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A Judicious Decision-Making Approach for Power Dispatch in Smart Grid Using a Multiobjective Evolutionary Algorithm Based on Decomposition

机译:基于分解的多目标进化算法的智能电网功率分配决策方法

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Multiobjective evolutionary algorithm based on decomposition (MOEA/D) is an efficient mathematical strategy for solving multiobjective optimization problems. However, the MOEA/D algorithm has not yet been widely used on the multiobjective optimal power flow (MOPF) problems, which consider several conflicting objectives with varying tradeoff levels. This article proposes a novel differential evolution (DE) strategy based on the MOEA/D framework to quickly determine a set of optimal solutions of MOPFs, in the objective space formed from the different objectives, such as the most optimal economic dispatch, the least environmental emission objectives, and the minimum transmission losses, while considering the power system constraints. A judicious decision can be made by the user from the set of optimal solutions of the MOPF associated with the weight vectors representing the tradeoff levels of the different objectives. For improved performance, two aggregate objective functions, a load flow operator and a self-adaptive DE strategy work cooperatively: 1) to improve the weak convergence of the MOEA/D and to achieve a better decision speed; 2) to obtain more accurate optimal solutions even under non-convex conditions; 3) to ensure that the power system constraints are taken into account; 4) to integrate the above features into a fast and efficient algorithm. The proposed algorithm has been validated using the IEEE 30-bus system and a revised 33-bus radial system added to one node of the 30-bus system. The simulation results show that the proposed algorithm can provide a good accuracy and can converge to a set of optimal solutions of the MOPFs.
机译:基于分解的多目标进化算法(MOEA / D)是解决多目标优化问题的有效数学策略。但是,MOEA / D算法尚未广泛应用于多目标最优功率流(MOPF)问题,该问题考虑了具有不同权衡水平的几个冲突目标。本文提出了一种基于MOEA / D框架的新颖的差分进化(DE)策略,以在由不同目标形成的目标空间中快速确定MOPF的一组最优解,例如最佳的经济调度,最小的环境排放目标,以及最小的传输损耗,同时考虑到电力系统的约束。用户可以根据与代表不同目标权衡水平的权重向量相关联的MOPF的最佳解集,做出明智的决定。为了提高性能,两个总体目标函数,潮流算子和自适应DE策略协同工作:1)改善MOEA / D的弱收敛性,并获得更好的决策速度; 2)即使在非凸条件下也可以获得更准确的最优解; 3)确保考虑到电力系统的约束; 4)将以上功能集成到快速高效的算法中。所提出的算法已使用IEEE 30总线系统以及在30总线系统的一个节点上添加的修订版33总线径向系统进行了验证。仿真结果表明,所提算法能够提供良好的精度,并且可以收敛于MOPF的最优解集。

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