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Global assessment of marine phytoplankton primary production: Integrating machine learning and environmental accounting models

机译:海洋浮游植物初级生产的全球评估:整合机器学习和环境会计模式

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摘要

The emergy accounting method has been widely applied to terrestrial and marine ecosystems although there is a lack of emergy studies focusing on phytoplankton primary production. Phytoplankton production is a pivotal process since it is intimately coupled with oceanic food webs, energy fluxes, carbon cycle, and Earth's climate. In this study, we proposed a new methodology to perform a biophysical assessment of the global phytoplankton primary production combining Machine Learning (ML) techniques and an emergy-based accounting model. Firstly, we produced global phytoplankton production estimates using an Artificial Neural Network (ANN) model. Secondly, we assessed the main energy inputs supporting the global phytoplankton production. Finally, we converted these inputs into emergy units and analysed the results from an ecological perspective. Among the energy flows, tides showed the highest maximum emergy contribution to global phytoplankton production highlighting the importance of thise flow in the complex dynamics of marine ecosystems. In addition, an emergy/production ratio was calculated showing different global patterns in terms of emergy convergence into the primary production process. We believe that the proposed emergy-based assessment of phytoplankton production could be extremely valuable to improve our understanding of this key biological process at global scale adopting a systems perspective. This model can also provide a useful benchmark for future assessments of marine ecosystem services at global scale.
机译:虽然缺乏专注于浮游植物的初级生产,但可闻名会计方法已被广泛应用于陆地和海洋生态系统。 Phytoplankton生产是一种关键过程,因为它与海洋食品网,能量助能,碳循环和地球的气候紧密相连。在这项研究中,我们提出了一种新方法,以对全球浮游植物初级生产结合机器学习(ML)技术和基于绩效的会计模型进行全球浮游植物的生物物理评估。首先,我们使用人工神经网络(ANN)模型产生全球浮游植物的生产估计。其次,我们评估了支持全球浮游植物生产的主要能源投入。最后,我们将这些投入转换为闻名单元,并从生态角度分析结果。在能量流动中,潮汐对全球浮游植物生产的最大贡献最高,突出了本文流动在海洋生态系统的复杂动态中的重要性。此外,在初级生产过程中,计算了闻名/生产比率显示出不同的全球模式。我们认为,拟议的基于浮游植物的评估可能非常有价值,以改善我们对采用系统视角的全球范围的关键生物过程的理解。该模型还可以提供有用的基准,以便在全球范围内进行海洋生态系统服务的未来评估。

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  • 来源
    《Oceanographic Literature Review》 |2021年第6期|1298-1298|共1页
  • 作者单位

    Department of Biology University of Rome 'Tor Vergata' Via della Ricerca Scientifica Rome 00133 Italy;

    Department of Biology University of Rome 'Tor Vergata' Via della Ricerca Scientifica Rome 00133 Italy;

    Department of Biology University of Rome 'Tor Vergata' Via della Ricerca Scientifica Rome 00133 Italy;

    Department of Biology University of Rome 'Tor Vergata' Via della Ricerca Scientifica Rome 00133 Italy;

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