2023
DOI: 10.3389/fenrg.2023.1277412
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A probabilistic track model for tropical cyclone risk assessment using multitask learning

Zhou Jian,
Xuan Liu,
Tianyang Zhao

Abstract: Tropical cyclone (TC) track forecasting is critical for wind risk assessment. This work proposes a novel probabilistic TC track forecasting model based on mixture density network (MDN) and multitask learning (MTL). The existing NN-based probabilistic TC track prediction models focus on directly modeling the distribution of the future TC positions. Multitask learning has been shown to boost the performance of single tasks when the tasks are relevant. This work divides the probabilistic track prediction task int… Show more

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