Predicting Vessel Tracks in Waterways for Maritime Anomaly Detection

被引:0
|
作者
Minssen, Finn-Matthis [1 ]
Klemm, Jannik [1 ]
Steidel, Matthias [2 ]
Niemi, Arto [1 ]
机构
[1] German Aerosp Ctr, Inst Syst Engn Future Mobil, Oldenburg, Germany
[2] German Aerosp Ctr, Inst Protect Maritime Infrastruct, Bremerhaven, Germany
来源
TRANSACTIONS ON MARITIME SCIENCE-TOMS | 2024年 / 13卷 / 01期
关键词
Vessel track prediction; Bi-directional LSTM; Transformer model; AIS data; Tide data; Weather data; Anomaly detection; IMPACT; URBANIZATION; SHANGHAI; SOILS;
D O I
10.7225/toms.v13.n01.002
中图分类号
U6 [水路运输]; P75 [海洋工程];
学科分类号
0814 ; 081505 ; 0824 ; 082401 ;
摘要
Many approaches to vessel track prediction and anomaly detection rely only on a vessel's positional data. This paper examines whether including tide and weather data into the track prediction model improves accuracy. We predict vessel tracks in waterways using a bi-directional Long Short -Term Memory (Bi-LSTM) approach and a transformer model. For this purpose, the boundaries of the Elbe and Weser river waterways are merged with vessel position data. Additionally, tide data, as well as weather information, will be used to train the model. To ascertain whether this additional data improves the accuracy, the models have been trained with and without tide and weather data and evaluated against each other. Furthermore, we have investigate whether the predictions can be used for detecting anomalous vessel behaviour. Our results show that the lowest average error and the best RMSE, MSE, and MAE values have been achieved with the Bi-LSTM, where no tide and weather data have been used for training. We have also found that the transformer model is more accurate than a linear prediction model, which is used as a baseline. In addition, we have shown that deviations between predicted and real tracks can be labelled as anomalous. The results have shown that including tide and weather data does not necessarily improve the predictions. Adding data with a low information content to train a machine learning model may introduce noise or bias into the model. We believe that this phenomenon explains our results. Thereby this paper shows that simply adding this data to train the track prediction model may not enhance the overall accuracy.
引用
收藏
页数:22
相关论文
共 50 条
  • [31] Exploring Trajectory Behavior Model for Anomaly Detection in Maritime Moving Objects
    Lei, Po-Ruey
    2013 IEEE INTERNATIONAL CONFERENCE ON INTELLIGENCE AND SECURITY INFORMATICS: BIG DATA, EMERGENT THREATS, AND DECISION-MAKING IN SECURITY INFORMATICS, 2013, : 271 - 271
  • [32] Grid size optimization for potential field based maritime anomaly detection
    Osekowska, Ewa
    Johnson, Henric
    Carlsson, Bengt
    17TH MEETING OF THE EURO WORKING GROUP ON TRANSPORTATION, EWGT2014, 2014, 3 : 720 - 729
  • [33] Explainable Anomaly Detection Framework for Maritime Main Engine Sensor Data
    Kim, Donghyun
    Antariksa, Gian
    Handayani, Melia Putri
    Lee, Sangbong
    Lee, Jihwan
    SENSORS, 2021, 21 (15)
  • [34] Dissecting uncertainty-based fusion techniques for maritime anomaly detection
    Jousselme, Anne-Laure
    Pallotta, Giuliana
    2015 18TH INTERNATIONAL CONFERENCE ON INFORMATION FUSION (FUSION), 2015, : 34 - 41
  • [35] Behaviour analysis and anomaly detection algorithms for the MARitime Integrated Surveillance Awareness
    Neves, Joao
    Maia, Rui
    Conceicao, Victor
    Marques, Mario Monteiro
    2019 IEEE UNDERWATER TECHNOLOGY (UT), 2019,
  • [36] Vessel Behavior Anomaly Detection Using Graph Attention Network
    Zhang, Yuanzhe
    Jin, Qiqiang
    Liang, Maohan
    Ma, Ruixin
    Liu, Ryan Wen
    NEURAL INFORMATION PROCESSING, ICONIP 2023, PT V, 2024, 14451 : 291 - 304
  • [37] Anomaly Detection in Vessel Sensors Data with Unsupervised Learning Technique
    Handayani, Melia Putri
    Antariksa, Gian
    Lee, Jihwan
    2021 INTERNATIONAL CONFERENCE ON ELECTRONICS, INFORMATION, AND COMMUNICATION (ICEIC), 2021,
  • [38] Intelligent Anomaly Detection of Trajectories for IoT Empowered Maritime Transportation Systems
    Hu, Jia
    Kaur, Kuljeet
    Lin, Hui
    Wang, Xiaoding
    Hassan, Mohammad Mehedi
    Razzak, Imran
    Hammoudeh, Mohammad
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2023, 24 (02) : 2382 - 2391
  • [39] MemFormer: A memory based unified model for anomaly detection on metro railway tracks
    Liu, Ruikang
    Liu, Weiming
    Duan, Mengfei
    Xie, Wei
    Dai, Yuan
    Liao, Xianzhe
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 237
  • [40] Anomaly detection for maritime navigation based on probability density function of error of reconstruction
    Sadeghi, Zahra
    Matwin, Stan
    JOURNAL OF INTELLIGENT SYSTEMS, 2023, 32 (01)