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Research on stage-divided water level prediction technology of rivers-connected lake based on machine learning: a case study of Hongze Lake, China

机译:基于机器学习的河流连接湖舞台分割水位预测技术研究 - 以洪泽湖,中国的案例研究

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摘要

The rivers-connected lake involved in the "River-Lake-Reservoir" hydrological complex system and it's water level fluctuations are more severe than those of other lakes, which challenges the scientific management of lakes. Therefore, to improve the accuracy of water level prediction for the rivers-connected lake, taking Hongze Lake as an example, we used the BFAST algorithm to analyze the inconsistency of the lake's inter-annual water level and selected a stable stage for water level prediction research. Next, considering the lake basin shape, based on the Stage-discharge relationship curve, the fluctuation process of the lake's inter-annual water level was divided into four periods: the discharge period, the early period of storage, the later period of storage, and the balance period. Then, the NARX model was used to build the water level prediction model for different periods. Finally, the wavelet analysis and KNN algorithm were introduced into the water level prediction model for input data pre-process and result post-processing, respectively. The result shows that: (1) There are significant differences in the mechanism of water level regime modification in different periods. The outflowing runoff is the main driving factor for the water level regime modification in most times; (2) Coupling multiple machine learning methods is an effective way to improve the accuracy of the lake water level prediction; (3) The combination of the staged-divided water level prediction method and the hybrid machine learning models can further improve the accuracy of the water level prediction.
机译:河流连接湖涉及“河湖水库”水文复杂系统,它的水位波动比其他湖泊更严重,这挑战了湖泊的科学管理。因此,为了提高河流连接湖的水位预测的准确性,以洪泽湖为例,我们使用了BFast算法分析了湖的年度水平的不一致,选择了水位预测的稳定阶段研究。接下来,考虑到湖泊盆地形状,基于舞台放电关系曲线,湖泊年度水位的波动过程分为四个时期:排放期,储存早期,仓库后期,和余额期。然后,使用NARX模型用于构建不同时期的水位预测模型。最后,将小波分析和KNN算法引入到水位预测模型中,以分别输入数据预处理和结果后处理。结果表明:(1)在不同时期的水位制度改性机制存在显着差异。大多数时间在水位制度修改的主要驱动因素是大多数情况; (2)耦合多机学习方法是提高湖水水平预测精度的有效途径; (3)分隔的水位预测方法和混合机学习模型的组合可以进一步提高水位预测的准确性。

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