A Study on the Application of S Model Automata for Multiple Objective Optimal Operation of Power Systems

다목적을 고려한 전력 시스템의 최적운용을 위한 S 모델 Automata의 적용 연구

  • Published : 2000.04.01

Abstract

The learning automaton is an automaton to update systematically the strategy for enhancing the performance in response to the output results, and several schemes of learning automata have been presented. In this paper, S-model learning automata are applied in order to achieve the best compromise solution between an optimal solution for economic operation and an optimal solution for stable operation of the power system under the circumstance that the loads vary randomly. It is shown that learning automata are applied satisfactorily to the multiobjective optimization problem for obtaining the best tradeoff among the conflicting economy and stability objectives of power systems.

Keywords

References

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