Keywords: navigation safety, vessel traffic control, traffic route establishment system, heavy traffic, route planning, clustering, graph algorithms
Multidimensional cluster analysis of vessel traffic data for route planning
UDC 004.8
DOI: 10.26102/2310-6018/2024.45.2.044
The work is devoted to the problem of planning ship routes in water areas with heavy traffic. In conditions of heavy traffic, navigational safety can be ensured only if ships adhere to a certain traffic pattern. The paper examines the problem of planning a route in such a way that it corresponds to the shipping practices that have developed in a particular area. The route planning method proposed in this work is based on clustering data on vessel traffic. The selected clusters represent areas in three- or four-dimensional phase space with similar speeds and courses of vessels, on the basis of which a graph of possible routes is formed. A feature of the approach for constructing a graph is the reduction in the number of vertices and edges by identifying the location of the selected clusters by covering polygons. The work shows that in many cases not only concave, but also convex polygons can be used, which can further reduce the power of the graph. The paper provides a metric for the distance between points in phase space, which is used to cluster data, and discusses the problem of choosing metric parameters and the clustering algorithm. The promise of using the DBSCAN algorithm is noted. The work is accompanied by calculations of planned vessel routes based on data from real water areas (Tsugaru Strait). The results of clustering traffic data, identifying the location of clusters by constructing enclosing polygons, and calculating the route of the vessel are presented. It is noted that the problem under consideration may be promising in the context of the future development of autonomous vessels navigation. In this case, the calculated route of the vessel will correspond to the movement of other vessels that were previously in the water area. This will reduce the likelihood of dangerous situations occurring when an autonomous vessel moves in the general traffic flow.
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Keywords: navigation safety, vessel traffic control, traffic route establishment system, heavy traffic, route planning, clustering, graph algorithms
For citation: Grinyak V.M., Artemiev A.V., Devyatisilnyi A.S., Dudko D.O., Sazontova M.D. Multidimensional cluster analysis of vessel traffic data for route planning. Modeling, Optimization and Information Technology. 2024;12(2). URL: https://moitvivt.ru/ru/journal/pdf?id=1591 DOI: 10.26102/2310-6018/2024.45.2.044 (In Russ).
Received 30.05.2024
Revised 14.06.2024
Accepted 21.06.2024
Published 30.06.2024