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System identification of an in-service railroad bridge using wireless smart sensors

  • Kim, Robin E. (Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign) ;
  • Moreu, Fernando (Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign) ;
  • Spencer, Billie F. (Department of Civil and Environmental Engineering, University of Illinois at Urbana-Champaign)
  • Received : 2014.11.27
  • Accepted : 2015.02.15
  • Published : 2015.03.25

Abstract

Railroad bridges form an integral part of railway infrastructure throughout the world. To accommodate increased axel loads, train speeds, and greater volumes of freight traffic, in the presence of changing structural conditions, the load carrying capacity and serviceability of existing bridges must be assessed. One way is through system identification of in-service railroad bridges. To dates, numerous researchers have reported system identification studies with a large portion of their applications being highway bridges. Moreover, most of those models are calibrated at global level, while only a few studies applications have used globally and locally calibrated model. To reach the global and local calibration, both ambient vibration tests and controlled tests need to be performed. Thus, an approach for system identification of a railroad bridge that can be used to assess the bridge in global and local sense is needed. This study presents system identification of a railroad bridge using free vibration data. Wireless smart sensors are employed and provided a portable way to collect data that is then used to determine bridge frequencies and mode shapes. Subsequently, a calibrated finite element model of the bridge provides global and local information of the bridge. The ability of the model to simulate local responses is validated by comparing predicted and measured strain in one of the diagonal members of the truss. This research demonstrates the potential of using measured field data to perform model calibration in a simple and practical manner that will lead to better understanding the state of railroad bridges.

