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Improving global terrestrial evapotranspiration estimation using support vector machine by integrating three process-based algorithms

机译:通过集成三个基于过程的算法,通过支持向量机改善全球陆地蒸发估计

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Terrestrial evapotranspiration (ET) for each plant functional type (PFT) is a key variable for linking the energy, water and carbon cycles of the atmosphere, hydrosphere and biosphere. Process-based algorithms have been widely used to estimate global terrestrial ET, yet each ET individual algorithm has exhibited large uncertainties. In this study, the support vector machine (SVM) method was introduced to improve global terrestrial ET estimation by integrating three process-based ET algorithms: MOD16, PT-JPL and SEMI-PM. At 200 FLUXNET flux tower sites, we evaluated the performance of the SVM method and others, including the Bayesian model averaging (BMA) method and the general regression neural networks (GRNNs) method together with three process-based ET algorithms. We found that the SVM method was superior to all other methods we evaluated. The validation results showed that compared with the individual algorithms, the SVM method driven by tower-specific (Modern Era Retrospective Analysis for Research and Applications, MERRA) meteorological data reduced the root mean square error (RMSE) by approximately 0.20 (0.15) mm/day for most forest sites and 0.30 (0.20) mm/day for most crop and grass sites and improved the squared correlation coefficient (R-2) by approximately 0.10 (0.08) (95% confidence) for most flux tower sites. The water balance of basins and the global terrestrial ET calculation analysis also demonstrated that the regional and global estimates of the SVM-merged ET were reliable. The SVM method provides a powerful tool for improving global ET estimation to characterize the long-term spatiotemporal variations of the global terrestrial water budget.
机译:每种植物功能型(PFT)的陆地蒸发(ET)是连接大气,水圈和生物圈的能量,水和碳循环的关键变量。基于过程的算法已被广泛用于估计全球地球ET,但每个ET个体算法表现出大的不确定性。在本研究中,引入了支持向量机(SVM)方法,以通过集成三个基于过程的ET算法来改善全球地面ET估计:Mod16,Pt-JPL和半PM。在200个Fluxnet Flux塔网站上,我们评估了SVM方法和其他的性能,包括贝叶斯模型平均(BMA)方法和一般回归神经网络(GRNNS)方法以及三个基于一个基于过程的ET算法。我们发现SVM方法优于我们评估的所有其他方法。验证结果表明,与个体算法相比,由塔特定的(现代时代回顾性分析用于研究和应用,Merra)气象数据驱动的SVM方法将根均方误差(RMSE)降低约0.20(0.15)mm /大多数森林地点的日子和大多数作物和草地的0.30(0.20)毫米/天,并将平方相关系数(R-2)改善约0.10(0.08)(0.08)(0.08)(95%)(95%)(95%),用于大多数助熔剂塔部位。盆地的水平衡和全球陆地ET计算分析还表明,SVM合并et的区域和全球估计是可靠的。 SVM方法提供了一种强大的工具,可改善全球ET估计,以表征全球陆地水预算的长期时空变化。

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