A site selection framework for urban power substation at micro‐scale using spatial optimization strategy and geospatial big data

Author:

Yao Yao12ORCID,Feng Chenqi1,Xie Jiteng1,Yan Xiaoqin1,Guan Qingfeng1,Han Jian3,Zhang Jiaqi1,Ren Shuliang4,Liang Yuyun1,Luo Peng56

Affiliation:

1. School of Geography and Information Engineering China University of Geosciences Wuhan China

2. Center for Spatial Information Science The University of Tokyo Chiba Japan

3. State Grid Pingxiang Power Supply Company Pingxiang China

4. Institute of Remote Sensing and Geographical Information Systems Peking University Beijing China

5. Chair of Cartography and Visual Analytics Technical University of Munich Munich Germany

6. School of Geography and the Environment University of Oxford Oxford UK

Abstract

AbstractThe world is facing more energy crises due to extreme weather and the rapidly growing demand for electricity. Siting new substations and optimizing the location of existing ones are necessary to address the energy crisis. The current site selection lacks consideration of spatial and temporal heterogeneity in urban power demand, which results in unreasonable energy transfer and waste, leading to power outages in some areas. Aiming to maximize the grid coverage and transformer utilization, we propose a multi‐scene micro‐scale urban substation siting framework (UrbanPS): (1) The framework uses multi‐source big data and the machine learning model to estimate fine‐scale power consumption for different scenarios; (2) the region growing algorithm is used to divide the power supply area of substations; and the (3) location set coverage problem and genetic algorithm are introduced to optimize the substation location. The UrbanPS was used to perform siting optimization of 110 kV terminal substations in Pingxiang City, Jiangxi Province. Results show that the coverage and utilization rate of the optimization results under different power consumption scenarios are close to 99%. We also found that the power can be saved by dynamic regulation of substation operation.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

State Key Laboratory of Resources and Environmental Information System

Publisher

Wiley

Subject

General Earth and Planetary Sciences

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