基于深度学习模型的西南大西洋公海阿根廷短鳍鱿鱼 Illex argentinus 相对资源丰度预测。

IF 2.7 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Animals Pub Date : 2024-10-28 DOI:10.3390/ani14213106
Delong Xiang, Yuyan Sun, Hanji Zhu, Jianhua Wang, Sisi Huang, Haibin Han, Shengmao Zhang, Chen Shang, Heng Zhang
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引用次数: 0

摘要

为分析海洋环境对大西洋西南部Illex argentinus(高、低两类)相对丰度的影响,本研究收集了2014年12月至2024年6月中国中上层拖网渔船的航海日志数据,包括船位数据以及海面温度、50米和100米水温、海面盐度、海面高度、叶绿素-a浓度和混合层深度等海洋学变量。利用船只位置提高了航海日志数据的质量,从而能够以 0.1° × 0.1° 的空间分辨率和 10 天的时间分辨率分析这种鱿鱼资源中心的年度趋势。研究结果表明,资源中心主要位于北部南纬 42°附近和南部南纬 45°至 47°之间,在研究期间有向北移动的趋势。此外,我们还构建了两个基于决策树的集合学习模型--AdaBoost 和 PSO-RF,旨在找出影响其资源丰度的最关键环境因素;我们发现,最佳模型是最大深度为 5、n_估计因子为 46 的 PSO-RF 模型。重要度分析表明,海面温度、混合层深度、海面高度、海面盐度和 50 米水温是影响该物种资源的关键环境因子。鉴于深度学习模型通常比其他模型运行时间更短、精度更高,我们根据五个最重要的输入因子开发了一个 CNN-注意力模型。该模型对该鱿鱼 2024 年的预测准确率达到 73.6%,预测该种群将于 2023 年 12 月中旬左右首次出现在阿根廷专属经济区附近,随后逐渐向东和向南移动。通过日志数据验证,在十天的时间尺度内,该模型的预测在大多数时期都保持了 70% 以上的准确率。资源丰度预测模型的成功构建及其准确性的提高,可以帮助企业节省盲目搜寻目标物种所带来的燃料和时间成本。此外,这项研究还有助于提高资源利用效率,缩短捕捞时间,从而有助于降低中上层拖网捕捞活动的碳排放,为该物种资源的可持续发展提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of the Relative Resource Abundance of the Argentine Shortfin Squid Illex argentinus in the High Sea in the Southwest Atlantic Based on a Deep Learning Model.

To analyze the impact of the marine environment on the relative abundance of Illex argentinus (high and low categories) in the southwest Atlantic, this study collected logbook data from Chinese pelagic trawlers from December 2014 to June 2024, including vessel position data and oceanographic variables such as sea surface temperature, 50 m and 100 m water temperature, sea surface salinity, sea surface height, chlorophyll-a concentration, and mixed layer depth. Vessel positions were used to enhance the logbook data quality, allowing an analysis of the annual trends in the resource center of this squid at a spatial resolution of 0.1° × 0.1° and a temporal resolution of ten days. The findings showed that the resource center is primarily located around 42° S in the north and between 45° S and 47° S in the south, with a trend of northward movement during the study period. Additionally, we constructed two ensemble learning models based on decision trees-AdaBoost and PSO-RF-aiming to identify the most critical environmental factors that affect its resource abundance; we found that the optimal model was the PSO-RF model with max_depth of 5 and n_estimators of 46. The importance analysis revealed that sea surface temperature, mixed layer depth, sea surface height, sea surface salinity, and 50 m water temperature are critical environmental factors affecting this species' resources. Given that deep learning models generally have shorter running times and higher accuracy than other models, we developed a CNN-Attention model based on the five most important input factors. This model achieved an accuracy of 73.6% in forecasting this squid for 2024, predicting that the population would first appear near the Argentine exclusive economic zone around mid-December 2023 and gradually move east and south thereafter. The predictions of the model, validated through log data, maintained over 70% accuracy during most periods at a time scale of ten days. The successful construction of the resource abundance forecasting model and its accuracy improvements can help enterprises save fuel and time costs associated with blind searches for target species. Moreover, this research contributes to improving resource utilization efficiency and reducing fishing duration, thereby aiding in lowering carbon emissions from pelagic trawling activities, offering valuable insights for the sustainable development of this species' resources.

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来源期刊
Animals
Animals Agricultural and Biological Sciences-Animal Science and Zoology
CiteScore
4.90
自引率
16.70%
发文量
3015
审稿时长
20.52 days
期刊介绍: Animals (ISSN 2076-2615) is an international and interdisciplinary scholarly open access journal. It publishes original research articles, reviews, communications, and short notes that are relevant to any field of study that involves animals, including zoology, ethnozoology, animal science, animal ethics and animal welfare. However, preference will be given to those articles that provide an understanding of animals within a larger context (i.e., the animals'' interactions with the outside world, including humans). There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental details and/or method of study, must be provided for research articles. Articles submitted that involve subjecting animals to unnecessary pain or suffering will not be accepted, and all articles must be submitted with the necessary ethical approval (please refer to the Ethical Guidelines for more information).
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