ZHENG Qiaoling1, FAN Wei, ZHANG Shengmao, ZHANG Heng, WANG Xiaoxuan, GUO Ganggang. Identification of fishing type from VMS data based on artificial neural network[J]. South China Fisheries Science, 2016, 12(2): 81-87. DOI: 10.3969/j.issn.2095-0780.2016.02.012
Citation: ZHENG Qiaoling1, FAN Wei, ZHANG Shengmao, ZHANG Heng, WANG Xiaoxuan, GUO Ganggang. Identification of fishing type from VMS data based on artificial neural network[J]. South China Fisheries Science, 2016, 12(2): 81-87. DOI: 10.3969/j.issn.2095-0780.2016.02.012

Identification of fishing type from VMS data based on artificial neural network

  • Unreasonable fishing ways lead to decay of marine fishery resources and destruction of marine ecological environment. In recent years, vessel monitoring system has been used for vessel safety supervision, fishery resources management, marine ecological environment protection, etc. The paper selects 78 vessels fishing in offshore China, including15 flow gill net fishing boats, 39 trawlers and 24 flow stow net fishing boats and used BP neural network as model to identify fishing type by speed and azimuth fromBeidou VMS data in 2014. Results show that the correct rates of identification based on speed were 93. 6% and 91% , both could classify fishing types well. For trawler and flow stow net fishing boats, the correct classification were both over 90% , but that of flow gill net fishing boatwas only about 70%, which might be resulted from insufficient network training, or speed and lack of characteristic azimuth data.
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