2016
DOI: 10.1007/s13198-016-0550-z
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Hybrid algorithm DE–TLBO for optimal H∞ and PID control for multi-machine power system

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Cited by 8 publications
(1 citation statement)
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“…Because TLBO has the advantages of few parameters, simple thinking, easy understanding and strong robustness [1][2][3][4], it has attracted the attention of many scholars since it was put forward and has been applied in many fields. Such as reactive power optimization of power system [5], LQR controller optimization [6], IIR digital filter design [7], steelmaking and continuous casting scheduling problem [8], PID controller parameter optimization problem [9,10], feature selection problem [11], HVDC optimization of voltage source converter [12], extension of global optimization technology to constrained optimization [13], analysis of financial time series data [14], neural network optimization [15], etc. Compared with the existing swarm intelligence algorithm, the algorithm obtains better results.…”
Section: Introductionmentioning
confidence: 99%
“…Because TLBO has the advantages of few parameters, simple thinking, easy understanding and strong robustness [1][2][3][4], it has attracted the attention of many scholars since it was put forward and has been applied in many fields. Such as reactive power optimization of power system [5], LQR controller optimization [6], IIR digital filter design [7], steelmaking and continuous casting scheduling problem [8], PID controller parameter optimization problem [9,10], feature selection problem [11], HVDC optimization of voltage source converter [12], extension of global optimization technology to constrained optimization [13], analysis of financial time series data [14], neural network optimization [15], etc. Compared with the existing swarm intelligence algorithm, the algorithm obtains better results.…”
Section: Introductionmentioning
confidence: 99%