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Improving space-time forest canopy LAI simulation by fusing forest growth model (3-PG) with remote sensing data

机译:通过将森林生长模型(3-PG)与遥感数据融合来改善时空林冠LAI模拟

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Leaf area index (LAI) is an important biophysical variable indicating forest growth. A major challenge is to improve the LAI estimates for large forest-covered areas. One way to obtain LAI value is using current LAI products. Current LAI products contain many uncertainties and need improvement. This paper aims to improve forest LAI estimates by combining satellite reflectance derived LAI with forest growth model (physiological principals predicting growth, 3-PG) estimates of LAI. 3-PG can give an accurate estimation of forest inter-annual growing trend, while remote sensing data can provide long time series observation of seasonal variations of forest phenology. We applied this method to Chinese fir forest in China, where the detailed data are available. The combined results were more accurate than either the satellite or the 3-PG estimates. We conclude that we can improve the space-time forest canopy LAI estimates by combining forest growth model with satellite imagery.
机译:叶面积指数(LAI)是指示森林生长的重要生物物理变量。一个主要的挑战是提高大片森林覆盖地区的LAI估计值。获得LAI值的一种方法是使用当前的LAI产品。当前的LAI产品存在许多不确定性,需要改进。本文旨在通过将卫星反射法得出的LAI与森林生长模型(预测生长的生理原理,3-PG)的LAI估计值相结合来改善森林的LAI估计值。 3-PG可以准确估计森林年际增长趋势,而遥感数据可以长期观察森林物候的季节变化。我们将这种方法应用于中国的杉木林,那里有详细的数据。合并后的结果比卫星或3-PG的估计更为准确。我们得出结论,我们可以通过将森林生长模型与卫星图像相结合来改善时空林冠层LAI估计值。

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