An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images

Solar energy is the most clean renewable energy source and has good prospects for future sustainable development. Installation of solar photovoltaic (PV) systems on building rooftops has been the most widely applied method for using solar energy resources. In this study, we developed an approach to...

Full description

Bibliographic Details
Main Authors: Xiaoyang Song, Yaohuan Huang, Chuanpeng Zhao, Yuxin Liu, Yanguo Lu, Yongguo Chang, Jie Yang
Format: Article
Language:English
Published: MDPI AG 2018-11-01
Series:Energies
Subjects:
Online Access:https://www.mdpi.com/1996-1073/11/11/3172
id doaj-988352ef201b4f7eaf44e87e10f74fbd
record_format Article
spelling doaj-988352ef201b4f7eaf44e87e10f74fbd2020-11-24T23:11:56ZengMDPI AGEnergies1996-10732018-11-011111317210.3390/en11113172en11113172An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing ImagesXiaoyang Song0Yaohuan Huang1Chuanpeng Zhao2Yuxin Liu3Yanguo Lu4Yongguo Chang5Jie Yang6Institute of Acoustics, Chinese Academy of Sciences, Beijing 100190, ChinaInstitute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, ChinaInstitute of Geographical Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, ChinaInstitute of Acoustics, Chinese Academy of Sciences, Beijing 100190, ChinaInstitute of Acoustics, Chinese Academy of Sciences, Beijing 100190, ChinaInstitute of Acoustics, Chinese Academy of Sciences, Beijing 100190, ChinaInstitute of Acoustics, Chinese Academy of Sciences, Beijing 100190, ChinaSolar energy is the most clean renewable energy source and has good prospects for future sustainable development. Installation of solar photovoltaic (PV) systems on building rooftops has been the most widely applied method for using solar energy resources. In this study, we developed an approach to simulate the monthly and annual solar radiation on rooftops at an hourly time step to estimate the solar PV potential, based on rooftop feature retrieval from remote sensing images. The rooftop features included 2D rooftop outlines and 3D rooftop parameters retrieved from high-resolution remote sensing image data (obtained from Google Maps) and digital surface model (DSM, generated from the Pleiades satellite), respectively. We developed the building features calculation method for five rooftop types: flat rooftops, shed rooftops, hipped rooftops, gable rooftops and mansard rooftops. The parameters of the PV modules derived from the building features were then combined with solar radiation data to evaluate solar photovoltaic potential. The proposed method was applied in the Chao Yang District of Beijing, China. The results were that the number of rooftops available for PV systems was 743, the available rooftop area was 678,805 m<sup>2</sup>, and the annual PV electricity potential was 63.78 GWh/year in the study area, which has great solar PV potential. The method to perform precise calculation of specific rooftop solar PV potential developed in this study will guide the formulation of energy policy for solar PV in the future.https://www.mdpi.com/1996-1073/11/11/3172solar resourcesdigital surface models (DSM)rooftop featurerooftop photovoltaicsolar photovoltaic potentialenergy
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoyang Song
Yaohuan Huang
Chuanpeng Zhao
Yuxin Liu
Yanguo Lu
Yongguo Chang
Jie Yang
spellingShingle Xiaoyang Song
Yaohuan Huang
Chuanpeng Zhao
Yuxin Liu
Yanguo Lu
Yongguo Chang
Jie Yang
An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
Energies
solar resources
digital surface models (DSM)
rooftop feature
rooftop photovoltaic
solar photovoltaic potential
energy
author_facet Xiaoyang Song
Yaohuan Huang
Chuanpeng Zhao
Yuxin Liu
Yanguo Lu
Yongguo Chang
Jie Yang
author_sort Xiaoyang Song
title An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
title_short An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
title_full An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
title_fullStr An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
title_full_unstemmed An Approach for Estimating Solar Photovoltaic Potential Based on Rooftop Retrieval from Remote Sensing Images
title_sort approach for estimating solar photovoltaic potential based on rooftop retrieval from remote sensing images
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2018-11-01
description Solar energy is the most clean renewable energy source and has good prospects for future sustainable development. Installation of solar photovoltaic (PV) systems on building rooftops has been the most widely applied method for using solar energy resources. In this study, we developed an approach to simulate the monthly and annual solar radiation on rooftops at an hourly time step to estimate the solar PV potential, based on rooftop feature retrieval from remote sensing images. The rooftop features included 2D rooftop outlines and 3D rooftop parameters retrieved from high-resolution remote sensing image data (obtained from Google Maps) and digital surface model (DSM, generated from the Pleiades satellite), respectively. We developed the building features calculation method for five rooftop types: flat rooftops, shed rooftops, hipped rooftops, gable rooftops and mansard rooftops. The parameters of the PV modules derived from the building features were then combined with solar radiation data to evaluate solar photovoltaic potential. The proposed method was applied in the Chao Yang District of Beijing, China. The results were that the number of rooftops available for PV systems was 743, the available rooftop area was 678,805 m<sup>2</sup>, and the annual PV electricity potential was 63.78 GWh/year in the study area, which has great solar PV potential. The method to perform precise calculation of specific rooftop solar PV potential developed in this study will guide the formulation of energy policy for solar PV in the future.
topic solar resources
digital surface models (DSM)
rooftop feature
rooftop photovoltaic
solar photovoltaic potential
energy
url https://www.mdpi.com/1996-1073/11/11/3172
work_keys_str_mv AT xiaoyangsong anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yaohuanhuang anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT chuanpengzhao anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yuxinliu anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yanguolu anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yongguochang anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT jieyang anapproachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT xiaoyangsong approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yaohuanhuang approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT chuanpengzhao approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yuxinliu approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yanguolu approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT yongguochang approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
AT jieyang approachforestimatingsolarphotovoltaicpotentialbasedonrooftopretrievalfromremotesensingimages
_version_ 1725603394185330688