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Integrating Map Algebra and Statistical Modeling for Spatio-Temporal Analysis of Monthly Mean Daily Incident Photosynthetically Active Radiation (PAR) over a Complex Terrain

机译:集成地图代数和统计模型,对复杂地形上的月平均日入射光合有效辐射(PAR)进行时空分析

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This study aims at quantifying spatio-temporal dynamics of monthly mean daily incident photosynthetically active radiation (PAR) over a vast and complex terrain such as Turkey. The spatial interpolation method of universal kriging, and the combination of multiple linear regression (MLR) models and map algebra techniques were implemented to generate surface maps of PAR with a grid resolution of 500 × 500 m as a function of five geographical and 14 climatic variables. Performance of the geostatistical and MLR models was compared using mean prediction error (MPE), root-mean-square prediction error (RMSPE), average standard prediction error (ASE), mean standardized prediction error (MSPE), root-mean-square standardized prediction error (RMSSPE), and adjusted coefficient of determination (R2adj.). The best-fit MLR- and universal kriging-generated models of monthly mean daily PAR were validated against an independent 37-year observed dataset of 35 climate stations derived from 160 stations across Turkey by the Jackknifing method. The spatial variability patterns of monthly mean daily incident PAR were more accurately reflected in the surface maps created by the MLR-based models than in those created by the universal kriging method, in particular, for spring (May) and autumn (November). The MLR-based spatial interpolation algorithms of PAR described in this study indicated the significance of the multifactor approach to understanding and mapping spatio-temporal dynamics of PAR for a complex terrain over meso-scales.
机译:这项研究旨在量化在广阔而复杂的地形(例如土耳其)上每月平均每日入射光合有效辐射(PAR)的时空动态。实施了通用克里金法的空间插值方法,并结合了多个线性回归(MLR)模型和地图代数技术,以生成网格分辨率为500×500 m的PAR表面图,该图是5个地理变量和14个气候变量的函数。使用平均预测误差(MPE),均方根预测误差(RMSPE),平均标准预测误差(ASE),平均标准化预测误差(MSPE),均方根标准化比较了地统计学和MLR模型的性能预测误差(RMSSPE)和调整后的确定系数(R 2 adj。)。采用Jackknifing方法,针对独立的37年观测数据集,该数据集由35个气候站组成,该数据来自土耳其的160个气象站,验证了最合适的MLR和通用克里金法生成的月平均每日PAR模型。与基于通用克里金法的模型相比,基于MLR的模型创建的表面图更准确地反映了月平均日入射PAR的空间变异性,特别是春季(5月)和秋季(11月)。这项研究中描述的基于MLR的PAR空间插值算法表明,对于中尺度上的复杂地形,多因素方法对于理解和映射PAR时空动态的重要性。

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