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基于深度学习的多环境因素渔场预测

Deep learning-based fishing ground prediction with multiple environmental factors.

作者信息

Xie Mingyang, Liu Bin, Chen Xinjun

机构信息

College of Marine Sciences, Shanghai Ocean University, Shanghai, 201306 China.

Key Laboratory of Marine Ecological Monitoring and Restoration Technologies, Ministry of Natural Resources, Shanghai, 200137 China.

出版信息

Mar Life Sci Technol. 2024 Apr 29;6(4):736-749. doi: 10.1007/s42995-024-00222-4. eCollection 2024 Nov.

DOI:10.1007/s42995-024-00222-4
PMID:39620085
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11602920/
Abstract

Improving the accuracy of fishing ground prediction for oceanic economic species has always been one of the most concerning issues in fisheries research. Recent studies have confirmed that deep learning has achieved superior results over traditional methods in the era of big data. However, the deep learning-based fishing ground prediction model with a single environment suffers from the problem that the area of the fishing ground is too large and not concentrated. In this study, we developed a deep learning-based fishing ground prediction model with multiple environmental factors using neon flying squid () in Northwest Pacific Ocean as an example. Based on the modified U-Net model, the approach involves the sea surface temperature, sea surface height, sea surface salinity, and chlorophyll as inputs, and the center fishing ground as the output. The model is trained with data from July to November in 2002-2019, and tested with data of 2020. We considered and compared five temporal scales (3, 6, 10, 15, and 30 days) and seven multiple environmental factor combinations. By comparing different cases, we found that the optimal temporal scale is 30 days, and the optimal multiple environmental factor combination contained SST and Chl . The inclusion of multiple factors in the model greatly improved the concentration of the center fishing ground. The selection of a suitable combination of multiple environmental factors is beneficial to the precise spatial distribution of fishing grounds. This study deepens the understanding of the mechanism of environmental field influence on fishing grounds from the perspective of artificial intelligence and fishery science.

摘要

提高海洋经济物种渔场预测的准确性一直是渔业研究中最受关注的问题之一。最近的研究证实,在大数据时代,深度学习比传统方法取得了更优异的成果。然而,单一环境下基于深度学习的渔场预测模型存在渔场面积过大且不集中的问题。在本研究中,我们以西北太平洋的柔鱼()为例,开发了一种基于深度学习的多环境因子渔场预测模型。该方法基于改进的U-Net模型,将海表面温度、海表面高度、海表面盐度和叶绿素作为输入,以渔场中心作为输出。模型使用2002 - 2019年7月至11月的数据进行训练,并使用2020年的数据进行测试。我们考虑并比较了五个时间尺度(3、6、10、15和30天)以及七种多环境因子组合。通过比较不同情况,我们发现最优时间尺度为30天,最优的多环境因子组合包含海表面温度和叶绿素。模型中纳入多个因子极大地提高了渔场中心的集中度。选择合适的多环境因子组合有利于渔场精确的空间分布。本研究从人工智能和渔业科学的角度加深了对环境场影响渔场机制的理解。

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本文引用的文献

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Population structure and genome-wide evolutionary signatures reveal putative climate-driven habitat change and local adaptation in the large yellow croaker.种群结构和全基因组进化特征揭示了大黄鱼可能由气候驱动的栖息地变化和局部适应性。
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