WeatherReal: A Benchmark Based on In-Situ Observations for Evaluating Weather Models
- URL: http://arxiv.org/abs/2409.09371v1
- Date: Sat, 14 Sep 2024 08:53:46 GMT
- Title: WeatherReal: A Benchmark Based on In-Situ Observations for Evaluating Weather Models
- Authors: Weixin Jin, Jonathan Weyn, Pengcheng Zhao, Siqi Xiang, Jiang Bian, Zuliang Fang, Haiyu Dong, Hongyu Sun, Kit Thambiratnam, Qi Zhang,
- Abstract summary: We introduce WeatherReal, a novel benchmark dataset for weather forecasting derived from global near-surface in-situ observations.
This paper details the sources and processing methodologies underlying the dataset, and illustrates the advantage of in-situ observations in capturing hyper-local and extreme weather.
Our work aims to advance the AI-based weather forecasting research towards a more application-focused and operation-ready approach.
- Score: 11.016845506758841
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, AI-based weather forecasting models have matched or even outperformed numerical weather prediction systems. However, most of these models have been trained and evaluated on reanalysis datasets like ERA5. These datasets, being products of numerical models, often diverge substantially from actual observations in some crucial variables like near-surface temperature, wind, precipitation and clouds - parameters that hold significant public interest. To address this divergence, we introduce WeatherReal, a novel benchmark dataset for weather forecasting, derived from global near-surface in-situ observations. WeatherReal also features a publicly accessible quality control and evaluation framework. This paper details the sources and processing methodologies underlying the dataset, and further illustrates the advantage of in-situ observations in capturing hyper-local and extreme weather through comparative analyses and case studies. Using WeatherReal, we evaluated several data-driven models and compared them with leading numerical models. Our work aims to advance the AI-based weather forecasting research towards a more application-focused and operation-ready approach.
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