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Performance Assessment of the Linear, Nonlinear and Nonparametric Data Driven Models in River Flow Forecasting

机译:线性,非线性和非参数数据驱动模型在河流流量预报中的性能评估

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摘要

In recent years, the data-driven modeling techniques have gained more attention in hydrology and water resources studies. River runoff estimation and forecasting are one of the research fields that these techniques have several applications in them. In the current study, four common data-driven modeling techniques including multiple linear regression, K-nearest neighbors, artificial neural networks and adaptive neuro-fuzzy inference systems have been used to form runoff forecasting models and then their results have been evaluated. Also, effects of using of some different scenarios for selecting predictor variables have been studied. It is evident from the results that using flow data of one or two month ago in the predictor variables dataset can improve accuracy of results. In addition, comparison of general performances of the modeling techniques shows superiority of results of KNN models among the studied models. Among selected models of the different techniques, the selected KNN model presented best performance with a linear correlation coefficient equal to 0.84 between observed flow data and predicted values and a RMSE equal to 2.64.
机译:近年来,数据驱动的建模技术在水文学和水资源研究中得到了越来越多的关注。河流径流估算与预报是这些技术在其中具有多种应用的研究领域之一。在当前的研究中,已使用四种常用的数据驱动建模技术,包括多元线性回归,K近邻,人工神经网络和自适应神经模糊推理系统来形成径流预报模型,然后对它们的结果进行了评估。而且,已经研究了使用一些不同场景来选择预测变量的效果。从结果中可以明显看出,在预测变量数据集中使用一个或两个月前的流量数据可以提高结果的准确性。此外,对建模技术的一般性能进行比较表明,在所研究的模型中,KNN模型的结果更为优越。在不同技术的选定模型中,选定的KNN模型表现出最佳性能,观测流量数据和预测值之间的线性相关系数等于0.84,RMSE等于2.64。

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