Modal parameters identification of heavy-haul railway RC bridges: Experience acquired
Data(s) |
01/03/2015
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Resumo |
Traditionally, it is not easy to carry out tests to identify modal parameters from existing railway bridges because of the testing conditions and complicated nature of civil structures. A six year (2007-2012) research program was conducted to monitor a group of 25 railway bridges. One of the tasks was to devise guidelines for identifying their modal parameters. This paper presents the experience acquired from such identification. The modal analysis of four representative bridges of this group is reported, which include B5, B15, B20 and B58A, crossing the Carajás railway in northern Brazil using three different excitations sources: drop weight, free vibration after train passage, and ambient conditions. To extract the dynamic parameters from the recorded data, Stochastic Subspace Identification and Frequency Domain Decomposition methods were used. Finite-element models were constructed to facilitate the dynamic measurements. The results show good agreement between the measured and computed natural frequencies and mode shapes. The findings provide some guidelines on methods of excitation, record length of time, methods of modal analysis including the use of projected channel and harmonic detection, helping researchers and maintenance teams obtain good dynamic characteristics from measurement data. |
Identificador | |
Publicador |
Techno-Press Journals |
Relação |
http://technopress.kaist.ac.kr/download.php?journal=smm&volume=2&num=1&ordernum=2 DOI:10.12989/smm.2015.2.1.001 Sampaio, Regina & Chan, Tommy H.T. (2015) Modal parameters identification of heavy-haul railway RC bridges: Experience acquired. Structural Monitoring and Maintenance, 2(1), pp. 1-18. |
Direitos |
Copyright 2015 Techno-Press, Ltd |
Fonte |
School of Civil Engineering & Built Environment; Science & Engineering Faculty |
Palavras-Chave | #090506 Structural Engineering #Railway Bridges #operational modal analysis #stochastic subspace identification #frequency domain decomposition |
Tipo |
Journal Article |