YanTian: An Application Platform for AI Global Weather Forecasting Models
- URL: http://arxiv.org/abs/2410.04539v2
- Date: Sun, 13 Oct 2024 04:24:41 GMT
- Title: YanTian: An Application Platform for AI Global Weather Forecasting Models
- Authors: Wencong Cheng, Jiangjiang Xia, Chang Qu, Zhigang Wang, Xinyi Zeng, Fang Huang, Tianye Li,
- Abstract summary: 'YanTian' is an adaptable application platform for AI Global Weather Forecasting Models (AIGWFM)
The platform enhances existing open-source AIGWFM with a suite of capability-enhancing modules.
'YianTian' also provides a simple, visualized user interface, allowing meteorologists easily access both basic and extended capabilities of the platform.
- Score: 3.77321699963976
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: To promote the practical application of AI Global Weather Forecasting Models (AIGWFM), we have developed an adaptable application platform named 'YanTian'. This platform enhances existing open-source AIGWFM with a suite of capability-enhancing modules and is constructed by a "loosely coupled" plug-in architecture. The goal of 'YanTian' is to address the limitations of current open-source AIGWFM in operational application, including improving local forecast accuracy, providing spatial high-resolution forecasts, increasing density of forecast intervals, and generating diverse products with the provision of AIGC capabilities. 'YianTian' also provides a simple, visualized user interface, allowing meteorologists easily access both basic and extended capabilities of the platform by simply configuring the platform UI. Users do not need to possess the complex artificial intelligence knowledge and the coding techniques. Additionally, 'YianTian' can be deployed on a PC with GPUs. We hope 'YianTian' can facilitate the operational widespread adoption of AIGWFMs.
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