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Architectural Engineering

Architectural Engineering is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of architectural theory and architectural design development on the combination of architectural theory and modern industrial technology. The main focus of the journal is the academic papers and comments of latest architectural research improvement in the fields of nature science, engineering technology, economy a... [More] Architectural Engineering is an international comprehensive professional academic journal of Ivy Publisher, concerning the development of architectural theory and architectural design development on the combination of architectural theory and modern industrial technology. The main focus of the journal is the academic papers and comments of latest architectural research improvement in the fields of nature science, engineering technology, economy and science, report of latest research result, aiming at providing a good communication platform to transfer, share and discuss the theoretical and technical development of architectural theory development for professionals, scholars and researchers in this field, reflecting the academic front level, promote academic change and foster the development of architectural theory and design method.

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ISSN Print:2329-8065

ISSN Online:2329-8081

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Paper Infomation

Research of Physical Parameter Identification and Damage Localization based on the Gibbs Sampling

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Author: Ziyan Wu, Zongming Cai, Shukui Liu

Abstract: A new method for structural physical parameter identification is proposed for linear structure. Firstly, a linear structural identification model was obtained based on a series of transformation of the dynamic characteristic equation. Then the posterior distribution of the model is obtained by the Bayesian updating theory. Using the structural modal parameters and considering their randomness, the structural stiffness parameter is obtained from the conditional posterior distribution of the linear structural identification model. The Gibbs sampling based on the Markov Chain Monte Carlo (MCMC) method is employed during the process. In order to illustrate the proposed method, a 3-DOF linear shear building is used as an example to detect and quantify its damage based on model data measured before and after a severe loading event. The research shows that damage level and locations can be identified with little error by using proposed method.

Keywords: Physical Parameters Identification; Damage Localization; MCMC Method; Gibbs Sampling

References:

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