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This power system stabilizer application overcomes an unusual combination of constraints which would otherwise severely limit the damping influence obtainable from a conventional stabilizer system.
Results of the experimental studies show that the proposed adaptive stabilizer outperforms the conventional stabilizer.
Simulation results show that the nonlinear variable structure stabilizer gives satisfactory dynamic performance and good robustness.
Comparative results of studies with adaptive stabilizer based on two alternate adaptive control algorithms and a conventional fixed parameter stabilizer show the improvement in response obtained with the adaptive algorithm.
The efficiency of the best new voltage stabilizer presented in this paper will exceed the ones previously published significantly.
The simulation and experimental results show that this stabilizer possesses good dynamic characteristics and regulation precision.
This arrangement of stabilizer possesses better robustness to the changes of power system operating conditions.
Comparisons with the reported results in the literature demonstrate the effectiveness of the proposed stabilizer.

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