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Solving multi-objective optimal power flow problem via forced initialised differential evolution algorithm

机译:强制初始化差分进化算法求解多目标最优潮流问题

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摘要

This study proposes a multi-objective differential evolution algorithm (MO-DEA) based on forced initialisation to solve the optimal power flow (OPF) problem. The OPF problem is formulated as a non-linear MO optimisation problem. The considered objective functions are fuel cost minimisation, power losses minimisation, voltage profile improvement, and voltage stability enhancement. For solving the MO-OPF, the proposed approach combines a new variant of DE (DE/best/1) with the -constraint approach. This combination guarantees high convergence speed and good diversity of Pareto solutions without computational burden of Pareto ranking and updating or additional efforts to preserve the diversity of the non-dominated solutions. The proposed approach has the ability to generate Pareto-optimal solutions in a single simulation run through adaptive variation of the -value. In addition, the best compromise solution is extracted based on fuzzy set theory. The effectiveness of the proposed MO-DEA is tested on the IEEE 30-bus and IEEE 57-bus standard systems. The numerical results obtained by the proposed MO-DEA are compared with other evolutionary methods reported in this literature to prove the potential and capability of the proposed MO-DEA for solving the MO-OPF at acceptable economical and technical levels.
机译:该研究提出了一种基于强制初始化的多目标差分进化算法(MO-DEA),以解决最优潮流(OPF)问题。 OPF问题被公式化为非线性MO优化问题。所考虑的目标函数是燃料成本最小化,功率损耗最小化,电压分布改善和电压稳定性提高。为了解决MO-OPF,建议的方法将DE的新变体(DE / best / 1)与-constraint方法结合在一起。这种结合保证了Pareto解决方案的高收敛速度和良好的多样性,而无需进行Pareto排名和更新的计算负担,也无需付出额外的努力来保持非主导解决方案的多样性。所提出的方法具有通过-值的自适应变化在单个模拟中生成帕累托最优解的能力。另外,基于模糊集理论提取了最佳折衷方案。建议的MO-DEA的有效性已在IEEE 30总线和IEEE 57总线标准系统上进行了测试。将拟议的MO-DEA获得的数值结果与文献报道的其他进化方法进行比较,以证明拟议的MO-DEA在可接受的经济和技术水平上解决MO-OPF的潜力和能力。

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