Department of Earth and Environmental Engineering, Columbia University, New York, New York 10027, USA.
Chaos. 2023 Jul 1;33(7). doi: 10.1063/5.0131929.
Physical parameterizations (or closures) are used as representations of unresolved subgrid processes within weather and global climate models or coarse-scale turbulent models, whose resolutions are too coarse to resolve small-scale processes. These parameterizations are typically grounded on physically based, yet empirical, representations of the underlying small-scale processes. Machine learning-based parameterizations have recently been proposed as an alternative solution and have shown great promise to reduce uncertainties associated with the parameterization of small-scale processes. Yet, those approaches still show some important mismatches that are often attributed to the stochasticity of the considered process. This stochasticity can be due to coarse temporal resolution, unresolved variables, or simply to the inherent chaotic nature of the process. To address these issues, we propose a new type of parameterization (closure), which is built using memory-based neural networks, to account for the non-instantaneous response of the closure and to enhance its stability and prediction accuracy. We apply the proposed memory-based parameterization, with differentiable solver, to the Lorenz '96 model in the presence of a coarse temporal resolution and show its capacity to predict skillful forecasts over a long time horizon of the resolved variables compared to instantaneous parameterizations. This approach paves the way for the use of memory-based parameterizations for closure problems.
物理参数化(或闭合)被用作天气和全球气候模型或粗尺度湍流模型中未解决的子网格过程的表示,这些模型的分辨率太粗,无法解决小尺度过程。这些参数化通常基于物理基础,但经验性的,对潜在小尺度过程的表示。基于机器学习的参数化最近被提出作为一种替代解决方案,并显示出很大的潜力,可以减少与小尺度过程参数化相关的不确定性。然而,这些方法仍然存在一些重要的不匹配,这通常归因于所考虑过程的随机性。这种随机性可能是由于时间分辨率粗、未解析变量或仅仅是过程的固有混沌性质。为了解决这些问题,我们提出了一种使用基于记忆的神经网络构建的新型参数化(闭合),以考虑闭合的非瞬时响应,并提高其稳定性和预测精度。我们将基于记忆的参数化与可微求解器一起应用于存在粗时间分辨率的 Lorenz '96 模型,并展示了与瞬时参数化相比,其在可解析变量的长时间范围内预测技能的能力。这种方法为基于记忆的参数化在闭合问题中的应用铺平了道路。