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Modelling aboveground forest biomass using airborne laser scanner data in the miombo woodlands of Tanzania

机译:使用机载激光扫描仪数据对坦桑尼亚米伦博林地中的地上森林生物量进行建模

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Background Airborne laser scanning (ALS) has emerged as one of the most promising remote sensing technologies for estimating aboveground biomass (AGB) in forests. Use of ALS data in area-based forest inventories relies on the development of statistical models that relate AGB and metrics derived from ALS. Such models are firstly calibrated on a sample of corresponding field- and ALS observations, and then used to predict AGB over the entire area covered by ALS data. Several statistical methods, both parametric and non-parametric, have been applied in ALS-based forest inventories, but studies that compare different methods in tropical forests in particular are few in number and less frequent than studies reported in temperate and boreal forests. We compared parametric and non-parametric methods, specifically linear mixed effects model (LMM) and k -nearest neighbor ( k -NN). Results The results showed that the prediction accuracy obtained when using LMM was slightly better than when using the k -NN approach. Relative root mean square errors from the cross validation was 46.8?% for the LMM and 58.1?% for the k -NN. Post-stratification according to vegetation types improved the prediction accuracy of LMM more as compared to post-stratification by using land use types. Conclusion Although there were differences in prediction accuracy between the two methods, their accuracies indicated that both of methods have potentials to be used for estimation of AGB using ALS data in the miombo woodlands. Future studies on effects of field plot size and the errors due to allometric models on the prediction accuracy are recommended.
机译:背景技术机载激光扫描(ALS)已成为估计森林中地上生物量(AGB)的最有前途的遥感技术之一。在基于面积的森林清单中使用ALS数据依赖于开发与AGB和ALS衍生的指标相关的统计模型。此类模型首先在相应的现场和ALS观测样本上进行校准,然后用于预测ALS数据覆盖的整个区域的AGB。在基于ALS的森林清单中已经应用了几种统计方法,无论是参数方法还是非参数方法,但是与热带森林中报道的研究相比,特别是对热带森林中不同方法进行比较的研究数量很少,而且频率也不高。我们比较了参数方法和非参数方法,特别是线性混合效应模型(LMM)和k近邻(k -NN)。结果结果表明,与使用k -NN方法相比,使用LMM所获得的预测精度稍高。交叉验证得出的相对均方根误差对于LMM为46.8%,对于k -NN为58.1%。与通过土地利用类型进行的后分层相比,根据植被类型进行的后分层提高了LMM的预测精度。结论尽管这两种方法的预测准确性存在差异,但它们的准确性表明这两种方法都有潜力用于利用Miombo林地的ALS数据估算AGB。建议对场图大小的影响以及异速模型导致的误差对预测精度的影响进行进一步研究。

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