Abstract

In a crowded harbor water area, it is a major concern to control ship traffic for assuring safety and maximizing the efficiency of port operations. Vessel Traffic Service (VTS) operators pay much attention to caution areas like ship route intersections or traffic congestion area in which there are some risks of ship collision. They want to control the traffic of the caution area at a proper level to lessen risk. Inertial ship movement makes swift changes in direction and speed difficult. It is hence important to predict future traffic of the caution area earlier on so as to get enough time for control actions on ship movements. In the harbor area, VTS stations collect a large volume of Automatic Identification Service (AIS) sensor data, which contain information about ship movement and ship attributes. This paper proposes a new deep neural network model called Ship Traffic Extraction Network (STENet) to predict the medium-term traffic and long-term traffic of the caution area. The STENet model is trained with AIS sensor data. The STENet model is organized into a hierarchical architecture in which the outputs of the movement and contextual feature extraction modules are concatenated and fed into a prediction module. The movement module extracts the features of overall ship movements with a convolutional neural network. The contextual modules consist of five separated fully-connected neural networks, each of which receives an associated attribute. The separation of feature extraction modules at the front phase helps extract the effective features by preventing unrelated attributes from crosstalking. To evaluate the performance of the proposed model, the developed model is applied to a real AIS sensor dataset, which has been collected over two years at a Korean port called Yeosu. In the experiments, four methods have been compared including two new methods: STENet and VGGNet-based models. For the real AIS sensor dataset, the proposed model has shown 50.65% relative performance improvement on average for the medium-term predictions and 57.65% improvement on average for the long-term predictions over the benchmark method, i.e., the SVR-based method.

Highlights

  • Maritime traffic has been increasing over the past decades with economic growth, and the scale of ports has been increased

  • Vessel Traffic Service (VTS) stations collect a large volume of Automatic Identification Service (AIS) sensor data, which contain information about ship movement and ship attributes

  • This paper introduces a new deep neural model called STENet (Ship Traffic Extraction Network), which is trained with AIS sensor data and predicts the traffic of a caution area

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Summary

Introduction

Maritime traffic has been increasing over the past decades with economic growth, and the scale of ports has been increased. Experienced VTS operators have been trained in various similar situations for a long time and can predict future traffic in the caution area with some tools measuring the distance between two points. They take some control actions to maintain the caution area traffic at a proper level based on their estimation. This paper introduces a new deep neural model called STENet (Ship Traffic Extraction Network), which is trained with AIS sensor data and predicts the traffic of a caution area.

Related Works
Automatic Identification System Sensor Data
Ship Movement Data Preparation
Synchronized
Association of Ship Attribute Data with AIS Data
The Proposed Ship Traffic Prediction Method
STENet
Prediction Module
Error Function and Performance Evaluation
Data Preparation
Performance
Conclusions
Full Text
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