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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A nationwide forest attribute map of Sweden predicted using airborne laser scanning data and field data from the National Forest Inventory
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A nationwide forest attribute map of Sweden predicted using airborne laser scanning data and field data from the National Forest Inventory

机译:瑞典的全国森林属性地图预测来自国家森林库存的空气激光扫描数据和现场数据

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The National Mapping Agency in Sweden has conducted an airborne laser scanning (ALS) campaign covering almost the entire country for the purpose of creating a new national Digital Elevation Model (DEM). The ALS data were collected between 2009 and 2015 using Leica, Optech, Riegi, and Trimble scanners and have a point density of 0.5-1.0 pulses/m(2). A high resolution national raster database (12.5 m x 12.5 m cell size) with forest variables was produced by combining the ALS data with field data from the Swedish National Forest Inventory (NFI). Approximately 11500 NFI plots (10 meter radius) located on productive forest land, inventoried between 2009 and 2013, were used to create linear regression models relating selected forest variables, or transformations of the variables, to metrics derived from the ALS data. The resulting stand level relative RMSEs for predictions of stem volume, basal area, basal-area weighted mean tree height, and basal-area weighted mean stem diameter were in the ranges of 17.2-22.0%, 13.9-18.2%, 5.4-9.5%, and 8.7-13.1%, respectively. It was concluded that the predictions had an accuracy that were at least as good as data typically used in forest management planning. Above ground tree biomass was also included in the national raster database but not validated on a stand -level. An important part of the project was to make the raster database available to private forest owners, forest associations, forest companies, authorities, researchers, and the general public. Thus, all predicted forest variables can be viewed and downloaded free of charge at the Swedish Forest Agency's homepage (http://www. skogsstyrelsen.se/skogligagrunddata). (C) 2016 Elsevier Inc. All rights reserved.
机译:瑞典国家绘图局已经开展了一项空中激光扫描(ALS)竞选,以便创建新的国家数字海拔模型(DEM)。使用Leica,Optech,Riegi和Trimble扫描仪在2009和2015之间收集ALS数据,并且具有0.5-1.0脉冲/ m(2)的点密度。通过将ALS数据与来自瑞典国家森林库存(NFI)的现场数据组合来制作具有森林变量的高分辨率国家栅格数据库(12.5米×12.5米小区大小)。大约11500个NFI图(10米半径)位于2009年至2013年之间的生产林地上,用于创建与所选森林变量的线性回归模型,或变量的转换,从ALS数据派生的指标。用于预测茎体积,基底面积,基础加权平均树高,基底加权平均茎直径的所得支架等级相对RMS在17.2-22.0%,13.9-18.2%,5.4-9.5%分别为8.7-13.1%。得出结论是,预测的准确性至少与通常用于森林管理计划中的数据一样好。在地面树上生物量也被包含在国家栅格数据库中,但在立场上没有验证。该项目的一个重要部分是将光栅数据库提供给私人森林所有者,森林协会,森林公司,当局,研究人员和公众。因此,所有预测的森林变量都可以在瑞典林业机构的首页(http:// www.skogsstyrelsen.se/skogligagrunddata)上免费查看和下载。 (c)2016年Elsevier Inc.保留所有权利。

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