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A Hybrid Model Based on Variational Mode Decomposition and Gradient Boosting Regression Tree for Monthly Runoff Forecasting

机译:基于变分模式分解和梯度Boosting回归树的月径流混合模型

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Accurate and reliable monthly runoff forecasting is of great significance for water resource optimization and management. A neoteric hybrid model based on variational mode decomposition (VMD) and gradient boosting regression (GBRT) called VMD-GBRT was proposed and applied for monthly runoff forecasting. VMD was first employed to decompose the original monthly runoff series into several intrinsic mode functions (IMFs). The optimal number of input variables were then chosen according to the autocorrelation function (ACF) and the partial autocorrelation function (PACF). The trained GBRT model was used as a forecasting instrument to predict the testing set of each normalized subsequence. The ensemble forecasting result was finally generated by aggregating the prediction results of all subsequences. The proposed hybrid model was evaluated using an original monthly runoff series, from 1/1969 to 12/2018, measured at the Huaxian, Lintong and Xianyang hydrological stations in the Wei River Basin (WRB), China. The EEMD-GBRT, the single GBRT, and the single SVM were adopted as comparative forecast models using the same dataset. The results indicated that the VMD-GBRT model exhibited the best forecasting performance among all the peer models in terms of the coefficient of determination (R-2 = 0.8840), mean absolute percentage error (MAPE = 19.7451), and normalized root-mean-square error (NRMSE = 0.3468) at Huaxian station. Furthermore, the model forecasting results applied at Lintong and Xianyang stations were consistent with those at Huaxian station. This result further verified the accuracy and stability of the VMD-GBRT model. Thus, the proposed VMD-GBRT model was effective method for forecasting non-stationary and non-linear runoff series, and can be recommended as a promising model for monthly runoff forecasting.
机译:准确可靠的月径流量预报对水资源优化管理具有重要意义。提出了一种基于变分分解(VMD)和梯度增强回归(GBRT)的现代混合模型,称为VMD-GBRT,并将其应用于月径流量预测。 VMD首先用于将原始的每月径流序列分解为几个固有模式函数(IMF)。然后根据自相关函数(ACF)和部分自相关函数(PACF)选择最佳输入变量数。训练有素的GBRT模型被用作预测每个标准化子序列的测试集的预测工具。最后,通过汇总所有子序列的预测结果来生成整体预测结果。拟议的混合模型是使用原始的每月径流序列(从1/1969到12/2018)进行评估的,该序列在中国渭河流域(WRB)的华县,临tong和咸阳水文站进行了测量。 EEMD-GBRT,单个GBRT和单个SVM被用作使用相同数据集的比较预测模型。结果表明,在确定系数(R-2 = 0.8840),平均绝对百分比误差(MAPE = 19.7451)和归一化均方根值方面,VMD-GBRT模型在所有对等模型中均表现出最佳的预测性能花县站的平方误差(NRMSE = 0.3468)。此外,临tong站和咸阳站的模型预测结果与花县站的模型预测结果一致。该结果进一步验证了VMD-GBRT模型的准确性和稳定性。因此,所提出的VMD-GBRT模型是预测非平稳和非线性径流序列的有效方法,可以作为月径流预测的有希望的模型。

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