Climate change is causing the intensification of rainfall extremes. Precipitation projections with high spatial resolution are important for society to prepare for these changes, e.g. to model flooding impacts. Physics-based simulations for creating such projections are very computationally expensive. This work demonstrates the effectiveness of diffusion models, a form of deep generative models, for generating much more cheaply realistic high resolution rainfall samples for the UK conditioned on data from a low resolution simulation. We show for the first time a machine learning model that is able to produce realistic samples of high-resolution rainfall based on a physical model that resolves atmospheric convection, a key process behind extreme rainfall. By adding self-learnt, location-specific information to low resolution relative vorticity, quantiles and time-mean of the samples match well their counterparts from the high-resolution simulation.
翻译:高空间分辨率的降水预测对于社会为这些变化做准备非常重要,例如模型化洪水影响等。基于物理的模拟进行这种预测非常昂贵。这项工作显示了扩散模型的有效性,这是一种深层基因化模型的形式,为英国生成更廉价、更切合实际的高分辨率降雨样本,并以低分辨率模拟数据为条件。我们首次展示了一种机器学习模型,能够根据一种能解决大气对流的物理模型(一种极端降雨后的关键过程)产生高分辨率降雨的现实样本。通过在低分辨率相对异性、量度和样本的时间比例上添加自我读取的、特定地点的信息,与高分辨率模拟的对应方相匹配。