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A novel approach to multi-objective optimal power flow by a new hybrid optimization algorithm considering generator constraints and multi-fuel type

机译:考虑发电机约束和多燃料类型的混合动力优化算法,实现多目标最优潮流的一种新方法

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This paper presents a new hybrid algorithm based on the Particle Swarm Optimization (PSO) and the Shuffle Frog Leaping algorithms (SFLA) for solving the Optimal Power Flow (OPF) in power systems. In consequence of economical issues and increasing of the social welfare, the OPF problem is turning into a pretty remarkable problem and getting more and more important in power systems. The proposed optimization problem has considered the real conditions of power generation involving the prohibit zones, valve point effect and multi-fuel type of generation units. Increasing concerns over the environmental issues forced the power system operators to consider the emission problem as a consequential matter beside the economic problems, so the OPF problem has become a multi-objective optimization problem. This paper takes advantages of the Pareto optimal solution and fuzzy decision making method in order to achieve the set of optimal solutions and best compromise solution, respectively. The presented algorithm is applied to 30, 57 and 118-bus test systems and the obtained results are compared with those in literature.
机译:本文提出了一种基于粒子群优化(PSO)和随机跳越算法(SFLA)的混合算法,用于求解电力系统的最优潮流(OPF)。由于经济问题和社会福利的增加,OPF问题正变成一个非常显着的问题,并且在电力系统中变得越来越重要。所提出的优化问题已经考虑了包括禁止区域,阀点效应和多种燃料类型的发电单元在内的实际发电条件。对环境问题的日益关注迫使电力系统运营商将排放问题视为经济问题之外的必然问题,因此OPF问题已成为多目标优化问题。本文利用帕累托最优解和模糊决策方法分别获得最优解和最优折衷解的集合。将该算法应用于30、57和118总线测试系统,并将所得结果与文献进行比较。

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