Yellowfin Tuna (Thunnusalbacares) Fishing Ground Forecasting Model Based On Bayes Classifier In The South China Sea

Author:

Zhou Wei-feng1,Li An-zhou12,Ji Shi-jian1,Qiu Yong-song3

Affiliation:

1. Key Laboratory of East China Sea and Oceanic Fishery Resources Exploitation and Utilization, Ministry of Agriculture, China, 200090 Shanghai , China

2. College of Marine Sciences, Shanghai Ocean University, Shanghai 201306, China

3. South China Sea Fisheries Research Institute, Chinese Academy of Fishery Sciences, Guangzhou 510300, China

Abstract

Abstract Using the yellowfin tuna (Thunnusalbacares,YFT)longline fishing catch data in the open South China Sea (SCS) provided by WCPFC, the optimum interpolation sea surface temperature (OISST) from CPC/NOAA and multi-satellites altimetric monthly averaged product sea surface height (SSH) released by CNES, eight alternative options based on Bayes classifier were made in this paper according to different strategies on the choice of environment factors and the levels of fishing zones to classify the YFT fishing ground in the open SCS. The classification results were compared with the actual ones for validation and analyzed to know how different plans impact on classification results and precision. The results of validation showed that the precision of the eight options were 71.4%, 75%, 70.8%, 74.4%, 66.7%, 68.5%, 57.7% and 63.7% in sequence, the first to sixth among them above 65% would meet the practical application needs basically. The alternatives which use SST and SSH simultaneously as the environmental factors have higher precision than which only use single SST environmental factor, and the consideration of adding SSH can improve the model precision to a certain extent. The options which use CPUE’s mean ± standard deviation as threshold have higher precision than which use CPUE’s 33.3%-quantile and 66.7%-quantile as the threshold

Publisher

Walter de Gruyter GmbH

Subject

Mechanical Engineering,Ocean Engineering

Reference22 articles.

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2. 2. MENG Xiaomeng, YE Zhenjiang, WANG Yingjun. 2007. Review on fishery and biology of yellowfin tuna (Thunnusalbacares). South China Fisheries Science, 3(4):74-80.

3. 3. JI Shijian, ZHOU Weifeng, CHENG Tianfei, et al. 2015. On the forecast and analysis of fishing grounds in the open South China Sea. Modern Fisheries Information, 2015(2):98-105.

4. 4. FENG Bo, LI Zhonglu, HOU Gang. 2014. Biology and distribution of thunnusobesus and thunnusalbacresin the South China Sea. OceanologiaetLimnologiaSinica, 2014(4):886-894.

5. 5. WANGZhongduo, GUO Yusong, YAN Yunrong, et al. 2012. Population genetics of tunas in South China Sea inferred from control regions. Journal of Fisheries of China, 36(2): 191-201.

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