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Comparative analysis of kernel-based versus ANN and deep learning methods in monthly reference evapotranspiration estimation

机译:基于内核基于内核的比较分析和每月参考蒸发估算中的深度学习方法

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Timely and accurate estimation of reference evapotranspiration?(ET 0 ) is indispensable for agricultural water management for efficient water use. This study aims to estimate the amount of?ET 0 with machine learning approaches by using minimum meteorological parameters in the Corum region, which has an arid and semi-arid climate and is regarded as an important agricultural centre of Turkey. In this context, monthly averages of meteorological variables, i.e. maximum and minimum temperature; sunshine duration; wind speed; and average, maximum, and minimum relative humidity, are used as inputs. Two different kernel-based methods, i.e. Gaussian process regression?(GPR) and support vector regression?(SVR), together with a Broyden–Fletcher–Goldfarb–Shanno artificial neural network?(BFGS-ANN) and long short-term memory?(LSTM) models were used to estimate?ET 0 amounts in 10?different combinations. The results showed that all four methods predicted?ET 0 amounts with acceptable accuracy and error levels. The BFGS-ANN model showed higher success ( R 2 =0.9781 ) than the others. In kernel-based GPR and SVR methods, the Pearson?VII function-based universal kernel was the most successful ( R 2 =0.9771 ). Scenario?5, with temperatures including average temperature, maximum and minimum temperature, and sunshine duration as inputs, gave the best results. The second best scenario had only the sunshine duration as the input to the BFGS-ANN, which estimated?ET 0 having a correlation coefficient of?0.971 (Scenario?8). Conclusively, this study shows the better efficacy of the BFGS in ANNs for enhanced performance of the ANN model in ET 0 ?estimation for drought-prone arid and semi-arid regions.
机译:关于参考蒸散的及时和准确估算Δ(et 0)对于农用水管理是有效的用水的必由之可。本研究旨在利用珊瑚地区的最小气象参数估计机器学习方法的ΔET0的量,这具有干旱和半干旱气候,被视为土耳其的重要农业中心。在这方面,气象变量的每月平均值,即最大和最小温度;阳光持续时间;风速;平均,最大和最小相对湿度,用作输入。两种不同的基于内核的方法,即高斯过程回归?(GPR)和支持向量回归?(SVR),与泡卷 - 弗莱彻 - 金菲尔布 - 掸子人工神经网络一起?(BFGS-ANN)和长期内存长期内存? (LSTM)模型用于估计10种不同组合的0倍。结果表明,所有四种方法都预测了ΔET0,具有可接受的精度和误差水平。 BFGS-ANN模型显示比其他人的成功更高(R 2 = 0.9781)。在基于内核的GPR和SVR方法中,Pearson?基于函数的Universal Kernel最成功(R 2 = 0.9771)。场景?5,温度包括平均温度,最大和最小温度,以及阳光持续时间作为输入,给出了最佳效果。第二个最佳情景只有阳光持续时间作为BFGS-ANN的输入,其估计具有ΔET0的相关系数?0.971(场景?8)。结论,本研究表明了BFGS在ANN中的BFG效果更好,以提高ANN模型在ET 0中的性能?估计干旱的干旱和半干旱地区。

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