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Spatially Explicit Large Area Biomass Estimation: Three Approaches Using Forest Inventory and Remotely Sensed Imagery in a GIS

机译:空间上显式的大面积生物量估计:使用GIS中的森林清单和遥感图像的三种方法

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Forest inventory data often provide the required base data to enable the large area mapping of biomass over a range of scales. However, spatially explicit estimates of above-ground biomass (AGB) over large areas may be limited by the spatial extent of the forest inventory relative to the area of interest (i.e., inventories not spatially exhaustive), or by the omission of inventory attributes required for biomass estimation. These spatial and attributional gaps in the forest inventory may result in an underestimation of large area AGB. The continuous nature and synoptic coverage of remotely sensed data have led to their increased application for AGB estimation over large areas, although the use of these data remains challenging in complex forest environments. In this paper, we present an approach to generating spatially explicit estimates of large area AGB by integrating AGB estimates from multiple data sources; 1. using a lookup table of conversion factors applied to a non-spatially exhaustive forest inventory dataset (R2 = 0.64; RMSE = 16.95 t/ha), 2. applying a lookup table to unique combinations of land cover and vegetation density outputs derived from remotely sensed data (R2 = 0.52; RMSE = 19.97 t/ha), and 3. hybrid mapping by augmenting forest inventory AGB estimates with remotely sensed AGB estimates where there are spatial or attributional gaps in the forest inventory data. Over our 714,852 ha study area in central Saskatchewan, Canada, the AGB estimate generated from the forest inventory was approximately 40 Mega tonnes (Mt); however, the inventory estimate represents only 51% of the total study area. The AGB estimate generated from the remotely sensed outputs that overlap those made from the forest inventory based approach differ by only 2 %; however in total, the remotely sensed estimate is 30 % greater (58 Mt) than the estimate generated from the forest inventory when the entire study area is accounted for. Finally, using the hybrid approach, whereby the remotely sensed inputs were used to fill spatial gaps in the forest inventory, the total AGB for the study area was estimated at 62 Mt. In the example presented, data integration facilitates comprehensive and spatially explicit estimation of AGB for the entire study area.
机译:森林资源清单数据通常提供所需的基础数据,以便能够在一定范围内对生物质进行大面积绘图。但是,大面积上地面生物量(AGB)的空间显式估计可能会受到森林清单相对于感兴趣区域的空间范围(即清单在空间上并不详尽)的限制,或者受到缺少清单属性的限制用于生物量估算。森林资源清单中的这些空间和属性差距可能会导致大面积AGB的低估。遥感数据的连续性质和概要覆盖导致它们在大面积区域中用于AGB估算的应用越来越广泛,尽管在复杂的森林环境中使用这些数据仍然具有挑战性。在本文中,我们提出了一种通过整合来自多个数据源的AGB估算值来生成大面积AGB的空间显式估算值的方法。 1.使用应用于非空间详尽的森林资源清单数据集的转换因子查找表(R 2 = 0.64; RMSE = 16.95 t / ha),2.将查找表应用于以下项的唯一组合遥感数据(R 2 = 0.52; RMSE = 19.97 t / ha)得出的土地覆盖率和植被密度输出;以及3.通过在有遥感数据的情况下用遥感AGB估算值增加森林资源AGB估算值来进行混合映射是森林清单数据中的空间或属性差距。在我们位于加拿大萨斯喀彻温省中部的714,852公顷研究区域中,森林资源所产生的AGB估算值约为40兆吨(Mt);但是,库存估算仅占研究总面积的51%。与基于森林资源清查方法的结果重叠的遥感输出所产生的AGB估算值相差仅2%;但是,总的说来,当将整个研究区域都考虑在内时,遥感估算值比森林资源清单估算值高出30%(58 Mt)。最后,使用混合方法,即使用遥感输入来填补森林资源清单中的空间空白,研究区域的总AGB估计为62Mt。在所示的示例中,数据集成有助于整个研究区域对AGB进行全面且空间明确的估计。

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