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Knowledge Acquisition of Online Static Voltage Stability Margin Assessment Based on Random Forest Algorithm

机译:基于随机森林算法的在线静态电压稳定裕度评估知识获取

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摘要

Modern power system has produced a large amount of offline data during the operational planning studies. In order to extract the evaluation rules of voltage stability margin from massive data, a knowledge acquisition model based on random forest (RF) algorithm is proposed in this paper. Firstly, the training set of the random forest is obtained by PV curve analysis and calculation of voltage stability margin, based on the simulation data under n-k fault. Then, the online evaluation model of the voltage stability margin is trained using the RF algorithm. Finally, by using the proposed RF rule extraction method, some voltage stability margin evaluation rules are extracted with high accuracy and coverage. The proposed method is verified on IEEE 3-machine 9-bus system. Simulation result shows that the obtained knowledge of voltage stability margin has high accuracy, and can effectively evaluate the real-time operation status of the power grid.
机译:在运营计划研究期间,现代电力系统已产生了大量离线数据。为了从海量数据中提取电压稳定裕度的评估规则,提出了一种基于随机森林算法的知识获取模型。首先,基于n-k故障下的仿真数据,通过PV曲线分析和电压稳定裕度的计算,获得了随机森林的训练集。然后,使用RF算法训练电压稳定裕度的在线评估模型。最后,通过提出的射频规则提取方法,以较高的准确度和覆盖范围提取了一些电压稳定裕度评估规则。该方法在IEEE 3机9总线系统上得到了验证。仿真结果表明,所获得的电压稳定裕度知识具有较高的准确度,可以有效地评估电网的实时运行状态。

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