Chang Shui-Kai, Liu Hung-I, Fukuda Hiromu, Maunder Mark N
Institute of Marine Affairs, National Sun Yat-sen University, Kaohsiung, Taiwan.
Overseas Fisheries Development Council of the Republic of China, Taipei, Taiwan.
PLoS One. 2017 Oct 2;12(10):e0185784. doi: 10.1371/journal.pone.0185784. eCollection 2017.
Catch-per-unit-effort (CPUE) is often the main piece of information used in fisheries stock assessment; however, the catch and effort data that are traditionally compiled from commercial logbooks can be incomplete or unreliable due to many reasons. Pacific bluefin tuna (PBF) is a seasonal target species in the Taiwanese longline fishery. Since 2010, detailed catch information for each PBF has been made available through a catch documentation scheme. However, previously, only market landing data with a low coverage of logbooks were available. Therefore, several nontraditional procedures were performed to reconstruct catch and effort data from many alternative data sources not directly obtained from fishers for 2001-2015: (1) Estimating the catch number from the landing weight for 2001-2003, for which the catch number information was incomplete, based on Monte Carlo simulation; (2) deriving fishing days for 2007-2009 from voyage data recorder data, based on a newly developed algorithm; and (3) deriving fishing days for 2001-2006 from vessel trip information, based on linear relationships between fishing and at-sea days. Subsequently, generalized linear mixed models were developed with the delta-lognormal assumption for standardizing the CPUE calculated from the reconstructed data, and three-stage model evaluation was performed using (1) Akaike and Bayesian information criteria to determine the most favorable variable composition of standardization models, (2) overall R2 via cross-validation to compare fitting performance between area-separated and area-combined standardizations, and (3) system-based testing to explore the consistency of the standardized CPUEs with auxiliary data in the PBF stock assessment model. The last stage of evaluation revealed high consistency among the data, thus demonstrating improvements in data reconstruction for estimating the abundance index, and consequently the stock assessment.
单位捕捞努力量渔获量(CPUE)通常是渔业资源评估中使用的主要信息;然而,由于多种原因,传统上从商业航海日志汇编的渔获量和努力量数据可能不完整或不可靠。太平洋蓝鳍金枪鱼(PBF)是台湾延绳钓渔业的季节性目标物种。自2010年以来,通过渔获量记录计划可获得每条太平洋蓝鳍金枪鱼的详细渔获信息。然而,在此之前,只有航海日志覆盖率较低的市场上岸数据可用。因此,针对2001 - 2015年,执行了几种非传统程序,以从许多并非直接从渔民处获得的替代数据源重建渔获量和努力量数据:(1)基于蒙特卡洛模拟,根据2001 - 2003年上岸重量估算渔获数量,当时渔获数量信息不完整;(2)基于新开发的算法,从航行数据记录仪数据推导2007 - 2009年的捕鱼天数;(3)根据捕鱼天数与海上天数之间的线性关系,从船只航行信息推导2001 - 2006年的捕鱼天数。随后,基于delta - 对数正态假设开发了广义线性混合模型,用于标准化根据重建数据计算的CPUE,并使用以下方法进行三阶段模型评估:(1)赤池信息准则和贝叶斯信息准则,以确定标准化模型最有利的变量组成;(2)通过交叉验证的整体R2,比较区域分离标准化和区域合并标准化之间的拟合性能;(3)基于系统的测试,以探索标准化CPUE与太平洋蓝鳍金枪鱼资源评估模型中的辅助数据之间一致性。评估的最后阶段表明数据之间具有高度一致性,从而证明在估计丰度指数进而在资源评估方面的数据重建有所改进。