杨秀, 傅骞, 汤波, et al. Parameter Identification for Power Grid Line Based on Dynamic Spatiotemporal Adaptive Graph Neural Network[J]. 2026, 46(1): 142-156.
杨秀, 傅骞, 汤波, et al. Parameter Identification for Power Grid Line Based on Dynamic Spatiotemporal Adaptive Graph Neural Network[J]. 2026, 46(1): 142-156. DOI: 10.13334/j.0258-8013.pcsee.241459.
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.