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首页> 外文期刊>Theoretical and applied climatology >Potential of hybrid wavelet-coupled data-driven-based algorithms for daily runoff prediction in complex river basins
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Potential of hybrid wavelet-coupled data-driven-based algorithms for daily runoff prediction in complex river basins

机译:复杂河流盆地日常径流预测的混合小波耦合数据驱动算法的潜力

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摘要

Accurate prediction of daily runoff's dynamic nature is necessary for better watershed planning and management. This study analyzes the applicability of artificial neural network (ANN), wavelet-coupled artificial neural network (WANN), adaptive neuro-fuzzy inference system (ANFIS), and wavelet-coupled adaptive neuro-fuzzy inference system (WANFIS) models for daily runoff prediction of Koyna River basin, India. Gamma test (GT) was used to select the best input vector to avoid the time-consuming and tedious trial and error input selection methods. Original daily rainfall and runoff time series data were decomposed into different multifrequency sub-signals using three types (Haar, Daubechies, and Coiflet) of mother wavelets. The decomposed sub-signals were fed to ANN and ANFIS as inputs for developing hybrid WANN and WANFIS models, respectively. The quantitative and qualitative performance evaluation criteria were used for assessing the prediction accuracy of developed models. An uncertainty analysis was employed to study the reliability of the developed models. It was observed that hybrid data-driven models (WANN/WANFIS) outperformed simple data-driven models (ANN/ANFIS). Finally, it was found that the Coiflet wavelet-coupled ANFIS model can be successfully applied for daily runoff prediction of the highly dynamic and complex Koyna River basin. The sensitivity analysis was also carried out to detect the most crucial variable for daily runoff prediction. The sensitivity analysis indicated that the previous 1-day runoff (Q(t-1)) is the most crucial variable for daily runoff prediction.
机译:对于更好的流域计划和管理,需要准确地预测日常径流的动态性质。本研究分析了人工神经网络(ANN),小波耦合人工神经网络(WANN),自适应神经模糊推理系统(ANFIS)和小波耦合自适应神经模糊推理系统(WANFIS)模型的适用性,用于日常径流印度Koyna河流域预测。伽玛测试(GT)用于选择最佳输入向量,以避免耗时和繁琐的试验和错误输入选择方法。原始日落和径流时间序列数据使用母小波的三种类型(Haar,Daubechies和Coiflet)分解成不同的多频性子信号。将分解的子信号送至ANN和ANFIS分别作为开发混合WANN和WANFIS模型的输入。定量和定性绩效评估标准用于评估开发模型的预测准确性。采用不确定性分析来研究开发模型的可靠性。观察到混合数据驱动模型(WANN / WANFI)优于简单的数据驱动模型(ANN / ANFI)。最后,发现Coiflet小波耦合的ANFIS模型可以成功地应用于高动态和复杂的Koyna河流域的日常径流预测。还进行了灵敏度分析,以检测日常径流预测的最重要变量。灵敏度分析表明,前一天的径流(Q(T-1))是每日径流预测的最重要变量。

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  • 来源
    《Theoretical and applied climatology》 |2021年第4期|1207-1231|共25页
  • 作者单位

    Lovely Profess Univ Sch Agr Dept Soil Sci & Agr Chem Phagwara 144411 India;

    GB Pant Univ Agr & Technol Dept Soil & Water Conservat Engn Pantnagar 263145 Uttar Pradesh India;

    GB Pant Univ Agr & Technol Dept Soil & Water Conservat Engn Pantnagar 263145 Uttar Pradesh India;

    Mansoura Univ Fac Agr Agr Engn Dept Mansoura 35516 Egypt;

    Univ Lisbon Inst Super Tecn CERIS P-1049001 Lisbon Portugal;

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