用于 CPUE 标准化的结构化神经网络:澳大利亚北部对虾渔业中的蓝色努力对虾案例研究

IF 2.2 2区 农林科学 Q2 FISHERIES
Yeming Lei , Shijie Zhou , Nan Ye
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引用次数: 0

摘要

我们对在澳大利亚最大、最有价值的对虾渔业之一--北部对虾渔业(NPF)中捕获的蓝对虾(Metapenaeus endeavouri)的单位努力渔获量(CPUE)进行了标准化研究。蓝对虾在 NPF 的总渔获量中占有很大比例。然而,对其种群动态的研究却非常有限。本研究评估了人工神经网络(ANN)在 CPUE 标准化方面的有效性,并以蓝对虾为重点进行了案例研究。我们的方法包括为 CPUE 标准化开发新的人工神经网络模型,其中有两个关键想法:使用受渔获量方程启发的架构来减少过度拟合;使用 Tweedie 分布来管理渔获量数据中的不确定性和零计数。具体来说,我们根据渔获量方程将变量分为三个不同的模块,分别代表渔获量、捕捞强度和鱼群密度。我们的人工神经网络参数估计是通过使用坐标下降法最大化似然来实现的,该方法在优化特威迪分布参数(功率和分散度)和标准神经网络参数之间交替进行。我们对 ANN、广义线性模型和广义加法模型进行了综合比较。研究结果表明,定制 ANN 结构可改善模型拟合,并有效降低过拟合风险。这也为神经网络在 CPUE 标准化中的应用揭示了一条前景广阔的道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structured neural networks for CPUE standardization: A case study of the blue endeavour prawn in Australia's Northern Prawn Fishery

We performed a study on standardizing the catch per unit effort (CPUE) for blue endeavour prawns (Metapenaeus endeavouri) caught in the Northern Prawn Fishery (NPF), one of Australia’s largest and most valuable prawn fisheries. Blue endeavour prawns constitute a significant proportion of the total NPF catches. However, there have been very limited studies on their population dynamics. This study assessed the effectiveness of Artificial Neural Networks (ANNs) for CPUE standardization, with a focus on blue endeavour prawns as a case study. Our approach involved developing new ANN models for CPUE standardization with two key ideas: using an architecture inspired by the catch equation to mitigate overfitting; and using the Tweedie distribution to manage uncertainties and zero counts in the catch data. Specifically, we grouped variables into three distinct modules based on the catch equation, with each representing catchability, fishing effort, and fish density, respectively. Parameter estimation for our ANNs was achieved by maximizing the likelihood using a coordinate descent approach, which alternates between optimizing the Tweedie distribution parameters (power and dispersion) and the standard neural net parameters. We conducted a comprehensive comparison among ANNs, generalized linear models, and generalized additive models. The findings suggest that customizing ANN structure improves model fitting and effectively mitigates the risk of overfitting. It also reveals a promising path for the application of neural networks in CPUE standardization.

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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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