A Bayesian spatially explicit estimation of daily egg production: application to anchovy in the Bay of Biscay

IF 1.9 2区 农林科学 Q2 FISHERIES
Leire Citores, Leire Ibaibarriaga, Maria Santos, Andres Uriarte
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引用次数: 0

Abstract

Canadian Journal of Fisheries and Aquatic Sciences, Ahead of Print.
Biomass estimates of fish resources by the daily egg production method (DEPM) are sensitive to the high variability of the daily egg production (P0) and egg mortality (Z) in space. This work presents a Bayesian approach to estimate these parameters. A prior distribution of Z based on literature serves to overcome the biologically implausible Z estimates that can result from frequentist approaches. In addition to the classical estimation of a single P0 over the spawning area, the Bayesian framework allows also the modelling of egg densities in space, by including either spatial random effects, smoothing functions, or kriging like models, providing insights into the spatial variability of P0. The Bayesian approach was applied to the Bay of Biscay anchovy DEPM surveys. Results showed that this Bayesian approximation solved the implausible Z problem resulting in tighter credible intervals of both P0 and Z. Overall, spatial models outperformed the non-spatial model in terms of goodness of fit and resulted in slightly different total production estimates across models for each year, with a moderate decrease on uncertainty estimates.
对每日产卵量的贝叶斯空间显式估算:应用于比斯开湾的鳀鱼
加拿大渔业和水产科学杂志》(Canadian Journal of Fisheries and Aquatic Sciences),打印前。 用日产卵量法(DEPM)估算鱼类资源的生物量对日产卵量(P0)和卵死亡率(Z)在空间上的高变异性很敏感。本研究提出了一种贝叶斯方法来估算这些参数。基于文献的 Z 先验分布可克服频数法可能导致的生物学上难以置信的 Z 估计值。除了对产卵区单一 P0 的经典估算外,贝叶斯框架还可以通过空间随机效应、平滑函数或类似克里金模型,对空间中的卵密度进行建模,从而深入了解 P0 的空间变异性。贝叶斯方法被应用于比斯开湾鳀鱼 DEPM 调查。结果表明,这种贝叶斯近似方法解决了不可信的 Z 问题,使 P0 和 Z 的可信区间更窄。总体而言,空间模型在拟合优度方面优于非空间模型,各模型每年的总产量估计值略有不同,不确定性估计值适度下降。
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来源期刊
Canadian Journal of Fisheries and Aquatic Sciences
Canadian Journal of Fisheries and Aquatic Sciences 农林科学-海洋与淡水生物学
CiteScore
4.60
自引率
12.50%
发文量
148
审稿时长
6-16 weeks
期刊介绍: The Canadian Journal of Fisheries and Aquatic Sciences is the primary publishing vehicle for the multidisciplinary field of aquatic sciences. It publishes perspectives (syntheses, critiques, and re-evaluations), discussions (comments and replies), articles, and rapid communications, relating to current research on -omics, cells, organisms, populations, ecosystems, or processes that affect aquatic systems. The journal seeks to amplify, modify, question, or redirect accumulated knowledge in the field of fisheries and aquatic science.
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