Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events

Solar radiation is the Earth’s primary source of energy and has an important role in the surface radiation balance, hydrological cycles, vegetation photosynthesis, and weather and climate extremes. The accurate prediction of solar radiation is therefore very important in both the solar industry and...

Full description

Bibliographic Details
Main Authors: Liexing Huang, Junfeng Kang, Mengxue Wan, Lei Fang, Chunyan Zhang, Zhaoliang Zeng
Format: Article
Language:English
Published: Frontiers Media S.A. 2021-04-01
Series:Frontiers in Earth Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/feart.2021.596860/full
id doaj-506dfdc09d314e16ab1a68fd35ffe236
record_format Article
spelling doaj-506dfdc09d314e16ab1a68fd35ffe2362021-04-30T14:01:22ZengFrontiers Media S.A.Frontiers in Earth Science2296-64632021-04-01910.3389/feart.2021.596860596860Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate EventsLiexing Huang0Liexing Huang1Junfeng Kang2Junfeng Kang3Mengxue Wan4Mengxue Wan5Lei Fang6Chunyan Zhang7Zhaoliang Zeng8Ganzhou National Territory Spactial Investigation and Planning Research Center, Ganzhou, ChinaSchool of Civil and Surveying and Mapping, Jiangxi University of Science and Technology, Ganzhou, ChinaSchool of Civil and Surveying and Mapping, Jiangxi University of Science and Technology, Ganzhou, ChinaDepartment of Geography, University of Connecticut, Storrs, CT, United StatesState Key Laboratory of Environmental Criteria and Risk Assessment, Chinese Research Academy of Environmental Sciences, Beijing, ChinaNational Joint Research Center for Yangtze River Conservation, Beijing, ChinaDepartment of Environmental Science and Engineering, Fudan University, Shanghai, ChinaChongqing Wanzhou District Planning and Design Institute, Chongqing, ChinaChinese Antarctic Center of Surveying and Mapping, Wuhan University, Wuhan, ChinaSolar radiation is the Earth’s primary source of energy and has an important role in the surface radiation balance, hydrological cycles, vegetation photosynthesis, and weather and climate extremes. The accurate prediction of solar radiation is therefore very important in both the solar industry and climate research. We constructed 12 machine learning models to predict and compare daily and monthly values of solar radiation and a stacking model using the best of these algorithms were developed to predict solar radiation. The results show that meteorological factors (such as sunshine duration, land surface temperature, and visibility) are crucial in the machine learning models. Trend analysis between extreme land surface temperatures and the amount of solar radiation showed the importance of solar radiation in compound extreme climate events. The gradient boosting regression tree (GBRT), extreme gradient lifting (XGBoost), Gaussian process regression (GPR), and random forest models performed better (poor) prediction capabilities of daily and monthly solar radiation. The stacking model, which included the GBRT, XGBoost, GPR, and random forest models, performed better than the single models in the prediction of daily solar radiation but showed no advantage over the XGBoost model in the prediction of the monthly solar radiation. We conclude that the stacking model and the XGBoost model are the best models to predict solar radiation.https://www.frontiersin.org/articles/10.3389/feart.2021.596860/fullsolar radiation predictionmeteorological factorsmachine learningstacking modelclimate extremes model comparison
collection DOAJ
language English
format Article
sources DOAJ
author Liexing Huang
Liexing Huang
Junfeng Kang
Junfeng Kang
Mengxue Wan
Mengxue Wan
Lei Fang
Chunyan Zhang
Zhaoliang Zeng
spellingShingle Liexing Huang
Liexing Huang
Junfeng Kang
Junfeng Kang
Mengxue Wan
Mengxue Wan
Lei Fang
Chunyan Zhang
Zhaoliang Zeng
Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
Frontiers in Earth Science
solar radiation prediction
meteorological factors
machine learning
stacking model
climate extremes model comparison
author_facet Liexing Huang
Liexing Huang
Junfeng Kang
Junfeng Kang
Mengxue Wan
Mengxue Wan
Lei Fang
Chunyan Zhang
Zhaoliang Zeng
author_sort Liexing Huang
title Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
title_short Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
title_full Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
title_fullStr Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
title_full_unstemmed Solar Radiation Prediction Using Different Machine Learning Algorithms and Implications for Extreme Climate Events
title_sort solar radiation prediction using different machine learning algorithms and implications for extreme climate events
publisher Frontiers Media S.A.
series Frontiers in Earth Science
issn 2296-6463
publishDate 2021-04-01
description Solar radiation is the Earth’s primary source of energy and has an important role in the surface radiation balance, hydrological cycles, vegetation photosynthesis, and weather and climate extremes. The accurate prediction of solar radiation is therefore very important in both the solar industry and climate research. We constructed 12 machine learning models to predict and compare daily and monthly values of solar radiation and a stacking model using the best of these algorithms were developed to predict solar radiation. The results show that meteorological factors (such as sunshine duration, land surface temperature, and visibility) are crucial in the machine learning models. Trend analysis between extreme land surface temperatures and the amount of solar radiation showed the importance of solar radiation in compound extreme climate events. The gradient boosting regression tree (GBRT), extreme gradient lifting (XGBoost), Gaussian process regression (GPR), and random forest models performed better (poor) prediction capabilities of daily and monthly solar radiation. The stacking model, which included the GBRT, XGBoost, GPR, and random forest models, performed better than the single models in the prediction of daily solar radiation but showed no advantage over the XGBoost model in the prediction of the monthly solar radiation. We conclude that the stacking model and the XGBoost model are the best models to predict solar radiation.
topic solar radiation prediction
meteorological factors
machine learning
stacking model
climate extremes model comparison
url https://www.frontiersin.org/articles/10.3389/feart.2021.596860/full
work_keys_str_mv AT liexinghuang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT liexinghuang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT junfengkang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT junfengkang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT mengxuewan solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT mengxuewan solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT leifang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT chunyanzhang solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
AT zhaoliangzeng solarradiationpredictionusingdifferentmachinelearningalgorithmsandimplicationsforextremeclimateevents
_version_ 1721497808424402944