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Damage identification for high-speed railway truss arch bridge using fuzzy clustering analysis

  • Cao, Bao-Ya (The Key Laboratory of Concrete and Prestressed Concrete Structures of Ministry of Education, Southeast University) ;
  • Ding, You-Liang (The Key Laboratory of Concrete and Prestressed Concrete Structures of Ministry of Education, Southeast University) ;
  • Zhao, Han-Wei (The Key Laboratory of Concrete and Prestressed Concrete Structures of Ministry of Education, Southeast University) ;
  • Song, Yong-Sheng (Jinling Institute of Technology)
  • Received : 2016.08.12
  • Accepted : 2016.11.04
  • Published : 2016.12.25

Abstract

This study aims to perform damage identification for Da-Sheng-Guan (DSG) high-speed railway truss arch bridge using fuzzy clustering analysis. Firstly, structural health monitoring (SHM) system is established for the DSG Bridge. Long-term field monitoring strain data in 8 different cases caused by high-speed trains are taken as classification reference for other unknown cases. And finite element model (FEM) of DSG Bridge is established to simulate damage cases of the bridge. Then, effectiveness of one fuzzy clustering analysis method named transitive closure method and FEM results are verified using the monitoring strain data. Three standardization methods at the first step of fuzzy clustering transitive closure method are compared: extreme difference method, maximum method and non-standard method. At last, the fuzzy clustering method is taken to identify damage with different degrees and different locations. The results show that: non-standard method is the best for the data with the same dimension at the first step of fuzzy clustering analysis. Clustering result is the best when 8 carriage and 16 carriage train in the same line are in a category. For DSG Bridge, the damage is identified when the strain mode change caused by damage is more significant than it caused by different carriages. The corresponding critical damage degree called damage threshold varies with damage location and reduces with the increase of damage locations.

Keywords

Acknowledgement

Supported by : National Natural Science Foundation, Central Universities, Jiangsu Higher Education Institutions

References

  1. Al-Salah, S., Zein-Sabatto, S., Bodruzzaman, M. and Mikhail, M. (2013), "Two-level fuzzy inference system for aircraft's structural health monitoring", Proceedings of the IEEE Southeastcon, Jacksonville, FL, April.
  2. Erdogan, Y.S., Catbas, F.N. and Bakir, P.G. (2014), "Structural identification (St-Id) using finite element models for optimum sensor configuration and uncertainty quantification", Finite Elem. Anal. Des., 81, 1-13. https://doi.org/10.1016/j.finel.2013.10.009
  3. Fan, W. and Qiao, P.Z. (2011), "Vibration-based damage identification methods: a review and comparative study", Struct. Health Monit., 10(1), 83-111. https://doi.org/10.1177/1475921710365419
  4. Farrar, C.R. and Worden, K. (2007), "An introduction to structural health monitoring", Philos. T. Roy. Soc., 365, 303-315. https://doi.org/10.1098/rsta.2006.1928
  5. Garden, P.E. and Fanning, P.A. (2004), "Vibration based condition monitoring: a review", Struct. Health Monit., 3(4), 355-377. https://doi.org/10.1177/1475921704047500
  6. Jiao, Y.B., Liu, H.B., Zhang, P., Wang, X.Q. and Wei, H.B. (2013), "Unsupervised performance evaluation strategy for bridge superstructure based on fuzzy clustering and field data", Scientific World J., 1-6.
  7. Kovvali, N., Das, S., Chakraborty, D., Cochran, D., Suppappola, A.P. and Chattopadhyay, A. (2007), "Time Frequency Based Classification of Structural Damage", Proceedings of the Structure Dynamic and Material Conference, Honolulu, Hawaii, November.
  8. Kruse, R., Doring, C. and Lesot, M.J. (2007), "Fundamentals of fuzzy clustering", Adv. Fuzzy Clust. Appl., 1-30.
  9. Li, S.Y. (2004), "Engineering Fuzzy Mathematics with Application", Harbin Institute of Technology Press, Harbin, Heilongjiang, China.
  10. Meyyappan, L., Jose, M., Dagli, C., Silva, P. and Pottinger, H. (2003), "Fuzzy-neuro System for Bridge Health Monitoring", Proceedings of the 22nd International Conference of the North American Fuzzy Information Processing Society, Chicago, IL, July.
  11. Ou, J.P. and Li, H. (2010), "Structural health monitoring in mainland China: review and future trends", Struct. Health Monit., 9(3), 219-231. https://doi.org/10.1177/1475921710365269
  12. Palomino, L.V., Steffen, V. Jr. and Neto, R.M.F. (2014), "Probabilistic neural network and fuzzy cluster analysis nethods applied to impedance-based SHM for damage classification", J. Shock Vib., 1-12.
  13. Podofillini, L., Zio, E., Mercurio, D. and Dang, V.N. (2010), "Dynamic safety assessment: scenario identification via a possibilistic clustering approach", Reliab. Eng. Syst. Saf., 95(5), 534-549. https://doi.org/10.1016/j.ress.2010.01.004
  14. Sabatto, S., Zein, Mikhail, M., Bodruzzaman, M. and DeSimio, M. (2011), "Information and decision fusion systems for aircraft structural health monitoring, southeastcon", IEEE Southeast Con 2011-Building Global Engineers, Nashville, TN, March.
  15. Sebzalli, Y.M. and Wang, X.Z. (2001), "Knowledge discovery from process operational data using PCA and fuzzy clustering", Eng. Appl. Artif. Intell., 14(5), 607-616. https://doi.org/10.1016/S0952-1976(01)00032-X
  16. Silva, S. da, Dias, M., Lopes, V. and Brennan, M.J. (2008), "Structural damage detection by fuzzy clustering", Mech. Syst. Signal Pr., 22(7), 1636-1649. https://doi.org/10.1016/j.ymssp.2008.01.004
  17. Tarighat, A. and Miyamoto, A. (2009), "Fuzzy concrete bridge deck condition rating method for practical bridge management system", Exp. Syst. Appl., 36(10), 12077-12085. https://doi.org/10.1016/j.eswa.2009.04.043
  18. Wang, Y.M. and Elhag, T.M.S. (2007), "A fuzzy group decision making approach for bridge risk assessment", Comput. Ind. Eng., 53(1), 137-148. https://doi.org/10.1016/j.cie.2007.04.009
  19. Yu, L. and Xu, P. (2011), "Structural health monitoring based on continuous ACO method", Microelectron. Reliab., 51(2), 270-278. https://doi.org/10.1016/j.microrel.2010.09.011
  20. Yu, L., Zhu, J.H. and Yu, L.L. (2011), "Structural damage detection in a truss bridge model using fuzzy clustering and measured FRF data reduced by principal component projection", Proceedings of the 14th Asia Pacific Vibration Conference on Dynamics for Sustainable Engineering, Hong Kong, December.
  21. Zhao, Z.Y. and Chen, C.Y. (2002), "A fuzzy system for concrete bridge damage diagnosis", Comput. Struct., 80(7), 629-641. https://doi.org/10.1016/S0045-7949(02)00031-7
  22. Zhou, F., Zhang, W., Sun, K. and Shi, B. (2015), "Health State Evaluation of Shield Tunnel SHM Using Fuzzy Cluster Method", Proceedings of the Conference on Structural Health Monitoring and Inspection of Advanced Materials, Aerospace, and Civil Infrastructure, San Diego, CA, March.

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