基于动态时空适应图神经网络的电网线路参数辨识方法OA
Parameter Identification for Power Grid Line Based on Dynamic Spatiotemporal Adaptive Graph Neural Network
线路参数的准确辨识对于电网的稳定运行与优化至关重要.随着人工智能技术的快速发展,以深度学习为代表的电网线路参数辨识技术在辨识有效性和鲁棒性上具备显著优势,但这些方法往往忽视网架分支的历史趋势和拓扑关系,导致模型未能充分学习到关键的时空信息,进一步造成参数辨识精度的下降.为此,提出一种基于动态时空适应图神经网络的电网线路参数辨识方法.首先,关注传统的特征选择和手动调参方法过于依赖专家经验的局限,结合最大信息系数和基于树形结构Parzen估计器的贝叶斯优化技术,对模型超参数进行调优的同时,自动筛选出对电网参数辨识性能贡献最大的SCADA系统量测特征;进一步,依据支路历史特征及电网拓扑信息,构建适用于输电线路参数辨识任务的时空图数据集,利用图卷积网络和时间卷积网络提取图数据集中线路的时空特征,结合动态时空适应模块,精确学习每条线路在不同辨识场景下的独特时空行为.这些组件整合构成了一个高效全面的电网线路参数辨识模型;最后,在IEEE 39节点系统上搭建多种量测场景,并进行算例分析.与现有算法相比,所提方法在应对量测噪声、数据缺失以及多拓扑变化的场景下展示了更优的辨识精度和鲁棒性.
Accurate identification of line parameters is crucial for the stable operation and optimization of power grids.With the rapid advancement of artificial intelligence,deep learning-based methods for power grid line parameter identification have demonstrated significant advantages in effectiveness and robustness.However,these methods often overlook historical trends and topological relationships of network branches,resulting in models that fail to fully learn critical spatiotemporal information,thereby decreasing parameter identification accuracy.To address this,we propose a dynamic spatiotemporal adaptive graph neural network-based method for power grid line parameter identification.It utilizes the maximum information coefficient and Bayesian optimization based on the tree-structured Parzen estimator to automatically select the most relevant input measurement features while adjusting model hyperparameters,and constructs a spatiotemporal graph dataset based on historical branch features and topological information.The method employs graph convolutional networks and temporal convolutional networks to extract line features,enhanced by a dynamic spatiotemporal adaptive module to capture each line's unique characteristics.In case studies on the IEEE 39-bus system,the method shows improved accuracy and robustness against measurement noise,data loss,and topology changes compared to existing algorithms.
杨秀;傅骞;汤波;陈宏福;韩政;王治华
上海电力大学电气工程学院,上海市 杨浦区 200090上海电力大学电气工程学院,上海市 杨浦区 200090上海电力大学电气工程学院,上海市 杨浦区 200090国网上海市电力公司,上海市 浦东新区 200122国网上海市电力公司,上海市 浦东新区 200122国网上海市电力公司,上海市 浦东新区 200122
信息技术与安全科学
电网线路参数辨识时空信息融合最大信息系数贝叶斯优化图卷积网络时间卷积网络动态时空适应模块
power grid line parameter identificationspatiotemporal information integrationmaximum information coefficientBayesian optimizationgraph convolutional networkstemporal convolutional networksdynamic spatiotemporal adaptive module
《中国电机工程学报》 2026 (1)
142-156,中插11,16
国家自然科学基金项目(52177098)国网上海市电力公司科技项目(520900230014).Project Supported by National Natural Science Foundation of China(52177098)Science and Technology Project of State Grid Shanghai Municipal Electric Power Company(520900230014).
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