An efficient substation placement and sizing strategy based on GIS using semi-supervised learning

As load and renewable penetration continues to grow, optimal placement and sizing of substations is becoming increasingly important in distribution system planning. This paper presents an improved methodology to solve the substation siting and sizing problem based on geographic information and super...

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Main Authors: Li Yu, Di Shi, Xiaobin Guo, Zhen Jiang, Guangyue Xu, Ganyang Jian, Jinyong Lei, Chaoyang Jing
Format: Article
Language:English
Published: China electric power research institute 2018-09-01
Series:CSEE Journal of Power and Energy Systems
Online Access:https://ieeexplore.ieee.org/document/8468675
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spelling doaj-8d8e56f823884249ae71128ca0a2d81b2020-11-25T00:23:24ZengChina electric power research instituteCSEE Journal of Power and Energy Systems2096-00422096-00422018-09-014337137910.17775/CSEEJPES.2017.00800An efficient substation placement and sizing strategy based on GIS using semi-supervised learningLi Yu0Di Shi1Xiaobin Guo2Zhen Jiang3Guangyue Xu4Ganyang Jian5Jinyong Lei6Chaoyang Jing7Electric Power Research Institute, China Southern Power Grid, Guangzhou, ChinaeMIT, LLC., Pasadena, CA, United StatesElectric Power Research Institute, China Southern Power Grid, Guangzhou, ChinaElectric Power Research Institute, China Southern Power Grid, Guangzhou, ChinaeMIT, LLC., Pasadena, CA, United StatesElectric Power Research Institute, China Southern Power Grid, Guangzhou, ChinaElectric Power Research Institute, China Southern Power Grid, Guangzhou, ChinaeMIT, LLC., Pasadena, CA, United StatesAs load and renewable penetration continues to grow, optimal placement and sizing of substations is becoming increasingly important in distribution system planning. This paper presents an improved methodology to solve the substation siting and sizing problem based on geographic information and supervised learning. The proposed approach can optimize the locations, capacities, and power supply ranges of substations with minimum investment and annual operation costs. Capital cost of land adds complexity and difficulty to the substation placement problem, especially for highly developed urban areas. This paper presents a theoretical framework to determine the optimal location of substations considering the cost of land. The state-of-the-art parallel computing techniques are employed so that co-optimization for substations of multiple voltage levels can be directly conducted in a computational efficient way. Case studies are presented to demonstrate the effectiveness of the proposed approach.https://ieeexplore.ieee.org/document/8468675
collection DOAJ
language English
format Article
sources DOAJ
author Li Yu
Di Shi
Xiaobin Guo
Zhen Jiang
Guangyue Xu
Ganyang Jian
Jinyong Lei
Chaoyang Jing
spellingShingle Li Yu
Di Shi
Xiaobin Guo
Zhen Jiang
Guangyue Xu
Ganyang Jian
Jinyong Lei
Chaoyang Jing
An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
CSEE Journal of Power and Energy Systems
author_facet Li Yu
Di Shi
Xiaobin Guo
Zhen Jiang
Guangyue Xu
Ganyang Jian
Jinyong Lei
Chaoyang Jing
author_sort Li Yu
title An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
title_short An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
title_full An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
title_fullStr An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
title_full_unstemmed An efficient substation placement and sizing strategy based on GIS using semi-supervised learning
title_sort efficient substation placement and sizing strategy based on gis using semi-supervised learning
publisher China electric power research institute
series CSEE Journal of Power and Energy Systems
issn 2096-0042
2096-0042
publishDate 2018-09-01
description As load and renewable penetration continues to grow, optimal placement and sizing of substations is becoming increasingly important in distribution system planning. This paper presents an improved methodology to solve the substation siting and sizing problem based on geographic information and supervised learning. The proposed approach can optimize the locations, capacities, and power supply ranges of substations with minimum investment and annual operation costs. Capital cost of land adds complexity and difficulty to the substation placement problem, especially for highly developed urban areas. This paper presents a theoretical framework to determine the optimal location of substations considering the cost of land. The state-of-the-art parallel computing techniques are employed so that co-optimization for substations of multiple voltage levels can be directly conducted in a computational efficient way. Case studies are presented to demonstrate the effectiveness of the proposed approach.
url https://ieeexplore.ieee.org/document/8468675
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