Fluctuant and complicated hydrological processes can result in the
uncertainty of runoff forecasting. Thus, it is necessary to apply the
multi-method integrated modeling approaches to simulate runoff. Integrating
the ensemble empirical mode decomposition (EEMD), the back-propagation
artificial neural network (BPANN) and the nonlinear regression equation, we
put forward a hybrid model to simulate the annual runoff (AR) of the Kaidu
River in northwest China. We also validate the simulated effects by using
the coefficient of determination (R2) and the Akaike information
criterion (AIC) based on the observed data from 1960 to 2012 at the Dashankou
hydrological station. The average absolute and relative errors show the high
simulation accuracy of the hybrid model. R2 and AIC both illustrate that
the hybrid model has a much better performance than the single BPANN. The
hybrid model and integrated approach elicited by this study can be applied
to simulate the annual runoff of similar rivers in northwest China
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