论文标题
使用Sentinel-2和Landsat 8估算作物主要生产率
Estimating Crop Primary Productivity with Sentinel-2 and Landsat 8 using Machine Learning Methods Trained with Radiative Transfer Simulations
论文作者
论文摘要
Satellite remote sensing has been widely used in the last decades for agricultural applications, {both for assessing vegetation condition and for subsequent yield prediction.} Existing remote sensing-based methods to estimate gross primary productivity (GPP), which is an important variable to indicate crop photosynthetic function and stress, typically rely on empirical or semi-empirical approaches, which tend to over-simplify photosynthetic mechanisms.在这项工作中,我们利用机械光合作用建模和卫星数据可用性的所有平行发展,以进行高级监测作物生产率。特别是,我们将基于过程的建模与土壤环境能量平衡辐射转移模型(SCOPE)与Sentinel-2 {和Landsat 8}光学遥感数据和机器学习方法相结合,以估算作物GPP。我们的模型成功地估算了跨各种C3作物类型和环境条件的GPP,即使它不使用来自相应站点的任何局部信息。这突出了其在当前的地球观测云计算平台的帮助下,在全球范围内从新卫星传感器中绘制农作物生产力的潜力。
Satellite remote sensing has been widely used in the last decades for agricultural applications, {both for assessing vegetation condition and for subsequent yield prediction.} Existing remote sensing-based methods to estimate gross primary productivity (GPP), which is an important variable to indicate crop photosynthetic function and stress, typically rely on empirical or semi-empirical approaches, which tend to over-simplify photosynthetic mechanisms. In this work, we take advantage of all parallel developments in mechanistic photosynthesis modeling and satellite data availability for advanced monitoring of crop productivity. In particular, we combine process-based modeling with the soil-canopy energy balance radiative transfer model (SCOPE) with Sentinel-2 {and Landsat 8} optical remote sensing data and machine learning methods in order to estimate crop GPP. Our model successfully estimates GPP across a variety of C3 crop types and environmental conditions even though it does not use any local information from the corresponding sites. This highlights its potential to map crop productivity from new satellite sensors at a global scale with the help of current Earth observation cloud computing platforms.