Title of article :
Prediction of daily suspended sediment load using the Genetic Expression Programming and Artificial Neural Network models
Author/Authors :
Alijanpour Shalmani, Adele Soil Science Department - University of Zanjan, Zanjan, Iran , Vaez, Ali Reza Soil Science Department - University of Zanjan, Zanjan, Iran , Tabatabaei, Mahmoud Reza Soil Conservation and Watershed Management Research Institute - Agricultural Research - Education and Extension Organization (AREEO), Tehran, Iran
Abstract :
Because of the quantitative and qualitative problems of Daily Suspended
Sediment Load (SSL) data with direct measurement, it is important to use
methods for predicting it in watersheds. In this research, two methods
consisting of the artificial neural network (ANN) and Genetic Expression
Programming (GEP) were used to predict SSL. The studied area was a
watershed in north of Iran. Input data included instantaneous flow
discharge (Q), average daily flow discharge (Qi), average daily
precipitation (Pi) and the output was SSL. A clustering method was used
to homogenize data for the self-organizing map (SOM) method and then,
all data were divided into three groups including 70, 15 and 15% for
training, validating and testing, respectively. Also, the gamma test
method was used to determine the best combination of input variables. In
all combinations of inputs to the ANN and GEP models, the ANN model
with tangent sigmoid activation function and input variables combination
including Q, Qi, Qi-2, Qi-3, Pi, Pi-2, Pi-3 was the best for estimating SSL in
the area with a root mean square error of 1995.3 (ton day -1
) and the
Nash-Sutcliff efficiency of 0.96. In general, the results of this study
showed that intelligent models are capable of accurately estimating the
SSL value. Also, using SOM preprocessing techniques and gamma tests
increased the generalization power of the models. We also found that
choosing the most influential variables and their best combination
increased the modeling power and accuracy of SSL estimation,
respectively.
Keywords :
Daily discharge , Daily precipitation , Clustering , Gamma test , Self-organizing map , Smart model
Journal title :
Environmental Resources Research