咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >TorchDA: A Python package for ... 收藏
arXiv

TorchDA: A Python package for performing data assimilation with deep learning forward and transformation functions

作     者:Cheng, Sibo Min, Jinyang Liu, Che Arcucci, Rossella 

作者机构:CEREA École des Ponts and EDF R&D Île-de-France France Data Science Instituite Department of Computing Imperial College London United Kingdom Department of Earth Science & Engineering Imperial College London United Kingdom 

出 版 物:《arXiv》 (arXiv)

年 卷 期:2024年

核心收录:

主  题:Kalman filters 

摘      要:Data assimilation techniques are often confronted with challenges handling complex high dimensional physical systems, because high precision simulation in complex high dimensional physical systems is computationally expensive and the exact observation functions that can be applied in these systems are difficult to obtain. It prompts growing interest in integrating deep learning models within data assimilation workflows, but current software packages for data assimilation cannot handle deep learning models inside. This study presents a novel Python package seamlessly combining data assimilation with deep neural networks to serve as models for state transition and observation functions. The package, named TorchDA, implements Kalman Filter, Ensemble Kalman Filter (EnKF), 3D Variational (3DVar), and 4D Variational (4DVar) algorithms, allowing flexible algorithm selection based on application requirements. Comprehensive experiments conducted on the Lorenz 63 and a two-dimensional shallow water system demonstrate significantly enhanced performance over standalone model predictions without assimilation. The shallow water analysis validates data assimilation capabilities mapping between different physical quantity spaces in either full space or reduced order space. Overall, this innovative software package enables flexible integration of deep learning representations within data assimilation, conferring a versatile tool to tackle complex high dimensional dynamical systems across scientific domains. © 2024, CC BY-NC-SA.

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分