Keywords

References

  1. Association of American Railroads (2012), An Overview of America's Freight RailroadsExternal Link.
  2. Ahmadi, H.R. and Daneshjoo, F. (2012), "A harmonic vibration, output only and time-frequency representation based method for damage detection in Concrete piers of complex bridges", Int. J. Civil Struct. Eng., 2(3), 987-1002 .
  3. Brenner, B., Bell, E., Sanayei, M., Pheifer, E., Durack, W., Fay, S. and Thorndike, L. (2010), "Structural modeling, instrumentation, and load testing of the Tobin Memorial Bridge in Boston, Massachusetts", Proceedings of the 2010 Structures Congress, Orando, Florida, May.
  4. Brincker, R., Zhang, L. and Andersen, P. (2001), "Modal identification of output-only systems using frequency domain decomposition", Smart Mater. Struct., 10(3), 441-445. https://doi.org/10.1088/0964-1726/10/3/303
  5. Brownjohn, J. (2003), "Ambient vibration studies for system identification of tall buildings", Earthq. Eng. Struct. D., 32(1), 71-95. https://doi.org/10.1002/eqe.215
  6. Brownjohn, J.M. and Xia, P.Q. (2000), "Dynamic assessment of curved cable-stayed bridge by model updating", J. Struct. Eng.- ASCE, 126(2), 252-260. https://doi.org/10.1061/(ASCE)0733-9445(2000)126:2(252)
  7. Catbas, F.N., Ciloglu, S.K., Hasancebi, O., Grimmelsman, K. and Aktan, A.E. (2007), "Limitations in structural identification of large constructed structures", J. Struct. Eng. - ASCE, 133(8), 1051-1066. https://doi.org/10.1061/(ASCE)0733-9445(2007)133:8(1051)
  8. Catbas, F.N., Susoy, M. and Frangopol, D.M. (2008), "Structural health monitoring and reliability estimation: Long span truss bridge application with environmental monitoring data", Eng. Struct., 30(9), 2347-2359. https://doi.org/10.1016/j.engstruct.2008.01.013
  9. Cho, S., Giles, R.K. and Spencer, B.F. (2014), "System identification of a historic swing truss bridge using a wireless sensor network employing orientation correction", Struct. Control Health. Monit., 22(2), 255-272. https://doi.org/10.1002/stc.1672
  10. Crossbow Technology Inc. (2009), Imote2 - High-performance Wireless Sensor Network Node, Available at http://www.xbow.com/Products/Product_pdf_files/Wireless_pdf/Imote2_Datasheet.pdf
  11. Deng, L. and Cai, C. (2009), "Bridge model updating using response surface method and genetic algorithm", J. Bridge Eng., 15(5), 553-564. https://doi.org/10.1061/(ASCE)BE.1943-5592.0000092
  12. Federal Railroad Administration (2010), National Rail Plan Progress Report.
  13. Felber, A.J. (1993), Development of a hybrid bridge evaluation system, Ph.D. Dissertation, University of British Columbia, British Columbia.
  14. Government Accountability Office (GAO; 2007), Railroad Bridges and Tunnels: Federal Role in Providing Safety Oversight and Freight Infrastructure Investment Could Be Better Targeted. GAO-07-770, August 6, 2007.
  15. Giles, R., Kim, R., Sweeney, S., Spencer, B., Bergman, L., Shield, C. and Olson, S. (2014), "Multimetric monitoring of a historic swing bridge", Bridges, 10, 9780784412374.014. https://doi.org/10.1061/9780784412374.014
  16. Giles, R., Kim, R., Spencer Jr, B.F., Bergman, L.A., Shield, C.K. and Sweeney, S.C. (2011), "Structural health indices for steel truss bridges",Conference Proceedings of the Society for Experimental Mechanics Series, Jacksonville, Florida, January.
  17. Jaishi, B. and Ren, W.X. (2005), "Structural finite element model updating using ambient vibration test results", J. Struct. Eng.- ASCE, 131(4), 617-628. https://doi.org/10.1061/(ASCE)0733-9445(2005)131:4(617)
  18. James III, G.H., Carne, T.G. and Lauffer, J.P. (1993), The natural excitation technique (NExT) for modal parameter extraction from operating wind turbines, NASA STI/Recon Technical Report N, 93, 28603.
  19. Jo, H., Sim, S.H., Mechitov, K.A., Kim, R., Li, J., Moinzadeh, P., Spencer Jr, B., Park, J.W., Cho, S. and Jung, H.J. (2011), "Hybrid wireless smart sensor network for full-scale structural health monitoring of a cable-stayed bridge", Proceedings of the SPIE Smart Structures/NDE Conference, San Diego. California, March.
  20. Jo, H., Sim, S.H., Nagayama, T. and Spencer Jr, B. (2011), "Development and application of high-sensitivity wireless smart sensors for decentralized stochastic modal identification", J. Eng. Mech. - ASCE, 138(6), 683-694.
  21. Juang, J.N. and Pappa, R.S. (1986), "Effects of noise on modal parameters identified by the eigensystem realization algorithm", J. Guid. Control Dynam., 9(3), 294-303. https://doi.org/10.2514/3.20106
  22. Juang, J.N. and Pappa, R.S. (1985), "An eigensystem realization algorithm for modal parameter identification and model reduction", J. Guid. Control Dynam., 8(5), 620-627. https://doi.org/10.2514/3.20031
  23. Morassi, A. and Tonon, S. (2008), "Dynamic testing for structural identification of a bridge", J. Bridge Eng., 13(6), 573-585. https://doi.org/10.1061/(ASCE)1084-0702(2008)13:6(573)
  24. Nagayama, T., Abe, M., Fujino, Y. and Ikeda, K. (2005), "Structural identification of a nonproportionally damped system and its application to a full-scale suspension bridge", J. Struct. Eng.- ASCE, 131(10), 1536-1545. https://doi.org/10.1061/(ASCE)0733-9445(2005)131:10(1536)
  25. Nagayama, T., Ushita, M., Fujino, Y., Ieiri, M. and Makihata, N. (2010), "The combined use of low-cost smart sensors and high accuracy sensors to apprehend structural dynamic behavior", Proceedings of the SPIE Smart Structures/NDE Conference, San Diego. California, March.
  26. Pappa, R.S., Elliott, K.B. and Schenk, A. (1993), "Consistent-mode indicator for the eigensystem realization algorithm", J. Guid. Control Dynam, 16(5), 852-858. https://doi.org/10.2514/3.21092
  27. Rice, J.A., Mechitov, K., Sim, S.H., Nagayama, T., Jang, S., Kim, R., Spencer Jr, B.F., Agha, G. and Fujino, Y. (2010), "Flexible smart sensor framework for autonomous structural health monitoring", Smart Struct. Syst, 6(5-6), 423-438. https://doi.org/10.12989/sss.2010.6.5_6.423
  28. Rice, J.A. and Spencer Jr, B. (2008), "Structural health monitoring sensor development for the Imote2 platform", Proceedings of the 15th International Symposium on: Smart Structures and Materials & Nondestructive Evaluation and Health Monitoring, San Diego, California, March.
  29. Su, D., Fujino, Y., Nagayama, T., Hernandez Jr, J.Y. and Seki, M. (2010), "Vibration of reinforced concrete viaducts under high-speed train passage: measurement and prediction including train-viaduct interaction", Struc.Infrastruct. E., 6(5), 621-633. https://doi.org/10.1080/15732470903068888
  30. Unsworth, J.F. (2010), Design of modern steel railway bridges Editioned., CRC Press.
  31. Van Damme, S., Boons, B., Vlekken, J., Bentell, J. and Vermeiren, J. (2007), "Dynamic fiber optic strain measurements and aliasing suppression with a PDA-based spectrometer", Meas. Sci. Technol., 18(10), 3263-3266. https://doi.org/10.1088/0957-0233/18/10/S33

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