Abstract

In recent years, concern has increased about the depletion of marine resources caused by the overexploitation of fisheries and the degradation of ecosystems. The Automatic Identification System (AIS) is a powerful tool increasingly used for monitoring marine fishing activity. In this paper, identification of the type of fishing vessel (trawlers, gillnetters and seiners) was carried out using 150 million AIS tracking points in April, June and September 2018 in the northern South China Sea (SCS). The vessels’ spatial and temporal distribution, duration of fishing time and other activity patterns were analyzed in different seasons. An identification model for fishing vessel types was developed using a Light Gradient Boosting Machine (LightGBM) approach with three categories with a total of 60 features: speed and heading, location changes, and speed and displacement in multiple states. The accuracy of this model reached 95.68%, which was higher than other advanced algorithms such as XGBoost. It was found that the activity hotspots of Chinese fishing vessels, especially trawlers, showed a tendency to move northward through the year in the northern SCS. Furthermore, Chinese fishing vessels showed low fishing intensity during the fishing moratorium months and traditional Chinese holidays. This research work indicates the value of AIS data in providing decision-making assistance for the development of fishery resources and marine safety management in the northern SCS.

Highlights

  • The South China Sea (SCS) has the highest diversity of marine species in China, and it provides a rich fishery resource

  • It is essential to carry out comprehensive and systematic monitoring of the fishery resources in the SCS to improve the sustainability of the fishing industry

  • In contrast to previous studies that used fishery statistics provided by relevant departments, to our knowledge this work is the first to explore the spatial distribution characteristics and seasonal activities of different fishing vessel types in the northern SCS based on Automatic Identification System (AIS) data

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Summary

A Case Study of 2018

Yanan Guan 1,2 , Jie Zhang 2,3,4 , Xi Zhang 2,3, *, Zhongwei Li 4 , Junmin Meng 2,3 , Genwang Liu 2,3 , Meng Bao 2,3 and Chenghui Cao 2,3. Technology Innovation Center for Ocean Telemetry, Ministry of Natural Resources, Qingdao 266061, China

Introduction
Data and Preprocessing
Data Preprocessing
Fishing Vessel AIS Sample Set and Feature Extraction
Sample Set
Analysis and Extraction of Fishing Vessels
Holistic Characteristics of Speed and Heading
Characteristics of Location Changes
Classification Features in Multiple States
Identification of Fishing Vessel Type Based on AIS Data
LightGBM Model
Classification Accuracy Assessment
Hourly Statistics
Daily Statistics
Duration of Fishing Time
Findings
Conclusions
Full Text
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