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首页> 外文期刊>Journal of Hydrology >Hybrid forecasting model for non-stationary daily runoff series: A case study in the Han River Basin, China
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Hybrid forecasting model for non-stationary daily runoff series: A case study in the Han River Basin, China

机译:非静止日径流系列混合预测模型:中国汉江盆地案例研究

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摘要

Accurate and reliable short-term runoff prediction is of great significance to the management of water resources optimization and reservoir flood operation. In order to improve the accuracy of short-term runoff forecasting, a hybrid model-based "feature decomposition-learning reconstruction" named VMD-DBN-IPSO was proposed. In this paper, variational mode decomposition (VMD) is first used to decompose the original daily runoff series into a set of sub-sequence for improving the frequency resolution. Partial autocorrelation function (PACF) is then applied to determine the input variables of each sub-sequence. The improved particle swarm optimization (IPSO) algorithm is combined with the deep belief network (DBN) model to predict each sub-sequences and finally reconstruct the ensemble forecasting result. Three quantitative evaluation indicators, mean absolute error (MAE), root mean square error (RMSE) and Nash-Sutcliffe efficiency coefficient (NSE), were used to evaluate and compare the established models using the historical daily runoff data (1/1/1988-31/12/2017) at Yangxian and Ankang hydrological station in the Han River Basin of China. Meanwhile, a comparative analysis of the performance of VMD-DBN-IPSO model under different forecast periods (1-, 3-, 5- and 7-day lead time) was performed. In addition, the prediction ability of peak runoff of the VMD-DBN-IPSO model is further verified by analyzing the 10 peak flows during the testing data-series. The results indicate that the VMD-DBN-IPSO model can always achieve the best performance in the training and testing stage, and has good stability and representativeness, the NSE coefficient remains above 0.8, and the prediction error of peak flow is within 20%. It is a preferred data-driven tool for forecasting daily runoff.
机译:准确可靠的短期径流预测对水资源优化和水库洪水运行的管理具有重要意义。为了提高短期径流预测的准确性,提出了一种名为VMD-DBN-IPSO的混合模型的“特征分解学习重建”。在本文中,变分模式分解(VMD)首先用于将原始日常径流序列分解为一组子序列,以改善频率分辨率。然后应用部分自相关函数(PACF)以确定每个子序列的输入变量。改进的粒子群优化(IPSO)算法与深度信仰网络(DBN)模型组合以预测每个子序列,最后重建集合预测结果。使用三种定量评估指标,平均误差(MAE),根均方误差(RMSE)和NSH-SUTCLIFFE效率系数(NSE)用于使用历史每日径流数据(1/1/1988)来评估和比较建立的模型(1/1/1988) -31/12/2017)在中国汉江流域的阳县和安康水文驻地。同时,执行不同预测时段(1-,3-,5-和7天延长时间)下的VMD-DBN-IPSO模型的比较分析。另外,通过在测试数据系列期间分析10峰值流进一步验证VMD-DBN-IPSO模型的峰值径流的预测能力。结果表明,VMD-DBN-IPSO模型可以始终在训练和测试阶段实现最佳性能,并且具有良好的稳定性和代表性,NSE系数保持高于0.8,峰值流量的预测误差在20%以内。它是一个用于预测每日径流的首选数据驱动工具。

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