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:: Volume 4, Issue 11 (7-2010) ::
jwmseir 2010, 4(11): 45-48 Back to browse issues page
Evaluating the Effects of Different Input Signals on Efficiency Coefficients of Artificial Neural Network Models for Intelligent Estimation of Flood Hydrographs
Hamid Pahlevani * , Abdol reza Bahremand , Amir ahmad Dehghani
Abstract:   (15987 Views)

The estimation of flood hydrograph characteristics in natural rivers is of hydrologists interests. In this

paper, the ability of neural networks for estimation of flood hydrograph to Shirindareh reservoir dam in

Khorasan province is evaluated. Therefore, all flood hydrograph events of hydrometery station in upstream

were collected and normalized. It is notable that the flood hydrometery was estimated 2, 3, 4 and 5 hours

earlier using the flood discharges at 2, 3, 4 and 5 previous hours as model inputs respectively. In each pattern,

four signals were selected for considering the effect of number of inputs for estimation of flood hydrograph.

The results show that by increasing the estimation lag time, the accuracy of results decrease and in

given lag time, by increasing the number of input, the accuracy of results increase. The results show that

the amount of efficiency coefficients, which is the representation of goodness of flood hydrograph modeling,

is increased from 0.79 for signal one to 0.91 for signal four.

Keywords: Flood Hydrograph, Artificial Neural Network, Shirindarreh Reservoir Dam Basin, Learning Algorithms and Transfer Function.
Full-Text [PDF 387 kb]   (2313 Downloads)    
Type of Study: Research | Subject: Special
Received: 2013/02/26 | Accepted: 2014/05/25 | Published: 2014/05/25
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pahlevani H, Bahremand A R, Dehghani A A. Evaluating the Effects of Different Input Signals on Efficiency Coefficients of Artificial Neural Network Models for Intelligent Estimation of Flood Hydrographs. jwmseir 2010; 4 (11) :45-48
URL: http://jwmsei.ir/article-1-147-en.html


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Volume 4, Issue 11 (7-2010) Back to browse issues page
مجله علوم ومهندسی آبخیزداری ایران Iranian Journal of Watershed Management Science and Engineering
به اطلاع کلیه نویسندگان ، محققین و داوران  محترم  می رساند:

با عنایت به تصمیم  هیئت تحریریه مجله علمی پژوهشی علوم و مهندسی آبخیزداری فرمت تهیه مقاله به شکل پیوست در بخش راهنمای نویسندگان تغییر کرده است. در این راستا، از تاریخ ۱۴۰۳/۰۱/۲۱ کلیه مقالات ارسالی فقط در صورتی که طبق راهنمای نگارش جدید تنظیم شده باشد مورد بررسی قرار خواهد گرفت.
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