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Estimating Current Forest Attributes from Paneled Inventory Data Using Plot-Level Imputation: A Study from the Pacific Northwest

机译:使用图级估算从面板清单数据中估算当前森林属性:西北太平洋地区的一项研究

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摘要

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. [PUBLICATION ABSTRACT]
机译:有关当前森林状况的信息对于评估和表征资源以及支持资源管理和政策决策至关重要。 1998年《农场法案》要求美国森林服务局进行年度盘点,以提供每个州森林的年度更新。在年度清单中,一年(面板)的样本量只是全部样本的一部分,因此任何给定年份的估算精度都较低。为了获得更高的精度,森林清单和分析程序使用移动平均值(MA),该平均值结合了多个面板的数据作为默认估计量。 MA可能导致当前状况的估计偏差,并寻求替代方法。太平洋西北地区尚未探索MA的替代方法。俄勒冈州和华盛顿州国家森林的数据用于检验加权移动平均值(WMA)和三种估算方法:最相似的邻居,最近的梯度邻居和randomForest(RF)。使用最近对目标变量的测量作为辅助变量,RF提供了几乎无偏的估计值,就均方根误差而言,这些估计值可与MA和WMA估计器相提并论。 [出版物摘要]

著录项

  • 来源
    《Forest Science》 |2009年第1期|p.64-71|共8页
  • 作者单位

    Bianca N.I. Eskelson, Oregon State University Department of Forest Engineering, Resources and Management, 204 Peavy Hall, Corvallis, OR 97331-5706- Phone: (541) 737-4457, Fax: (541) 737-4316, bianca.eskelson@oregonstate.edu. Hailemariam Temesgen, Oregon State University Department of Forest Engineering, Resources and Management, Corvallis, Oregon-hailemariam.temesgen@oregonstate.edu. Tara M. Barrett, US Forest Service, Pacific Northwest Research Station Forestry Sciences Laboratory, Anchorage, Alaska-tbarrett@fs.fed.us.Acknowledgments: We thank Janet Ohmann and Matt Gregory for sharing their ancillary data from the National Land Cover Database and DAYMET with us and for their insights on the data. We appreciate the help that Jim Alegria, Carol Apple, Bob Brown, and Melinda Moeur provided in obtaining national forest data and thank Kurt Campbell for assistance with volume and biomass equations. We also thank David Hann, three anonymous reviewers, and the associate editor for their helpful review comments.Manuscript received April 23, 2008, accepted October 3, 2008 Copyright © 2009 by the Society of American Foresters,;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
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  • 入库时间 2022-08-17 13:45:59

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