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Using airborne lidar to differentiate cottonwood trees in a riparian area and refine riparian water use estimates.

机译:使用机载激光雷达来区分河岸地区的杨木并完善河岸用水量估算。

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Airborne lidar (light detecting and ranging) is a useful tool for probing the structure of forest canopies. Such information is not readily available from other remote sensing methods and is essential for modern forest inventories. In this study, small-footprint lidar data were used to estimate biophysical properties of young, mature, and old cottonwood trees in the Upper San Pedro River Basin, Arizona, USA. The lidar data were acquired in June 2003 and 2004, using Optech's 1233 ALTM (Optech Incorporated, Toronto, Canada). Canopy height, crown diameter, stem diameter at breast height (dbh), canopy cover, and mean intensity of return laser pulses from the canopy surface are estimated for the cottonwood trees from lidar data. The lidar estimates show a good degree of correlation with ground-based measurements. This study also demonstrates that other parameters of young, mature, and old cottonwood trees such as height and canopy cover, when derived from lidar, are significantly different (p 0.05). These lidar-derived canopy metrics provided the basis for a supervised image classification of cottonwood age categories, using a maximum likelihood algorithm. The results of classification illustrate the potential of airborne lidar data to differentiate age classes of cottonwood trees for riparian areas quickly and quantitatively.; In addition, four metrics (tree height, height of median energy, ground return ratio, and canopy return ratio) were derived by synthetically constructing a large footprint lidar waveform from small-footprint lidar data (we summed up a series of Gaussian pulses that vertically stacked at the elevations produced by the small-footprint elevation data to create a modeled large-footprint return waveform and compared the synthetic waveforms with ground-based Intelligent Laser Ranging and Imaging System (ILRIS) scanner images in cottonwood trees). These four metrics were incorporated into a stepwise regression procedure to predict field-derived LAI for different age classes of cottonwoods.; Additionally, this study applied the Penman-Monteith model to estimate transpiration of the cottonwood clusters using lidar-derived canopy metrics, such as height and LAI, and compared it with transpiration measured by sap flow, so that improved riparian water use estimates could be made.
机译:机载激光雷达(光探测和测距)是探测林冠结构的有用工具。此类信息不易从其他遥感方法获得,对于现代森林清单至关重要。在这项研究中,小足迹激光雷达数据用于估计美国亚利桑那州上圣佩德罗河流域的年轻,成熟和老杨木的生物物理特性。激光雷达数据是在2003年6月和2004年使用Optech的1233 ALTM(加拿大多伦多的Opech Incorporated)获得的。根据激光雷达数据估算杨木树的冠层高度,冠径,胸干直径(dbh),冠层覆盖度以及从冠层表面返回的激光脉冲的平均强度。激光雷达估计值与基于地面的测量值显示出良好的相关性。这项研究还表明,幼年,成熟和老杨木树的其他参数(例如,高度和树冠覆盖度)源自激光雷达时,差异显着(p <0.05)。这些来自激光雷达的冠层度量标准使用最大似然算法为三叶杨年龄类别的监督图像分类提供了基础。分类结果表明,空中激光雷达数据有可能快速,定量地区分河岸地区的杨木树龄。此外,通过从小足迹激光雷达数据综合构建大足迹激光雷达波形(我们总结了一系列垂直于垂直方向的高斯脉冲),得出了四个指标(树高,中值能量高度,地面返回率和冠层返回率)叠加在小足迹高程数据产生的高程上,以创建建模的大足迹返回波形,并将合成波形与三叶草中的地面智能激光测距和成像系统(ILRIS)扫描仪图像进行比较。这四个指标被纳入逐步回归程序,以预测不同年龄等级杨木田间的LAI。此外,本研究应用Penman-Monteith模型,使用激光雷达得出的冠层度量标准(例如身高和LAI)估算杨木丛的蒸腾量,并将其与通过树液流量测量的蒸腾量进行比较,从而可以改善河岸用水量估算。 。

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