Big Data Trajectory Analysis and Traffic Flow Framework Construction for Ship Manipulation Decision-Making
2025-99-0134
11/11/2025
- Content
- We present a novel processing approach to extract a ship traffic flow framework in order to cope with problems such as large volume, high noise levels and complexity spatio-temporal nature of AIS data. We preprocess AIS data using covariance matrix-based abnormal data filtering, develop improved Douglas-Peucker (DP) algorithm for multi-granularity trajectory compression, identify navigation hotspots and intersections using density-based spatial clustering and visualize chart overlays using Mercator projection. In experiments with AIS data from the Laotieshan waters in the Bohai Bay, we achieve compression rate up to 97% while maintaining a key trajectory feature retention error less than 0.15 nautical miles. We identify critical areas such as waterway intersections and generate traffic flow heatmap for maritime management, route planning, etc.
- Pages
- 6
- Citation
- Kong, X., and Shao, G., "Big Data Trajectory Analysis and Traffic Flow Framework Construction for Ship Manipulation Decision-Making," SAE Technical Paper 2025-99-0134, 2025, .