FengWu-4DVar: Coupling the Data-driven Weather Forecasting Model with 4D Variational Assimilation
- URL: http://arxiv.org/abs/2312.12455v2
- Date: Sun, 19 May 2024 05:53:27 GMT
- Title: FengWu-4DVar: Coupling the Data-driven Weather Forecasting Model with 4D Variational Assimilation
- Authors: Yi Xiao, Lei Bai, Wei Xue, Kang Chen, Tao Han, Wanli Ouyang,
- Abstract summary: We develop an AI-based cyclic weather forecasting system, FengWu-4DVar.
FengWu-4DVar can incorporate observational data into the data-driven weather forecasting model.
Experiments on the simulated observational dataset demonstrate that FengWu-4DVar is capable of generating reasonable analysis fields.
- Score: 67.20588721130623
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Weather forecasting is a crucial yet highly challenging task. With the maturity of Artificial Intelligence (AI), the emergence of data-driven weather forecasting models has opened up a new paradigm for the development of weather forecasting systems. Despite the significant successes that have been achieved (e.g., surpassing advanced traditional physical models for global medium-range forecasting), existing data-driven weather forecasting models still rely on the analysis fields generated by the traditional assimilation and forecasting system, which hampers the significance of data-driven weather forecasting models regarding both computational cost and forecasting accuracy. In this work, we explore the possibility of coupling the data-driven weather forecasting model with data assimilation by integrating the global AI weather forecasting model, FengWu, with one of the most popular assimilation algorithms, Four-Dimensional Variational (4DVar) assimilation, and develop an AI-based cyclic weather forecasting system, FengWu-4DVar. FengWu-4DVar can incorporate observational data into the data-driven weather forecasting model and consider the temporal evolution of atmospheric dynamics to obtain accurate analysis fields for making predictions in a cycling manner without the help of physical models. Owning to the auto-differentiation ability of deep learning models, FengWu-4DVar eliminates the need of developing the cumbersome adjoint model, which is usually required in the traditional implementation of the 4DVar algorithm. Experiments on the simulated observational dataset demonstrate that FengWu-4DVar is capable of generating reasonable analysis fields for making accurate and efficient iterative predictions.
Related papers
- FengWu-W2S: A deep learning model for seamless weather-to-subseasonal forecast of global atmosphere [53.22497376154084]
We propose FengWu-Weather to Subseasonal (FengWu-W2S), which builds on the FengWu global weather forecast model and incorporates an ocean-atmosphere-land coupling structure along with a diverse perturbation strategy.
Our hindcast results demonstrate that FengWu-W2S reliably predicts atmospheric conditions out to 3-6 weeks ahead, enhancing predictive capabilities for global surface air temperature, precipitation, geopotential height and intraseasonal signals such as the Madden-Julian Oscillation (MJO) and North Atlantic Oscillation (NAO)
Our ablation experiments on forecast error growth from daily to seasonal timescales reveal potential
arXiv Detail & Related papers (2024-11-15T13:44:37Z) - On conditional diffusion models for PDE simulations [53.01911265639582]
We study score-based diffusion models for forecasting and assimilation of sparse observations.
We propose an autoregressive sampling approach that significantly improves performance in forecasting.
We also propose a new training strategy for conditional score-based models that achieves stable performance over a range of history lengths.
arXiv Detail & Related papers (2024-10-21T18:31:04Z) - Masked Autoregressive Model for Weather Forecasting [7.960598061739508]
Masked Autoregressive Model for Weather Forecasting (MAM4WF)
We propose the Masked Autoregressive Model for Weather Forecasting (MAM4WF).
This model leverages masked modeling, where portions of input data are masked during training.
We evaluate MAM4WF across weather, climate forecasting, and video frame prediction datasets, demonstrating superior performance on five test datasets.
arXiv Detail & Related papers (2024-09-30T09:17:04Z) - Weather Prediction Using CNN-LSTM for Time Series Analysis: A Case Study on Delhi Temperature Data [0.0]
This study explores a hybrid CNN-LSTM model to enhance temperature forecasting accuracy for the Delhi region.
We employed both direct and indirect methods, including comprehensive data preprocessing and exploratory analysis, to construct and train our model.
Experimental results indicate that the CNN-LSTM model significantly outperforms traditional forecasting methods in terms of both accuracy and stability.
arXiv Detail & Related papers (2024-09-14T11:06:07Z) - A Benchmark for AI-based Weather Data Assimilation [10.100157158477145]
We propose DABench, a benchmark constructed by simulated observations, real-world observations, and ERA5 reanalysis.
Our experimental results demonstrate that the end-to-end weather forecasting system, integrating 4DVarFormerV2 and Sformer, can assimilate real-world observations.
The proposed DABench will significantly advance research in AI-based DA, AI-based weather forecasting, and related domains.
arXiv Detail & Related papers (2024-08-21T08:50:19Z) - Generalizing Weather Forecast to Fine-grained Temporal Scales via Physics-AI Hybrid Modeling [55.13352174687475]
This paper proposes a physics-AI hybrid model (i.e., WeatherGFT) which Generalizes weather forecasts to Finer-grained Temporal scales.
Specifically, we employ a carefully designed PDE kernel to simulate physical evolution on a small time scale.
We introduce a lead time-aware training framework to promote the generalization of the model at different lead times.
arXiv Detail & Related papers (2024-05-22T16:21:02Z) - Advancing Data-driven Weather Forecasting: Time-Sliding Data
Augmentation of ERA5 [3.3748750222488657]
We introduce a novel strategy that deviates from the common dependence on high-resolution data.
This paper improves on conventional approaches by adding more variables and a novel approach to data augmentation and processing.
Our findings reveal that despite the lower resolution, the proposed approach demonstrates considerable accuracy in predicting atmospheric conditions.
arXiv Detail & Related papers (2024-02-13T03:01:22Z) - Weather Prediction with Diffusion Guided by Realistic Forecast Processes [49.07556359513563]
We introduce a novel method that applies diffusion models (DM) for weather forecasting.
Our method can achieve both direct and iterative forecasting with the same modeling framework.
The flexibility and controllability of our model empowers a more trustworthy DL system for the general weather community.
arXiv Detail & Related papers (2024-02-06T21:28:42Z) - Towards an end-to-end artificial intelligence driven global weather forecasting system [57.5191940978886]
We present an AI-based data assimilation model, i.e., Adas, for global weather variables.
We demonstrate that Adas can assimilate global observations to produce high-quality analysis, enabling the system operate stably for long term.
We are the first to apply the methods to real-world scenarios, which is more challenging and has considerable practical application potential.
arXiv Detail & Related papers (2023-12-18T09:05:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.