Multi-Task Deep Learning Based Spatiotemporal Arctic Sea Ice Forecasting ...

2021 IEEE International Conference on Big Data (Big Data), 15-18 December 2021, Orlando, FL, USA ... : Critical natural resources and processes in the Arctic depend heavily on sea ice. Thus, accurate and timely predictions of Arctic sea ice changes is important. Arctic sea ice forecasting involves t...

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Bibliographic Details
Main Authors: Kim, Eliot, Kruse, Peter, Lama, Skylar, Bourne Jr., Jamal, Hu, Michael, Ali, Sahara, Huang, Yiyi, Wang, Jianwu
Format: Article in Journal/Newspaper
Language:unknown
Published: IEEE 2021
Subjects:
Online Access:https://dx.doi.org/10.13016/m22s49-wraa
https://mdsoar.org/handle/11603/25881
Description
Summary:2021 IEEE International Conference on Big Data (Big Data), 15-18 December 2021, Orlando, FL, USA ... : Critical natural resources and processes in the Arctic depend heavily on sea ice. Thus, accurate and timely predictions of Arctic sea ice changes is important. Arctic sea ice forecasting involves two connected tasks: predicting sea ice concentration (SIC) at each pixel and predicting overall sea ice extent (SIE). Instead of having two separate models for these two forecasting tasks, in this paper we study how to use multi- task learning techniques and leverage the connections between ice concentration and ice extent to improve accuracy for both forecasting tasks. Because of the spatiotemporal nature of the data, we designed two novel multi-task learning models based on the CNN and ConvLSTM, respectively. Further, in conjunction with multi-task models, we developed custom loss functions which train the models to ignore land pixels and optimize for both concentration and extent when making predictions. Our experiments show that multi-task models provide better accuracy for a 1-month lead time than models that ...