Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)

Drought prediction in water resources systems plays an important role in reducing drought damage. In recent decades, Traditional methods including: fitting and mathematical models have been widely used to predict droughts. The combination of wavelet theory and neural networks has led to the expansio...

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Main Authors: mahbobeh younesi, Nadiya Shahraki, Safar Marofi, Hamed Nozari
Format: Article
Language:fas
Published: Shahid Chamran University of Ahvaz 2018-06-01
Series:علوم و مهندسی آبیاری
Subjects:
Online Access:http://jise.scu.ac.ir/article_13669_43f66836b480e1800e8ee9bfc836f2d8.pdf
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author mahbobeh younesi
Nadiya Shahraki
Safar Marofi
Hamed Nozari
author_facet mahbobeh younesi
Nadiya Shahraki
Safar Marofi
Hamed Nozari
author_sort mahbobeh younesi
collection DOAJ
description Drought prediction in water resources systems plays an important role in reducing drought damage. In recent decades, Traditional methods including: fitting and mathematical models have been widely used to predict droughts. The combination of wavelet theory and neural networks has led to the expansion of the wavelet-neural networks. The application of the wavelet as training function in the neural network has recently been identified as a substitute method in neural networks. In these models, the position and scale coefficients of the wavelets are optimized in addition to the weights (Thuillard, 2000). Considering the importance of short-term drought prediction in water resources engineering and the nonlinear characteristics of the SPI series of three months, the purpose of this study is to present an Artificial Wavelet Neural Networks integrated model for predicting short-term drought at Bidestan station in Qazvin plain. <br />In this research, Multi-Layer Perceptron (MLP), Radial Base Function (RBF), ARIMA time series, as well as Artificial Wavelet Neural Networks integrated model and Multi-layer Perceptron (WA-MLP) and Radial Bonding Function (WA- RBF) were used, which is done by analyzing the time series investigated by the wavelet transformation and the entry of these sub-series into an artificial neural network. <br />According to previous researches on drought prediction, short-term drought prediction (with the definition of a three-month standard rainfall index) using the combined model of Wavelet-Neural Network and comparing its results with artificial neural network and ARIMA time series models has not been compared. In this paper, five short-term drought prediction models have been compared and a better performance model has been introduced.
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spelling doaj.art-31495d6a611b40d48228c307ae0d57a02022-12-21T18:57:26ZfasShahid Chamran University of Ahvazعلوم و مهندسی آبیاری2588-59522588-59602018-06-0141216718110.22055/jise.2018.1366913669Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)mahbobeh younesi0Nadiya Shahraki1Safar Marofi2Hamed Nozari3Ph.D. Student on Water Resources Engineering, Department of Science and Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.Ph.D. Student on Water Resources Engineering, Department of Science and Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.Professor, Department of Science and Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.Assistant Professor, Department of Science and Water Engineering, Faculty of Agriculture, Bu-Ali Sina University, Hamedan, Iran.Drought prediction in water resources systems plays an important role in reducing drought damage. In recent decades, Traditional methods including: fitting and mathematical models have been widely used to predict droughts. The combination of wavelet theory and neural networks has led to the expansion of the wavelet-neural networks. The application of the wavelet as training function in the neural network has recently been identified as a substitute method in neural networks. In these models, the position and scale coefficients of the wavelets are optimized in addition to the weights (Thuillard, 2000). Considering the importance of short-term drought prediction in water resources engineering and the nonlinear characteristics of the SPI series of three months, the purpose of this study is to present an Artificial Wavelet Neural Networks integrated model for predicting short-term drought at Bidestan station in Qazvin plain. <br />In this research, Multi-Layer Perceptron (MLP), Radial Base Function (RBF), ARIMA time series, as well as Artificial Wavelet Neural Networks integrated model and Multi-layer Perceptron (WA-MLP) and Radial Bonding Function (WA- RBF) were used, which is done by analyzing the time series investigated by the wavelet transformation and the entry of these sub-series into an artificial neural network. <br />According to previous researches on drought prediction, short-term drought prediction (with the definition of a three-month standard rainfall index) using the combined model of Wavelet-Neural Network and comparing its results with artificial neural network and ARIMA time series models has not been compared. In this paper, five short-term drought prediction models have been compared and a better performance model has been introduced.http://jise.scu.ac.ir/article_13669_43f66836b480e1800e8ee9bfc836f2d8.pdfarimaartificial wavelet neural networksdroughtforecastingspi
spellingShingle mahbobeh younesi
Nadiya Shahraki
Safar Marofi
Hamed Nozari
Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
علوم و مهندسی آبیاری
arima
artificial wavelet neural networks
drought
forecasting
spi
title Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
title_full Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
title_fullStr Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
title_full_unstemmed Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
title_short Drought Forecasting Using Artificial Wavelet Neural Network Integrated Model (WA-ANN) and Time Series Model (ARIMA)
title_sort drought forecasting using artificial wavelet neural network integrated model wa ann and time series model arima
topic arima
artificial wavelet neural networks
drought
forecasting
spi
url http://jise.scu.ac.ir/article_13669_43f66836b480e1800e8ee9bfc836f2d8.pdf
work_keys_str_mv AT mahbobehyounesi droughtforecastingusingartificialwaveletneuralnetworkintegratedmodelwaannandtimeseriesmodelarima
AT nadiyashahraki droughtforecastingusingartificialwaveletneuralnetworkintegratedmodelwaannandtimeseriesmodelarima
AT safarmarofi droughtforecastingusingartificialwaveletneuralnetworkintegratedmodelwaannandtimeseriesmodelarima
AT hamednozari droughtforecastingusingartificialwaveletneuralnetworkintegratedmodelwaannandtimeseriesmodelarima