大型电网的地理空间映射:基于残差图卷积网络的注意机制方法

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Razzaqul Ahshan , Md. Shadman Abid , Mohammed Al-Abri
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引用次数: 0

摘要

电网基础设施的精确地理空间测绘对于大规模电力基础设施的有效开发和管理至关重要。在以往的研究工作中,深度学习技术在利用地理信息系统(gis)的大量数据集预测区域能源网络结构方面的应用尚未得到深入的研究。此外,尽管图卷积网络(GCNs)已被证明在捕获图结构数据中的复杂联系方面是有效的,但现代能源网格的计算要求本质需要额外的计算贡献。因此,本研究引入了一种新的带有注意机制的残差GCN,用于绘制地理背景下的关键能源基础设施组件。该模型能准确预测大型电网基础设施(如电线杆、电力服务点和变电站)的地理位置和连接。提议的框架在阿曼苏丹国的区域电网上进行了评估,并在尼日利亚的电力传输网络数据库上进一步验证。获得的结果表明,该模型能够准确预测基础设施组件及其空间关系。结果表明,该方法对阿曼网络和尼日利亚数据集的链接预测准确率分别达到95.88%和92.98%。此外,在回归方面,所提出的模型在两个数据集上都达到了0.99的R2值。因此,所提出的体系结构促进了多方面的评估,并增强了捕捉大规模能源分配网络固有地理空间方面的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Geospatial Mapping of Large-Scale Electric Power Grids: A Residual Graph Convolutional Network-Based Approach with Attention Mechanism

Geospatial Mapping of Large-Scale Electric Power Grids: A Residual Graph Convolutional Network-Based Approach with Attention Mechanism
Precise geospatial mapping of grid infrastructure is essential for the effective development and administration of large-scale electrical infrastructure. The application of deep learning techniques in predicting regional energy network architecture utilizing extensive datasets of geographical information systems (GISs) has yet to be thoroughly investigated in previous research works. Moreover, although graph convolutional networks (GCNs) have been proven to be effective in capturing the complex linkages within graph-structured data, the computationally demanding nature of modern energy grids necessitates additional computational contributions. Hence, this research introduces a novel residual GCN with attention mechanism for mapping critical energy infrastructure components in geographic contexts. The proposed model accurately predicts the geographic locations and links of large-scale grid infrastructure, such as poles, electricity service points, and substations. The proposed framework is assessed on the Sultanate of Oman’s regional energy grid and further validated on Nigeria’s electricity transmission network database. The obtained findings showcase the model’s capacity to accurately predict infrastructure components and their spatial relationships. Results show that the proposed method achieves a link-prediction accuracy of 95.88% for the Omani network and 92.98% for the Nigerian dataset. Furthermore, the proposed model achieved R2 values of 0.99 for both datasets in terms of regression. Therefore, the proposed architecture facilitates multifaceted assessment and enhances the capacity to capture the inherent geospatial aspects of large-scale energy distribution networks.
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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