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Deriving airborne laser scanning based computational canopy volume for forest biomass and allometry studies

机译:导出基于机载激光扫描的森林生物量和异速生长研究的计算冠层体积

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摘要

A computational canopy volume (CCV) based on airborne laser scanning (ALS) data is proposed to improve predictions of forest biomass and other related attributes like stem volume and basal area. An approach to derive the CCV based on computational geometry, topological connectivity and numerical optimization was tested with sparse-density, plot-level ALS data acquired from 40 field sample plots of 500-1000 m~2 located in a boreal forest in Norway. The CCV had a high correspondence with the biomass attributes considered when derived from optimized filtrations, i.e. ordered sets of simplices belonging to the triangulations based on the point data. Coefficients of determination (R~2) between the CCV and total above-ground biomass, canopy biomass, stem volume, and basal area were 0.88-0.89, 0.89, 0.83-0.97, and 0.88-0.92, respectively, depending on the applied filtration. The magnitude of the required filtration was found to increase according to an increasing basal area, which indicated a possibility to predict this magnitude by means of ALS-based height and density metrics. A simple prediction model provided CCVs which had R~2 of 0.77-0.90 with the aforementioned forest attributes. The derived CCVs always produced complementary information and were mainly able to improve the predictions of forest biomass relative to models based on the height and density metrics, yet only by 0-1.9 percentage points in terms of relative root mean squared error. Possibilities to improve the CCVs by a further analysis of topological persistence are discussed.
机译:提出了一种基于机载激光扫描(ALS)数据的计算冠层体积(CCV),以改善对森林生物量以及其他相关属性(如茎体积和基础面积)的预测。利用稀疏密度,从挪威寒带森林中500-1000 m〜2的40个野外样地获得的样地级ALS数据,测试了一种基于计算几何,拓扑连接性和数值优化的CCV推导方法。 CCV与从优化过滤中得出的生物量属性具有高度对应性,即根据点数据属于三角剖分的有序单纯形的有序集合。 CCV与总地上生物量,冠层生物量,茎量和基础面积之间的确定系数(R〜2)分别为0.88-0.89、0.89、0.83-0.97和0.88-0.92,具体取决于所应用的过滤。发现所需的过滤量随基础面积的增加而增加,这表明可以通过基于ALS的高度和密度度量来预测该量。一个简单的预测模型提供的CCV具有上述森林属性的R〜2为0.77-0.90。相对于基于高度和密度度量的模型,导出的CCV总是产生补充信息,并且主要能够改进森林生物量的预测,但相对根均方根误差只有0-1.9个百分点。讨论了通过进一步分析拓扑持久性来改善CCV的可能性。

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