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首页> 外文期刊>Mechanical systems and signal processing >Identification of sudden stiffness changes in the acceleration response of a bridge to moving loads using ensemble empirical mode decomposition
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Identification of sudden stiffness changes in the acceleration response of a bridge to moving loads using ensemble empirical mode decomposition

机译:使用整体经验模态分解识别桥梁对移动载荷的加速度响应中的突然刚度变化

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摘要

The growth of heavy traffic together with aggressive environmental loads poses a threat to the safety of an aging bridge stock. Often, damage is only detected via visual inspection at a point when repairing costs can be quite significant Ideally, bridge managers would want to identify a stiffness change as soon as possible, i.e., as it is occurring, to plan for prompt measures before reaching a prohibitive cost Recent developments in signal processing techniques such as wavelet analysis and empirical mode decomposition (EMD) have aimed to address this need by identifying a stiffness change from a localised feature in the structural response to traffic. However, the effectiveness of these techniques is limited by the roughness of the road profile, the vehicle speed and the noise level. In this paper, ensemble empirical mode decomposition (EEMD) is applied by the first time to the acceleration response of a bridge model to a moving load with the purpose of capturing sudden stiffness changes. EEMD is more adaptive and appears to be better suited to nonlinear signals than wavelets, and it reduces the mode mixing problem present in EMD. EEMD is tested in a variety of theoretical 3D vehicle-bridge interaction scenarios. Stiffness changes are successfully identified, even for small affected regions, relatively poor profiles, high vehicle speeds and significant noise. The latter is due to the ability of EEMD to separate high frequency components associated to sudden stiffness changes from other frequency components associated to the vehicle-bridge interaction system.
机译:交通拥挤的增长以及激进的环境负荷对老化的桥梁库存的安全构成了威胁。通常,只有在修理成本相当可观的时候才通过目视检查来检测损坏。理想情况下,桥梁管理者希望尽快识别出刚度变化,即在发生刚度变化之前,计划达到之前的及时措施。令人望而却步的成本诸如小波分析和经验模态分解(EMD)等信号处理技术的最新发展旨在通过从交通结构响应的局部特征中识别刚度变化来满足这一需求。然而,这些技术的有效性受到道路轮廓的粗糙度,车速和噪声水平的限制。本文首次将集成经验模态分解(EEMD)应用于桥梁模型对移动载荷的加速度响应,以捕获突然的刚度变化。 EEMD比小波更具适应性,并且似乎比小波更适合于非线性信号,并且它减少了EMD中存在的模式混合问题。 EEMD已在各种理论3D车桥相互作用场景中进行了测试。即使对于受影响较小的区域,相对较差的轮廓,较高的车速和明显的噪声,也可以成功识别出刚度变化。后者是由于EEMD能够将与突然的刚度变化相关的高频分量与与车桥相互作用系统相关的其他频率分量分开的能力。

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