Title :
Optimal corrective actions for power systems using multiobjective genetic algorithms
Author :
El Ela, Adel A Abou ; El-Din, Ashraf Zin ; Spea, Shaimaa R.
Author_Institution :
Minofiya Univ., Minofiya
Abstract :
In this paper, optimal corrective control actions are presented to restore the secure operation of power system for different operating conditions. Genetic Algorithm (GA) is one of the modern optimization techniques, which has been successfully applied in various areas in power systems. Most of the corrective control actions involve simultaneous optimization of several objective functions, which are competing and conflicting each other. The multi-objective genetic algorithm (MOGA) is used to optimize the corrective control actions. Three different procedures based on GA and MOGA are proposed to alleviate the violations of the overloaded lines and minimize the transmission line losses. The first procedure is based on corrective switching of the transmission lines and generation re-dispatch. The second procedure is carried out to determine the optimal siting and sizing of distributed generation (DG). While, the third procedure is concerned into solving the generation-load imbalance problem using load shedding. Numerical simulations are carried out on two test systems in order to examine the validity of the proposed procedures.
Keywords :
distributed power generation; genetic algorithms; load shedding; optimal control; power generation control; power generation dispatch; power system restoration; power system security; distributed generation; generation load imbalance problem; generation redispatch; load shedding; multiobjective genetic algorithm; optimal corrective control action; optimization techniques; overloaded lines; power system restoration; secure operation; transmission line losses; Control systems; Distributed control; Genetic algorithms; Numerical simulation; Optimal control; Power system control; Power system restoration; Power systems; Power transmission lines; Propagation losses; Corrective control actions; Multi-objective genetic algorithm; distributed generation; generation re-dispatch; load shedding;
Conference_Titel :
Universities Power Engineering Conference, 2007. UPEC 2007. 42nd International
Conference_Location :
Brighton
Print_ISBN :
978-1-905593-36-1
Electronic_ISBN :
978-1-905593-34-7
DOI :
10.1109/UPEC.2007.4468975