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首页> 外文期刊>Journal of the American statistical association >Constrained Functional Regression of National Forest Inventory Data Over Time Using Remote Sensing Observations
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Constrained Functional Regression of National Forest Inventory Data Over Time Using Remote Sensing Observations

机译:使用遥感观察约束国家森林库存数据的限制功能回归

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摘要

The USDA Forest Service uses satellite imagery, along with a sample of national forest inventory field plots, to monitor and predict changes in forest conditions over time throughout the United States. We specifically focus on a 230,400 ha region in north-central Wisconsin between 2003 and 2012. The auxiliary data from the satellite imagery of this region are relatively dense in space and time, and can be used to learn how forest conditions changed over that decade. However, these records have a significant proportion of missing values due to weather conditions and system failures that we fill in first using a spatiotemporal model. Subsequently, we use the complete imagery as functional predictors in a two-component mixture model to capture the spatial variation in yearly average live tree basal area, an attribute of interest measured on field plots. We further modify the regression equation to accommodate a biophysical constraint on how plot-level live tree basal area can change from one year to the next. Findings from our analysis, represented with a series of maps, match known spatial patterns across the landscape. for this article, including a standardized description of the materials available for reproducing the work, are available as an online supplement.
机译:美国农业部森林服务使用卫星图像,以及国家森林库存场地图的样本,监测和预测整个美国森林条件的变化。我们专注于2003年至2012年之间的威斯康星州北部北部北部的230,400个地区。来自该地区的卫星图像的辅助数据在空间和时间中相对密集,并且可用于了解森林条件如何在该十年内变化。然而,由于天气条件和系统故障,这些记录具有很大比例的缺失值,以及我们首先使用时空模型填写。随后,我们使用完整的图像作为双组分混合模型中的功能预测器,以捕获年平均过的活树基础区域的空间变化,在场图上测量的感兴趣属性。我们进一步修改了回归方程,以适应绘图级实时树基础区域如何从一年变为下一年的生物物理限制。从我们的分析中发现,用一系列地图代表,匹配横跨景观的已知空间模式。对于本文,包括可用于再现工作的材料的标准化描述,可作为在线补充。

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