Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran

Drought is one of the most destructive natural disasters in human societies that cause irreparable impacts on agriculture, environment, society and economics. So, awareness of occurrence of droughts can be effective in reducing losses. In this study, in order to modeling and forecasting drought seve...

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Main Authors: Arash malekian, mahro dehbozorgi, Amir hoshang ehsani
Format: Article
Language:fas
Published: Kharazmi University 2015-06-01
Series:تحقیقات کاربردی علوم جغرافیایی
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Online Access:http://jgs.khu.ac.ir/article-1-2289-en.pdf
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author Arash malekian
mahro dehbozorgi
Amir hoshang ehsani
author_facet Arash malekian
mahro dehbozorgi
Amir hoshang ehsani
author_sort Arash malekian
collection DOAJ
description Drought is one of the most destructive natural disasters in human societies that cause irreparable impacts on agriculture, environment, society and economics. So, awareness of occurrence of droughts can be effective in reducing losses. In this study, in order to modeling and forecasting drought severity in a 37 year time period (1971-2007) in 21 meteorological stations, located in the cold semi-arid region of north-west Iran, artificial neural networks was used. The input data was annual rainfall data and annual drought precipitation index for all stations that 80% of the data (1971-2000) used for training the network and other 20% (2001-2007) used for testing it and in the next step drought severity predicted for the years 2008 to 2012 by the trained algorithm without using actual and existed data in this period. The appropriate structure for the network, based on Multi Layer Perceptron with three hidden layer, Back Propagation algorithm, Sigmoid transfer function and 10 neurons in middle layer. The results show that the artificial neural networks are well able to predict the non-linear relationship between rainfall and drought as it can simulate drought precipitation index values largely consistent with the real values with more than 97% regression and less than 5% error. So, drought can be predicted by this method in future and also it is useful in water resources management, drought management and climate change.
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institution Kabale University
issn 2228-7736
2588-5138
language fas
publishDate 2015-06-01
publisher Kharazmi University
record_format Article
series تحقیقات کاربردی علوم جغرافیایی
spelling doaj-art-2261ffba995f4b89b704d5aecc51c8b52025-01-31T17:22:23ZfasKharazmi Universityتحقیقات کاربردی علوم جغرافیایی2228-77362588-51382015-06-011536139156Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of IranArash malekian0mahro dehbozorgi1Amir hoshang ehsani2 Drought is one of the most destructive natural disasters in human societies that cause irreparable impacts on agriculture, environment, society and economics. So, awareness of occurrence of droughts can be effective in reducing losses. In this study, in order to modeling and forecasting drought severity in a 37 year time period (1971-2007) in 21 meteorological stations, located in the cold semi-arid region of north-west Iran, artificial neural networks was used. The input data was annual rainfall data and annual drought precipitation index for all stations that 80% of the data (1971-2000) used for training the network and other 20% (2001-2007) used for testing it and in the next step drought severity predicted for the years 2008 to 2012 by the trained algorithm without using actual and existed data in this period. The appropriate structure for the network, based on Multi Layer Perceptron with three hidden layer, Back Propagation algorithm, Sigmoid transfer function and 10 neurons in middle layer. The results show that the artificial neural networks are well able to predict the non-linear relationship between rainfall and drought as it can simulate drought precipitation index values largely consistent with the real values with more than 97% regression and less than 5% error. So, drought can be predicted by this method in future and also it is useful in water resources management, drought management and climate change.http://jgs.khu.ac.ir/article-1-2289-en.pdfdroughtpredi ctionartificial neural networksnorth-west iran
spellingShingle Arash malekian
mahro dehbozorgi
Amir hoshang ehsani
Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
تحقیقات کاربردی علوم جغرافیایی
drought
predi ction
artificial neural networks
north-west iran
title Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
title_full Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
title_fullStr Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
title_full_unstemmed Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
title_short Evaluation the efficiency of using Artificial Neural Networks in predicting meteorological droughts in north-west of Iran
title_sort evaluation the efficiency of using artificial neural networks in predicting meteorological droughts in north west of iran
topic drought
predi ction
artificial neural networks
north-west iran
url http://jgs.khu.ac.ir/article-1-2289-en.pdf
work_keys_str_mv AT arashmalekian evaluationtheefficiencyofusingartificialneuralnetworksinpredictingmeteorologicaldroughtsinnorthwestofiran
AT mahrodehbozorgi evaluationtheefficiencyofusingartificialneuralnetworksinpredictingmeteorologicaldroughtsinnorthwestofiran
AT amirhoshangehsani evaluationtheefficiencyofusingartificialneuralnetworksinpredictingmeteorologicaldroughtsinnorthwestofiran