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Estimation of crown biomass of Pinus pinaster stands and shrubland above-ground biomass using forest inventory data, remotely sensed imagery and spatial prediction models

机译:利用森林清查数据,遥感影像和空间预测模型估算松树松林林冠和灌木林地上生物量

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Spatially crown biomass of Pinus pinaster stands and shrubland above-ground biomass (AGB) estimation was carried-out in a region located in Centre-North Portugal, by means of different approaches including forest inventory data, remotely sensed imagery and spatial prediction models. Two cover types (pine stands and shrubland) were inventoried and biomass assessed in a total of 276 sample field plots. We compared AGB spatial predictions derived from Direct Radiometric Relationships (DRR) of remotely sensed data; and the geostatistical method Regression-kriging (RK), using remotely sensed data as auxiliary variables. Also, Ordinary Kriging (OK), Universal Kriging (UK), Inverse Distance Weighted (IDW) and Thiessen Polygons estimations were performed and tested. The comparison of AGB maps shows distinct predictions among DRR and RK; and Kriging and deterministic methods, indicating the inadequacy from these later ones to map AGB over large areas. DRR and RK methods produced lower statistical error values, in pine stands and shrubland, when compared to kriging and deterministic interpolators. Since forest landscape is not continuous variable, the tested forest variables showed low spatial autocorrelation, which makes kriging methods unsuitable to these purposes. Despite the geostatistical method RK did not increase the accuracy of estimates developed by DRR, denser sampling schemes and different auxiliary variables should be explored, in order to test if the accuracy of predictions is improved.
机译:通过包括森林清查数据,遥感影像和空间预测模型在内的不同方法,在葡萄牙中北部的一个地区进行了樟子松林冠的空间冠生物量和灌木地上生物量(AGB)的估算。调查了两种覆盖类型(松林和灌木丛),并在总共276个样地中评估了生物量。我们比较了从遥感数据的直接辐射关系(DRR)得出的AGB空间预测;以及地统计学方法Regression-kriging(RK),将遥感数据用作辅助变量。此外,执行并测试了普通克里格(OK),通用克里格(UK),反距离加权(IDW)和蒂森多边形的估计。 AGB图的比较显示了DRR和RK之间的不同预测;以及克里格(Kriging)和确定性方法,表明后来的方法不足以在大面积上绘制AGB。与克里金法和确定性插值器相比,DRR和RK方法在松林和灌木丛中产生较低的统计误差值。由于森林景观不是连续变量,因此测试的森林变量显示出较低的空间自相关,这使得克里金法不适合这些目的。尽管地统计学方法RK并没有增加DRR开发的估计的准确性,但是应该探索更密集的采样方案和不同的辅助变量,以测试预测的准确性是否得到改善。

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