Spatial-temporal attention network for multistep-ahead forecasting of chlorophyll

被引:0
作者
Xiaoyu He
Suixiang Shi
Xiulin Geng
Lingyu Xu
Xiaolin Zhang
机构
[1] Shanghai University,School of Computer Engineering and Science
[2] National Marine Data and Information Service,Key Laboratory of Digital Ocean
[3] Inner Mongolia University of Science and Technology,School of Information Engineering
来源
Applied Intelligence | 2021年 / 51卷
关键词
Attention mechanism; Neural network; Spatial-temporal correlation network; Multistep-ahead forecasting;
D O I
暂无
中图分类号
学科分类号
摘要
The multistep-ahead prediction of chlorophyll provides an effective means for early warning of red tide. However, since multistep-ahead forecasting presents challenges, such as vague interactive relationships among ocean factors, long-term dependence modeling, and accumulative errors, existing methods mostly concentrate on the current time or one-step-ahead forecasting. In this paper, a hierarchical multistep-ahead forecasting model spatial-temporal attention network(STAN), which integrates the spatial context extractor network(SCE-net), long short-term memory network(LSTM), and the temporal attention mechanism, is proposed for the prediction of chlorophyll. In STAN, the input layer utilizes SCE-net to excavate relationships among ocean factors and generate high-level semantic via embedding factors into a continuous low-dimensional space. The middle layer applies LSTM to build the long-term dependencies of corresponding semantic representations. The output layer uses another LSTM with temporal attention to reduce accumulative errors and maintain temporal continuity. The attention can assign different weights to the middle layer’s hidden state and generate a context vector. Then the context vector and the final predicted value are considered as the current input for better forecasting. The buoy observation data of the Xiamen coastal area monitored in 2009–2011 is used to verify the efficiency of STAN. Experimental results prove that STAN outperforms the state-of-the-art methods of multistep-ahead prediction. When using 7 observation steps to forecast 15 steps, the MAPE of STAN is 0.3209, and the MAE is 0.1 lower than the values of the baselines approaches.
引用
收藏
页码:4381 / 4393
页数:12
相关论文
共 50 条
[41]   Multiscale Spatial-Temporal Graph Attention Network for fMRI Brain Disease Classification [J].
Liang, Yin ;
Jia, Yingchen .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2025, 74
[42]   A Spatial-Temporal Attention Approach for Traffic Prediction [J].
Shi, Xiaoming ;
Qi, Heng ;
Shen, Yanming ;
Wu, Genze ;
Yin, Baocai .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2021, 22 (08) :4909-4918
[43]   Attention-based dynamic spatial-temporal graph convolutional networks for traffic speed forecasting [J].
Zhao, Jianli ;
Liu, Zhongbo ;
Sun, Qiuxia ;
Li, Qing ;
Jia, Xiuyan ;
Zhang, Rumeng .
EXPERT SYSTEMS WITH APPLICATIONS, 2022, 204
[44]   Attention-based spatial-temporal synchronous graph convolution networks for traffic flow forecasting [J].
Wei, Xiaoduo ;
Xia, Dawen ;
Li, Yunsong ;
Ao, Yuce ;
Chen, Yan ;
Hu, Yang ;
Li, Yantao ;
Li, Huaqing .
APPLIED INTELLIGENCE, 2025, 55 (06)
[45]   Probing Traffic Trend Forecasting via Spatial-Temporal Aware Learning-Graph Attention [J].
Huang, Xinyuan ;
Ren, Qianqian .
ASIAN CONFERENCE ON MACHINE LEARNING, VOL 222, 2023, 222
[46]   Spatial-temporal attention wavenet: A deep learning framework for traffic prediction considering spatial-temporal dependencies [J].
Tian, Chenyu ;
Chan, Wai Kin .
IET INTELLIGENT TRANSPORT SYSTEMS, 2021, 15 (04) :549-561
[47]   Exploring Machine Learning Models with Spatial-Temporal Information for Interconnect Network Traffic Forecasting [J].
Xu, Xiongxiao .
PROCEEDINGS OF THE 2023 ACM SIGSIM INTERNATIONAL CONFERENCE ON PRINCIPLES OF ADVANCED DISCRETE SIMULATION, ACMSIGSIM-PADS 2023, 2023, :56-57
[48]   Short-Term Traffic Forecasting: An LSTM Network for Spatial-Temporal Speed Prediction [J].
Abduljabbar, Rusul L. ;
Dia, Hussein ;
Tsai, Pei-Wei ;
Liyanage, Sohani .
FUTURE TRANSPORTATION, 2021, 1 (01) :21-37
[49]   Learning Dynamic Spatial-Temporal Dependence in Traffic Forecasting [J].
Ren, Chaoyu ;
Li, Yuezhu .
IEEE ACCESS, 2024, 12 :190039-190053
[50]   VMemNet: A Deep Collaborative Spatial-Temporal Network With Attention Representation for Video Memorability Prediction [J].
Lu, Wei ;
Zhai, Yujia ;
Han, Jiaze ;
Jing, Peiguang ;
Liu, Yu ;
Su, Yuting .
IEEE TRANSACTIONS ON MULTIMEDIA, 2024, 26 :4926-4937