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Frontiers of Mechanical Engineering

ISSN 2095-0233

ISSN 2095-0241(Online)

CN 11-5984/TH

Postal Subscription Code 80-975

2018 Impact Factor: 0.989

Front. Mech. Eng.    2010, Vol. 5 Issue (1) : 106-110    https://doi.org/10.1007/s11465-009-0089-7
Research articles
Distributed monitoring and diagnosis system for hydraulic system of construction machinery
Xiaohu CHEN,Wenfeng WU,Hangong WANG,Yongtao ZHOU,
Xi’an High-tech Institute, Xi’an 710025, China;
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Abstract This paper mainly presents a distributed monitoring and diagnosis system for the hydraulic system of construction machinery based on the controller area net (CAN) field bus. The hardware of the distributed condition monitoring and fault diagnosis system is designed. Its structure including the sensors, distributed data acquisition units, central signal processing unit, and CAN field bus is introduced. The software is also programmed. The general software design and its realization are studied in detail. The experiments and applications indicate that the distributed condition monitoring and fault diagnosis system can effectively realize its function of real-time online condition monitoring and fault diagnosis for the hydraulic system of construction machinery.
Keywords construction machinery      hydraulic system      distributed condition monitoring      controller area net (CAN) field bus      fault diagnosis      
Issue Date: 05 March 2010
 Cite this article:   
Xiaohu CHEN,Wenfeng WU,Hangong WANG, et al. Distributed monitoring and diagnosis system for hydraulic system of construction machinery[J]. Front. Mech. Eng., 2010, 5(1): 106-110.
 URL:  
https://academic.hep.com.cn/fme/EN/10.1007/s11465-009-0089-7
https://academic.hep.com.cn/fme/EN/Y2010/V5/I1/106
Pan W. Researchon condition monitoring and fault diagnosis for hydraulic system ofconstruction machinery. Dissertation for the doctoral degree. Xi’an: Xi’an Hi-tech Institute, 2005: 115–144 (in Chinese)
Chen X H, Wang H G. Study and realization ofdistributed condition monitoring system for large complex equipment. Application of Electronic Technique, 2001, 6: 28–29 (in Chinese)
Wu K M. CAN Field Bus Principle and Application System Design. Beijing: Beijing University ofAeronautics and Astronautics Press, 2002 (in Chinese)
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