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Online Evaluation Method for Low Frequency Oscillation Stability in a Power System Based on Improved XGboost

机译:基于改进的XGboost的电力系统低频振荡稳定性在线评估方法

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Low frequency oscillation in an interconnected power system is becoming an increasingly serious problem. It is of great practical significance to make online evaluation of actual power grid’s stability. To evaluate the stability of the power system quickly and accurately, a low frequency oscillation stability evaluation method based on an improved XGboost algorithm and power system random response data is proposed in this paper. Firstly, the original input feature set describing the dynamic characteristics of the power system is established by analyzing the substance of low frequency oscillation. Taking the random response data of power system including the disturbance end time feature and the dynamic feature of power system as the input sample set, the wavelet threshold is applied to improve its effectiveness. Secondly, using the eigenvalue analysis method, different damping ratios are selected as threshold values to judge the stability of the system low-frequency oscillation. Then, the supervised training with improved XGboost algorithm is performed on the characteristics of stability. On this basis, the training model is obtained and applied to online low frequency oscillation stability evaluation of a power system. Finally, the simulation results of the eight-machine 36-node test system and Hebei southern power grid show that the proposed low frequency oscillation online evaluation method has the features of high evaluation accuracy, fast evaluation speed, low error rate of unstable sample evaluation, and strong anti-noise ability.
机译:互连电源系统中的低频振荡正成为日益严重的问题。在线评估实际电网的稳定性具有重要的现实意义。为了快速,准确地评估电力系统的稳定性,提出了一种基于改进的XGboost算法和电力系统随机响应数据的低频振荡稳定性评估方法。首先,通过分析低频振荡的实质,建立了描述电力系统动态特性的原始输入特征集。以包含扰动结束时间特征和动力系统动态特征的电力系统随机响应数据作为输入样本集,应用小波阈值提高其有效性。其次,使用特征值分析方法,选择不同的阻尼比作为阈值,以判断系统低频振荡的稳定性。然后,针对稳定性特征进行了改进的XGboost算法的监督训练。在此基础上,获得训练模型,并将其应用于电力系统在线低频振荡稳定性评估。最后,通过八机三十六节点测试系统和河北南方电网的仿真结果表明,所提出的低频振荡在线评估方法具有评估精度高,评估速度快,不稳定样本评估错误率低的特点。且抗噪能力强。

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