4.5 Article

Distributed Typhoon Track Prediction Based on Complex Features and Multitask Learning

Journal

COMPLEXITY
Volume 2021, Issue -, Pages -

Publisher

WILEY-HINDAWI
DOI: 10.1155/2021/5661292

Keywords

-

Funding

  1. National Key R&D Program of China [2016YFC1401902]
  2. National Natural Science Foundation of China [61972077]
  3. LiaoNing Revitalization Talents Program [XLYC2007079]

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Research shows that predicting typhoon tracks is an important topic due to the disastrous effects typhoons often have. Existing studies have not fully considered historical and future factors, leaving room for improving prediction accuracy. The authors proposed a novel framework and verified its effectiveness on real datasets.
Typhoons are common natural phenomena that often have disastrous aftermaths, particularly in coastal areas. Consequently, typhoon track prediction has always been an important research topic. It chiefly involves predicting the movement of a typhoon according to its history. However, the formation and movement of typhoons is a complex process, which in turn makes accurate prediction more complicated; the potential location of typhoons is related to both historical and future factors. Existing works do not fully consider these factors; thus, there is significant room for improving the accuracy of predictions. To this end, we presented a novel typhoon track prediction framework comprising complex historical features-climatic, geographical, and physical features-as well as a deep-learning network based on multitask learning. We implemented the framework in a distributed system, thereby improving the training efficiency of the network. We verified the efficiency of the proposed framework on real datasets.

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