Spatial-temporal neural networks for catch rate standardization and fish distribution modeling

IF 2.2 2区 农林科学 Q2 FISHERIES Fisheries Research Pub Date : 2024-06-26 DOI:10.1016/j.fishres.2024.107097
Yeming Lei , Shijie Zhou , Nan Ye
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Abstract

Catch-per-unit-effort (CPUE) standardization is crucial for fishery stock assessment but often presents challenges due to spatial-temporal variations in species distribution and fishing effort. In this simulation study, we propose the use of customized artificial neural networks (ANNs) for modeling the spatial-temporal variations in CPUE standardization. This is achieved by encoding prior knowledge of the dependency structure between the variables into the architecture of the ANNs. We conducted numerical experiments on simulated data to compare our customized ANNs with Generalized Linear Models (GLMs), Generalized Additive Models (GAMs), and fully connected ANNs used in previous studies. Our simulated data cover three spatial-temporal dynamics scenarios with different degrees of species distribution shift over time: (1) steady fish distribution; (2) gradual directional shift over time; (3) sudden directional shift. In predicting the standardized CPUE in this simulation study, the customized ANNs demonstrated greater accuracy compared to the commonly used fully connected ANNs with an error reduction of over 70 %, more than 80 % compared to GLMs, and more than 40 % compared to GAMs, in terms of an error metric called the scaled mean absolute relative error. Our findings suggest that customized ANNs can serve as an alternative modeling tool alongside GLMs and GAMs in fisheries modeling.

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用于渔获率标准化和鱼类分布建模的时空神经网络
单位渔获量(CPUE)标准化对渔业资源评估至关重要,但由于物种分布和渔捞努力量的时空变化,标准化往往面临挑战。在这项模拟研究中,我们建议使用定制的人工神经网络(ANN)来模拟 CPUE 标准化的时空变化。这是通过将变量间依赖结构的先验知识编码到人工神经网络的结构中来实现的。我们对模拟数据进行了数值实验,以比较我们定制的方差网络与以往研究中使用的广义线性模型(GLM)、广义加法模型(GAM)和全连接方差网络。我们的模拟数据涵盖了物种分布随时间变化程度不同的三种时空动态情景:(1)稳定的鱼类分布;(2)随时间逐渐的方向性变化;(3)突然的方向性变化。在这项模拟研究中,与常用的全连接 ANNs 相比,定制 ANNs 预测标准化 CPUE 的准确性更高,误差减少了 70% 以上,与 GLMs 相比误差减少了 80% 以上,与 GAMs 相比误差减少了 40% 以上。我们的研究结果表明,在渔业建模中,定制的 ANN 可作为 GLM 和 GAM 的替代建模工具。
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来源期刊
Fisheries Research
Fisheries Research 农林科学-渔业
CiteScore
4.50
自引率
16.70%
发文量
294
审稿时长
15 weeks
期刊介绍: This journal provides an international forum for the publication of papers in the areas of fisheries science, fishing technology, fisheries management and relevant socio-economics. The scope covers fisheries in salt, brackish and freshwater systems, and all aspects of associated ecology, environmental aspects of fisheries, and economics. Both theoretical and practical papers are acceptable, including laboratory and field experimental studies relevant to fisheries. Papers on the conservation of exploitable living resources are welcome. Review and Viewpoint articles are also published. As the specified areas inevitably impinge on and interrelate with each other, the approach of the journal is multidisciplinary, and authors are encouraged to emphasise the relevance of their own work to that of other disciplines. The journal is intended for fisheries scientists, biological oceanographers, gear technologists, economists, managers, administrators, policy makers and legislators.
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