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首页> 外文期刊>Forests >Modelling and Predicting the Growing Stock Volume in Small-Scale Plantation Forests of Tanzania Using Multi-Sensor Image Synergy
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Modelling and Predicting the Growing Stock Volume in Small-Scale Plantation Forests of Tanzania Using Multi-Sensor Image Synergy

机译:基于多传感器图像协同的坦桑尼亚小规模人工林林木蓄积量建模与预测

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Remotely sensed assisted forest inventory has emerged in the past decade as a robust and cost efficient method for generating accurate information on forest biophysical parameters. The launching and public access of ALOS PALSAR-2, Sentinel-1 (SAR), and Sentinel-2 together with the associated open-source software, has further increased the opportunity for application of remotely sensed data in forest inventories. In this study, we evaluated the ability of ALOS PALSAR-2, Sentinel-1 (SAR) and Sentinel-2 and their combinations to predict growing stock volume in small-scale forest plantations of Tanzania. The effects of two variable extraction approaches (i.e., centroid and weighted mean), seasonality (i.e., rainy and dry), and tree species on the prediction accuracy of growing stock volume when using each of the three remotely sensed data were also investigated. Statistical models relating growing stock volume and remotely sensed predictor variables at the plot-level were fitted using multiple linear regression. The models were evaluated using the k -fold cross validation and judged based on the relative root mean square error values (RMSEr). The results showed that: Sentinel-2 (RMSEr = 42.03% and pseudo ? R 2 = 0.63) and the combination of Sentinel-1 and Sentinel-2 (RMSEr = 46.98% and pseudo ? R 2 = 0.52), had better performance in predicting growing stock volume, as compared to Sentinel-1 (RMSEr = 59.48% and pseudo ? R 2 = 0.18) alone. Models fitted with variables extracted from the weighted mean approach, turned out to have relatively lower RMSEr % values, as compared to centroid approaches. Sentinel-2 rainy season based models had slightly smaller RMSEr values, as compared to dry season based models. Dense time series (i.e., annual) data resulted to the models with relatively lower RMSEr values, as compared to seasonal based models when using variables extracted from the weighted mean approach. For the centroid approach there was no notable difference between the models fitted using dense time series versus rain season based predictor variables. Stratifications based on tree species resulted into lower RMSEr values for Pinus patula tree species, as compared to other tree species. Finally, our study concluded that combination of Sentinel-1&2 as well as the use Sentinel-2 alone can be considered for remote-sensing assisted forest inventory in the small-scale plantation forests of Tanzania. Further studies on the effect of field plot size, stratification and statistical methods on the prediction accuracy are recommended.
机译:在过去的十年中,遥感辅助森林清单已经成为一种可靠且经济高效的方法,可以生成有关森林生物物理参数的准确信息。 ALOS PALSAR-2,Sentinel-1(SAR)和Sentinel-2以及相关的开源软件的启动和公共访问,进一步增加了将遥感数据应用于森林清单的机会。在这项研究中,我们评估了ALOS PALSAR-2,Sentinel-1(SAR)和Sentinel-2以及它们的组合预测坦桑尼亚小规模人工林蓄积量的能力。当使用三个遥感数据时,还研究了两种变量提取方法(即质心和加权均值),季节性(即雨天和干燥)和树木种类对生长量预测精度的影响。使用多元线性回归拟合在地块水平上与种群增长量和遥感预测变量相关的统计模型。使用k倍交叉验证对模型进行评估,并根据相对均方根误差值(RMSEr)进行判断。结果表明:Sentinel-2(RMSEr = 42.03%,伪?R 2 = 0.63)以及Sentinel-1和Sentinel-2的组合(RMSEr = 46.98%,伪?R 2 = 0.52)在以下情况下具有更好的性能:与单独的Sentinel-1(RMSEr = 59.48%和伪?R 2 = 0.18)相比,它预测了库存量的增长。与质心方法相比,装有从加权平均值方法中提取的变量的模型具有相对较低的RMSEr%值。与基于旱季的模型相比,基于Sentinel-2雨季的模型的RMSEr值略小。当使用从加权平均法中提取的变量时,与基于季节的模型相比,密集的时间序列(即年度)数据导致模型的RMSEr值相对较低。对于质心方法,使用密集时间序列拟合的模型与基于雨季的预测变量拟合的模型之间没有显着差异。与其他树种相比,基于树种的分层导致了Pin松树种的RMSEr值降低。最后,我们的研究得出结论,可以考虑将Sentinel-1&2以及单独使用Sentinel-2的组合用于坦桑尼亚小规模人工林中的遥感辅助森林清单。建议进一步研究田地面积大小,分层和统计方法对预测准确性的影响。

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