Climate change is global, yet its concrete impacts can strongly vary between different locations in the same region. Seasonal weather forecasts currently operate at the mesoscale (> 1 km). For more targeted mitigation and adaptation, modelling impacts to < 100 m is needed. Yet, the relationship between driving variables and Earth's surface at such local scales remains unresolved by current physical models. Large Earth observation datasets now enable us to create machine learning models capable of translating coarse weather information into high-resolution Earth surface forecasts. Here, we define high-resolution Earth surface forecasting as video prediction of satellite imagery conditional on mesoscale weather forecasts. Video prediction has been tackled with deep learning models. Developing such models requires analysis-ready datasets. We introduce EarthNet2021, a new, curated dataset containing target spatio-temporal Sentinel 2 satellite imagery at 20 m resolution, matched with high-resolution topography and mesoscale (1.28 km) weather variables. With over 32000 samples it is suitable for training deep neural networks. Comparing multiple Earth surface forecasts is not trivial. Hence, we define the EarthNetScore, a novel ranking criterion for models forecasting Earth surface reflectance. For model intercomparison we frame EarthNet2021 as a challenge with four tracks based on different test sets. These allow evaluation of model validity and robustness as well as model applicability to extreme events and the complete annual vegetation cycle. In addition to forecasting directly observable weather impacts through satellite-derived vegetation indices, capable Earth surface models will enable downstream applications such as crop yield prediction, forest health assessments, coastline management, or biodiversity monitoring. Find data, code, and how to participate at www.earthnet.tech .
翻译:气候变化是全球性的,然而其具体影响却在同一区域不同地点之间有很大差异。季节性天气预报目前以中尺度( > 1公里)为主,季节性天气预报目前以中尺度( > 1公里)为主。为了进行更有针对性的减缓和适应,需要将影响建模小于100米。然而,驱动变量与地球表面之间的关系目前尚未被当前物理模型所解决。大型地球观测数据集现在使我们能够创建机器学习模型,能够将粗化的天气信息转化为高分辨率地球表面预报。在这里,我们定义高清晰的地球表面预报,作为以中尺度天气预报为条件的卫星图像的视频预测。视频预测已经以深层次的学习模型进行处理。因此,我们定义了EarthNet21的视频预测需要分析即时的数据集。我们引入了EarthNet201,一个包含目标阵列时钟哨2卫星图像的新型数据集,在20米线图上,与高分辨率的气象图谱(1.28公里)天气变量相匹配。通过这些模型来培训深度的神经网络网络网络网络网络。我们定义了地球网络的精确度和多层地表层预报是如何进行对比评估。我们定义了地球表面预测的模型,作为模型, 将直接地平流测测测测测测测测测测测测测测测测数据,作为模型,作为模型,作为地基的地基的地面测测测测测测测测测测的地的地的地的地基。