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Research of Adaptive Multi-Swarm Dynamic Multi-Objective Particle Swarm Optimization Arithmetic in Power System

机译:电力系统自适应多群动态多目标粒子群算法研究

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In order to realize the coordinated control of multi-objective system in dynamic environment, this paper proposes an adaptive multi-swarm dynamic multi-objective particle swarm optimization arithmetic based on sparse distance and ε domination method. The arithmetic adopts an improved ε domination strategy to update the external archive, adjust the ε value in real time, and ensure the fast distribution of particle swarm in the early stage and accurate search in the later stage. Global optimal solution is selected based on the sparse distance of external archive to ensure the distribution of non-inferior solution. Through the test of distribution and convergence, it is proved that the selection of learning samples based on sparse distance helps to keep the distribution of non-inferior solution and the improved ε control external file maintenance method not only improves the distribution, but also increases the external archive scale with the increase of iterations, so that the non-inferior solution can better cover the Pareto optimal frontier.
机译:为了实现动态环境下多目标系统的协调控制,提出了一种基于稀疏距离和ε控制的自适应多群动态多目标粒子群优化算法。该算法采用改进的ε支配策略来更新外部档案,实时调整ε值,确保粒子群在早期得到快速分布,在后期得到准确搜索。根据外部档案的稀疏距离选择全局最优解,以确保非劣解的分布。通过分布和收敛性测试,证明基于稀疏距离的学习样本的选择有助于保持非劣解的分布,改进的ε控制外部文件维护方法不仅改善了分布,而且增加了外部档案规模随着迭代次数的增加而增加,因此非劣等解决方案可以更好地覆盖Pareto最优边界。

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