Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model

Precipitation forecasting is of great importance in various aspects of catchment management, drought, and flood warning. Precipitation is regarded as one of the important components of the water cycle and plays a crucial role in measuring the climatic characteristics of each region. The present stud...

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Main Authors: Hamidreza Ghazvinian, Hossein Bahrami, Hossein Ghazvinian, Salim Heddam
Format: Article
Language:English
Published: Pouyan Press 2020-10-01
Series:Journal of Soft Computing in Civil Engineering
Subjects:
Online Access:http://www.jsoftcivil.com/article_114273_cb69a6e1b9a84259e02ec61fab596231.pdf
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spelling doaj-2cf608b42fc7461ab4fe12ad14e6bc022021-01-19T09:42:21ZengPouyan PressJournal of Soft Computing in Civil Engineering2588-28722588-28722020-10-0144364610.22115/scce.2020.242813.1251114273Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence ModelHamidreza Ghazvinian0Hossein Bahrami1Hossein Ghazvinian2Salim Heddam3Ph.D. Student, Faculty of Civil Engineering, Semnan University, Semnan, IranFaculty of Civil Engineering, Semnan University, Semnan, IranFaculty of Architecture and Urban Engineering, Semnan University, Semnan, IranProfessor, Faculty of Science, Agronomy Department, Hydraulics Division, Laboratory of Research in Biodiversity Interaction Ecosystem and Biotechnology, University 20 Août 1955, Skikda, AlgeriaPrecipitation forecasting is of great importance in various aspects of catchment management, drought, and flood warning. Precipitation is regarded as one of the important components of the water cycle and plays a crucial role in measuring the climatic characteristics of each region. The present study aims to forecast monthly precipitation in Semnan city by using artificial neural networks (ANN). For this purpose, we used the minimum and maximum temperature data, mean relative humidity, wind speed, sunshine hours, and monthly precipitation during a statistical period of 18 years (2000-2018). Moreover, an artificial neural network was used as a nonlinear method to simulate precipitation. In this research, all data were normalized due to the different units of inputs and outputs in the forecasting model. Further, seven different scenarios were considered as input for the ANN model. Totally, 70% of the data were used for training while the other 30% were used for testing. The model was evaluated with appropriate statistics such as coefficient of determination (R2), root mean square error (RMSE) and mean absolute error (MAE). Scenario 6, which included the inputs of minimum and maximum temperature, mean relative humidity, wind speed, and pressure, provided the best performance compared to other scenarios. The values of , RMSE, and MAE for the superior scenario were 0.8597, 4.0257, and 2.3261, respectively.http://www.jsoftcivil.com/article_114273_cb69a6e1b9a84259e02ec61fab596231.pdfmonthly precipitationprecipitation forecastingartificial neural networksemnan
collection DOAJ
language English
format Article
sources DOAJ
author Hamidreza Ghazvinian
Hossein Bahrami
Hossein Ghazvinian
Salim Heddam
spellingShingle Hamidreza Ghazvinian
Hossein Bahrami
Hossein Ghazvinian
Salim Heddam
Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
Journal of Soft Computing in Civil Engineering
monthly precipitation
precipitation forecasting
artificial neural network
semnan
author_facet Hamidreza Ghazvinian
Hossein Bahrami
Hossein Ghazvinian
Salim Heddam
author_sort Hamidreza Ghazvinian
title Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
title_short Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
title_full Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
title_fullStr Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
title_full_unstemmed Simulation of Monthly Precipitation in Semnan City Using ANN Artificial Intelligence Model
title_sort simulation of monthly precipitation in semnan city using ann artificial intelligence model
publisher Pouyan Press
series Journal of Soft Computing in Civil Engineering
issn 2588-2872
2588-2872
publishDate 2020-10-01
description Precipitation forecasting is of great importance in various aspects of catchment management, drought, and flood warning. Precipitation is regarded as one of the important components of the water cycle and plays a crucial role in measuring the climatic characteristics of each region. The present study aims to forecast monthly precipitation in Semnan city by using artificial neural networks (ANN). For this purpose, we used the minimum and maximum temperature data, mean relative humidity, wind speed, sunshine hours, and monthly precipitation during a statistical period of 18 years (2000-2018). Moreover, an artificial neural network was used as a nonlinear method to simulate precipitation. In this research, all data were normalized due to the different units of inputs and outputs in the forecasting model. Further, seven different scenarios were considered as input for the ANN model. Totally, 70% of the data were used for training while the other 30% were used for testing. The model was evaluated with appropriate statistics such as coefficient of determination (R2), root mean square error (RMSE) and mean absolute error (MAE). Scenario 6, which included the inputs of minimum and maximum temperature, mean relative humidity, wind speed, and pressure, provided the best performance compared to other scenarios. The values of , RMSE, and MAE for the superior scenario were 0.8597, 4.0257, and 2.3261, respectively.
topic monthly precipitation
precipitation forecasting
artificial neural network
semnan
url http://www.jsoftcivil.com/article_114273_cb69a6e1b9a84259e02ec61fab596231.pdf
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