潮流分析的图学习:一种全局接受图迭代网络方法

IF 7.9 2区 计算机科学 Q1 ENGINEERING, MULTIDISCIPLINARY IEEE Transactions on Network Science and Engineering Pub Date : 2024-11-25 DOI:10.1109/TNSE.2024.3506012
Junyan Huang;Yuanzheng Li;Shangyang He;Guokai Hao;Chunjie Zhou;Zhigang Zeng
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引用次数: 0

摘要

基于图卷积结构的数据驱动方法为加速潮流计算提供了一个有前途的方向。这些方法根据给定的条件,如负荷、母线状态、拓扑结构等,直接预测电力系统的运行状态。然而,我们发现图卷积架构的邻域聚集违反了电力系统的运行约束。本文设计了一种全局接受图迭代架构来取代图卷积架构,克服了这一缺点。其中,将最经典的算法之一牛顿法嵌入到图迭代网络(GIN)中,形成隐式残差学习体系结构。为了保持可解释性,GIN遵循非激活范式,其中非线性表示的能力源于迭代架构而不是激活函数。最后,由于不需要回收全局信息,GIN通过消除完全连接的层来实现较浅的网络结构。在IEEE 30总线、57总线、118总线和300总线的电力系统上进行了大量的数值实验。结果表明,与经典方法和已有的数据驱动方法相比,该方法具有较高的计算效率和较好的预测性能。
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Graph Learning for Power Flow Analysis: A Global-Receptive Graph Iteration Network Method
The data-driven methods based on the graph convolution architecture provide a promising direction for accelerating power flow (PF) calculation. These methods directly predict operational states of power systems according to given conditions, such as loads, states of buses, topology, etc. However, we find that the neighborhood aggregation of the graph convolution architecture violates operational constraints of power systems. In this paper, a global-receptive graph iteration architecture that overcomes this shortcoming is designed to replace the graph convolution architecture. Specifically, Newton's method, one of the most classical methods for PF, is embedded into the graph iteration network (GIN) to form an implicit residual learning architecture. To retain the interpretability, the GIN follows a non-activation paradigm, in which the ability of non-linear representation stems from the iterative architecture rather than the activation function. Finally, without the demand to reclaim global information, the GIN allows shallower network structure by eliminating fully connected layers. Extensive numerical experiments are conducted on IEEE 30-bus, 57-bus, 118-bus, and 300-bus power systems. The results validate the higher computational efficiency and the better prediction performance of the proposed method, compared with both classical approaches and precedent data-driven approaches.
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来源期刊
IEEE Transactions on Network Science and Engineering
IEEE Transactions on Network Science and Engineering Engineering-Control and Systems Engineering
CiteScore
12.60
自引率
9.10%
发文量
393
期刊介绍: The proposed journal, called the IEEE Transactions on Network Science and Engineering (TNSE), is committed to timely publishing of peer-reviewed technical articles that deal with the theory and applications of network science and the interconnections among the elements in a system that form a network. In particular, the IEEE Transactions on Network Science and Engineering publishes articles on understanding, prediction, and control of structures and behaviors of networks at the fundamental level. The types of networks covered include physical or engineered networks, information networks, biological networks, semantic networks, economic networks, social networks, and ecological networks. Aimed at discovering common principles that govern network structures, network functionalities and behaviors of networks, the journal seeks articles on understanding, prediction, and control of structures and behaviors of networks. Another trans-disciplinary focus of the IEEE Transactions on Network Science and Engineering is the interactions between and co-evolution of different genres of networks.
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