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Quantification of live aboveground forest biomass dynamics with Landsat time-series and field inventory data: A comparison of empirical modeling approaches

机译:利用Landsat时间序列和田间清单数据量化地上森林生物量的动态:经验建模方法的比较

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Spatially and temporally explicit knowledge of biomass dynamics at broad scales is critical to understanding how forest disturbance and regrowth processes influence carbon dynamics. We modeled live, aboveground tree biomass using Forest Inventory and Analysis (FIA) field data and applied the models to 20+ year timeseries of Landsat satellite imagery to derive trajectories of aboveground forest biomass for study locations in Arizona and Minnesota. We compared three statistical techniques (Reduced Major Axis regression, Gradient Nearest Neighbor imputation, and Random Forests regression trees) for modeling biomass to better understand how the choice of model type affected predictions of biomass dynamics. Models from each technique were applied across the 20+ year Landsat time-series to derive biomass trajectories, to which a curve-fitting algorithm was applied to leverage the temporal information contained within the time-series itself and to minimize error associated with exogenous effects such as biomass measurements, phenology, sun angle, and other sources. The effect of curve-fitting was an improvement in predictions of biomass change when validated against observed biomass change from repeat FIA inventories. Maps of biomass dynamics were integrated with maps depicting the location and timing of forest disturbance and regrowth to assess the biomass consequences of these processes over large areas and long time frames. The application of these techniques to a large sample of Landsat scenes across North America will facilitate spatial and temporal estimation of biomass dynamics associated with forest disturbance and regrowth, and aid in national-level estimates of biomass change in support of the North American Carbon Program.
机译:时空上广泛了解生物量动态的知识对于理解森林干扰和再生过程如何影响碳动态至关重要。我们使用森林清单和分析(FIA)现场数据对活的地上树生物量建模,并将该模型应用于Landsat卫星图像的20年以上时间序列,以得出用于亚利桑那州和明尼苏达州研究地点的地上森林生物量轨迹。我们比较了三种统计技术(简化的主轴回归,梯度最近邻插补和随机森林回归树)对生物质进行建模,以更好地了解模型类型的选择如何影响生物质动力学的预测。在20多年的Landsat时间序列上应用每种技术的模型以得出生物量轨迹,并对其应用了曲线拟合算法以利用时间序列本身中包含的时间信息,并最大程度地减少与外源效应相关的误差,例如作为生物量测量,物候,太阳角度和其他来源。当根据重复的FIA清单中观察到的生物量变化进行验证时,曲线拟合的效果改善了生物量变化的预测。生物量动态图与描述森林扰动和再生的位置和时间的图整合在一起,以评估这些过程在大面积和长时间范围内的生物量后果。将这些技术应用于整个北美的Landsat场景的大量样本,将有助于对与森林干扰和再生长有关的生物量动态进行时空估计,并有助于在国家一级对生物量变化进行估算,以支持北美碳计划。

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