Proceedings of the
35th European Safety and Reliability Conference (ESREL2025) and
the 33rd Society for Risk Analysis Europe Conference (SRA-E 2025)
15 – 19 June 2025, Stavanger, Norway

A Surrogate Ship Trajectory Construction Method for Efficient Similarity Measurement in AIS Data Clustering Analysis

Shaoqing Guo1,2,a, Victor Bolbot1,2,b and Osiris A. Valdez Banda1,2,c

1Research group on Safe and Efficient Marine and Ship Systems, Marine and Arctic Technology, Department of Mechanical Engineering, Aalto University, Finland.

2Kotka Maritime Research Centre, Finland

ABSTRACT

Since the advent of Automatic Identification System (AIS) has opened opportunities for shipping data to be disseminated worldwide, trajectory clustering has seen increasing applications in maritime traffic pattern recognition, trajectory prediction, anomaly detection, and route planning. Trajectory similarity measurement is a central concept in ship trajectory clustering, where the majority of computational time is spent on similarity calculations. However, the exponentially growing volume of AIS messages has posed significant challenges to efficient processing, with popular trajectory simplification methods such as Douglas-Peucker (DP) algorithm showing limited effectiveness in improving trajectory similarity calculations. In this study, we propose a novel surrogate ship trajectory construction (SurTraC) method to reduce the complexity of similarity calculations, where the Geohash gridding technique is employed to aggregate spatially adjacent points. The method can generate an alternative sparse trajectory that uniformly and precisely represents the original one. A case study using one-week AIS data from Gulf of Finland indicates that SurTraC can effectively simplify the trajectory dataset while maintaining the entirety of the features. Compared to the DP-based methods proposed in previous research, a discussion from the perspectives of trajectory simplification, similarity measurement, and clustering demonstrates that SurTraC can significantly accelerate similarity measurement without compromising clustering performance.

Keywords: SurTraC, Surrogate ship trajectory, Trajectory simplification, Similarity measurement, Maritime big data, AIS, Geohash, Clustering, DBSCAN, Gulf of finland.



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