3D structural vibration identification from dynamic point clouds

Video-based measurement has received increased attention for modal analysis and nondestructive evaluation, playing an important role in the development of the next-generation structural sensing technologies. As these techniques have evolved, more quantitative approaches based on computer vision tech...

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Veröffentlicht in:Mechanical systems and signal processing 2022-03, Vol.166 (C), p.108352, Article 108352
Hauptverfasser: Silva, Moisés Felipe, Green, Andre, Morales, John, Meyerhofer, Peter, Yang, Yongchao, Figueiredo, Eloi, Costa, João C.W.A., Mascareñas, David
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container_end_page
container_issue C
container_start_page 108352
container_title Mechanical systems and signal processing
container_volume 166
creator Silva, Moisés Felipe
Green, Andre
Morales, John
Meyerhofer, Peter
Yang, Yongchao
Figueiredo, Eloi
Costa, João C.W.A.
Mascareñas, David
description Video-based measurement has received increased attention for modal analysis and nondestructive evaluation, playing an important role in the development of the next-generation structural sensing technologies. As these techniques have evolved, more quantitative approaches based on computer vision techniques have emerged on full-field unsupervised structural identification, exploiting the benefits provided by the use of video cameras such as high spatial sensor density and low installation costs. More recent work has started to explore the use of laser point cloud data for 3D mapping of scenes and structures. Sensors such as LIDAR provide huge amounts of measurements at high spatial resolution from which it is possible to estimate accurate structural geometry for applications such as the generation of CAD models. Unfortunately to-date, the frame rate and depth resolution of LIDAR and other sensors capable of 3D geometry measurements has not been sufficient for measuring structural dynamics. In this paper, we introduce an approach for efficient and extremely high resolution 3D structural dynamic identification/modal analysis from point cloud data acquired using a commercial, low-cost, time-of-flight imager. Vibration mode shapes and modal coordinates are extracted from this data by creating virtual Lagrangian sensors based on the point clouds parameters. First, time-varying point cloud data are collected from a vibrating structure. Then, a mesh of virtual sensors is created based on the dynamic point cloud data for tracking the structure’s displacement over time. Next solutions to the blind source separation problem are employed to estimate high resolution 3D mode shapes, modal coordinates, and resonant frequencies. We demonstrate the potential of our proposed approach on laboratory tests and compare the results to the data collected from conventional laser displacement sensors. This technique represents an advance towards efficiently exploring the full advantages of using dynamic point cloud data for practical monitoring applications and has the potential to be extended for a wide range of 3D motion decomposition problems. •Computer vision technique for estimating 3D vibration modes.•This is the first attempt to exploit dynamic point clouds for structural dynamics.•A time-of-flight imager is employed to obtain dynamic measurements.•Vibration modes are estimated from the dynamic data by forming virtual sensors.•Modal estimation is blindly achieved by dimension
doi_str_mv 10.1016/j.ymssp.2021.108352
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ispartof Mechanical systems and signal processing, 2022-03, Vol.166 (C), p.108352, Article 108352
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language eng
recordid cdi_osti_scitechconnect_1818784
source Elsevier ScienceDirect Journals
subjects 3D modal identification
3D mode shapes
Blind source separation
Cloud computing
Computer vision
Cost analysis
Data acquisition
Finite element method
High resolution
Installation costs
Laboratory tests
Lidar
Modal analysis
Non-contact measurements
Nondestructive testing
Point cloud processing
Resonant frequencies
Sensors
Signal processing
Spatial resolution
Structural vibration
Three dimensional models
Three dimensional motion
Vibration measurement
Vibration mode
Virtual sensing
Virtual sensors
title 3D structural vibration identification from dynamic point clouds
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