Prediction of drought in dry lands through feedforward artificial neural network abilities

被引:0
作者
Hossein Bari Abarghouei
Mohammad Reza Kousari
Mohammad Amin Asadi Zarch
机构
[1] Payame Noor University,Department of Agriculture
[2] Fars Organization of Jahad-Agriculture,Management Center for Strategic Projects, Cadastral Scientific Documentation Group
[3] Yazd University,Faculty of Natural Resources
来源
Arabian Journal of Geosciences | 2013年 / 6卷
关键词
Drought management; Hyper arid region; Precipitation; SPI; Water resources;
D O I
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中图分类号
学科分类号
摘要
Drought is one of the most important natural hazards in Iran. It is especially more prevalent in arid and hyper arid regions where there are serious limitations in regard to providing sufficient water resources. On the other hand, drought modeling and particularly its prediction can play important role in water resources management under conditions of lack of sufficient water resources. Therefore, in this study, drought prediction in a hyper arid location of Iran (Ardakan region) has been surveyed based on the abilities of artificial neural. Standardized Precipitation Index (SPI) in different time scales (3, 6, 9, 12, and 24 monthly time series) computed based on the data gathered from four rain gauge stations. After evaluation and testing of different artificial neural networks (ANN) structures, gradient descent back propagation (traingd) network showed higher abilities than others. Then, the predictions of SPI time series with different monthly lag times (1:12 months) were tested. Generally, drought prediction by ANNs in the Ardakan region has shown considerable results with the correlation coefficient (R) more than 0.79 and in the most cases and it rises more than 0.90, which indicates the ANN’s ability of drought prediction.
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页码:1417 / 1433
页数:16
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共 66 条
[1]  
Bordi I(2002)An analysis of drought in Italy in the last fifty years Nuovo Cimento 025 185-206
[2]  
Sutera A(1989)Approximation by superpositions of a sigmoidal function Math Contr Signals Syst 2 303-314
[3]  
Cybenko G(2011)Application of artificial neural networks on drought prediction in Yazd (Central Iran) Desert Journal 16 39-48
[4]  
Dastorani MT(2006)Artificial neural network models of daily pan evaporation Hydrologic Engrg 11 65-70
[5]  
Afkhami H(1993)Forecasting with neural networks: an application using bankruptcy data Info Manage 24 59-167
[6]  
Erol Keskin M(1962)A Markov chain model for daily rainfall occurrences at Tel Aviv Q J R Meteorol Soc 88 90-95
[7]  
Terzi Ö(2000)Artificial neural networks in hydrology. II: hydrologic applications J Hydrologic Engrg 5 124-137
[8]  
Fletcher D(1989)Multilayer feedforward networks are universal approximators Neural Netw 25 359-366
[9]  
Goss E(2002)A drought climatology for Europe Int J Climatol 22 1571-1592
[10]  
Gabriel KR(1987)An introduction to computing with neural nets IEEE ASSP Mag 4 4-22