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Automated modal identification using principal component and cluster analysis: Application to a long-span cable-stayed bridge

机译:使用主成分和聚类分析的自动模式识别:在大跨度斜拉桥中的应用

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摘要

Obtaining timely information about the health of civil infrastructure is critical to ensuring safe and reliable operation. Structural health monitoring has been proposed as a means to provide such information; however, most structural health monitoring systems provide only raw data, rather than actionable information. It is necessary to develop automated modal analysis strategies that can provide near real-time dynamic information regarding the in-service state of a bridge, which is essential to vibration control, finite element model calibration, and damage detection for safety and serviceability condition assessment. This study presents an automated framework to extract structural modal parameters from the stabilization diagram using a parametric modal identification method such as stochastic subspace identification. The framework focuses on the automated modal analysis issues of an in-service long-span bridge with close-frequency modes. The presented framework is validated using experimental tests of a 1.8-m 18-story laboratory model. Subsequently, data from Sutong Cable-Stayed Bridge are employed to demonstrate its potential usage in the field. Finally, an application of the automated framework is presented to identify and track the modal parameters of the deck of Sutong Cable-Stayed Bridge for 20 days. Results show that the presented framework can successfully extract the structural modal parameters with good accuracy and robustness, hence can provide a reliable technical support for in-service monitoring of long-span bridges.
机译:及时获得有关民用基础设施健康的信息对于确保安全可靠的运行至关重要。有人提议进行结构健康监测,以提供这种信息;但是,大多数结构健康监控系统仅提供原始数据,而不提供可操作的信息。有必要开发一种自动化的模态分析策略,该策略可以提供有关桥梁在役状态的近实时动态信息,这对于振动控制,有限元模型校准以及用于安全性和可使用性状况评估的损伤检测至关重要。这项研究提出了一种自动化框架,可使用参数化模态识别方法(例如随机子空间识别)从稳定图提取结构模态参数。该框架重点关注使用近频模式的在役大跨度桥梁的自动化模态分析问题。所提出的框架已通过1.8米长的18层实验室模型的实验测试得到验证。随后,使用苏通斜拉桥的数据来证明其在该领域的潜在用途。最后,提出了一种自动化框架的应用程序,以识别和跟踪苏通斜拉桥桥面20天的模态参数。结果表明,所提出的框架可以成功地提取结构模态参数,具有良好的精度和鲁棒性,从而可以为大跨度桥梁在役监测提供可靠的技术支持。

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