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Estimation of full-field, full-order experimental modal model of cable vibration from digital video measurements with physics-guided unsupervised machine learning and computer vision

机译:利用物理指导的无监督机器学习和计算机视觉,从数字视频测量中估计电缆振动的全场,全阶实验模态模型

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摘要

Cables are critical components for a variety of structures such as stay cables and suspenders of cable-stayed bridges and suspension bridges. When in operational service, they are vulnerable to cumulative fatigue damage induced by dynamic loads (e.g., the cyclic vehicle loads and wind excitation). To accurately analyze and predict their dynamics behaviors and performance that could be spatially local and temporal transient, it is essential to perform high-resolution vibration measurements, from which their dynamics properties are identified and, subsequently, a high spatial resolution, full-modal-order dynamics model of cable vibration can be established. This study develops a physics-guided, unsupervised machine learning-based video processing approach that can blindly and efficiently extract the full-field (as many points as the pixel number of the video frame) modal parameters of cable vibration using only the video of an operating (output-only) cable. In particular, by incorporating the physics of cable vibration (taut string model), a novel automated modal motion filtering method is proposed to enable autonomous identification of full-order (as many modes as possible) dynamic parameters, including those weakly excited modes that used to be challenging to identify in operational modal analysis. Therefore, a full-field, full-order modal model of cable vibration is established by the proposed method. Furthermore, this new approach provides a low-cost and noncontact technique to estimate the cable tension using only the video of the vibrating cable where the fundamental frequency is automatically and efficiently estimated to compute the cable tension according to the taut string equation. Laboratory experiments on a bench-scale cable are conducted to validate the developed approach.
机译:电缆是各种结构的关键组件,例如斜拉桥,斜拉桥和悬索桥的吊架。在运行服务中,它们很容易受到动态载荷(例如,周期性的车辆载荷和风激励)引起的累积疲劳损坏。为了准确地分析和预测它们的动力学行为和性能(可能在空间上是局部的和时间上的瞬变),必须执行高分辨率的振动测量,从中识别出它们的动力学特性,然后进行高分辨率的全模式,全模态测量。可以建立电缆振动的阶跃动力学模型。这项研究开发了一种基于物理的,无监督的基于机器学习的视频处理方法,该方法可以仅使用一个视频就可以盲目有效地提取电缆振动的全场(与视频帧的像素数一样多的点)模态参数。运行(仅输出)电缆。特别是,通过结合电缆振动的物理原理(拉紧弦模型),提出了一种新颖的自动模态运动滤波方法,可以自动识别全阶(尽可能多的模态)动态参数,包括那些使用了弱激励的模态。在运营模式分析中难以识别。因此,通过提出的方法建立了电缆振动的全场全阶模态模型。此外,这种新方法提供了一种低成本且非接触式的技术,可以仅使用振动电缆的视频来估算电缆张力,在该视频中,可以根据绷紧的弦方程自动有效地估算出基频以计算电缆张力。在台式规模的电缆上进行了实验室实验,以验证所开发的方法。

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