Multiple Information Spatial–Temporal Attention based Graph Convolution Network for traffic prediction
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Published:2023-03
Issue:
Volume:136
Page:110052
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ISSN:1568-4946
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Container-title:Applied Soft Computing
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language:en
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Short-container-title:Applied Soft Computing
Author:
Tao Shiming,
Zhang Huyin,
Yang FeiORCID,
Wu Yonghao,
Li CongORCID
Reference24 articles.
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5. Evaluation of the potential of using subsets of historical climatological data for ensemble streamflow prediction (ESP) forecasting;Sabzipour;J. Hydrol.,2021
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