...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Geographic variability in lidar predictions of forest stand structure in the Pacific Northwest
【24h】

Geographic variability in lidar predictions of forest stand structure in the Pacific Northwest

机译:西北太平洋林分结构激光雷达预测中的地理变异性

获取原文
获取原文并翻译 | 示例

摘要

Estimation of the amount of carbon stored in forests is a key challenge for understanding the global carbon cycle, one which remote sensing is expected to help address. However, carbon storage in moderate to high biomass forests is difficult to estimate with conventional optical or radar sensors. Lidar (light detection and ranging) instruments measure the vertical structure of forests and thus hold great promise for remotely sensing the quantity and spatial organization of forest biomass. In this study, we compare the relationships between lidarmeasured canopy structure and coincident field measurements of forest stand structure at five locations in the Pacific Northwest of the U.S.A. with contrasting composition. Coefficient of determination values (r(2)) ranged between 41% and 96%. Correlations for two important variables, LAI (81%) and aboveground biomass (92%), were noteworthy, as was the fact that neither variable showed an asymptotic response.Of the 17 stand structure variables considered in this study, we were able to develop eight equations that were valid for all sites, including equations for two variables generally considered to be highly important (aboveground biomass and leaf area index). The other six equations that were valid for all sites were either related to height (which is most directly measured by lidar) or diameter at breast height (which should be closely related to height). Four additional equations (a total of 12) were applicable to all sites where either Douglas-fir (Pseudotsuga menziesii), western hemlock (Tsuga heterophylla) or Sitka spruce (Picea sitchensi) were dominant. Stand structure variables in sites dominated by true firs (Abies sp.) or ponderosa pine (Pinus ponderosa) had biases when predicted by these four additional equations. Productivity-related variables describing the edaphic, climatic and topographic environment of the sites where available for every regression, but only two of the 17 equations (maximum diameter at breast height, stem density) incorporated them. Given the wide range of these environmental conditions sarnpled, we conclude that the prediction of stand structure is largely independent of environmental conditions in this study area.Most studies of lidar remote sensing for predicting stand structure have depended on intensive data collections within a relatively small study area. This study indicates that the relationships between many stand structure indices and lidar measured canopy structure have generality at the regional scale. This finding, if replicated in other regions, would suggest that mapping of stand structure using lidar may be accomplished by distributing field sites extensively over a region, thus reducing the overall inventory effort required. (c) 2005 Elsevier Inc. All rights reserved.
机译:估计森林中的碳存储量是理解全球碳循环的一项关键挑战,这有望通过遥感解决。但是,用传统的光学或雷达传感器很难估计中度到高度生物量森林的碳储量。激光雷达(光探测和测距)仪器可测量森林的垂直结构,因此对遥感生物量的数量和空间组织具有广阔的前景。在这项研究中,我们比较了在美国西北太平洋地区五个地点的经激光雷达测量的冠层结构与林分结构的重合野外测量之间的关系,并进行了对比分析。测定值的系数(r(2))在41%至96%之间。 LAI(81%)和地上生物量(92%)这两个重要变量之间的相关性值得注意,这两个变量均未显示出渐近响应。在本研究中考虑的17个林分结构变量中,我们能够对所有场所都有效的八个方程,包括通常被认为非常重要的两个变量的方程(地上生物量和叶面积指数)。对于所有位置均有效的其他六个方程式与身高有关(最直接由激光雷达测量),或者与乳房身高的直径有关(应与身高密切相关)。四个附加方程式(总共12个)适用于以花旗松(Pseudotsuga menziesii),西部铁杉(Tsuga heterophylla)或锡特卡云杉(Picea sitchensi)为主的所有地点。当由这四个附加方程式预测时,以真冷杉(Abies sp。)或黄松(Pinus tankerosa)为主的林分结构变量具有偏差。生产力相关的变量描述了每次回归都可以使用的地点的地理,气候和地形环境,但是只有17个方程式中的两个(乳房高度的最大直径,茎密度)被纳入其中。考虑到这些环境条件的广泛范围,我们得出结论,该研究区域的林分结构预测在很大程度上与环境条件无关。大多数用于预测林分结构的激光雷达遥感研究都依赖于规模较小的研究中的密集数据收集区。这项研究表明,许多林分结构指标与激光雷达测得的冠层结构之间的关系在区域范围内具有普遍性。如果在其他地区重复使用这一发现,则表明使用激光雷达对林分结构进行制图可以通过将现场站点广泛分布在一个区域上来完成,从而减少了所需的总体库存工作量。 (c)2005 Elsevier Inc.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号