基于极限学习机的南苏拉威西系统暂态稳定预警

B. A. Ashad, I. Gunadin, A. Siswanto, Yusran
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引用次数: 0

摘要

对电力系统来说,负荷的增加会导致稳定性限制的减少,如果有干扰,就会造成停电。本研究通过观察南苏拉威西电力系统在停电前发生扰动时的稳定性极限,对预警进行分析。本研究观察了一个由44个母线和15个发电机组成的预警系统,该系统使用电压稳定裕度(VSM)来处理中断事件。从各种公共汽车发生的每次中断的训练数据中,学习使用极限学习(ELM)引擎来检测瞬态条件下的早期预警。从ELM仿真结果可以快速工作0.0001和0.0024,并且误差值很低,因此可以在停电发生之前知道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Warning Condition Transient Stability on South Sulawesi System using Extreme Learning Machine
The electrical systems, the addition of loads can result in fewer stability limits, if there is interference, it can cause black out. In this study analyzing early warning, by observing the limits of stability in the event of a disturbance before black out in the South Sulawesi electricity system. This study observed an early warning system consisting of 44 buses and 15 generators using a Voltage stability margin (VSM) in the event of a disruption. From the training data about each disruption from various buses that occur then learning to use Extreme Learning (ELM) engines is used to detect early warnings during transient conditions. From the ELM simulation results can work quickly 0.0001 and 0.0024 and the error value is low so that it can be known before a blackout occurs.
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