用MOPSO算法求解电网最优工作点

Paulo Pereira, S. Leitão, E. Pires
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引用次数: 0

摘要

本文通过对电网运行情景的模拟,研究了电网能源服务的最优供应问题,以优化资源,使运行成本、能量损失、发电成本和用户流失等变量最小化。这些模拟创建了网络的最佳运行模型,使系统操作员能够获得知识,采取预先建立的程序,这些程序必须在意外情况下执行,以便预测和最小化缺陷。采用多目标粒子群优化算法进行仿真。将该算法应用于IEEE 14总线网络,通过MATPOWER工具对最优潮流进行评估,建立最优电气工作模型,使相关成本最小化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal operation point in electrical grids using a MOPSO algorithm
The paper presents a study about optimal supply of the energy service, using simulations of network operation scenarios, in order to optimize resources and minimize the variables: operation cost, energy losses, generation cost and consumers shedding. These simulations create optimal operation models of the network, allowing the system operator obtain knowledge to take pre-established procedures that must be performed in situations of contingency in order to forecast and minimize drawbacks. The simulations were performed using a multiobjective particle swarm optimization algorithm. The algorithm was applied to the IEEE 14 Bus network where the optimal power flow was evaluated by the MATPOWER tool to establish an optimal electrical working model to minimize the associated costs.
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