Development of Integrated Testing Instrument for Mechatronic System

Article Preview

Abstract:

In order to improve the effectiveness of fault diagnosis for mechatronic system, new integrated testing instrument was developed. The testing instrument was integrated with experience, detected data and complex technical principles. The structure of the integrated testing instrument was introduced. The system is divided into fault diagnosis expert system and signal processing device. Fault diagnosis expert system software is to complete the human-computer interaction, testing process control, test result analysis processing, output display and fault diagnosis. Signal processing instrument includes test signal acquisition, signal conditioning, data acquisition, and data communication. Experiments show that the instrument can find the fault efficiently and improve the maintenance efficiency of a certain type of mechatronic system.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 605-607)

Pages:

1436-1439

Citation:

Online since:

December 2012

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Zhi-xin Cheng, Xue-bing Liao, Lin-hao Huang, et al. Research on integrated test & control platform of self-propelled gun fire-control system based on ARM7[J]. Computer Measurement & Control. 2009, 17(12): 2464 -2467. (In Chinese).

Google Scholar

[2] Guang-yao Lian, Kao-li Huang, Xiao-long Zhang, et al. Study of automatic test and fault diagnosis system for missile based on expert system [J]. Computer Measurement & Control. 2004, 12(5): 449-452. (In Chinese).

Google Scholar

[3] Wu-yun Yao, De-you Xu. Detection instrument for firing control system of certain type self parallel gun [J]. Ordnance Industry Automation. 2010, 29(12): 69-72. (In Chinese).

Google Scholar

[4] Aynur Kazaz. Application of an Expert System on the Fracture Mechanics of Concrete [J]. Artificial Intelligence Review, 2003. 2.

Google Scholar

[5] Gang Niu, Sun-Soon Lee, Bo-Suk Yang, Soo-Jong Lee. Decision fusion system for fault diagnosis of elevator traction machine[J] , (2008).

Google Scholar

[6] Mao-chun An. A survey on fault diagnosis expert system [J]. Computer Measurement & Control. 2008, 16(9): 1217-1219. (In Chinese).

Google Scholar

[7] Shao-xu Ni, Yu-fang Zhang, Hong Yi, et al. Intelligent Fault Diagnosis Method Based on Fault Tree [J]. Journal of Shanghai Jiaotong University. 2008, 42(8): 1372-1375. (In Chinese).

Google Scholar

[8] E. Németh,R. Lakner K.M. Hangos I.T. Cameron. Prediction-based diagnosis and loss prevention using qualitative multi-scale models[J]. Journal of Information Science . (2007).

DOI: 10.1016/j.ins.2006.10.009

Google Scholar

[9] Bai-lin Liu, Xiao-san Tang, Yang Zhang. Knowledge base maintenance method of fault diagnosis expert system based on database technology [J]. Journal of Gun Launch & Control. 2007(4): 67-71. (In Chinese).

Google Scholar

[10] Jun Ma, Guang-quan Zhang, Jie Lu. A state-based knowledge representation approach for information logical inconsistency detection in warning system. Knowledge Based System. 2010, 23( 2): 125-131.

DOI: 10.1016/j.knosys.2009.05.010

Google Scholar