首页> 外文期刊>Canadian Journal of Fisheries and Aquatic Sciences >Estimating multifleet catchability coefficients and natural mortality from fishery catch and effort data: comparison of Bayesian state-space and observation error models
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Estimating multifleet catchability coefficients and natural mortality from fishery catch and effort data: comparison of Bayesian state-space and observation error models

机译:从渔业捕捞量和努力量数据估算多舰队的可捕性系数和自然死亡率:贝叶斯状态空间模型和观测误差模型的比较

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摘要

Catchability and natural mortality are key quantities in fisheries stock assessment. However, it is difficult to estimate these two parameters simultaneously using only fishery catch and effort data. A Bayesian state-space modified delay-difference model is outlined that can estimate time series of catchability by fleet as well as natural mortality. This model, and three variants thereof, is fitted to data for grooved tiger prawns (Penaeus semisulcatus) in Australia's Northern Prawn Fishery during the period of the year when there is little recruitment. A model that allows for both observation and process error and estimates natural mortality is best, in terms of model selection criteria as well as fit diagnostics. The posterior median estimate for catchability for the primary target fleet ranges from 6.15 x 10(-4) to 1.09 x 10(-4) during 1980-2007, while the posterior median estimate for catchability for a fleet with P. semisulcatus as its byproduct is about 20% of that for the primary fleet. Fishing efficiency increased at approximately 2% annually during 1980-2007, while the weekly natural mortality is estimated to be 0.053 week(-1).
机译:可捕获性和自然死亡率是渔业种群评估中的关键指标。但是,仅使用渔业捕捞量和努力量数据很难同时估计这两个参数。概述了贝叶斯状态空间修正的延迟差模型,该模型可以估计船队的可捕获性时间序列以及自然死亡率。该模型及其三个变体适用于澳大利亚北部对虾捕捞业在一年中招聘人数很少的时期的带沟老虎对虾(Penaeus semisulcatus)的数据。就模型选择标准和拟合诊断而言,考虑到观察误差和过程误差并估算自然死亡率的模型是最佳的。在1980-2007年间,主要目标舰队的可捕捉性的后验中值估计范围为6.15 x 10(-4)到1.09 x 10(-4),而以半硫化假单胞菌为副产品的舰队的可捕捉性的后验中值估计值大约是主要机队的20%在1980年至2007年期间,捕捞效率以每年约2%的速度增长,而每周自然死亡率估计为0.053周(-1)。

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