Development of sediment load estimation models by using artificial neural networking techniques

被引:0
作者
Muhammad Hassan
M. Ali Shamim
Ali Sikandar
Imran Mehmood
Imtiaz Ahmed
Syed Zishan Ashiq
Anwar Khitab
机构
[1] Mirpur University of Science & Technology,Department of Civil Engineering
[2] Bursa Orhangazi Üniversitesi,Department of Civil Engineering
[3] National University of Sciences & Technology,Department of Civil Engineering
来源
Environmental Monitoring and Assessment | 2015年 / 187卷
关键词
Sedimentation; Dead storage; Physical parameters; Gamma test; Artificial neural networks;
D O I
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中图分类号
学科分类号
摘要
This study aims at the development of an artificial neural network-based model for the estimation of weekly sediment load at a catchment located in northern part of Pakistan. The adopted methodology has been based upon antecedent sediment conditions, discharge, and temperature information. Model input and data length selection was carried out using a novel mathematical tool, Gamma test. Model training was carried out by using three popular algorithms namely Broyden-Fletcher-Goldfarb-Shanno (BFGS), back propagation (BP), and local linear regression (LLR) using forward selection of input variables. Evaluation of the best model was carried out on the basis of basic statistical parameters namely R-square, root mean squared error (RMSE), and mean biased error (MBE). Results indicated that BFGS-based ANN model outperformed all other models with significantly low values of RMSE and MBE. A strong correlation was also found between the observed and estimated sediment load values for the same model as the value of Nash-Sutcliffe model efficiency coefficient (R-square) was found to be quite high as well.
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