基于人工智能方法的电力系统模式优化

S. Kokin, N. Djagarov, U. Bumtsend, J. Ahyoev, S. Dmitriev, M. Safaraliev
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引用次数: 5

摘要

优化的任务之一是从可能的解决方案的数量中选择为管理参数值提供的解决方案,以满足指定的限制,并将目标函数变为最大值或最小值。选择最合理的算法来优化电力系统模式是一项重要的任务,因为为了使用计算机实时控制模式,必须保证实现算法的程序的高性能。这个速度不仅取决于计算机计算的速度,还取决于算法中嵌入的数学方法。此外,各种方法在存储中间信息的数量上有所不同,这在开发优化程序时也很重要。本研究利用RastrWin和ANARES软件系统对蒙古国电力系统目前实施的基本常态模式进行了分析。新增大功率牵引负荷导致系统有功功率不足。为此,开展了利用粒子群算法实现电力系统模式无功优化的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of electric power system modes by methods of artificial intelligence
One of the tasks of optimization is to choose from the number of possible solutions the solutions providing for the values of the managed parameters to meet the specified restrictions and turn the target function into a maximum or minimum. The choice of the most rational algorithm for optimizing the power system mode is an important task since in order to control the modes using a computer in real-time, it is necessary to ensure high performance of programs that implement the algorithm. This speed depends not only on the speed of computer calculations but also on the mathematical method embedded in the algorithm. Moreover, various methods differ in the amount of intermediate information stored, which is also important when developing optimization programs. This study analyzes the basic normal mode currently implemented in the electric power system of Mongolia by means of RastrWin and ANARES software systems. Adding a new high-power traction load resulted in a shortage of active power in the system. For this reason, the study of VAR optimization of the electric power system mode with the implementation of the particle swarm algorithm has been carried.
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