基于grcforest模型的并网风电系统暂态电压稳定性评估

Xiaohui Wang, Wei Cheng, Heng Zhang, Meibao Wang
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引用次数: 0

摘要

针对现阶段机器学习在快速准确评估风电并网系统暂态电压稳定性方面存在的不足,提出了一种基于grcForest模型的风电并网系统暂态电压稳定性评估方法。首先,输入特征数量随着级联森林层数的增加而增加,通过残差网络对可能随着级联森林层数的增加而出现的梯度增长或梯度减少进行优化,以保证模型在层数增加后仍能保持其初始学习能力。其次,分析了影响并网风电系统暂态电压的关键因素,并结合暂态故障构造了输入特征;然后对模型进行评估,然后对模型进行离线训练,完成参数设置和性能优化;最后,将完成的输入特征应用于grcForest风电并网系统暂态电压,并对IEEE10机39节点系统进行仿真分析,验证了该方法的快速性和准确性。通过对IEEE 10机39节点系统的仿真分析,验证了该方法的快速性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transient voltage stability assessment of grid-connected wind power systems based on the grcforest model
In view of the shortcomings of machine learning in the fast and accurate evaluation of the transient voltage stability of wind power grid-connected systems at the present stage, a grcForest model-based transient voltage stability assessment method for wind power grid-connected systems. Firstly, the number of input features increases with the number of cascading forest layers The gradient growth or gradient reduction that may occur with the increase of the number of layers in the cascade forest is optimised by using a residual network to ensure that the model can still maintain its initial learning capability after the number of layers increases. Secondly, the key factors influencing the transient voltage of the grid-connected wind power system are analysed and input features are constructed by combining transient faults; then the model is evaluated by The model is then trained offline to complete the parameter setting and performance optimization; finally, the completed input features are applied to the grcForest wind power grid-connected system transient voltage The simulation analysis of the 39-node system of the IEEE10 machine validates the rapidity and accuracy of the method. The simulation analysis of the IEEE 10-machine 39-node system verifies the rapidity and accuracy of the method.
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