Zhu Xiaohua, Chen Xinyu, Ma Lingling, Liu Wei
National Engineering Laboratory for Satellite Remote Sensing Applications, Aerospace Information Research Institute, Chinese Academy of Sciences, Beijing 100094, China.
College of Resources and Environment, University of Chinese Academy of Sciences, Beijing 101408, China.
Plants (Basel). 2024 Mar 31;13(7):1006. doi: 10.3390/plants13071006.
Aboveground biomass (AGB) is an important indicator of the grassland ecosystem. It can be used to evaluate the grassland productivity and carbon stock. Satellite remote sensing technology is useful for monitoring the dynamic changes in AGB across a wide range of grasslands. However, due to the scale mismatch between satellite observations and ground surveys, significant uncertainties and biases exist in mapping grassland AGB from satellite data. This is also a common problem in low- and medium-resolution satellite remote sensing modeling that has not been effectively solved. The rapid development of uncrewed aerial vehicle (UAV) technology offers a way to solve this problem. In this study, we developed a method with UAV and satellite synergies for estimating grassland AGB that filled the gap between satellite observation and ground surveys and successfully mapped the grassland AGB in the Hulunbuir meadow steppe in the northeast of Inner Mongolia, China. First, based on the UAV hyperspectral data and ground survey data, the UAV-based AGB was estimated using a combination of typical vegetation indices (VIs) and the leaf area index (LAI), a structural parameter. Then, the UAV-based AGB was aggregated as a satellite-scale sample set and used to model satellite-based AGB estimation. At the same time, spatial information was incorporated into the LAI inversion process to minimize the scale bias between UAV and satellite data. Finally, the grassland AGB of the entire experimental area was mapped and analyzed. The results show the following: (1) random forest (RF) had the best performance compared with simple regression (SR), partial least squares regression (PLSR) and back-propagation neural network (BPNN) for UAV-based AGB estimation, with an R of 0.80 and an RMSE of 76.03 g/m. (2) Grassland AGB estimation through introducing LAI achieved higher accuracy. For UAV-based AGB estimation, the R was improved by an average of 10% and the RMSE was reduced by an average of 9%. For satellite-based AGB estimation, the R was increased from 0.70 to 0.75 and the RMSE was decreased from 78.24 g/m to 72.36 g/m. (3) Based on sample aggregated UAV-based AGB and an LAI map, the accuracy of satellite-based AGB estimation was significantly improved. The R was increased from 0.57 to 0.75, and the RMSE was decreased from 99.38 g/m to 72.36 g/m. This suggests that UAVs can bridge the gap between satellite observations and field measurements by providing a sufficient training dataset for model development and AGB estimation from satellite data.
地上生物量(AGB)是草原生态系统的一个重要指标。它可用于评估草原生产力和碳储量。卫星遥感技术有助于监测大范围草原上AGB的动态变化。然而,由于卫星观测与地面调查之间存在尺度不匹配问题,利用卫星数据绘制草原AGB时存在显著的不确定性和偏差。这也是中低分辨率卫星遥感建模中一个尚未得到有效解决的常见问题。无人机(UAV)技术的快速发展为解决这一问题提供了一条途径。在本研究中,我们开发了一种无人机与卫星协同估算草原AGB的方法,填补了卫星观测与地面调查之间的空白,并成功绘制了中国内蒙古东北部呼伦贝尔草甸草原的草原AGB。首先,基于无人机高光谱数据和地面调查数据,结合典型植被指数(VIs)和叶面积指数(LAI,一个结构参数)估算基于无人机的AGB。然后,将基于无人机的AGB汇总为一个卫星尺度的样本集,并用于建立基于卫星的AGB估算模型。同时,将空间信息纳入LAI反演过程,以尽量减少无人机和卫星数据之间的尺度偏差。最后,绘制并分析了整个试验区的草原AGB。结果表明:(1)在基于无人机的AGB估算中,与简单回归(SR)、偏最小二乘回归(PLSR)和反向传播神经网络(BPNN)相比,随机森林(RF)性能最佳,R为0.80,均方根误差(RMSE)为76.03 g/m²。(2)通过引入LAI进行草原AGB估算可获得更高的精度。对于基于无人机的AGB估算,R平均提高了10%,RMSE平均降低了9%。对于基于卫星的AGB估算,R从0.70提高到0.75,RMSE从78.24 g/m²降低到72.36 g/m²。(3)基于样本汇总的基于无人机的AGB和LAI图,基于卫星的AGB估算精度显著提高。R从0.57提高到0.75,RMSE从99.38 g/m²降低到72.36 g/m²。这表明无人机可以通过为模型开发和卫星数据的AGB估算提供足够的训练数据集,弥合卫星观测与实地测量之间的差距。