Articles | Volume 17, issue 9
https://doi.org/10.5194/gmd-17-3667-2024
https://doi.org/10.5194/gmd-17-3667-2024
Development and technical paper
 | 
07 May 2024
Development and technical paper |  | 07 May 2024

Machine learning parameterization of the multi-scale Kain–Fritsch (MSKF) convection scheme and stable simulation coupled in the Weather Research and Forecasting (WRF) model using WRF–ML v1.0

Xiaohui Zhong, Xing Yu, and Hao Li

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Cited articles

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In order to forecast localized warm-sector rainfall in the south China region, numerical weather prediction models are being run with finer grid spacing. The conventional convection parameterization (CP) performs poorly in the gray zone, necessitating the development of a scale-aware scheme. We propose a machine learning (ML) model to replace the scale-aware CP scheme. Evaluation against the original CP scheme has shown that the ML-based CP scheme can provide accurate and reliable predictions.