Big Data Trajectory Analysis and Traffic Flow Framework Construction for Ship Manipulation Decision-Making

2025-99-0134

11/11/2025

Authors
Abstract
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.
Meta TagsDetails
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, .
Additional Details
Publisher
Published
Nov 11
Product Code
2025-99-0134
Content Type
Technical Paper
Language
English