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Predicting forest carbon stocks from high resolution satellite data in dry forests of Zimbabwe: exploring the effect of the red-edge band in forest carbon stocks estimation

机译:根据高分辨率卫星数据在津巴布韦干旱森林中预测森林碳储量:探索红边带对森林碳储量估算的影响

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In this study, we tested whether the inclusion of the red-edge band as a covariate to vegetation indices improves the predictive accuracy in forest carbon estimation and mapping in savanna dry forests of Zimbabwe. Initially, we tested whether and to what extent vegetation indices (simple ratio SR, soil-adjusted vegetation index and normalized difference vegetation index) derived from high spatial resolution satellite imagery (WorldView-2) predict forest carbon stocks. Next, we tested whether inclusion of reflectance in the red-edge band as a covariate to vegetation indices improve the model's accuracy in forest carbon prediction. We used simple regression analysis to determine the nature and the strength of the relationship between forest carbon stocks and remotely sensed vegetation indices. We then used multiple regression analysis to determine whether integrating vegetation indices and reflection in the red-edge band improve forest carbon prediction. Next, we mapped the spatial variation in forest carbon stocks using the best regression model relating forest carbon stocks to remotely sensed vegetation indices and reflection in the red-edge band. Our results showed that vegetation indices alone as an explanatory variable significantly (p<0.05) predicted forest carbon stocks with R-2 ranging between 45 and 63% and RMSE ranging from 10.3 to 12.9%. However, when the reflectance in the red-edge band was included in the regression models the explained variance increased to between 68 and 70% with the RMSE ranging between 9.56 and 10.1%. A combination of SR and reflectance in the red edge produced the best predictor of forest carbon stocks. We concluded that integrating vegetation indices and reflectance in the red-edge band derived from high spatial resolution can be successfully used to estimate forest carbon in dry forests with minimal error.
机译:在这项研究中,我们测试了将红边带作为植被指数的协变量是否包括在津巴布韦的热带稀树草原中提高森林碳估算和制图的预测准确性。最初,我们测试了从高分辨率卫星影像(WorldView-2)得出的植被指数(简单比率SR,土壤调整植被指数和归一化差异植被指数)是否预测森林碳储量,以及在何种程度上预测森林碳储量。接下来,我们测试了在红边带中包含反射率作为植被指数的协变量是否提高了模型在森林碳预测中的准确性。我们使用简单的回归分析来确定森林碳储量与遥感植被指数之间关系的性质和强度。然后,我们使用多元回归分析来确定整合植被指数和红边带中的反射是否可以改善森林碳预测。接下来,我们使用最佳回归模型绘制森林碳库的空间变化图,该模型将森林碳库与遥感植被指数和红边带反射相关联。我们的研究结果表明,仅植被指数作为解释变量就显着(p <0.05)预测了R-2的森林碳储量在45%至63%之间,RMSE在10.3%至12.9%之间。但是,当将红边波段的反射率包括在回归模型中时,解释的方差增加到68%至70%之间,RMSE在9.56%至10.1%之间。红边的SR和反射率相结合,可以最好地预测森林碳储量。我们得出的结论是,从高空间分辨率获得的红边带中植被指数和反射率的积分可以成功地用于以最小的误差估算干旱森林中的森林碳。

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