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Intra-and-Inter Species Biomass Prediction in a Plantation Forest: Testing the Utility of High Spatial Resolution Spaceborne Multispectral RapidEye Sensor and Advanced Machine Learning Algorithms

机译:人工林内物种间生物量预测:测试高空间分辨率星载多光谱RapidEye传感器和先进的机器学习算法的实用性

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The quantification of aboveground biomass using remote sensing is critical for better understanding the role of forests in carbon sequestration and for informed sustainable management. Although remote sensing techniques have been proven useful in assessing forest biomass in general, more is required to investigate their capabilities in predicting intra-and-inter species biomass which are mainly characterised by non-linear relationships. In this study, we tested two machine learning algorithms, Stochastic Gradient Boosting (SGB) and Random Forest (RF) regression trees to predict intra-and-inter species biomass using high resolution RapidEye reflectance bands as well as the derived vegetation indices in a commercial plantation. The results showed that the SGB algorithm yielded the best performance for intra-and-inter species biomass prediction; using all the predictor variables as well as based on the most important selected variables. For example using the most important variables the algorithm produced an R2 of 0.80 and RMSE of 16.93 t·ha−1 for E. grandis; R2 of 0.79, RMSE of 17.27 t·ha−1 for P. taeda and R2 of 0.61, RMSE of 43.39 t·ha−1 for the combined species data sets. Comparatively, RF yielded plausible results only for E. dunii (R2 of 0.79; RMSE of 7.18 t·ha−1). We demonstrated that although the two statistical methods were able to predict biomass accurately, RF produced weaker results as compared to SGB when applied to combined species dataset. The result underscores the relevance of stochastic models in predicting biomass drawn from different species and genera using the new generation high resolution RapidEye sensor with strategically positioned bands.
机译:使用遥感对地上生物量进行量化对于更好地了解森林在碳固存中的作用以及进行明智的可持续管理至关重要。尽管已证明遥感技术总体上可用于评估森林生物量,但仍需要更多的研究手段来研究其预测物种间和物种间生物量的能力,这些能力主要表现为非线性关系。在这项研究中,我们测试了两种机器学习算法,即随机梯度增强(SGB)和随机森林(RF)回归树,以使用高分辨率RapidEye反射带以及推导的商业植被指数来预测物种内和物种间生物量。种植园。结果表明,SGB算法在物种内和物种间生物量预测中表现出最佳的性能。使用所有预测变量以及基于最重要的所选变量。例如,使用最重要的变量,该算法得出的E. grandis的R 2 为0.80,RMSE为16.93 t·ha -1 。 taeda的R 2 为0.79,RMSE为17.27 t·ha −1 ,R 2 为0.61,RMSE为43.39 t·ha -1 用于组合物种数据集。相比之下,RF仅对杜氏大肠杆菌产生合理的结果(R 2 为0.79; RMSE为7.18 t·ha -1 )。我们证明,尽管两种统计方法都能准确预测生物量,但将RF应用于组合物种数据集时,与SGB相比产生的结果较弱。结果强调了随机模型在预测具有战略位置的波段的新一代高分辨率RapidEye传感器中预测不同物种和属生物量中的相关性。

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