Earth system models (ESMs), which simulate the physics and chemistry of the global atmosphere, land, and ocean, are often used to generate future projections of climate change scenarios. These models are far too computationally intensive to run repeatedly, but limited sets of runs are insufficient for some important applications, like adequately sampling distribution tails to characterize extreme events. As a compromise, emulators are substantially less expensive but may not have all of the complexity of an ESM. Here we demonstrate the use of a conditional generative adversarial network (GAN) to act as an ESM emulator. In doing so, we gain the ability to produce daily weather data that is consistent with what ESM might output over any chosen scenario. In particular, the GAN is aimed at representing a joint probability distribution over space, time, and climate variables, enabling the study of correlated extreme events, such as floods, droughts, or heatwaves.
翻译:模拟全球大气、陆地和海洋物理和化学的地球系统模型(ESM)常常被用来对气候变化假设情景进行未来预测。这些模型在计算上过于密集,无法反复运行,但有限的运行组合不足以用于一些重要的应用,如充分取样分布尾巴来描述极端事件。作为一种妥协,模拟器的成本要低得多,但可能并不具有无害环境管理的全部复杂性。在这里,我们展示了使用一个有条件的基因对抗网络(GAN)来充当无害环境管理模拟器。通过这样做,我们获得了生成每日天气数据的能力,这些数据与无害环境管理在任何选择的假设情景下可能生成的数据相一致。特别是,GAN旨在代表空间、时间和气候变量之间的联合概率分布,从而能够对洪水、干旱或热浪等相关极端事件进行研究。