Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India

In the present work, twelve machine learning (ML) models are developed for assessment of monthly average diffuse solar radiation (DSR) with solitary input forecaster as clearness index. Two categories of ML models were demarcated (i.e. diffusion coefficient and diffuse fraction) with six models for...

Full description

Bibliographic Details
Main Authors: Shahid Husain, Uzair Ali Khan
Format: Article
Language:English
Published: Elsevier 2021-12-01
Series:Cleaner Engineering and Technology
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666790821002226
id doaj-6b35f173c429490d89ac87fb4d81ebeb
record_format Article
spelling doaj-6b35f173c429490d89ac87fb4d81ebeb2021-09-03T04:48:25ZengElsevierCleaner Engineering and Technology2666-79082021-12-015100262Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of IndiaShahid Husain0Uzair Ali Khan1Corresponding author.; Solar Energy and Heat Transfer Research Lab, Dept. of Mechanical Engineering, Zakir Husain College of Engineering and Technology, Aligarh Muslim University, Aligarh, 202002, U.P, IndiaSolar Energy and Heat Transfer Research Lab, Dept. of Mechanical Engineering, Zakir Husain College of Engineering and Technology, Aligarh Muslim University, Aligarh, 202002, U.P, IndiaIn the present work, twelve machine learning (ML) models are developed for assessment of monthly average diffuse solar radiation (DSR) with solitary input forecaster as clearness index. Two categories of ML models were demarcated (i.e. diffusion coefficient and diffuse fraction) with six models for each group. The correctness of models was examined as a function of some frequently used statistical pointers. A comparision was also done between developed ML models and some well-recognised models available from previous works. The results show that ML models perform very well in comparision to models available in the literature. The top-performing models in category 1 are the k-nearest neighbours (KNN) model for both training and testing data. In category 2, for training data random forest (RF) model perform well while for testing data support vector regression (SVR) models perform well. The performance can be slightly improved by using two or more input parameters such as temperature difference, relative humidity and relative sunshine along with clearness index as input. Thus, ML models can be used to estimate DSR in the humid-subtropical climate of India.http://www.sciencedirect.com/science/article/pii/S2666790821002226Solar radiationDiffuse fractionDiffusion coefficientClearness indexMachine learningIndia
collection DOAJ
language English
format Article
sources DOAJ
author Shahid Husain
Uzair Ali Khan
spellingShingle Shahid Husain
Uzair Ali Khan
Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
Cleaner Engineering and Technology
Solar radiation
Diffuse fraction
Diffusion coefficient
Clearness index
Machine learning
India
author_facet Shahid Husain
Uzair Ali Khan
author_sort Shahid Husain
title Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
title_short Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
title_full Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
title_fullStr Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
title_full_unstemmed Machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of India
title_sort machine learning models to predict diffuse solar radiation based on diffuse fraction and diffusion coefficient models for humid-subtropical climatic zone of india
publisher Elsevier
series Cleaner Engineering and Technology
issn 2666-7908
publishDate 2021-12-01
description In the present work, twelve machine learning (ML) models are developed for assessment of monthly average diffuse solar radiation (DSR) with solitary input forecaster as clearness index. Two categories of ML models were demarcated (i.e. diffusion coefficient and diffuse fraction) with six models for each group. The correctness of models was examined as a function of some frequently used statistical pointers. A comparision was also done between developed ML models and some well-recognised models available from previous works. The results show that ML models perform very well in comparision to models available in the literature. The top-performing models in category 1 are the k-nearest neighbours (KNN) model for both training and testing data. In category 2, for training data random forest (RF) model perform well while for testing data support vector regression (SVR) models perform well. The performance can be slightly improved by using two or more input parameters such as temperature difference, relative humidity and relative sunshine along with clearness index as input. Thus, ML models can be used to estimate DSR in the humid-subtropical climate of India.
topic Solar radiation
Diffuse fraction
Diffusion coefficient
Clearness index
Machine learning
India
url http://www.sciencedirect.com/science/article/pii/S2666790821002226
work_keys_str_mv AT shahidhusain machinelearningmodelstopredictdiffusesolarradiationbasedondiffusefractionanddiffusioncoefficientmodelsforhumidsubtropicalclimaticzoneofindia
AT uzairalikhan machinelearningmodelstopredictdiffusesolarradiationbasedondiffusefractionanddiffusioncoefficientmodelsforhumidsubtropicalclimaticzoneofindia
_version_ 1717817844642611200