Deep learning-powered vessel traffic flow prediction with spatial-temporal attributes and similarity grouping
Deep learning-powered vessel traffic flow prediction with spatial-temporal attributes and similarity grouping
Perceiving the future trend of Vessel Traffic Flow (VTF) in advance has great application values in the maritime industry. However, using such big data from the Automatic Identification System (AIS) for accurate VTF prediction remains challenging. Deep training networks can learn valuable features from extensive historical data. This paper proposes a new learning-based prediction network, improved Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) with similarity grouping, including three views. To effectively enable the training network to capture the temporal and periodic (i.e. a spatial attribute) change characteristics of VTF, the CNN and LSTM are employed to compose spatial and temporal views, respectively. Hence, the original one-dimensional data is transformed into a matrix (hour of the day ✕ day) to adapt the input of the proposed methodology. In practical applications, VTF of multiple adjacent target regions need to be predicted simultaneously, and the changes of VTF in different areas may influence each other. To explore their hidden relationships, the similarity grouping view aims to find the target area that exhibits the most similarity with the VTF change trend of the current research area. Furthermore, similar information is combined with the features generated from the other two views to obtain the prediction results. In summary, the new advantage lies in mining the spatiotemporal attributes of data and fusing the similarity information of adjacent regions. Comparative experiments with eleven other methods on realistic VTF datasets show that the proposed method demonstrates superior prediction accuracy and stability performance.
Li, Yan
55265913-b46e-4bf7-b246-75031f0a40b9
Liang, Maohan
b4d47ae9-30ff-438a-8956-19e78f4ce81a
Li, Huanhuan
5e806b21-10a7-465c-9db3-32e466ae42f1
Yang, Zaili
82d4eebc-4532-4343-8555-35169e79bb6d
Du, Liang
7da8ee98-5e89-4f6b-8a41-c46abccf063d
Chen, Zhongshuo
ce273f3d-81ba-4c89-bd7c-2c98f3681806
22 August 2023
Li, Yan
55265913-b46e-4bf7-b246-75031f0a40b9
Liang, Maohan
b4d47ae9-30ff-438a-8956-19e78f4ce81a
Li, Huanhuan
5e806b21-10a7-465c-9db3-32e466ae42f1
Yang, Zaili
82d4eebc-4532-4343-8555-35169e79bb6d
Du, Liang
7da8ee98-5e89-4f6b-8a41-c46abccf063d
Chen, Zhongshuo
ce273f3d-81ba-4c89-bd7c-2c98f3681806
Li, Yan, Liang, Maohan, Li, Huanhuan, Yang, Zaili, Du, Liang and Chen, Zhongshuo
(2023)
Deep learning-powered vessel traffic flow prediction with spatial-temporal attributes and similarity grouping.
Engineering Applications of Artificial Intelligence, 126 (Part B), [107012].
(doi:10.1016/j.engappai.2023.107012).
Abstract
Perceiving the future trend of Vessel Traffic Flow (VTF) in advance has great application values in the maritime industry. However, using such big data from the Automatic Identification System (AIS) for accurate VTF prediction remains challenging. Deep training networks can learn valuable features from extensive historical data. This paper proposes a new learning-based prediction network, improved Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM) with similarity grouping, including three views. To effectively enable the training network to capture the temporal and periodic (i.e. a spatial attribute) change characteristics of VTF, the CNN and LSTM are employed to compose spatial and temporal views, respectively. Hence, the original one-dimensional data is transformed into a matrix (hour of the day ✕ day) to adapt the input of the proposed methodology. In practical applications, VTF of multiple adjacent target regions need to be predicted simultaneously, and the changes of VTF in different areas may influence each other. To explore their hidden relationships, the similarity grouping view aims to find the target area that exhibits the most similarity with the VTF change trend of the current research area. Furthermore, similar information is combined with the features generated from the other two views to obtain the prediction results. In summary, the new advantage lies in mining the spatiotemporal attributes of data and fusing the similarity information of adjacent regions. Comparative experiments with eleven other methods on realistic VTF datasets show that the proposed method demonstrates superior prediction accuracy and stability performance.
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1-s2.0-S095219762301196X-main
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Accepted/In Press date: 17 August 2023
e-pub ahead of print date: 22 August 2023
Published date: 22 August 2023
Identifiers
Local EPrints ID: 503651
URI: http://eprints.soton.ac.uk/id/eprint/503651
ISSN: 0952-1976
PURE UUID: ccd4c82a-5b87-473b-a231-b79959529247
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Date deposited: 08 Aug 2025 16:30
Last modified: 22 Aug 2025 02:49
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Author:
Yan Li
Author:
Maohan Liang
Author:
Huanhuan Li
Author:
Zaili Yang
Author:
Liang Du
Author:
Zhongshuo Chen
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