Deep coastal sea elements forecasting using UNet-based models

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Due to the recent development of deep learning techniques applied to satellite imagery, weather forecasting that uses remote sensing data has also been the subject of major progress. The present paper investigates multiple hours ahead coastal sea elements forecasting in the Netherlands using UNet based architectures. The hourly satellite image data from the Copernicus observation program spanned over a period of two years has been used to train the models and make the forecasting, including seasonal forecasting. Here, we propose 3D dimension Reducer UNet (3DDR-UNet), a variation of the UNet architecture, and further extend this novel model using residual connections, parallel convolutions and asymmetric convolutions which result in introducing three additional architectures, i.e. Res-3DDR-UNet, InceptionRes-3DDR-UNet and AsymmInceptionRes-3DDR-UNet respectively. In particular, we show that the architecture equipped with parallel and asymmetric convolutions as well as skip connections outperforms the other three discussed models.

论文关键词:Coastal sea elements,Time-series satellite data,Deep learning,Convolutional neural networks,UNet

论文评审过程:Received 15 December 2021, Revised 14 June 2022, Accepted 8 July 2022, Available online 22 July 2022, Version of Record 2 August 2022.

论文官网地址:https://doi.org/10.1016/j.knosys.2022.109445