Litcius/Paper detail

Ship Trajectory Reconstruction from AIS Sensory Data via Data Quality Control and Prediction

Xinqiang Chen, Jun Ling, Yongsheng Yang, Hailin Zheng, Pengwen Xiong, Octavian Postolache, Yong Xiong

2020Mathematical Problems in Engineering56 citationsDOIOpen Access PDF

Abstract

Accurate ship trajectory plays an important role for maritime traffic control and management, and ship trajectory prediction with Automatic Identification System (AIS) data has attracted considerable research attentions in maritime traffic community. The raw AIS data may be contaminated by noises, which limits its usage in maritime traffic management applications in real world. To address the issue, we proposed an ensemble ship trajectory reconstruction framework combining data quality control procedure and prediction module. More specifically, the proposed framework implemented the data quality control procedure in three steps: trajectory separation, data denoising, and normalization. In greater detail, the data quality control procedure firstly identified outliers from the raw ship AIS data sample, which were further cleansed with the moving average model. Then, the denoised data were normalized into evenly distributed data series (in terms of time interval). After that, the proposed framework predicted ship trajectory with the artificial neural network. We verified the proposed model performance with two ship trajectories downloaded from public accessible AIS data base.

Topics & Concepts

TrajectoryRaw dataOutlierComputer scienceData miningAutomatic Identification SystemArtificial neural networkNormalization (sociology)Data cleansingData qualityReal-time computingArtificial intelligenceEngineeringProgramming languageAnthropologyAstronomyPhysicsSociologyOperations managementMetric (unit)Maritime Navigation and SafetyShip Hydrodynamics and ManeuverabilityMaritime Transport Emissions and Efficiency
Ship Trajectory Reconstruction from AIS Sensory Data via Data Quality Control and Prediction | Litcius