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Impact of plot size and model selection on forest biomass estimation using airborne LiDAR: A case study of pine plantations in southern Spain

机译:机载激光雷达的样地大小和模型选择对森林生物量估算的影响:以西班牙南部的松树人工林为例

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We explored the usefulness of LiDAR for modelling and mapping the stand biomass of two conifer species in southern Spain. We used three different plot sizes and two statistical approaches (i.e. stepwise selection and genetic algorithm selection) in combination with multiple linear regression models to estimate biomass. 43 predictor variables derived from discrete-return LiDAR data (4 pulses per m2) were used for estimating the forest biomass of Pinus sylvestris Linnaeus and Pinus nigra Arnold forests. Twelve circular plots – six for each species – and three different fixed-radius designs (i.e. 7, 15, and 30 m) were established within the range of the airborne LiDAR. The Bayesian information criterion and R2 were used to select the best models. As expected, the models that included the largest plots (30 m) yielded the highest R2 value (0.91) for Pinus sp. using genetic algorithm models. Considering P. sylvestris and P. nigra models separately, the genetic algorithm approach also yielded the highest R2 values for the 30-m plots (P. nigra: R2 = 0.99, P. sylvestris: R2 = 0.97). The results we obtained with two species and different plot sizes revealed that increasing the size of plots from 15 to 30 m had a low effect on modelling attempts.
机译:我们探索了LiDAR对西班牙南部两种针叶树种林分生物量进行建模和测绘的有用性。我们使用三种不同的样地大小和两种统计方法(即逐步选择和遗传算法选择)结合多个线性回归模型来估算生物量。来自离散返回LiDAR数据(每平方米4个脉冲)的43个预测变量用于估算樟子松和黑松阿诺德森林的森林生物量。在机载激光雷达的范围内,建立了十二个圆形图(每个物种六个)和三个不同的固定半径设计(即7、15和30 m)。使用贝叶斯信息准则和R2选择最佳模型。正如预期的那样,包括最大样地(30 m)的模型对于Pinus sp。产生了最高的R2值(0.91)。使用遗传算法模型。分别考虑樟子松和黑黑猩猩模型,遗传算法方法还产生了30米样地的最高R2值(黑楠:R2 = 0.99,樟子松:R2 = 0.97)。我们用两种和不同地块大小获得的结果表明,将地块大小从15 m增加到30 m对建模尝试的影响很小。

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