2018 6th International Conference on Mechanical Engineering, Materials Science and Civil Engineering | |
Assessment of fatigue damage in asphalt mixture using an acoustic emission approach | |
材料科学;机械制造;土木建筑工程 | |
Qiu, X.^1 ; Wang, Y.J.^1 ; Yang, Q.^1 ; Xu, J.X.^1 ; Cheng, W.H.^1 | |
Road and Traffic Engineering Research Center, Zhejiang Normal University, Jinhua | |
321004, China^1 | |
关键词: Continuum damage mechanics model; Damage evolution process; Deterioration process; Four point bending; Mechanical behaviour; Mechanical characteristics; Simulation analysis; Strong correlation; | |
Others : https://iopscience.iop.org/article/10.1088/1757-899X/542/1/012051/pdf DOI : 10.1088/1757-899X/542/1/012051 |
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来源: IOP | |
【 摘 要 】
Fatigue failure is the main damage forms of asphalt mixture. Acoustic emission (AE) is an effective technique for continuously monitoring the development of fatigue damage in asphalt mixture. Firstly, the AE characteristic and mechanical behaviour of asphalt mixture and their relationship were investigated by performing four-point bending fatigue test and AE test. Furthermore, the parameters of continuum damage mechanics model that describes the deterioration process of asphalt mixture were calibrated in according with the AE technique. Finally, simulation analysis on the four-point bending fatigue test of asphalt mixture is performed. The results indicated that the AE parameters could reflect the changes of mechanical characteristic. The variation of AE energy and dissipated energy had a similar tendency. There is a strong correlation between the result of continuum damage mechanics model and mechanical test. The numerical results show that the definition of damage variable based on AE energy is reliable and reasonable. This research would provide a new idea for the application of AE technique on diagnosing the fatigue damage evolution process of asphalt mixture.
【 预 览 】
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Assessment of fatigue damage in asphalt mixture using an acoustic emission approach | 673KB | download |