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Minimum cost generation unit expansion planning using real coded improved genetic algorithm

机译:使用实数编码改进遗传算法的最小成本生成单元扩展计划

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This paper presents a development of Real Coded Improved Genetic Algorithm (RCIGA) and its application to a minimum cost generation unit expansion planning (GUEP) problem. GUEP is a highly constrained non linear system, so it can be solved by any one of the optimization techniques called genetic algorithm. RCIGA is a global optimizer and it provides faster convergence speed and the search space is increased. In this method, the GUEP solution is vectors of real values. RCIGA is used to calculate the combination of units to obtain minimum cost function and meet out the forecasted demand. The RCIGA approach is applied to the test system of five candidate units and fifteen existing units with 7 period of planning.
机译:本文介绍了实码改进遗传算法(RCIGA)的发展及其在最小成本生成单元扩展计划(GUEP)问题中的应用。 GUEP是一个高度受限的非线性系统,因此可以通过任何一种称为遗传算法的优化技术来解决。 RCIGA是全局优化器,它提供了更快的收敛速度,并且增加了搜索空间。在这种方法中,GUEP解是实值的向量。 RCIGA用于计算单位组合以获得最小成本函数并满足预测需求。 RCIGA方法应用于五个候选单元和十五个现有单元的测试系统,并计划了七个周期。

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