上海交通大学学报 ›› 2024, Vol. 58 ›› Issue (10): 1500-1512.doi: 10.16183/j.cnki.jsjtu.2023.071
收稿日期:2023-03-03
修回日期:2023-05-08
接受日期:2023-05-26
出版日期:2024-10-28
发布日期:2024-11-01
通讯作者:
余一平,教授;E-mail: 作者简介:陆文安(1998—),硕士生,研究方向为新型电力系统频率安全稳定分析与控制.
基金资助:
LU Wen’an1, ZHU Qingxiao1, LI Zhaowei2, LIU Hui3, YU Yiping1(
)
Received:2023-03-03
Revised:2023-05-08
Accepted:2023-05-26
Online:2024-10-28
Published:2024-11-01
摘要:
为了解决利用传统频率分析方法分析新能源高占比电网频率时存在计算量大、建模困难、计算速度与计算精度矛盾突出等问题,提出一种基于卷积神经网络(CNN)的新型电力系统频率特性预测方法.首先,利用一维CNN对新能源高占比电力系统在功率扰动下的主要频率指标进行预测,包括初始频率变化率、频率极值以及频率稳态值;并通过设置合理的输入特征以及对神经网络各参数的优化调整,提高了预测精度.在此基础上,进一步考虑扰动位置以及扰动类型的影响,利用数据降维的方法建立包含扰动信息的电力系统特征数据集,借鉴三原色通道原理构建输入特征,并利用扩展的二维CNN预测频率安全指标提高CNN在高占比新能源电网频率分析中的适应性.最后,在改进的BPA 10机39节点模型中进行算例验证,并与循环神经网络预测结果进行对比,结果表明所提方法具有较高的准确度和适应性.
中图分类号:
陆文安, 朱清晓, 李兆伟, 刘辉, 余一平. 基于卷积神经网络的新型电力系统频率特性预测方法[J]. 上海交通大学学报, 2024, 58(10): 1500-1512.
LU Wen’an, ZHU Qingxiao, LI Zhaowei, LIU Hui, YU Yiping. A Prediction Method of New Power System Frequency Characteristics Based on Convolutional Neural Network[J]. Journal of Shanghai Jiao Tong University, 2024, 58(10): 1500-1512.
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