Active Control with Optical Fiber Sensors and Neural Networks. II: Experimental Verification
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VIEW THE REPLYPublication: Journal of Structural Engineering
Volume 132, Issue 8
Abstract
Experimental results for a full-scale steel frame structure with a smart active control system under shaking-table testing are presented. To this end, a full-scale steel frame structure with the proposed control system is examined under earthquakes simulated by a 5 m 5 m shaking table with several representative earthquakes arranged to assess the performance and robustness of the proposed control system. Signals detected from fiber Bragg grating sensors showed superior performance to conventional strain gauges in structure surveillance. Experimental data recorded during earthquake excitation, for structural strain, also demonstrated the improved performance of the proposed control system over the traditional active control. Experimental results demonstrated that the control system can be applied to buildings after the whole testing process.
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Acknowledgments
The writers would like to thank the National Science Council of the Republic of China, Taiwan for financially supporting this research under Contract No. NSC NSCT90-2625-Z-002-031. The National Center for Research on Earthquake Engineering is also appreciated for providing experimental aid and shaking-table test equipment.
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© 2006 ASCE.
History
Received: Oct 2, 2003
Accepted: Nov 28, 2005
Published online: Aug 1, 2006
Published in print: Aug 2006
Notes
Note. Associate Editor: Elisa D. Sotelino
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