نمایش مختصر رکورد

dc.contributor.authorZabbah, Imanfa_IR
dc.contributor.authorRoshani, Ali Rezafa_IR
dc.contributor.authorKhafage, Aminfa_IR
dc.date.accessioned1399-07-09T05:01:08Zfa_IR
dc.date.accessioned2020-09-30T05:01:08Z
dc.date.available1399-07-09T05:01:08Zfa_IR
dc.date.available2020-09-30T05:01:08Z
dc.date.issued2018-12-22en_US
dc.date.issued1397-10-01fa_IR
dc.date.submitted2017-11-12en_US
dc.date.submitted1396-08-21fa_IR
dc.identifier.citationZabbah, Iman, Roshani, Ali Reza, Khafage, Amin. (1397). Prediction of monthly rainfall using artificial neural network mixture approach, Case Study: Torbat-e Heydariyeh. فیزیک زمین و فضا, 44(4), 115-126. doi: 10.22059/jesphys.2018.244511.1006941fa_IR
dc.identifier.issn2538-371X
dc.identifier.issn2538-3906
dc.identifier.urihttps://dx.doi.org/10.22059/jesphys.2018.244511.1006941
dc.identifier.urihttps://jesphys.ut.ac.ir/article_67737.html
dc.identifier.urihttps://iranjournals.nlai.ir/handle/123456789/273363
dc.description.abstractRainfall is one of the most important elements of water cycle used in evaluating climate conditions of each region. Long-term forecast of rainfall for arid and semi-arid regions is very important for managing and planning of water resources. To forecast appropriately, accurate data regarding humidity, temperature, pressure, wind speed etc. is required.This article is analytical and its database includes 7336 records situated in 11 features from daily brainstorm data within a twenty year period. The samples were selected based on a case study in Torbat-e Heydariyeh. 70% were chosen for learning and 30% were chosen for taking tests. From 7181 available data, 75% and 25% were used for training and evaluating, respectively. This research studied the performance of different neural networks in order to predict precipitation and then presented an algorithm for combining neural networks with linear and nonlinear methods. After modeling and comparing their results using neural networks, the root mean square error was recorded for each method. In the first modeling, the artificial neural network error was 0.05, in the second modeling, linear combination of neural networks error was 0.07, and in the third model, nonlinear combination neural networks error was 0.001. Reducing the error of forecasting precipitation has always been one of the goals of the researchers. This study, with the forecast of precipitation by neural networks, suggested that the use of a more robust method called a nonlinear combination neural network can lead to improve men is in for cast diagnostic accuracy.fa_IR
dc.format.extent671
dc.format.mimetypeapplication/pdf
dc.languageفارسی
dc.language.isofa_IR
dc.publisherموسسه ژئوفیزیک دانشگاه تهرانfa_IR
dc.publisherInstitute of Geophysics, University of Tehranen_US
dc.relation.ispartofفیزیک زمین و فضاfa_IR
dc.relation.ispartofJournal of the Earth and Space Physicsen_US
dc.relation.isversionofhttps://dx.doi.org/10.22059/jesphys.2018.244511.1006941
dc.subjectMonthly rainfallfa_IR
dc.subjectArtificial Neural Networksfa_IR
dc.subjectexperts' mixturefa_IR
dc.subjectTorbat-e Heydariyeh Precipitationfa_IR
dc.subjectهواشناسیfa_IR
dc.titlePrediction of monthly rainfall using artificial neural network mixture approach, Case Study: Torbat-e Heydariyehfa_IR
dc.typeTexten_US
dc.contributor.departmentLecturer, Department of Computer, Torbat-e Heydariyeh branch, Islamic Azad University, Torbat-e Heydariyeh, Iranfa_IR
dc.contributor.departmentAssistant Professor, Department of Water Engineering, Torbat-e Heydariyeh branch, Islamic Azad University, Torbat-e Heydariyeh, Iranfa_IR
dc.contributor.departmentM.Sc. Graduated, Department of Computer, Torbat-e Heydariyeh branch, Islamic Azad University, Torbat-e Heydariyeh, Iranfa_IR
dc.citation.volume44
dc.citation.issue4
dc.citation.spage115
dc.citation.epage126


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