Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast
Power grid planning is an important part in the development of power grid. With the rapid development of urban construction and electricity demand in recent years, electric power construction is faced with more kinds of pressure, such as land resources/environmental protection. In this paper, the di...
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doaj-d4aaab1b01b4467e8f7b53d57980a7f32021-02-01T08:06:07ZengEDP SciencesE3S Web of Conferences2267-12422021-01-012330100810.1051/e3sconf/202123301008e3sconf_iaecst20_01008Research on Optimization Planning Method of Distribution Network based on Spatial Load ForecastZeyuan Shen0Ai Wang1Jianbin Wu2Haibo Zhao3Liang Tian4Qi Li5Jue Qiu6Xiaojun Song7Shenglong Zhi8Economic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCEconomic and Technical Research Institute of SEPC of SGCCPower grid planning is an important part in the development of power grid. With the rapid development of urban construction and electricity demand in recent years, electric power construction is faced with more kinds of pressure, such as land resources/environmental protection. In this paper, the difficulty of power grid planning is increasing rapidly. How to build a distribution network that the load and the urban construction can develop concordantly has become a key issue to be solved in the future. The traditional methods of distribution network planning focus on the grasp of the overall, whereas lack adequate consideration of the spatial distribution of load and planning of urban development. Thus, this paper proposes a method based on spatial load forecasting of urban distribution network planning g, and fully considers the load distribution of the space characteristics and urban construction. This method can make up for the defects of traditional methods effectively, thus has certain value and reference significance.https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/09/e3sconf_iaecst20_01008.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zeyuan Shen Ai Wang Jianbin Wu Haibo Zhao Liang Tian Qi Li Jue Qiu Xiaojun Song Shenglong Zhi |
spellingShingle |
Zeyuan Shen Ai Wang Jianbin Wu Haibo Zhao Liang Tian Qi Li Jue Qiu Xiaojun Song Shenglong Zhi Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast E3S Web of Conferences |
author_facet |
Zeyuan Shen Ai Wang Jianbin Wu Haibo Zhao Liang Tian Qi Li Jue Qiu Xiaojun Song Shenglong Zhi |
author_sort |
Zeyuan Shen |
title |
Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast |
title_short |
Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast |
title_full |
Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast |
title_fullStr |
Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast |
title_full_unstemmed |
Research on Optimization Planning Method of Distribution Network based on Spatial Load Forecast |
title_sort |
research on optimization planning method of distribution network based on spatial load forecast |
publisher |
EDP Sciences |
series |
E3S Web of Conferences |
issn |
2267-1242 |
publishDate |
2021-01-01 |
description |
Power grid planning is an important part in the development of power grid. With the rapid development of urban construction and electricity demand in recent years, electric power construction is faced with more kinds of pressure, such as land resources/environmental protection. In this paper, the difficulty of power grid planning is increasing rapidly. How to build a distribution network that the load and the urban construction can develop concordantly has become a key issue to be solved in the future. The traditional methods of distribution network planning focus on the grasp of the overall, whereas lack adequate consideration of the spatial distribution of load and planning of urban development. Thus, this paper proposes a method based on spatial load forecasting of urban distribution network planning g, and fully considers the load distribution of the space characteristics and urban construction. This method can make up for the defects of traditional methods effectively, thus has certain value and reference significance. |
url |
https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/09/e3sconf_iaecst20_01008.pdf |
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