利用无人机载伽马能谱仪和激光雷达联合测量草原雪水当量

P. Harder, W. Helgason, John W. Pomeroy
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引用次数: 1

摘要

摘要。尽管经过几十年的努力,仍无法利用遥感技术测量高空间分辨率的雪水当量(SWE)。被动伽马射线光谱仪是可靠遥感雪水当量的唯一成熟方法之一,但迄今为止机载应用仅限于观测千米级的平均面积。考虑到无人飞行器(UAV)能力的不断提高和被动伽马射线光谱仪的小型化,本研究测试了无人飞行器搭载的伽马光谱仪和无人飞行器搭载的激光雷达在高空间分辨率下量化 SWE 空间变化的能力。通过无人机(无人机-伽马和无人机-激光雷达)对加拿大萨斯喀彻温省被风吹起的浅层草原积雪进行了两季伽马和激光雷达观测,并通过人工雪深和密度观测收集了验证数据。根据无人机激光雷达雪深和雪地勘测雪密度观测数据,建立了 SWE 的精细分辨率(0.25 米)参考数据集,用于测试无人机伽马方法。在具备适当飞行特性的情况下,UAV-gamma 分辨 SWE 的区域平均值和空间变化的能力很有希望。以 5 米/秒-1 的速度、15 米的高度和 15 米的线间距进行的勘测飞行无法在参考数据集的不确定性范围内捕捉到 SWE 的平均值或空间变化。速度为 4 m s-1、高度为 8 m、线间距为 8 m 的飞行线路速度更慢、高度更低、密度更大,能够成功观测到平均 SWE 值及其空间分辨率大于 22.5 m 的变化。使用无人机伽马SWE和无人机激光雷达雪深相结合的方法,大大提高了SWE的空间表示能力,可以估算出空间分辨率为0.25米的SWE,与参考SWE数据集相比,误差为±14.3毫米。无人机载伽马能谱仪估算SWE是一项很有前途的新技术,有可能改进草原浅积雪的测量,如果与无人机载激光雷达雪深相结合,可以提供精细分辨率、高精度的草原SWE估算值。需要对最佳硬件、数据处理和插值技术进行研究,以进一步改进这种遥感产品,并探索其在其他环境中的应用。
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Measuring prairie snow water equivalent with combined UAV-borne gamma spectrometry and lidar
Abstract. Despite decades of effort, there remains an inability to measure snow water equivalent (SWE) at high spatial resolutions using remote sensing. Passive gamma ray spectrometry is one of the only well-established methods to reliably remotely sense SWE, but airborne applications to date have been limited to observing kilometre-scale areal averages. Noting the increasing capabilities of unoccupied aerial vehicles (UAVs) and miniaturization of passive gamma ray spectrometers, this study tested the ability of a UAV-borne gamma spectrometer and concomitant UAV-borne lidar to quantify the spatial variability of SWE at high spatial resolutions. Gamma and lidar observations from a UAV (UAV-gamma and UAV-lidar) were collected over two seasons from shallow, wind-blown, prairie snowpacks in Saskatchewan, Canada, with validation data collected from manual snow depth and density observations. A fine-resolution (0.25 m) reference dataset of SWE, to test UAV-gamma methods, was developed from UAV-lidar snow depth and snow survey snow density observations. The ability of UAV-gamma to resolve the areal average and spatial variability of SWE was promising with appropriate flight characteristics. Survey flights flown at a velocity of 5 m s−1, altitude of 15 m, and line spacing of 15 m were unable to capture the average or spatial variability of SWE within the uncertainty of the reference dataset. Slower, lower, and denser flight lines at a velocity of 4 m s−1, altitude of 8 m, and line spacing of 8 m were able to successfully observe areal average SWE and its variability at spatial resolutions greater than 22.5 m. Using a combination of UAV-based gamma SWE and UAV-based lidar snow depth improved the spatial representation of SWE substantially and permitted estimation of SWE at a spatial resolution 0.25 m with a ± 14.3 mm error relative to the reference SWE dataset. UAV-borne gamma spectrometry to estimate SWE is a promising and novel technique that has the potential to improve the measurement of shallow prairie snowpacks, and when combined with UAV-borne lidar snow depths, can provide fine-resolution, high-accuracy estimates of prairie SWE. Research on optimal hardware, data processing, and interpolation techniques is called for to further improve this remote sensing product and explore its application in other environments.
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