论文标题

学会通过Convlstms通过非洲进行精细分辨率预测植被绿色

Learning to forecast vegetation greenness at fine resolution over Africa with ConvLSTMs

论文作者

Robin, Claire, Requena-Mesa, Christian, Benson, Vitus, Alonso, Lazaro, Poehls, Jeran, Carvalhais, Nuno, Reichstein, Markus

论文摘要

预测应对气候和天气事件的植被状态是一个主要挑战。它的实施对于预测农作物产量,森林损害或更普遍的影响对与社会经济功能相关的生态系统服务的影响至关重要,如果没有社会经济功能,这可能导致人道主义灾难。植被状况取决于天气和环境状况,这些天气和环境状况调节了在几个时间尺度发生的复杂生态过程。植被与不同环境驱动因素之间的相互作用在瞬时但时置的效果上表达了反应,通常在景观和区域尺度上显示出新兴的空间环境。我们将陆地表面预测任务作为一项强烈指导的视频预测任务,目的是使用地形和天气变量以非常精细的分辨率预测植被以指导预测。我们使用卷积LSTM(Convlstm)体系结构来解决此任务,并使用Sentinel-2卫星NDVI预测非洲植被状态的变化,具有ERA5天气重新分析,SMAP卫星测量值和地形(SRTMV4.1的DEM)作为变量来指导预测。我们的结果表明,Convlstm模型不仅可以预测高分辨率下NDVI的季节性演变,而且还可以预测天气异常对基线的差异影响。该模型能够预测不同的植被类型,即使在目标长度期间具有很高NDVI变异性的植被类型,这有望在与干旱相关的灾难中支持预期行动。

Forecasting the state of vegetation in response to climate and weather events is a major challenge. Its implementation will prove crucial in predicting crop yield, forest damage, or more generally the impact on ecosystems services relevant for socio-economic functioning, which if absent can lead to humanitarian disasters. Vegetation status depends on weather and environmental conditions that modulate complex ecological processes taking place at several timescales. Interactions between vegetation and different environmental drivers express responses at instantaneous but also time-lagged effects, often showing an emerging spatial context at landscape and regional scales. We formulate the land surface forecasting task as a strongly guided video prediction task where the objective is to forecast the vegetation developing at very fine resolution using topography and weather variables to guide the prediction. We use a Convolutional LSTM (ConvLSTM) architecture to address this task and predict changes in the vegetation state in Africa using Sentinel-2 satellite NDVI, having ERA5 weather reanalysis, SMAP satellite measurements, and topography (DEM of SRTMv4.1) as variables to guide the prediction. Ours results highlight how ConvLSTM models can not only forecast the seasonal evolution of NDVI at high resolution, but also the differential impacts of weather anomalies over the baselines. The model is able to predict different vegetation types, even those with very high NDVI variability during target length, which is promising to support anticipatory actions in the context of drought-related disasters.

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