Simulation of suspended sediment based on gamma test, heuristic, and regression-based techniques

Environmental Earth Sciences(2018)

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摘要
In the present study, four different heuristic techniques viz. multi-layer perceptron (MLP), radial basis function (RBF), self-organizing maps (SOM), and co-active neuro-fuzzy inference system (CANFIS) with hyperbolic tangent and sigmoid transfer functions and two regression-based techniques, i.e., multiple linear regression (MLR) and sediment-rating curve (SRC), were used for suspended sediment modeling. Gamma test (GT), correlation function (CF), M test, and trail–error procedure were applied for estimation of appropriate input variables as well as training data length. The results of the GT and CF suggested the five input variables ( Q t , Q t −1, Q t −2, S t −1, and S t −2, where Q t −1 and S t −1 indicate the discharge and sediment values of one previous day) as the best combination. The optimal training data length (75% of total data) was estimated by M test and trail–error procedure for development of the applied models. The MLP with sigmoid transfer function (M-2) performed better than the all other models. The results of sensitivity analysis indicated that the present-day discharge ( Q t ), 1-day lag discharge ( Q t −1 ) and 1-day lag suspended sediment ( S t −1 ) are the most influenced parameters in modeling current day suspended sediment ( S t ).
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关键词
Suspended sediment simulation, MLP, RBF, MLR, SRC, Gamma test, M test, Sensitivity analysis
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