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利用无人机和哨兵数据估算湖泊水下植被生物量的新策略。

A novel strategy for estimating biomass of submerged aquatic vegetation in lake integrating UAV and Sentinel data.

机构信息

Key Laboratory of Watershed Geographic Sciences, Nanjing Institute of Geography and Limnology, Chinese Academy of Sciences, Nanjing 210008, China; University of Chinese Academy of Sciences, Beijing 100049, China.

Key Laboratory of Watershed Geographic Sciences, Nanjing Institute of Geography and Limnology, Chinese Academy of Sciences, Nanjing 210008, China.

出版信息

Sci Total Environ. 2024 Feb 20;912:169404. doi: 10.1016/j.scitotenv.2023.169404. Epub 2023 Dec 16.

Abstract

Submerged aquatic vegetation (SAV) plays a fundamental ecological role in mediating carbon cycling within lakes, and its biomass is essential to assess the carbon sequestration potential of lake ecosystems. Remote sensing (RS) offers a powerful tool for large-scale SAV biomass retrieval. Given the underwater location of SAV, the spectral signal in RS data often exhibits weakness, capturing primarily horizontal structure rather than volumetric information crucial for biomass assessment. Fortunately, easily-measured SAV coverage can serve as an intermediary variable for difficultly-quantified SAV biomass inversion. Nevertheless, obtaining enough SAV coverage samples matching satellite image pixels for robust model development remains problematic. To overcome this challenge, we employed a UAV to acquire high-precision data, thereby replacing manual SAV coverage sample collection. In this study, we proposed an innovative strategy integrating unmanned aerial vehicle (UAV) and satellite data to invert large-scale SAV coverage, and subsequently estimate the biomass of the dominant SAV population (Potamogeton pectinatus) in Ulansuhai Lake. Firstly, a coverage-biomass model (R = 0.93, RMSE = 0.8 kg/m) depicting the relationship between SAV coverage and biomass was developed. Secondly, in a designed experimental area, a high-precision multispectral image was captured by a UAV. Based on the Normalized Difference Water Index (NDWI), the UAV-based image was classified into non-vegetated and vegetated areas, thereby generating an SAV distribution map. Leveraging spatial correspondence between satellite pixels and the UAV-based SAV distribution map, the proportion of SAV within each satellite pixel, referred to as SAV coverage, was computed, and a coverage sample set matched with satellite pixels was obtained. Subsequently, based on the sample set, a satellite-scale SAV coverage estimation model (R = 0.78, RMSE = 14.05 %) was constructed with features from Sentinel-1 and Sentinel-2 data by XGBoost algorithm. Finally, integrating the coverage-biomass model with the obtained coverage inversion results, fresh biomass of SAV in Ulansuhai Lake was successfully estimated to be approximately 574,600 tons.

摘要

水下植被(SAV)在调节湖泊碳循环方面发挥着基础性的生态作用,其生物量是评估湖泊生态系统碳封存潜力的关键。遥感(RS)为大规模 SAV 生物量反演提供了强大的工具。由于 SAV 位于水下,RS 数据中的光谱信号往往较弱,只能捕捉到水平结构,而无法获取对生物量评估至关重要的体积信息。幸运的是,易于测量的 SAV 覆盖度可以作为难以量化的 SAV 生物量反演的中间变量。然而,为了建立稳健的模型,仍然需要获得足够的与卫星图像像素相匹配的 SAV 覆盖度样本。为了克服这一挑战,我们采用无人机(UAV)获取高精度数据,从而取代了手动的 SAV 覆盖度样本采集。在这项研究中,我们提出了一种结合无人机和卫星数据的创新策略,以反演大规模 SAV 覆盖度,并进一步估算乌兰苏海湖中优势种水下植被(菹草)的生物量。首先,建立了一个描述 SAV 覆盖度与生物量之间关系的覆盖度-生物量模型(R=0.93,RMSE=0.8kg/m)。其次,在设计的试验区内,利用无人机获取了高精度多光谱图像。基于归一化水体指数(NDWI),将无人机图像分为非植被区和植被区,从而生成了 SAV 分布图。利用卫星像素与基于无人机的 SAV 分布图之间的空间对应关系,计算了每个卫星像素内的 SAV 比例,即 SAV 覆盖度,并获得了与卫星像素相匹配的 SAV 样本集。随后,基于该样本集,利用 XGBoost 算法从 Sentinel-1 和 Sentinel-2 数据中提取特征,构建了一个基于卫星尺度的 SAV 覆盖度估算模型(R=0.78,RMSE=14.05%)。最后,将覆盖度-生物量模型与获得的覆盖度反演结果相结合,成功估算出乌兰苏海湖菹草的鲜生物量约为 574600 吨。

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