Suspended sediment load prediction of river systems: An artificial neural network approach |
| |
Authors: | A.M. Melesse S. AhmadM.E. McClain X. WangY.H. Lim |
| |
Affiliation: | a Department of Earth and Environment, Florida International University, 11200 SW 8th St., ECS 339, Miami, FL 33199, United States b Department of Civil and Environmental Engineering, University of Nevada, Las Vegas, United States c Department of Math, Physics & Engineering, Tarleton State University, United States d Department of Civil Engineering, University of North Dakota, United States e UNESCO-IHE Institute for Water Education, The Netherlands |
| |
Abstract: | Information on suspended sediment load is crucial to water management and environmental protection. Suspended sediment loads for three major rivers (Mississippi, Missouri and Rio Grande) in USA are estimated using artificial neural network (ANN) modeling approach. A multilayer perceptron (MLP) ANN with an error back propagation algorithm, using historical daily and weekly hydroclimatological data (precipitation P(t), current discharge Q(t), antecedent discharge Q(t−1), and antecedent sediment load SL(t−1)), is used to predict the suspended sediment load SL(t) at the selected monitoring stations. Performance of ANN was evaluated using different combinations of input data sets, length of record for training, and temporal resolution (daily and weekly data). Results from ANN model were compared with results from multiple linear regressions (MLR), multiple non-linear regression (MNLR) and Autoregressive integrated moving average (ARIMA) using correlation coefficient (R), mean absolute percent error (MAPE) and model efficiency (E). Comparison of training period length was also made (4, 3 and 2 years of training and 1, 2 and 3 years of testing, respectively). The model efficiency (E) and R2 values were slightly higher for the 4 years of training and 1 year of testing (4 * 1) for Mississippi River, indifferent for Missouri and slightly lower for Rio Grande River. Daily simulations using Input 1 (P(t), Q(t), Q(t−1), SL(t−1)) and three years of training and two years of testing (3 * 2) performed better (R2 and E of 0.85 and 0.72, respectively) than the simulation with two years of training and three years of testing (2 * 3) (R2 and E of 0.64 and 0.46, respectively). ANN predicted daily values using Input 1 and 3 * 2 architecture for Missouri (R2 = 0.97) and Mississippi (R2 = 0.96) were better than those of Rio Grande (R2 = 0.65). Daily predictions were better compared to weekly predictions for all three rivers due to higher correlation within daily than weekly data. ANN predictions for most simulations were superior compared to predictions using MLR, MNLR and ARIMA. The modeling approach presented in this paper can be potentially used to reduce the frequency of costly operations for sediment measurement where hydrological data is readily available. |
| |
Keywords: | Artificial neural network (ANN) Sediment prediction Multiple linear regressions (MLR) Multiple non-linear regression (MNLR) Autoregressive integrated moving average (ARIMA) Mississippi Missouri Rio Grande |
本文献已被 ScienceDirect 等数据库收录! |
|