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dc.contributorDepartment of Civil and Environmental Engineeringen_US
dc.contributor.advisorNi, Yi-qing (CEE)en_US
dc.contributor.advisorWang, Youwu (CEE)en_US
dc.contributor.advisorZhou, Lu (CEE)en_US
dc.creatorChen, Siyi-
dc.identifier.urihttps://theses.lib.polyu.edu.hk/handle/200/13034-
dc.languageEnglishen_US
dc.publisherHong Kong Polytechnic Universityen_US
dc.rightsAll rights reserveden_US
dc.titleSHM data processing using low-rank techniques : from time-series vibration data to vision-based image dataen_US
dcterms.abstractOver the long-term monitoring process, the collected structural health monitoring (SHM) data tend to be voluminous, redundant, but relevant. Although these data are in high-dimensional spaces, they may distribute around low-dimensional subspaces. In such scenarios, low-rank models will become useful tools for efficiently and robustly processing high-dimensional SHM data, since they can fully utilize spatial and temporal correlations among data. Currently, the applications of these low-rank techniques in SHM remain in their infancy. It motivates to seek and utilize appropriate low-rank models to solve existing challenges in SHM. In this regard, this thesis aims to explore several low-rank techniques to address the challenges associated with imperfect vibration data and achieve image-based crack detection.en_US
dcterms.abstractDepending on the different SHM data used (time-series vibration data or vision-based image data), this thesis falls into two main parts. In the first part, two structured low-rank based methods are designed to handle imperfect time-series vibration data, aiming to ensure the integrity and accuracy of the monitoring data. Specifically, a novel methodology, termed Hankel-based robust principal component analysis (HRPCA), is first developed for denoising structural dynamic response data contaminated with gross outliers. Making use of the fundamental duality, a low-dimensional (low-rank) subspace could be constructed to represent the originally redundant yet relevant vibration data, which allows for better separation of gross outliers embedded in the monitoring data.en_US
dcterms.abstractNext, this study further harnesses the low-rank nature of the time-series vibration data to tackle the issue of lost data recovery. Based on the low-rank Hankel property, the proposed method can address all three commonly encountered data loss patterns, including random data loss, continuous but not synchronized data loss, as well as continuous and synchronized data loss.en_US
dcterms.abstractThe second part of the thesis focuses on image-based crack detection, where low-rank strategies are incorporated to enhance the detection process. Given the problems of high computational cost and scarcity of labeled data, this part first presents a fast and real-time crack detection method that combines transfer learning (TL) and low-rank dictionary learning (LRDL). It leverages on the knowledge from a well-trained deep convolutional neural network (DCNN) model, and “transfers” its learning ability to a crack detection task. Based on the transferred features, a new classifier is generated for crack recognition via LRDL. The LRDL phase benefits from the availability of pre-extracted features and a limited number of parameters, which can significantly reduce the training time and the number of required labeled images.en_US
dcterms.abstractFinally, to tackle the challenges from complex background scenes, hyperspectral imaging (HSI) technique is further introduced to eliminate their influence. Compared to the RGB images that only contain three spectral bands (red, green, blue), HSI images contain hundreds of spectral bands, providing rich spectral information. Due to the high correlations in HSI data, a low-rank representation (LRR)-based method is developed for crack detection. It possesses strong anti-interference ability to identify cracks and other materials under complex scenes.en_US
dcterms.abstractThrough a combination of theoretical, numerical, and experimental investigations, this thesis clearly demonstrates the promise of applying the proposed low-rank methods in processing SHM data.en_US
dcterms.extentxxiv, 281 pages : color illustrationsen_US
dcterms.isPartOfPolyU Electronic Thesesen_US
dcterms.issued2024en_US
dcterms.educationalLevelPh.D.en_US
dcterms.educationalLevelAll Doctorateen_US
dcterms.LCSHStructural health monitoring -- Data processingen_US
dcterms.LCSHStructural analysis (Engineering)en_US
dcterms.LCSHHong Kong Polytechnic University -- Dissertationsen_US
dcterms.accessRightsopen accessen_US

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Please use this identifier to cite or link to this item: https://theses.lib.polyu.edu.hk/handle/200/13034