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On the applicability of maximum overlap discrete wavelet transform integrated with MARS and M5 model tree for monthly pan evaporation prediction

机译:关于MARS和M5模型树集成的最大重叠离散小波变换的适用性,用于每月泛蒸发预测

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摘要

Accurate pan evaporation (E-pan) prediction is a critical issue in water resources management, particularly when designing and managing rural water resource systems, and when assessing water utilization and demand. In this study, Multivariate Adaptive Regression Spline (MARS) and M5 Model Tree (MT) models were coupled with a maximum overlap discrete wavelet transform (MODWT) to create MARS(MODWT) and MTMODWT models for the prediction of monthly pan evaporation for Turkey's Siirt and Diyarbakir meteorological stations. The performance of the standalone MARS and MT models was compared to the corresponding MODWT-based hybrid models. Furthermore, the developed hybrid models were combined with (E-pan) Mallow's coefficient (C-p) to minimize the number of predictor variables needed to predict monthly E-pan. The models used preprocessed input data, including temperature (T), wind speed (W), relative humidity (RH), and solar radiation (SR). The performance of each approach was evaluated using standard statistical measures (i.e., correlation coefficient (R), root mean square error (RMSE), Nash-Sutcliffe efficiency (NSE) and mean absolute error (MAE)). The results showed that the MARS(Cp)(MODWT) model improved the MARS accuracy with respect to lower percentages of RMSE (29.46%) and MAE (24.53%) in the validation phase for the Siirt station. In case of the Diyarbakir station, the MARS(Cp)(MODWT) improvements decreased the RMSE (17.91%) and MAE (16.49%) values in comparison to standalone MARS model. The overall results indicated that the use of both MODWT and C-p as pre-processing techniques improves prediction accuracy, and thus, they are both recommended for use in further studies.
机译:准确的PAN蒸发(E-PAN)预测是水资源管理中的一个关键问题,特别是在设计和管理农村水资源系统时,以及评估水利用和需求时。在本研究中,多变量自适应回归样条(MAR)和M5模型树(MT)模型与最大重叠离散小波变换(MODWT)耦合,以创建火星(MODWT)和MTMoDWT模型,以预测土耳其Siirt的每月平底锅蒸发和Diyarbakir气象站。将独立MARS和MT模型的性能与相应的基于MODWT的混合模型进行了比较。此外,开发的混合模型与(E-PAN)锦葵的系数(C-P)组合以最小化预测每月E-PAN所需的预测变量的数量。模型使用预处理的输入数据,包括温度(T),风速(W),相对湿度(RH)和太阳辐射(SR)。使用标准统计措施(即相关系数(R),根均方误差(RMSE),NASH-SUTCLIFFE效率(NSE)和平均误差(MAE)来评估各种方法的性能。结果表明,MARS(CP)(MODWT)模型在Siirt Station的验证阶段中的RMSE(29.46%)和MAE(24.53%)的较低百分比提高了火星准确性。在Diyarbakir站的情况下,与独立MARS模型相比,MARS(CP)(MODWT)(MODWT)(MODWT)(MODWT)(MODWT)的改善减少了RMSE(17.91%)和MAE(16.49%)值。总体结果表明,使用MODWT和C-P作为预处理技术提高了预测精度,因此,它们都建议在进一步的研究中使用。

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