Generation Expansion Planning Optimized by Genetic Algorithm Considering Seasonal Impact and Fuel Price

Tafsir Ahmed Khan, Syed Abdullah-Al-Nahid, Md. Abu Taseen, S. Tasnim, T. Aziz
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Abstract

Generation Expansion Planning (GEP) is determining the type, location and number of new generating stations (GSs). In this paper, a GEP problem is formed by considering three types of GSs and then their possible combinations are sorted. Infeasible combinations are screened out based on the capacity limit and maximum allowable budget. The best solution with minimum cost is recognized by optimizing the feasible combinations using Genetic Algorithm (GA). Share of fuel mix (gas and oil) for winter and other seasons are considered as the constraints. In simulation, 14 out of 75 combinations came out feasible. GA was used to find the best combination which had an optimized amount of gas and oil usage. The results display the superiority of proposed methodology in contrast with other studies in finding the best solution of the GEP problem with minimum iteration.
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考虑季节影响和燃料价格的遗传算法优化的发电扩展规划
发电扩展规划(GEP)是确定新电站(GSs)的类型、位置和数量。本文考虑了三种类型的GSs,形成了一个GEP问题,并对它们的可能组合进行了排序。根据容量限制和最大允许预算来筛选不可行的组合。利用遗传算法对可行组合进行优化,找出代价最小的最优解。冬季和其他季节的燃料混合(天然气和石油)份额被认为是限制因素。在模拟中,75种组合中有14种是可行的。采用遗传算法寻找最优油气用量的最佳组合。结果表明,该方法在用最小迭代求出GEP问题的最优解方面具有较好的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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