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  • 标题:Data‐Driven Super‐Parameterization Using Deep Learning: Experimentation With Multiscale Lorenz 96 Systems and Transfer Learning
  • 本地全文:下载
  • 作者:Ashesh Chattopadhyay ; Adam Subel ; Pedram Hassanzadeh
  • 期刊名称:Journal of Advances in Modeling Earth Systems
  • 电子版ISSN:1942-2466
  • 出版年度:2020
  • 卷号:12
  • 期号:11
  • 页码:1-24
  • DOI:10.1029/2020MS002084
  • 出版社:John Wiley & Sons, Ltd.
  • 摘要:To make weather and climate models computationally affordable, small-scale processes are usually represented in terms of the large-scale, explicitly resolved processes using physics-based/ semi-empirical parameterization schemes. Another approach, computationally more demanding but often more accurate, is super-parameterization (SP). SP involves integrating the equations of small-scale processes on high-resolution grids embedded within the low-resolution grid of large-scale processes. Recently, studies have used machine learning (ML) to develop data-driven parameterization (DD-P) schemes. Here, we propose a new approach, data-driven SP (DD-SP), in which the equations of the small-scale processes are integrated data-drivenly (thus inexpensively) using ML methods such as recurrent neural networks. Employing multiscale Lorenz 96 systems as the testbed, we compare the cost and accuracy (in terms of both short-term prediction and long-term statistics) of parameterized low-resolution (PLR) SP, DD-P, and DD-SP models. We show that with the same computational cost, DD-SP substantially outperforms PLR and is more accurate than DD-P, particularly when scale separation is lacking. DD-SP is much cheaper than SP, yet its accuracy is the same in reproducing long-term statistics (climate prediction) and often comparable in short-term forecasting (weather prediction). We also investigate generalization: when models trained on data from one system are applied to a more chaotic system, we find that models often do not generalize, particularly when short-term prediction accuracies are examined. However, we show that transfer learning, which involves re-training the data-driven model with a small amount of data from the new system, significantly improves generalization. Potential applications of DD-SP and transfer learning in climate/weather modeling are discussed.
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