Geology Reference
In-Depth Information
CONCLUSION
Chang, C. M., Park, K. S., Mullenix, A., & Spencer,
B. F. Jr. (2008). Semiactive control strategy for a
phase II smart base isolated benchmark building.
Structural Control and Health Monitoring , 15 ,
673-696. doi:10.1002/stc.269
In this chapter, a novel neuromorphic smart con-
troller is proposed for hazard mitigation of smart
building structures. The controller is developed
through the integration of brain emotional learning
based intelligent control with the proportional-
integral-derivative and a clipped algorithm. To
show the performance of the proposed neuromor-
phic controller, a seismically excited three-story
building employing an MR damper is investigated.
It is demonstrated from the simulations that the
proposed neuromorphic controller is effective in
reducing responses of seismically excited build-
ing structure.
Dyke, S. J., Spencer, B. F. Jr, Sain, M. K., &
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magnetorheological dampers for seismic response
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K., Chassiakos, A. G., Claus, R. O., & Masri,
S. F. (1997). Structural control: Past, present,
and future. Journal of Engineering Mechanics ,
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9399(1997)123:9(897)
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