MU Fengyun, YANG Meng, LIN Xiaosong, et al. The flood disasters in Wushan county based on machine learning algorithm model[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2020,59(1):105-113.
MU Fengyun, YANG Meng, LIN Xiaosong, et al. The flood disasters in Wushan county based on machine learning algorithm model[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2020,59(1):105-113. DOI: 10.13471/j.cnki.acta.snus.2020.01.013.
Kmeans model and ARMA model was applied to classify 12 369 runoff river reaches in Wushan County
and study the change of hydrological parameters in time series
and probes into the evolution of rainfall runoff process by using the machine learning algorithm RF model. Combined with the GIS spatial visualization technology and the geographical environment of the study are
the flood disaster scope is predicted and the spatial distribution of flood disasters is analyzed based on the RF model. The results show that: 1) The RF model can effectively predict the importance of parameters in the rainfallrunoff process. When the rainfall intensities are 125 mm and 150-175 mm
the change rate of water level and velocity is the largest; when the rainfall intensity is 100-175 mm
the change rate of velocity is the most intense. 2) The ARMA model is used to predict the river gradient
flow and other hydrological parameters with the best regression. Among the predicted parameters of lower level rivers
the change rate of water level and flow velocity is the most obvious
and the flow quantity has no obvious change. Compared with the change rate of water level
the change rate of flow rate is more intense
and the change rate of flow rate and water level is mainly concentrated in the river with higher grade. 3) The machine learning algorithm can effectively predict the flood prone degree in the study area. When characterizing the hydrological parameters of the study area
the change of water level is mainly concentrated in the northwest and the south central part
and the change rate of water level in the northeast and the south central part is significant. It is predicted that the water level in some areas can rise to 20 m in extremely dangerous condition.