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Quantifying aboveground forest carbon pools and fluxes from repeat LiDAR surveys

机译:通过重复的LiDAR调查量化地上森林碳库和通量

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Sound forest policy and management decisions to mitigate rising atmospheric CO_2 depend upon accurate methodologies to quantify forest carbon pools and fluxes over large tracts of land. LiDAR remote sensing is a rapidly evolving technology for quantifying aboveground biomass and thereby carbon pools; however, little work has evaluated the efficacy of repeat LiDAR measures for spatially monitoring aboveground carbon pools through time. Our study objective was therefore to evaluate the use of discrete return airborne LiDAR for quantifying biomass change and carbon flux from repeat field and LiDAR surveys. We collected LiDAR data in 2003 and 2009 across -20,000 ha of an actively managed, mixed conifer forest landscape in northern Idaho. The Random Forest machine learning algorithm was used to impute aboveground biomass pools of trees, saplings, shrubs, herbaceous plants, coarse and fine woody debris, litter, and duff using field-based forest inventory data and metrics derived from the LiDAR collections. Separate predictive tree aboveground biomass models were developed from the 2003 and 2009 field and LiDAR data, and biomass change was estimated at the plot, pixel, and landscape levels by subtracting 2003 predictions from 2009 predictions. Traditional stand exam data were used to independently validate 2003 and 2009 tree aboveground biomass predictions and tree biomass change estimates at the stand level. Over this 6-year period, we found a mean increase in tree aboveground biomass due to forest growth across the non-harvested portions of 4.1 Mg/ha/yr. We found that 26.3% of the landscape had been harvested during this time period which outweighed growth at the landscape level, resulting in a net tree aboveground biomass change of -5.7 Mg/ha/yr, and -2.3 Mg/ha/yr in total aboveground carbon, summed across all the aboveground biomass pools. Change in aboveground biomass was related to forest successional status; younger stands gained. two- to three-fold less biomass than did more mature stands. This result suggests that even the most mature forest stands are valuable carbon sinks, and implies that forest management decisions that include longer harvest rotation cycles are likely to favor higher levels of aboveground carbon storage in this system. A 30-fold difference in LiDAR sampling density between the 2003 and 2009 collections did not affect plot-scale biomass estimation. These results suggest that repeat LiDAR surveys are useful for accurately quantifying high resolution, spatially explicit biomass and carbon dynamics in conifer forests. Published by Elsevier Inc.
机译:旨在减轻大气中CO_2上升的合理森林政策和管理决策取决于准确的方法来量化大片土地上的森林碳库和通量。 LiDAR遥感技术是一种快速发展的技术,可以量化地上生物量,从而量化碳库。然而,很少有工作评估重复的LiDAR措施对通过时间进行空间监测地上碳库的有效性。因此,我们的研究目标是评估离散返回机载LiDAR在重复场和LiDAR调查中量化生物量变化和碳通量的用途。我们在2003年和2009年收集了爱达荷州北部-20,000公顷积极管理的针叶林混合景观的LiDAR数据。随机森林机器学习算法用于基于地面的森林库存数据和来自LiDAR收集的指标,估算树木,树苗,灌木,草本植物,粗,细木屑,凋落物和达芙的地上生物量池。根据2003年和2009年的田间和LiDAR数据开发了单独的预测树地上生物量模型,并通过从2009年的预测中减去2003年的预测来估算地块,像素和景观水平的生物量变化。传统的林分检验数据用于独立验证林分级别的2003年和2009年树木地上生物量预测和树木生物量变化估计。在这六年的时间里,我们发现由于未采伐部分的森林生长,树木地上生物量平均增加了4.1 Mg / ha / yr。我们发现,在此时间段内已收获了26.3%的景观,超过了景观水平的增长,导致地上树的净生物量变化为-5.7 Mg / ha / yr,总计-2.3 Mg / ha / yr地上碳,所有地上生物量池的总和。地上生物量的变化与森林演替状态有关。年轻的立场。生物量比成熟林分少两到三倍。该结果表明,即使最成熟的林分也是有价值的碳汇,并暗示包括更长的轮作周期在内的森林管理决策可能会有利于该系统中更高水平的地上碳存储。 LiDAR采样密度在2003年和2009年之间相差30倍,并不影响样地规模的生物量估计。这些结果表明,重复进行LiDAR调查对于准确定量针叶林中的高分辨率,空间明确的生物量和碳动态非常有用。由Elsevier Inc.发布

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