Peng Jing-feng, Zhangbo. Structural fault diagnosis method of power electronic converter by directed graph theory. Electric Machines and Control. 2010. 8: 13-18.

Google Scholar