...
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Estimating aboveground biomass and forest canopy cover with simulated ICESat-2 data
【24h】

Estimating aboveground biomass and forest canopy cover with simulated ICESat-2 data

机译:用模拟ICESAT-2数据估算地上生物量和森林冠层盖板

获取原文
获取原文并翻译 | 示例
           

摘要

The Ice, Cloud and Land Elevation Satellite-2 (ICESat-2) launched on September 15th, 2018 and this mission offers an extraordinary opportunity to contribute to an assessment of forest resources at multiple spatial scales. This study served to develop a methodology for utilizing ICESat-2 data over vegetated areas. The specific objectives were to: (1) derive a simulated ICESat-2 photon-counting lidar (PCL) vegetation product using airborne lidar data, (2) examine the use of simulated PCL metrics for modelling aboveground biomass (AGB) along ICESat-2 profiles using a simulated ICESat-2 PCL vegetation product and reference AGB estimated from airborne lidar data, and (3) estimate forest canopy cover using simulated PCL canopy product data and airborne lidar-derived canopy cover. Using existing airborne lidar data for Sam Houston National Forest (SHNF) in Texas and known ICESat-2 track locations, PCL simulations were carried out. Three scenarios were analyzed in this study; 1) simulated data without the addition of noise, 2) processed simulated data for daytime, and 3) nighttime scenarios. Segments measuring 100 m along the proposed ICESat-2 tracks were used to extract simulated PCL metrics from each of the three data scenarios and spatially coincident, reference airborne lidar-estimated AGB and airborne lidar canopy cover estimates. Linear regression models were then developed with a subset of the simulated PCL segments to estimate AGB and canopy cover and their performance assessed using separate testing sets. AGB model testing with the simulated dataset without noise, nighttime and daytime scenarios resulted in R-2 values of 0.79, 0.79 and 0.63 respectively, with root mean square error (RMSE) values of 19.16 Mg/ha, 19.23 Mg/ha, and 25.35 Mg/ha. Predictive models for canopy cover (4.6 m) achieved R-2 values of 0.93, 0.75 and 0.63 and RMSE values of 6.36%, 12.33% and 15.01% for the simulated dataset without noise, nighttime and daytime scenarios respectively. Findings fr
机译:冰,云和土地海拔卫星-2(ICESAT-2)于2018年9月15日推出,这项任务提供了一个非凡的机会,有助于评估多个空间尺度的森林资源。本研究部门提供了利用ICESAT-2在植被区域的方法的方法。具体目标是:(1)使用空气传播的LIDAR数据得出模拟的ICESAT-2光子计数LIDAR(PCL)植被产品,(2)检查模拟PCL度量的使用以沿着ICESAT-2模拟地上生物量(AGB)的模拟使用模拟的ICESAT-2 PCL植被产品和由机载LIDAR数据估计的参考AGB的分布,以及(3)使用模拟PCL冠层产品数据和机载LIDAR推导的遮盖盖估计森林冠层。在德克萨斯州和已知的ICESAT-2轨道位置使用现有的空中LIDAR数据(SHNF),并进行了PCL模拟。在这项研究中分析了三种情况; 1)模拟数据而不添加噪声,2)进行白天的模拟数据,3)夜间场景。沿着所提出的ICESAT-2轨道测量100米的段用于从三个数据场景中的每一个提取模拟的PCL度量,并且空间一致,参考机载激光雷达估计的AGB和空中激光葡萄球菌覆盖估计。然后使用模拟PCL段的子集开发线性回归模型,以估计AGB和Canopy覆盖以及使用单独的测试集进行评估的性能。 AGB模型测试使用模拟数据集进行模拟数据集,夜间和日间场景分别导致R-2值分别为0.79,0.79和0.63,具有19.16 mg / ha,19.23 mg / ha和25.35的根均方误差(RMSE)值。 mg / ha。针对顶篷覆盖的预测模型(4.6米)达到了0.93,0.75和0.63的R-2值,而且分别没有噪声,夜间和白天场景的模拟数据集的6.36%,12.33%和15.01%。调查结果f.

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