Machine learning emulation of precipitation from km-scale regional climate simulations using a diffusion model

Henry Addison, Elizabeth Kendon, Suman Ravuri, Laurence Aitchison, Peter AG Watson
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Abstract

High-resolution climate simulations are very valuable for understanding climate change impacts and planning adaptation measures. This has motivated use of regional climate models at sufficiently fine resolution to capture important small-scale atmospheric processes, such as convective storms. However, these regional models have very high computational costs, limiting their applicability. We present CPMGEM, a novel application of a generative machine learning model, a diffusion model, to skilfully emulate precipitation simulations from such a high-resolution model over England and Wales at much lower cost. This emulator enables stochastic generation of high-resolution (8.8km), daily-mean precipitation samples conditioned on coarse-resolution (60km) weather states from a global climate model. The output is fine enough for use in applications such as flood inundation modelling. The emulator produces precipitation predictions with realistic intensities and spatial structures and captures most of the 21st century climate change signal. We show evidence that the emulator has skill for extreme events up to and including 1-in-100 year intensities. Potential applications include producing high-resolution precipitation predictions for large-ensemble climate simulations and downscaling different climate models and climate change scenarios to better sample uncertainty in climate changes at local-scale.
利用扩散模型对千米尺度区域气候模拟的降水量进行机器学习模拟
高分辨率的气候模拟对于了解气候变化的影响和规划适应措施非常有价值。这就促使人们使用分辨率足够高的区域气候模式来捕捉重要的小尺度大气过程,如对流风暴。然而,这些区域模式的计算成本非常高,限制了其适用性。我们介绍了 CPMGEM,它是生成式机器学习模型(扩散模型)的一种新应用,能够以更低的成本巧妙地模拟英格兰和威尔士地区高分辨率模型的降水模拟。该模拟器能够随机生成高分辨率(8.8 千米)的日均降水样本,并以全球气候模型的粗分辨率(60 千米)天气状态为条件。其输出足够精细,可用于洪水淹没建模等应用。模拟器预测的降水具有真实的强度和空间结构,并捕捉到 21 世纪气候变化的大部分信号。我们证明了模拟器对极端事件的预测能力,包括 100 年一遇的强度。其潜在应用包括为大集合气候模拟提供高分辨率降水预测,以及降尺度模拟不同气候模型和气候变化情景,以更好地采样局部尺度气候变化的不确定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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