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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Mapping US forest biomass using nationwide forest inventory data and moderate resolution information
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Mapping US forest biomass using nationwide forest inventory data and moderate resolution information

机译:使用全国森林清单数据和中等分辨率信息绘制美国森林生物量图

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A spatially explicit dataset of aboveground live forest biomass was made from ground measured inventory plots for the conterminous U.S., Alaska and Puerto Rico. The plot data are from the USDA Forest Service Forest Inventory and Analysis (FIA) program. To scale these plot data to maps, we developed models relating field-measured response variables to plot attributes serving as the. predictor variables. The plot attributes came from intersecting plot coordinates with geospatial datasets. Consequently, these models serve as mapping models. The geospatial predictor variables included Moderate Resolution Imaging Spectrometer (MODIS)-derived image composites and percent tree cover; land cover proportions and other data from the National Land Cover Dataset (NLCD); topographic variables; monthly and annual climate parameters; and other ancillary variables. We segmented the mapping models for the U.S. into 65 ecologically similar mapping zones, plus Alaska and Puerto Rico. First, we developed a forest mask by modeling the forest vs. nonforest assignment of field plots as functions of the predictor layers using classification trees in See5 (c). Secondly, forest biomass models were built within the predicted forest areas using tree-based algorithms in Cubist (c). To validate the models, we compared field-measured with model-predicted forestonforest classification and biomass from an independent test set, randomly selected from available plot data for each mapping zone. The estimated proportion of correctly classified pixels for the forest mask ranged from 0.79 in Puerto Rico to 0.94 in Alaska. For biomass, model correlation coefficients ranged from a high of 0.73 in the Pacific Northwest, to a low of 0.31 in the Southern region. There was a tendency in all regions for these models to over-predict areas of small biomass and under-predict areas of large biomass, not capturing the full range in variability. Map-based estimates of forest area and forest biomass compared well with traditional plot-based estimates for individual states and for four scales of spatial aggregation. Variable importance analyses revealed that MODIS-derived information could contribute more predictive power than other classes of information when used in isolation. However, the true contribution of each variable is confounded by high correlations. Consequently, excluding any one class of variables resulted in only small effects on overall map accuracy. An estimate of total C pools in live forest biomass of U.S. forests, derived from the nationwide biomass map, also compared well with previously published estimates. (c) 2007 Elsevier Inc. All rights reserved.
机译:根据美国,阿拉斯加和波多黎各本土的地面测量存量图制作了地上活动森林生物量的空间明确数据集。地块数据来自美国农业部森林服务部森林清单和分析(FIA)程序。为了将这些绘图数据缩放到地图上,我们开发了将现场测量的响应变量与用作的绘图属性相关联的模型。预测变量。地块属性来自相交的地块坐标与地理空间数据集。因此,这些模型充当映射模型。地理空间预测变量包括中等分辨率成像光谱仪(MODIS)衍生的图像合成和树木覆盖率百分比;土地覆盖比例和来自国家土地覆盖数据集(NLCD)的其他数据;地形变量每月和每年的气候参数;和其他辅助变量。我们将美国的地图模型划分为65个生态相似的地图区域,以及阿拉斯加和波多黎各。首先,我们通过使用See5(c)中的分类树对田间地块的森林与非森林分配进行建模,将其作为预测层的函数,从而开发了森林遮罩。其次,在立体派(c)中使用基于树的算法在预测的森林区域内建立了森林生物量模型。为了验证模型,我们将实测数据与模型预测的森林/非森林分类以及来自独立测试集的生物量进行了比较,该测试集是从每个测绘区域的可用地块数据中随机选择的。对森林遮罩正确分类的像素的估计比例在波多黎各的0.79到阿拉斯加的0.94。对于生物量,模型相关系数的范围从西北太平洋地区的高点0.73到南部地区的低点0.31。这些模型在所有区域中都有一种趋势,即过度预测小生物量的区域和低预测大生物量的区域,而不是捕获变化的全部范围。基于地图的森林面积和森林生物量估计值与基于单个州和四种规模的空间聚集的传统基于图块的估计值相比较。可变重要性分析表明,与其他类别的信息单独使用时,MODIS衍生的信息可以提供更多的预测能力。但是,每个变量的真实贡献都被高度相关性所混淆。因此,排除任何一类变量只会对整体地图准确性产生很小的影响。根据全国生物量图得出的美国森林活林生物量中总碳库的估算值也与以前发表的估算值进行了很好的比较。 (c)2007 Elsevier Inc.保留所有权利。

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