Bianca N.I. Eskelson, Hailemariam Temesgen, Tara M. Barrett
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引用次数: 0
摘要
有关当前森林状况的信息对于评估和描述资源特征以及支持资源管理和政策决策至关重要。1998 年的《农业法案》要求美国林业局进行年度清查,以提供各州森林的年度最新情况。在年度清查中,1 年(面板)的样本量仅为全部样本的一部分,因此任何给定年份的估算精度都很低。为了达到更高的精度,森林资源清查与分析程序使用移动平均值 (MA) 作为默认估算值,该值结合了多个面板的数据。移动平均法可能会导致对当前状况的估计出现偏差,因此需要寻求替代方法。西北太平洋地区尚未探索过移动平均法的替代方法。俄勒冈州和华盛顿州国家森林的数据被用来研究加权移动平均法(WMA)和三种估算方法:最相似邻近法、梯度最近邻近法和随机森林法(RF)。RF 使用相关变量的最新测量值作为辅助变量,提供了几乎无偏的估计值,其均方根误差与 MA 和 WMA 估计值相当。
Estimating Current Forest Attributes from Paneled Inventory Data Using Plot-Level Imputation: A Study from the Pacific Northwest
Information on current forest condition is essential to assess and characterize resources and to support resource management and policy decisions. The 1998 Farm Bill mandates the US Forest Service to conduct annual inventories to provide annual updates of each state's forest. In annual inventories, the sample size of 1 year (panel) is only a portion of the full sample and therefore the precision of the estimations for any given year is low. To achieve higher precision, the Forest Inventory and Analysis program uses a moving average (MA), which combines the data of multiple panels, as default estimator. The MA can result in biased estimates of current conditions and alternative methods are sought. Alternatives to MA have not yet been explored in the Pacific Northwest. Data from Oregon and Washington national forests were used to examine a weighted moving average (WMA) and three imputation approaches: most similar neighbor, gradient nearest neighbor, and randomForest (RF). Using the most recent measurements of the variables of interest as ancillary variables, RF provided almost unbiased estimates that were comparable to those of the MA and WMA estimators in terms of root mean square error.
期刊介绍:
Forest Science is a peer-reviewed journal publishing fundamental and applied research that explores all aspects of natural and social sciences as they apply to the function and management of the forested ecosystems of the world. Topics include silviculture, forest management, biometrics, economics, entomology & pathology, fire & fuels management, forest ecology, genetics & tree improvement, geospatial technologies, harvesting & utilization, landscape ecology, operations research, forest policy, physiology, recreation, social sciences, soils & hydrology, and wildlife management.
Forest Science is published bimonthly in February, April, June, August, October, and December.