基于SMOTETomek-RF的马绍尔群岛附近黄鳍金枪鱼渔场预测

IF 2.5 2区 农林科学 Q2 FISHERIES Fisheries Oceanography Pub Date : 2024-10-21 DOI:10.1111/fog.12704
Meng Zhang, Liming Song, Chen Pan, Linhui Wang
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引用次数: 0

摘要

本研究利用联成海外渔业(深圳)有限公司运营管理系统,对2020 - 2022年马绍尔群岛附近海域37条延绳钓渔业进行监测。本研究建立了9个黄鳍金枪鱼单位努力渔获量(CPUE)数据与环境数据关系的预测模型。环境数据整合了48个变量,包括涡旋动能、叶绿素a浓度、海面高度和垂直海洋条件的附加测量,以及时空参数(年、月、日、经度和纬度)。本研究采用四种空间分辨率(0.25°× 0.25°、0.5°× 0.5°、1°× 1°和2°× 2°)建立了KNN、RF、GBDT、CART、LightGBM、XGBoost、CatBoost、AdaBoost和Stacking (RF、KNN、GBDT和LR) 9个预测模型。这些具有每日时间分辨率的模型使用75%的数据进行训练,并使用剩余的25%进行测试。通过对不同空间分辨率下的模型评价指标进行综合比较,确定最佳空间分辨率和模型。然后应用SMOTETomek算法以最优空间分辨率重新采样75%的数据,形成新的训练数据集。该数据集用于改进模型,随后用剩余的25%的数据进行测试。结果表明:(1)最优空间分辨率为0.25°× 0.25°,最优模型为RF;(2) SMOTETomek算法增强了模型的预测性能;(3)建立的SMK-RF模型Acc和AUC值分别为76.73%和82.47%,能较准确地预测黄鳍金枪鱼的中心渔场,与实际捕捞活动基本吻合。
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Prediction on Yellowfin Tuna (Thunnus albacares) Fishing Ground in Waters Near the Marshall Islands Based on SMOTETomek-RF

This study monitored 37 longliners fishing in waters near the Marshall Islands from 2020 to 2022 by Liancheng Overseas Fishery (Shenzhen) Co., Ltd.'s operation management system. This study developed nine predictive models on the relationship between catch per unit effort (CPUE) data for yellowfin tuna (Thunnus albacares) and the environmental data. The environmental data integrate 48 variables, including eddy kinetic energy, chlorophyll a concentration, sea surface height, and additional measures of vertical oceanic conditions, alongside spatiotemporal parameters (year, month, day, longitude, and latitude). This study employed four spatial resolutions (0.25° × 0.25°, 0.5° × 0.5°, 1° × 1°, and 2° × 2°) to develop nine predictive models: KNN, RF, GBDT, CART, LightGBM, XGBoost, CatBoost, AdaBoost, and Stacking (RF, KNN, GBDT, and LR). These models, with a daily time resolution, were trained using 75% of the data and tested with the remaining 25%. The optimal spatial resolution and model were determined through a comprehensive comparison of model evaluation metrics across these spatial resolutions. The SMOTETomek algorithm was then applied to resample 75% of the data at the optimal spatial resolution, forming a new training dataset. This dataset was used to refine the model, subsequently tested with the remaining 25% of the data. Results indicated that (1) the optimal spatial resolution is 0.25° × 0.25° and the optimal model is RF; (2) the SMOTETomek algorithm enhances the model's predictive performance; and (3) the developed SMK-RF model, exhibiting Acc and AUC values of 76.73% and 82.47%, respectively, accurately predicts the central fishing grounds for yellowfin tuna, consisting closely with actual fishing activity.

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来源期刊
Fisheries Oceanography
Fisheries Oceanography 农林科学-海洋学
CiteScore
5.00
自引率
7.70%
发文量
50
审稿时长
>18 weeks
期刊介绍: The international journal of the Japanese Society for Fisheries Oceanography, Fisheries Oceanography is designed to present a forum for the exchange of information amongst fisheries scientists worldwide. Fisheries Oceanography: presents original research articles relating the production and dynamics of fish populations to the marine environment examines entire food chains - not just single species identifies mechanisms controlling abundance explores factors affecting the recruitment and abundance of fish species and all higher marine tropic levels
期刊最新文献
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