Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia

Abstract Climate change is not a myth. There is enough evidence to showcase the impact of climate change. Town planners and authorities are looking for potential models to predict the climatic factors in advance. Being an agricultural area in Saudi Arabia, Tabuk region gets greater interest in developing such a model to predict the atmospheric temperature.Therefore, this paper presents two different studies based on artificial neural networks (ANNs) and gene expression programming (GEP) to predict the atmospheric temperature in Tabuk. Atmospheric pressure, rainfall, relative humidity and wind speed are used as the input variables in the developed models. Multilayer perceptron neural network model (ANN model), which is high in precession in producing results, is selected for this study. The GEP model that is based on evolutionary algorithms also produces highly accurate results in nonlinear models. However, the results show that the GEP model outperforms the ANN model in predicting atmospheric temperature in Tabuk region. The developed GEP-based model can be used by the town and country planers and agricultural personals. Graphical abstract

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Main Authors: Azamathulla, H. M, Rathnayake, Upaka, Shatnawi, Ahmad
Format: Journal Article biblioteca
Language:English
Published: 2018-09-27
Online Access:https://doi.org/10.1007/s13201-018-0831-6
http://hdl.handle.net/2139/46003
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spelling oai:oai:uwispace.sta.uwi.edu:2139:2139-460032018-09-30T04:17:55Z Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia Azamathulla, H. M Rathnayake, Upaka Shatnawi, Ahmad Abstract Climate change is not a myth. There is enough evidence to showcase the impact of climate change. Town planners and authorities are looking for potential models to predict the climatic factors in advance. Being an agricultural area in Saudi Arabia, Tabuk region gets greater interest in developing such a model to predict the atmospheric temperature.Therefore, this paper presents two different studies based on artificial neural networks (ANNs) and gene expression programming (GEP) to predict the atmospheric temperature in Tabuk. Atmospheric pressure, rainfall, relative humidity and wind speed are used as the input variables in the developed models. Multilayer perceptron neural network model (ANN model), which is high in precession in producing results, is selected for this study. The GEP model that is based on evolutionary algorithms also produces highly accurate results in nonlinear models. However, the results show that the GEP model outperforms the ANN model in predicting atmospheric temperature in Tabuk region. The developed GEP-based model can be used by the town and country planers and agricultural personals. Graphical abstract 2018-09-29T23:06:24Z 2018-09-29T23:06:24Z 2018-09-27 2018-09-29T23:06:25Z Journal Article Applied Water Science. 2018 Sep 27;8(6):184 https://doi.org/10.1007/s13201-018-0831-6 http://hdl.handle.net/2139/46003 en The Author(s) application/pdf
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country Trinidad y Tobago
countrycode TT
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tag biblioteca
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libraryname UWI library system TT
language English
description Abstract Climate change is not a myth. There is enough evidence to showcase the impact of climate change. Town planners and authorities are looking for potential models to predict the climatic factors in advance. Being an agricultural area in Saudi Arabia, Tabuk region gets greater interest in developing such a model to predict the atmospheric temperature.Therefore, this paper presents two different studies based on artificial neural networks (ANNs) and gene expression programming (GEP) to predict the atmospheric temperature in Tabuk. Atmospheric pressure, rainfall, relative humidity and wind speed are used as the input variables in the developed models. Multilayer perceptron neural network model (ANN model), which is high in precession in producing results, is selected for this study. The GEP model that is based on evolutionary algorithms also produces highly accurate results in nonlinear models. However, the results show that the GEP model outperforms the ANN model in predicting atmospheric temperature in Tabuk region. The developed GEP-based model can be used by the town and country planers and agricultural personals. Graphical abstract
format Journal Article
author Azamathulla, H. M
Rathnayake, Upaka
Shatnawi, Ahmad
spellingShingle Azamathulla, H. M
Rathnayake, Upaka
Shatnawi, Ahmad
Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
author_facet Azamathulla, H. M
Rathnayake, Upaka
Shatnawi, Ahmad
author_sort Azamathulla, H. M
title Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
title_short Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
title_full Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
title_fullStr Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
title_full_unstemmed Gene expression programming and artificial neural network to estimate atmospheric temperature in Tabuk, Saudi Arabia
title_sort gene expression programming and artificial neural network to estimate atmospheric temperature in tabuk, saudi arabia
publishDate 2018-09-27
url https://doi.org/10.1007/s13201-018-0831-6
http://hdl.handle.net/2139/46003
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AT rathnayakeupaka geneexpressionprogrammingandartificialneuralnetworktoestimateatmospherictemperatureintabuksaudiarabia
AT shatnawiahmad geneexpressionprogrammingandartificialneuralnetworktoestimateatmospherictemperatureintabuksaudiarabia
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