Sea Surface Temperature Prediction With Memory Graph Convolutional Networks

2021年7月26日·
Xiaoyu Zhang
李永庆
李永庆
,
Alejandro C.Frery
,
Peng Ren
Corresponding
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Image credit: Xiaoyu Zhang
摘要
We develop a memory graph convolutional network (MGCN) framework for sea surface temperature (SST) prediction. The MGCN consists of two memory layers: one graph layer and one output layer. The memory layer captures SST temporal changes via temporal convolution units and gate linear units. The graph layer encodes SST spatial changes in terms of characteristics derived from graph Laplacian. The output layer encapsulates information from the previous layers and produces SST prediction results. The MGCN characterizes both the temporal and spatial changes, rendering a comprehensive SST prediction strategy. We use daily mean SST data for two areas near the Bohai Sea and the East China Sea for experimental evaluations and validate that the MGCN performs better than other traditional machine learning methods for nearshore SST prediction. In addition, we test the MGCN on weekly and monthly mean SST datasets and validate that the MGCN is robust and suitable for SST prediction.
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出版物
IEEE Geoscience and Remote Sensing Letters
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李永庆
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讲师
硕士生导师,博士毕业于中国石油大学(华东)控制科学于工程专业,主持和参与多项国家自然科学基金和山东省自然科学基金项目,主要研究方向为海洋信息智能处理。
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