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dc.contributor.advisorLoh, Chin-Hsiung
dc.creatorLiu Kuan, Yi Cheng
dc.date.accessioned2022-07-11T17:02:36Z
dc.date.available2022-07-11T17:02:36Z
dc.date.issued2011-06
dc.identifier.citationhttps://hdl.handle.net/11296/9s3hw3es_ES
dc.identifier.urihttps://hdl.handle.net/10669/86924
dc.description.abstractIn this research the application of output-only system identification technique known as Stochastic Subspace Identification (SSI) algorithms in civil structures is carried out. With the aim of finding accurate modal parameters of the structure in off-line analysis, a stabilization diagram is constructed by plotting the identified poles of the system with increasing the size of data matrix. A sensitivity study of the implementation of SSI through stabilization diagram is firstly carried out, different scenarios such as noise effect, nonlinearity, time-varying systems and closely-spaced frequencies are considered. Comparison between different SSI approaches was also discussed. In the following, the identification task of a real large scale structure: Canton Tower, a benchmark problem for structural health monitoring of high-rise slender structures is carried out, for which the capacity of Covariance-driven SSI algorithm (SSI-COV) will be demonstrated. The introduction of a subspace preprocessing algorithm known as Singular Spectrum Analysis (SSA) can greatly enhance the identification capacity, which in conjunction with SSI-COV is called the SSA-SSI-COV method, it also allows the determination of the best system order. The objective of the second part of this research is to develop on-line system parameter estimation and damage detection technique through Recursive Covariance-driven Stochastic Subspace identification (RSSI-COV) approach. The Extended Instrumental Variable version of Projection Approximation Subspace Tracking algorithm (EIV-PAST) is taking charge of the system-related subspace updating task. To further reduce the noise corruption in field experiments, the data pre-processing technique called recursive Singular Spectrum Analysis technique (rSSA) is developed to remove the noise contaminant measurements, so as to enhance the stability of data analysis. Through simulation study as well as the experimental research, both RSSI-COV and rSSA-SSI-COV method are applied to identify the dynamic behavior of systems with time-varying characteristics, the reliable control parameters for the model are examined. Finally, these algorithms are applied to track the evolution of modal parameters for: (1) shaking table test of a 3-story steel frame with instantaneous stiffness reduction. (2) Shaking table test of a 1-story 2-bay reinforced concrete frame, both under earthquake excitation, and at last, (3) damage detection and early warning of an experimental steel bridge under continuous scour.es_ES
dc.language.isoenges_ES
dc.sourceUniversidad Nacional de Taiwán, Taiwán, R.O.Ces_ES
dc.subjectMétodo de identificación de subespacios estocásticoses_ES
dc.subjectIdentificación de sistemases_ES
dc.subjectMonitoreo de salud estructurales_ES
dc.subjectMétodo recursivo de identificación de subespacios estocásticoses_ES
dc.subjectAnálisis de espectro singulares_ES
dc.subjectTorre de televisión de Cantónes_ES
dc.titleApplication of Covariance Driven Stochastic Subspace Identification Methodes_ES
dc.title.alternative協方差型隨機子空間識別法之應用es_ES
dc.typetesis de maestríaes_ES
dc.description.procedenceUCR::Vicerrectoría de Docencia::Ingeniería::Facultad de Ingeniería::Escuela de Ingeniería Civiles_ES


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