Long term rainfall forecasting by integrated artificial neural network-fuzzy logic-wavelet model in Karoon basin
نویسنده:
, , , , ,سال
: 2011
چکیده: Physical, mathematical models and statistical distribution are applied to forecasting, whereas in natural
resources, it is difficult to choose models that are closed to reality. Rainfall forecasting as an important
dynamic process is ever favored by the researchers. Analyzing the behavior of these phenomena by
intelligent systems is completely better than classical methods, because of high non-linear dynamic
atmospheric phenomena. In this paper, a long term forecasting method is presented by a combination
of intelligent methods with the use of the past month rainfall in karoon basin and global meteorological
signals such as southern oscillation index (SOI), north athletics oscillation (NAO), sea level pressure
(SLP), sea surface temperature (SST) and 41 years historical data. This method is obtained by the
combination of artificial neural network, fuzzy logic and wavelet functions. In this model, several
scenarios have been examined for the karoon basin of Iran, through the signals. SST and NAO signals
show the best results, and then, the long-term forecasts are done for periods of six months, one year
and two years. The results of the integrated model showed superior results when compared to the twoyear
forecasts to predict the six-month and annual periods. As a result of the root mean squared error,
predicting the two-year and annual periods is 6.22 and 7.11, respectively. However, the predicted six
months shows 13.15.
resources, it is difficult to choose models that are closed to reality. Rainfall forecasting as an important
dynamic process is ever favored by the researchers. Analyzing the behavior of these phenomena by
intelligent systems is completely better than classical methods, because of high non-linear dynamic
atmospheric phenomena. In this paper, a long term forecasting method is presented by a combination
of intelligent methods with the use of the past month rainfall in karoon basin and global meteorological
signals such as southern oscillation index (SOI), north athletics oscillation (NAO), sea level pressure
(SLP), sea surface temperature (SST) and 41 years historical data. This method is obtained by the
combination of artificial neural network, fuzzy logic and wavelet functions. In this model, several
scenarios have been examined for the karoon basin of Iran, through the signals. SST and NAO signals
show the best results, and then, the long-term forecasts are done for periods of six months, one year
and two years. The results of the integrated model showed superior results when compared to the twoyear
forecasts to predict the six-month and annual periods. As a result of the root mean squared error,
predicting the two-year and annual periods is 6.22 and 7.11, respectively. However, the predicted six
months shows 13.15.
کلیدواژه(گان): Key words: Intelligent networks,long-term prediction,meteorological signals,artificial neural network,fuzzy
logic,wavelet function
کالکشن
:
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آمار بازدید
Long term rainfall forecasting by integrated artificial neural network-fuzzy logic-wavelet model in Karoon basin
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contributor author | Sarah Afshin | en |
contributor author | Hedayat Fahmi | en |
contributor author | امین علیزاده | en |
contributor author | Hossein Sedghi | en |
contributor author | Fereidoon Kaveh | en |
contributor author | Amin Alizadeh | fa |
date accessioned | 2020-06-06T13:30:11Z | |
date available | 2020-06-06T13:30:11Z | |
date issued | 2011 | |
identifier uri | https://libsearch.um.ac.ir:443/fum/handle/fum/3357562 | |
description abstract | Physical, mathematical models and statistical distribution are applied to forecasting, whereas in natural resources, it is difficult to choose models that are closed to reality. Rainfall forecasting as an important dynamic process is ever favored by the researchers. Analyzing the behavior of these phenomena by intelligent systems is completely better than classical methods, because of high non-linear dynamic atmospheric phenomena. In this paper, a long term forecasting method is presented by a combination of intelligent methods with the use of the past month rainfall in karoon basin and global meteorological signals such as southern oscillation index (SOI), north athletics oscillation (NAO), sea level pressure (SLP), sea surface temperature (SST) and 41 years historical data. This method is obtained by the combination of artificial neural network, fuzzy logic and wavelet functions. In this model, several scenarios have been examined for the karoon basin of Iran, through the signals. SST and NAO signals show the best results, and then, the long-term forecasts are done for periods of six months, one year and two years. The results of the integrated model showed superior results when compared to the twoyear forecasts to predict the six-month and annual periods. As a result of the root mean squared error, predicting the two-year and annual periods is 6.22 and 7.11, respectively. However, the predicted six months shows 13.15. | en |
language | English | |
title | Long term rainfall forecasting by integrated artificial neural network-fuzzy logic-wavelet model in Karoon basin | en |
type | Journal Paper | |
contenttype | External Fulltext | |
subject keywords | Key words: Intelligent networks | en |
subject keywords | long-term prediction | en |
subject keywords | meteorological signals | en |
subject keywords | artificial neural network | en |
subject keywords | fuzzy logic | en |
subject keywords | wavelet function | en |
journal title | Scientific Research and Essays | fa |
pages | 1200-1208 | |
journal volume | 6 | |
journal issue | 6 | |
identifier link | https://profdoc.um.ac.ir/paper-abstract-1057283.html | |
identifier articleid | 1057283 |