2023
DOI: 10.3389/fmars.2022.1046964
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USFP: An unbalanced severe typhoon formation prediction framework based on transfer learning

Abstract: IntroductionSevere typhoons, as extreme weather events, can cause a large number of casualties and property damage in coastal areas. There are mainly three kinds of methods for the prediction of severe typhoon formation, which are the numerical-based methods, the statistical-based methods, and the machine learning-based methods. However, existing methods do not consider the unbalance between the number of ordinary typhoon samples and severe typhoon samples, which makes the accuracies of existing methods in the… Show more

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