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Generating Monthly Stream Flow Using Nearest River Data: Assessing Different Trees Models

机译:使用最近的河流数据生成月流:评估不同的树模型

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摘要

The data-driven techniques have gained more attention in stream flow prediction in recent years. In the current study, three different trees models (random forest, TreeBoost, and decision tree) were applied to predict the monthly stream flow for a river using the nearest river monthly stream flow data as external predictor variables. The cross-correlation function was used to select the optimum input predictor variables for the proposed models. A different scenario for selecting the optimal input predictor variables combination was studied. The performances of the models were evaluated by using root mean squared error and Nash and Sutcliffe coefficient indices. The Greater Zab River and the Lesser Zab River in Iraq were chosen as a case study to apply the proposed models. The monthly stream flow data for the Greater Zab River were generated using the monthly stream flow data for the Lesser Zab River, and the monthly stream flow data for the Lesser Zab River were generated using the monthly stream flow data for the Greater Zab River. The results showed a high performance of the random forest model to generate the monthly stream flow in comparing with the TreeBoost and decision tree models. The Nash and Sutcliffe coefficient is 0.84 and 0.89 in validating periods to generate monthly stream flow data using the random forest model for the Greater Zab River and the Lesser Zab River, respectively.
机译:近年来,数据驱动技术在流量预测中得到了越来越多的关注。在当前研究中,使用了三个不同的树模型(随机森林,TreeBoost和决策树),使用最近的河流月流量数据作为外部预测变量来预测河流的月流量。使用互相关函数为拟议模型选择最佳输入预测变量。研究了选择最佳输入预测变量组合的不同方案。通过使用均方根误差以及Nash和Sutcliffe系数指数评估模型的性能。选择了伊拉克的大扎布河和小扎布河作为案例研究来应用所提出的模型。大扎布河的月流量数据是使用小扎布河的月流量数据生成的,小扎布河的月流量数据是使用大扎布河的每月流量数据生成的。结果表明,与TreeBoost和决策树模型相比,随机森林模型具有生成月流的高性能。在验证期内,分别使用大扎布河和小扎布河的随机森林模型,纳什系数和萨特克利夫系数分别为0.84和0.89,以生成月流量数据。

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