Influence of Ocean Current Features on the Performance of Machine Learning and Dynamic Tracking Methods in Predicting Marine Drifter Trajectories

被引:0
作者
Lin, Huan [1 ]
Yu, Weiye [1 ]
Lian, Zhan [1 ,2 ]
机构
[1] Shantou Univ, Inst Marine Sci, Guangdong Prov Key Lab Marine Disaster Predict & P, Shantou 515063, Peoples R China
[2] Southern Marine Sci & Engn Guangdong Lab Zhuhai, Zhuhai 510275, Peoples R China
关键词
machine learning; dynamic tracking model; trajectory prediction; ALTIMETRY; SPREAD; MODEL; OIL;
D O I
10.3390/jmse12111933
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
Accurately and rapidly predicting marine drifter trajectories under conditions of information scarcity is critical for addressing maritime emergencies and conducting marine surveys with resource-limited unmanned vessels. Machine learning-based tracking methods, such as Long Short-Term Memory networks (LSTM), offer a promising approach for trajectory prediction in such scenarios. This study combines satellite observations and idealized simulations to compare the predictive performance of LSTM with a resource-dependent dynamic tracking method (DT). The results indicate that when driven solely by historical drifter paths, LSTM achieves better trajectory predictions when trained and tested on relative trajectory intervals rather than the absolute positions of individual trajectory points. In general, LSTM provides a more accurate geometric pattern of trajectories at the initial stages of forecasting, while DT offers superior accuracy in predicting specific trajectory positions. The velocity and curvature of ocean currents jointly influence the prediction quality of both methods. In regions characterized by active sub-mesoscale dynamics, such as the fast-flowing and meandering Kuroshio Current and Kuroshio Current Extension, DT predicts more reliable trajectory patterns but lacks precision in detailed position estimates compared to LSTM. However, in areas dominated by the fast but relatively straight North Equatorial Current, the performance of the two methods reverses. The two methods also demonstrate different tolerances for noise and sampling intervals. This study establishes a baseline for selecting machine learning methods for marine drifter prediction and highlights the limitations of AI-based predictions under data-scarce and resource-constrained conditions.
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页数:16
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[31]   Development and Performance Analysis of Machine Learning Methods for Predicting the Occurrence of Constipation and its Risk Factors Among College-aged Girls [J].
Ghosh, Joyeta ;
Sanyal, Poulomi .
CURRENT RESEARCH IN NUTRITION AND FOOD SCIENCE, 2024, 12 (03) :1284-1299
[32]   Performance of machine learning methods in predicting water quality index based on irregular data set: application on Illizi region (Algerian southeast) [J].
Kouadri, Saber ;
Elbeltagi, Ahmed ;
Islam, Abu Reza Md Towfiqul ;
Kateb, Samir .
APPLIED WATER SCIENCE, 2021, 11 (12)
[33]   Predicting Procedure Step Performance From Operator and Text Features: A Critical First Step Toward Machine Learning-Driven Procedure Design [J].
McDonald, Anthony D. ;
Ade, Nilesh ;
Peres, S. Camille .
HUMAN FACTORS, 2023, 65 (05) :701-717
[34]   Prediction of Aortic Contrast Enhancement on Dynamic Hepatic Computed Tomography-Performance Comparison of Machine Learning Methods and Simulation Software [J].
Masuda, Takanori ;
Nakaura, Takeshi ;
Higaki, Toru ;
Funama, Yoshinori ;
Sato, Tomoyasu ;
Masuda, Shouko ;
Yoshiura, Takayuki ;
Arao, Shinichi ;
Hiratsuka, Junichi ;
Hirai, Toshinori ;
Awai, Kazuo .
JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2022, 46 (02) :183-189
[35]   Comparison of Feature Selection Methods and Machine Learning Classifiers for Predicting Chronic Obstructive Pulmonary Disease Using Texture-Based CT Lung Radiomic Features [J].
Makimoto, Kalysta ;
Au, Ryan ;
Moslemi, Amir ;
Hogg, James C. ;
Bourbeau, Jean ;
Tan, Wan C. ;
Kirby, Miranda .
ACADEMIC RADIOLOGY, 2023, 30 (05) :900-910
[36]   Determination of the Dipole Moment Variation Upon Excitation in the Chromophore of Green Fluorescent Protein From Molecular Dynamic Trajectories with QM/MM Potentials Using Machine Learning Methods [J].
Zakharova, T. M. ;
Kulakova, A. M. ;
Krinitsky, M. A. ;
Varentsov, M. I. ;
Khrenova, M. G. .
RUSSIAN JOURNAL OF PHYSICAL CHEMISTRY A, 2024, 98 (11) :2602-2607
[37]   Detection of marine oil-like features in Sentinel-1 SAR images by supplementary use of deep learning and empirical methods: Performance assessment for the Great Barrier Reef marine park [J].
Blondeau-Patissier, David ;
Schroeder, Thomas ;
Suresh, Gopika ;
Li, Zhibin ;
Diakogiannis, Foivos I. ;
Irving, Paul ;
Witte, Christian ;
Steven, Andrew D. L. .
MARINE POLLUTION BULLETIN, 2023, 188
[38]   Improving the Performance of Electrotactile Brain-Computer Interface Using Machine Learning Methods on Multi-Channel Features of Somatosensory Event-Related Potentials [J].
Novicic, Marija ;
Djordjevic, Olivera ;
Miler-Jerkovic, Vera ;
Konstantinovic, Ljubica ;
Savic, Andrej M. .
SENSORS, 2024, 24 (24)
[39]   An optimized approach for predicting water quality features and a performance evaluation for mapping surface water potential zones based on Discriminant Analysis (DA), Geographical Information System (GIS) and Machine Learning (ML) models in Baitarani River Basin, Odisha [J].
Das, Abhijeet .
DESALINATION AND WATER TREATMENT, 2025, 321