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首页> 外文期刊>Remote Sensing >Estimating Forest Biomass Dynamics by Integrating Multi-Temporal Landsat Satellite Images with Ground and Airborne LiDAR Data in the Coal Valley Mine, Alberta, Canada
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Estimating Forest Biomass Dynamics by Integrating Multi-Temporal Landsat Satellite Images with Ground and Airborne LiDAR Data in the Coal Valley Mine, Alberta, Canada

机译:通过将多时态Landsat卫星图像与地面和机载LiDAR数据相集成来估算森林生物量动态,该数据来自加拿大艾伯塔省的煤谷煤矿

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摘要

Assessing biomass dynamics is highly critical for monitoring ecosystem balance and its response to climate change and anthropogenic activities. In this study, we introduced a direct link between Landsat vegetation spectral indices and ground/airborne LiDAR data; this integration was established to estimate the biomass dynamics over various years using multi-temporal Landsat satellite images. Our case study is located in an area highly affected by coal mining activity. The normalized difference vegetation index (NDVI), enhanced vegetation index (EVI and EVI2), chlorophyll vegetation index (CVI), and tasseled cap transformations were used as vegetation spectral indices to estimate canopy height. In turn, canopy height was used to predict a coniferous forest’s biomass using Jenkins allometric and Lambert and Ung allometric equations. The biophysical properties of 700 individual trees at eight different scan stations in the study area were obtained using high-resolution ground LiDAR. Nine models (Hi) were established to discover the best relationship between the canopy height model (CHM) from the airborne LiDAR and the vegetation spectral indices (VSIs) from Landsat images for the year 2005, and HB9 (Jenkins allometric equation) and HY9 (Lambert and Ung allometric equation) proved to be the best models (r2 = 0.78; root mean square error (RMSE) = 44 Mg/H, r2 = 0.67; RMSE = 58.01 Mg/H, respectively; p 0.001) for estimating the canopy height and the biomass. This model accurately captured the most affected areas (deforested) and the reclaimed areas (forested) in the study area. Five years were chosen for studying the biomass change: 1988, 1990, 2001, 2005, and 2011. Additionally, four pixel-based image comparisons were analyzed (i.e., 1988–1990, 1990–2005, 2005–2009, and 2009–2011), and Mann-Kendall statistics for the subsets of years were obtained. The detected change showed that, in general, the environment in the study area was recovering and regaining its initial biomass after the dramatic decrease that occurred in 2005 as a result of intensive mining activities and disturbance.
机译:评估生物量动态对于监测生态系统平衡及其对气候变化和人为活动的响应至关重要。在这项研究中,我们介绍了Landsat植被光谱指数与地面/机载LiDAR数据之间的直接联系;建立这种积分是为了使用多时态Landsat卫星图像估算不同年份的生物量动态。我们的案例研究位于受煤炭开采活动高度影响的地区。归一化差异植被指数(NDVI),增强植被指数(EVI和EVI2),叶绿素植被指数(CVI)和穗状顶盖变换被用作植被光谱指数,以估算冠层高度。反过来,利用詹金斯(Jenkins)异度法,兰伯特(Lambert)和翁格(Ung)异度法方程,利用冠层高度来预测针叶林的生物量。使用高分辨率地面LiDAR获得了研究区域中八个不同扫描站的700棵单独树木的生物物理特性。建立了9个模型(H i ),以发现机载LiDAR的冠层高度模型(CHM)与Landsat图像中的2005年植被光谱指数(VSI)和HB之间的最佳关系事实证明, 9 (詹金斯等速方程)和HY 9 (Lambert和Ung等速方程)是最佳模型(r 2 = 0.78;根)均方误差(RMSE)= 44 Mg / H,r 2 = 0.67; RMSE = 58.01 Mg / H; p <0.001),以估算树冠高度和生物量。该模型准确地捕获了研究区域中受影响最大的区域(森林砍伐)和开垦的区域(森林)。选择了五年来研究生物量变化:1988、1990、2001、2005和2011。此外,还分析了四个基于像素的图像比较(即1988–1990、1990–2005、2005–2009和2009–2011) ),并获得了年份子集的Mann-Kendall统计数据。所检测到的变化表明,由于密集的采矿活动和干扰,2005年发生的急剧下降之后,研究区域的环境总体上正在恢复并恢复其初始生物量。

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