A comparative analytical and experimental study of several algorithms for the control of
seismically excited floor- and base-isolated structures is pursued in the current study. A
hybrid isolation system that is comprised of a bidirectional roller–pendulum system (RPS)
and augmented by controllable magnetorheological (MR) dampers is proposed to reduce
the potential for damage to structures and sensitive equipment. Bidirectional motions are
intelligently ameliorated in real time by the modulation of MR damper resistance. A
Bouc–Wen model is adopted in numerical and experimental trials to predict behavior of the
MR dampers. Three contrasting control techniques are examined. They include
neural network control, LQR/clipped optimal control with variable gains and fuzzy
logic control. Each control scheme is a candidate for mitigating the response of a
superstructure to near- and far-field seismic loadings. Minimization of displacement and
acceleration responses of the structure are considered in the formulation of each
approach to control. Results of the numerical and large-scale experimental efforts
reveal that the response of the isolated structure is effectively alleviated by all of
the considered control methods, although they do not perform equally well. The
LQR/clipped optimal controller with variable gains is superior to the other controllers in
50% of the investigated cases, while the fuzzy logic controller performs well for
earthquakes with large accelerations. Neural network control is found to be effective in
minimizing the acceleration of the superstructure that is subject to moderate
excitation.
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