论文标题
深层生成模型超级溶质与空间相关的多区域气候数据
Deep generative model super-resolves spatially correlated multiregional climate data
论文作者
论文摘要
超级解决全球气候模拟的粗略产出,称为缩减,对于需要长期气候变化预测的系统做出政治和社会决策至关重要。但是,现有的快速超级分辨率技术尚未保留气候数据的空间相关性质,当我们解决具有空间扩张的系统(例如运输基础设施的开发)时,这一点尤其重要。本文中,我们显示了一个基于对抗性的网络的机器学习,使我们能够在降尺度中正确地重建区域间空间相关性,同时高达五十个,同时保持像素统计的一致性。与测量的温度和降水分布的气象数据直接比较表明,整合气候上重要的物理信息可以改善降尺度性能,这促使我们称这种方法称为$π$ srgan(物理学知情的超分辨率生成性逆向网络)。所提出的方法对气候变化影响的区域间一致评估具有潜在的应用。此外,我们介绍了基于深生成模型的降尺度方法的另一种变体的结果,其中低分辨率降水场被压力场取代,称为$ψ$ srgan(沉淀源无法访问SRGAN)。值得注意的是,该方法表明了降水场的出乎意料的良好降尺度性能。
Super-resolving the coarse outputs of global climate simulations, termed downscaling, is crucial in making political and social decisions on systems requiring long-term climate change projections. Existing fast super-resolution techniques, however, have yet to preserve the spatially correlated nature of climatological data, which is particularly important when we address systems with spatial expanse, such as the development of transportation infrastructure. Herein, we show an adversarial network-based machine learning enables us to correctly reconstruct the inter-regional spatial correlations in downscaling with high magnification of up to fifty while maintaining pixel-wise statistical consistency. Direct comparison with the measured meteorological data of temperature and precipitation distributions reveals that integrating climatologically important physical information improves the downscaling performance, which prompts us to call this approach $π$SRGAN (Physics Informed Super-Resolution Generative Adversarial Network). The proposed method has a potential application to the inter-regionally consistent assessment of the climate change impact. Additionally, we present the outcomes of another variant of the deep generative model-based downscaling approach in which the low-resolution precipitation field is substituted with the pressure field, referred to as $ψ$SRGAN (Precipitation Source Inaccessible SRGAN). Remarkably, this method demonstrates unexpectedly good downscaling performance for the precipitation field.