The Abstracts of ATEM : International Conference on Advanced Technology in Experimental Mechanics : Asian Conference on Experimental Mechanics
Online ISSN : 2424-2837
2003.2
Session ID : OS09W0317
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OS09W0317 Unsupervised damage detection of CFRP structure with statistical diagnostic method
Atsushi IwasakiAkira TodorokiTsuneya Sugiya
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Abstract
Structural health monitoring is a noticeable technology for advanced composite structures and civil structures. The present paper proposes a new diagnostic tool for the structural health monitoring that employs a statistical diagnosis of self-learning method. Most of the structural health monitoring systems adopt parametric method based on modeling or non-parametric method such as artificial neural networks. The former method requires modeling of each structure and latter method requires data for the training. And these modeling and data for the training demand much cost. The new statistic diagnosis method does not require the complicated modeling and a learning data of damaged structure for the artificial neural networks. The present study deals monitoring of delamination of composite beam using change of strain judged by the statistical tools such as Response Surface and F-Statistics. Response surfaces among the measured strain data of surface of composite beam are produced at intact state and monitoring state, and the difference of the each response surface is statistically tested using F-test. As a result, the new method successfully diagnoses the damage without using modeling and a learning data of damaged structure.
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© 2003 The Japan Society of Mechanical Engineers
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