利用图像识别为农村光伏电网区域的负荷分布建模

IF 1.9 Q4 ENERGY & FUELS
Ning Zhou, Bowen Shang, Jinshuai Zhang, Mingming Xu
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引用次数: 0

摘要

在农村电网地区扩大光伏(PV)资源是增加太阳能在能源格局中所占比例的重要手段,符合 "碳调峰和碳中和 "的目标。然而,农村电网往往缺乏数字化,因此无法完全了解这些地区的负荷分布情况。这阻碍了可用光伏容量的计算和节点电压的推导。本研究提出了一种基于遥感图像识别的负荷分布建模方法,以寻求在农村电网地区开发分布式光伏资源的科学框架。首先,利用基于 YOLOv5 模型的深度学习技术准确识别遥感图像中的房屋。然后,利用房屋的分布来估算电网区域的负荷分布。接着,利用等间距和聚类分布模型,自适应地确定配电线路中节点和负载功率的位置。最后,通过计算节点的连接矩阵,提取最小生成树,构建网络拓扑结构,并计算负荷分布模型的节点参数。建议的方案已在软件包中实现,并通过分析典型的农村网格区域遥感图像证明了其有效性。结果表明,所提出的方法能够有效辨别配电线路结构并计算节点参数,从而为确定光伏接入能力提供重要支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling load distribution for rural photovoltaic grid areas using image recognition

Expanding photovoltaic (PV) resources in rural-grid areas is an essential means to augment the share of solar energy in the energy landscape, aligning with the “carbon peaking and carbon neutrality” objectives. However, rural power grids often lack digitalization; thus, the load distribution within these areas is not fully known. This hinders the calculation of the available PV capacity and deduction of node voltages. This study proposes a load-distribution modeling approach based on remote-sensing image recognition in pursuit of a scientific framework for developing distributed PV resources in rural grid areas. First, houses in remote-sensing images are accurately recognized using deep-learning techniques based on the YOLOv5 model. The distribution of the houses is then used to estimate the load distribution in the grid area. Next, equally spaced and clustered distribution models are used to adaptively determine the location of the nodes and load power in the distribution lines. Finally, by calculating the connectivity matrix of the nodes, a minimum spanning tree is extracted, the topology of the network is constructed, and the node parameters of the load-distribution model are calculated. The proposed scheme is implemented in a software package and its efficacy is demonstrated by analyzing typical remote-sensing images of rural grid areas. The results underscore the ability of the proposed approach to effectively discern the distribution-line structure and compute the node parameters, thereby offering vital support for determining PV access capability.

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来源期刊
Global Energy Interconnection
Global Energy Interconnection Engineering-Automotive Engineering
CiteScore
5.70
自引率
0.00%
发文量
985
审稿时长
15 weeks
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