DECISION SUPPORT APPROACH FOR INTEGRATED MAINTENANCE PROGRAM OF URBAN RAIL TRANSIT

Authors

  • Ming Zhang

DOI:

https://doi.org/10.47839/ijc.16.3.897

Keywords:

Urban rail transit, forecast maintenance, equipment fault cluster, decision tree, monitor data mining.

Abstract

Based on the analysis of the complexity of the equipment maintenance business and the correlation characteristics of the monitoring fault of urban rail transit, this paper puts forward the combination of the integrated maintenance process and intelligent maintenance decision method. The selected data is obtained from the relevant system as a basis for preventive maintenance support by introducing the data mining method of the high frequency fault clustering model of electromechanical equipment. Then the decision tree induction strategy is proposed to identify the equipment object-class and rules led to similar fault for different equipment systems. This class serves as a high priority for prevention repair, predict repair, and fault repair, in order to establish the maintenance decision-making program. Then the related method of evaluation and verification are employed. This method is designed and converted as data flow to develop the maintenance management system. The application results show positive effect on reasonable maintenance management.

References

Z. Ming, “Decision approach of maintenance for urban rail transit based on equipment supervision data mining,” in Proceedings of the International Conference on Intelligent Data Acquisition and Advanced Computing Systems: Technology and Applications (IDAACS’2015), Warsaw, Poland, September, 24-26, 2015, pp. 376-380.

W. Liu, Q. Wang, J. Gao et al., “Reliability-centered intelligent maintenance decision-making model,” Journal of Beijing University of Technology, vol. 38, issue 5, pp. 672-677, 2012. (in Chinese)

Z. Cheng, B. Guo, “Optimization of inspection and maintenance policy for deteriorating system with semi-Markov decision process,” Acta Automatica Sinica, vol. 33, issue 10, pp. 1101-1104, 2007. (in Chinese)

T. Nakagawa, “Sequential imperfect preventive maintenance policies,” IEEE Transactions on Reliability, vol. 37, issue 3, pp. 295-298, 1988.

B. Han, X. Fan, D. Ma, “Research on the optimal preventive maintenance policy based on reliabilility constraints,” Chinese Journal of Mechanical Engineering, vol. 39, issue 6, pp. 102-105, 2003. (in Chinese)

M. Sbihi, C. Varnier. “Single-machine scheduling with periodic and flexible periodic maintenance to minimize maximum tardiness,” Computers & Industrial Engineering, vol. 55, issue 4, pp. 830-840, 2008.

Z. Mao, B. Song, G. Pan. “Optimal system preventive maintenance model of different preventive maintenance period,” Fire Control & Command Control, vol. 35, issue 3, pp. 58-60, 2010. (in Chinese)

R. P. Thomas, “Total productive maintenance (TPM) concepts and literature review [EB/OL],” 2004, [Online]. Available: http://www.brooks.com/tmp/2110.pdf.

D. Ting, Computer Maintenance Management System, ITIS mechanical industry research laboratories, October 2001.

Q. Wen, “On integrated maintenance system of shanghai URT,” Urban Mass Transit, issue 4, pp. 2-11, 2008. (in Chinese)

S.-F. Fang, W. Lu, “Research on a maintenance intelligent decision support system,” Journal of Systems Science and Information, vol. 12, pp. 53-59, 2001. (in Chinese)

M. Zhang, F. Wang, P. Li, “The platform of network operation decision making and emergency for urban rail transit,” China Academy of Railway Sciences, vol. 33, issue 1, pp. 113-120, 2012.

M. Fan, X. Meng, Data Mining Concepts and Techniques, 3rd edition, China Machine Press, Beijing, 2013, pp. 298-303. (in Chinese)

M. Traore, A. Chammas, E. Duviella, “Supervision and prognosis architecture based on dynamical classification method for the predictive maintenance of dynamical evolving systems,” Reliability Engineering & System Safety, vol. 136, pp. 120-131, 2015.

Downloads

Published

2017-09-30

How to Cite

Zhang, M. (2017). DECISION SUPPORT APPROACH FOR INTEGRATED MAINTENANCE PROGRAM OF URBAN RAIL TRANSIT. International Journal of Computing, 16(3), 143-151. https://doi.org/10.47839/ijc.16.3.897

Issue

Section

Articles