2022
DOI: 10.1029/2022ea002502
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GMA: An Improved Framework of Radar Extrapolation Based on Spatiotemporal Sequence Neural Network

Abstract: Most previous current spatiotemporal sequence neural networks used for radar extrapolation have difficulties in learning long‐term spatiotemporal memories. This is because the spatiotemporal sequential neural networks only use the information from the previous time step node to update the prediction state, and the networks tend to rely on the convolution layers to capture the spatiotemporal features, which are local and inefficient. In order to capture the long‐term temporal characteristics and local abrupt sp… Show more

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