Hydrology and Water Resources Monitoring and Forecasting Center, Ministry of Water Resources, Beijing, 100053, China.
Department of Hydrology, Ministry of Water Resources, Beijing, 100053, China.
Environ Monit Assess. 2022 Jan 25;194(2):125. doi: 10.1007/s10661-022-09752-9.
In this paper, a novel ANN flood forecasting model is proposed. The ANN model is combined with traditional hydrological concepts and methods, taking the initial Antecedent Precipitation Index (API), rainfall, upstream inflow and initial flow at the forecast river section as input of model, and flood flow forecast of the next time steps as output of the model. The distributed rainfall is realized as the input of the model. The simulation is processed by dividing the watershed into several rainfall-runoff processing units. Two hidden layers are used in the ANN, and the topology of ANN is optimized by connecting the hidden layer neurons only with the input which has physical conceptual causes. The topological structure of the proposed ANN model and its information transmission process are more consistent with the physical conception of rainfall-runoff, and the weight parameters of the model are reduced. The arithmetic moving-average algorithm is added to the output of the model to simulate the pondage action of the watershed. Satisfactory results have been achieved in the Mozitan and Xianghongdian reservoirs in the upper reaches of Pi river in Huaihe Basin, and the Fengman reservoir in the upper reach of Second Songhua river in Songhua basin in China.
本文提出了一种新的 ANN 洪水预报模型。该模型将 ANN 与传统的水文概念和方法相结合,以初始 Antecedent Precipitation Index(API)、降雨、上游入流和预报河段的初始流量作为模型的输入,以未来时间步长的洪水流量作为模型的输出。分布式降雨作为模型的输入实现。通过将流域划分为几个降雨-径流处理单元来进行模拟。ANN 中使用了两个隐藏层,通过仅将具有物理概念原因的输入与隐藏层神经元连接来优化 ANN 的拓扑结构。所提出的 ANN 模型的拓扑结构及其信息传输过程与降雨-径流的物理概念更加一致,并且减少了模型的权重参数。该算法在模型的输出中添加了移动平均算法,以模拟流域的蓄水作用。该模型在中国淮河上游的泌河莫士滩和项河口水库以及松花江上游的丰满水库中取得了令人满意的结果。