Mapping tundra ecosystem plant functional type cover, height and aboveground biomass in Alaska and northwest Canada using unmanned aerial vehicles

IF 2.7 3区 地球科学 Q2 ECOLOGY Arctic Science Pub Date : 2022-04-12 DOI:10.1139/as-2021-0044
K. Orndahl, Libby Ehlers, J. Herriges, Rachel E. Pernick, M. Hebblewhite, S. Goetz
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引用次数: 1

Abstract

Arctic vegetation communities are rapidly changing with climate warming, which impacts wildlife, carbon cycling and climate feedbacks. Accurately monitoring vegetation change is thus crucial, but scale mismatches between field and satellite-based monitoring cause challenges. Remote sensing from unmanned aerial vehicles (UAVs) has emerged as a bridge between field data and satellite-based mapping. We assess the viability of using high resolution UAV imagery and UAV-derived Structure from Motion (SfM) to predict cover, height and aboveground biomass (henceforth biomass) of Arctic plant functional types (PFTs) across a range of vegetation community types. We classified imagery by PFT, estimated cover and height, and modeled biomass from UAV-derived volume estimates. Predicted values were compared to field estimates to assess results. Cover was estimated with root-mean-square error (RMSE) 6.29-14.2% and height was estimated with RMSE 3.29-10.5 cm, depending on the PFT. Total aboveground biomass was predicted with RMSE 220.5 g m-2, and per-PFT RMSE ranged from 17.14-164.3 g m-2. Deciduous and evergreen shrub biomass was predicted most accurately, followed by lichen, graminoid, and forb biomass. Our results demonstrate the effectiveness of using UAVs to map PFT biomass, which provides a link towards improved mapping of PFTs across large areas using earth observation satellite imagery.
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利用无人机测绘阿拉斯加和加拿大西北部冻土带生态系统植物功能类型覆盖、高度和地上生物量
随着气候变暖,北极植被群落正在迅速变化,这影响了野生动物、碳循环和气候反馈。因此,准确监测植被变化至关重要,但野外监测和卫星监测之间的尺度不匹配带来了挑战。无人驾驶飞行器(uav)遥感已经成为野外数据和卫星测绘之间的桥梁。我们评估了利用高分辨率无人机图像和无人机衍生的运动结构(SfM)来预测北极植物功能类型(PFTs)在一系列植被群落类型中的覆盖、高度和地上生物量(以下简称生物量)的可行性。我们通过PFT对图像进行分类,估算覆盖和高度,并根据无人机估算的体积对生物量进行建模。将预测值与现场估计值进行比较,以评估结果。覆盖度估计的均方根误差(RMSE)为6.29-14.2%,高度估计的RMSE为3.29-10.5 cm,具体取决于PFT。地上总生物量RMSE为220.5 g m-2,每pft RMSE为17.14 ~ 164.3 g m-2。对落叶灌木和常绿灌木生物量的预测最准确,其次是地衣、禾本科植物和草本植物生物量。我们的研究结果证明了使用无人机绘制PFT生物量的有效性,这为使用地球观测卫星图像改进大面积PFT的绘制提供了联系。
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来源期刊
Arctic Science
Arctic Science Agricultural and Biological Sciences-General Agricultural and Biological Sciences
CiteScore
5.00
自引率
12.10%
发文量
81
期刊介绍: Arctic Science is an interdisciplinary journal that publishes original peer-reviewed research from all areas of natural science and applied science & engineering related to northern Polar Regions. The focus on basic and applied science includes the traditional knowledge and observations of the indigenous peoples of the region as well as cutting-edge developments in biological, chemical, physical and engineering science in all northern environments. Reports on interdisciplinary research are encouraged. Special issues and sections dealing with important issues in northern polar science are also considered.
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