Please use this identifier to cite or link to this item: http://dspace.unimap.edu.my:80/xmlui/handle/123456789/13734
Title: Sediment model for natural and man-made channels using general regression neural network
Authors: Junaidah, Ariffin
Nurashikin, Ahmad Kamal
Muhamad Syahreen, Sa’adon
Mohd Nasir, Taib
Suhaimi, Abdul-Talib
Aminuddin, Abd-Ghani
Nor Azazi, Zakaria
Ahmad Shukri, Yahaya
redac01@eng.usm.my
redac02@eng.usm.my
Keywords: General regression neural network
Man-made channels
Natural channels
Sediment transport
Issue Date: Sep-2008
Publisher: The Institution of Engineers, Malaysia
Citation: The Journal of the Institution of Engineers, Malaysia, vol. 69(3), 2008, pages 44-58
Abstract: This paper presents a new sediment transport model using general regression neural network (GRNN) that are applicable for both natural and man-made channels. GRNN is a supervised network that trains quickly sparse data sets. The network architecture responses very well with data that is spasmodic in nature than back propagation algorithm. Field data (499 data) extracted from rivers in Selangor, Perak and Kedah are used in the training and testing phases. The model is further tested using hydraulics and sediment data from rivers in the United States namely Sacremento, Atchafalaya, Colorado, Mississippi, Middle Loup, Mountain Creek, Niobrara, Saskatchewan, Oak Creek, Red, Rio Grande rivers and Chop Irrigation Canal. Four independent variables, namely, relative roughness on the bed (R/d50), ratio of shear velocity and fall velocity (U*/Ws), ratio of shear velocity and average velocity (U*/V) and the Froude Number (V/√gy) are used as input variables in the input layer and the total sediment load QT as the output variable. The proposed GRNN sediment model had accurately predicted 89% of the river data sets (local and foreign rivers) with 90% of the predicted values lie in the discrepancy ratio of 0.5 – 2.0. For the sake of illustrations, accuracy of the derived sediment transport model is also measured using smaller range of discrepancy ratios.
Description: Link to publisher's homepage at http://www.myiem.org.my/
URI: http://www.myiem.org.my/content/iem_journal_2008-179.aspx
http://dspace.unimap.edu.my/123456789/13734
ISSN: 0126-513X
Appears in Collections:IEM Journal

Files in This Item:
File Description SizeFormat 
044-058_Sediment 3pp.pdf1.09 MBAdobe PDFView/Open


Items in UniMAP Library Digital Repository are protected by copyright, with all rights reserved, unless otherwise indicated.