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Predicting ecosystem components in the Gulf of Mexico and their responses to climate variability with a dynamic Bayesian network model

机译:动态贝叶斯网络模型预测墨西哥湾的生态系统组成及其对气候变化的响应

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摘要

The Gulf of Mexico is an ecologically and economically important marine ecosystem that is affected by a variety of natural and anthropogenic pressures. These complex and interacting pressures, together with the dynamic environment of the Gulf, present challenges for the effective management of its resources. The recent adoption of Bayesian networks to ecology allows for the discovery and quantification of complex interactions from data after making only a few assumptions about observations of the system. In this study, we apply Bayesian network models, with different levels of structural complexity and a varying number of hidden variables to account for uncertainty when modeling ecosystem dynamics. From these models, we predict focal ecosystem components within the Gulf of Mexico. The predictive ability of the models varied with their structure. The model that performed best was parameterized through data-driven learning techniques and accounted for multiple ecosystem components’ associations and their interactions with human and natural pressures over time. Then, we altered sea surface temperature in the best performing model to explore the response of different ecosystem components to increased temperature. The magnitude and even direction of predicted responses varied by ecosystem components due to heterogeneity in driving factors and their spatial overlap. Our findings suggest that due to varying components’ sensitivity to drivers, changes in temperature will potentially lead to trade-offs in terms of population productivity. We were able to discover meaningful interactions between ecosystem components and their environment and show how sensitive these relationships are to climate perturbations, which increases our understanding of the potential future response of the system to increasing temperature. Our findings demonstrate that accounting for additional sources of variation, by incorporating multiple interactions and pressures in the model layout, has the potential for gaining deeper insights into the structure and dynamics of ecosystems.
机译:墨西哥湾是一个具有重要生态和经济意义的海洋生态系统,受到各种自然和人为压力的影响。这些复杂而相互作用的压力,加上海湾的动态环境,对有效管理其资源提出了挑战。贝叶斯网络最近在生态学中的应用允许在仅对系统观测进行一些假设之后,从数据中发现和量化复杂的相互作用。在这项研究中,我们应用了具有不同级别的结构复杂性和不同数量的隐藏变量的贝叶斯网络模型来解释对生态系统动力学建模的不确定性。通过这些模型,我们可以预测墨西哥湾内的主要生态系统组成部分。模型的预测能力随其结构而变化。效果最佳的模型通过数据驱动的学习技术进行了参数化,并说明了多个生态系统组件的关联以及它们与人类和自然压力随时间的相互作用。然后,我们在性能最佳的模型中更改了海面温度,以探索不同生态系统组件对温度升高的响应。由于驱动因素的异质性及其空间重叠,预测响应的大小和方向因生态系统组件而异。我们的发现表明,由于组件对驱动程序的敏感性不同,温度的变化可能会导致人口生产率之间的权衡。我们能够发现生态系统各组成部分及其环境之间的有意义的相互作用,并表明这些关系对气候扰动的敏感程度,这加深了我们对系统将来对温度升高的潜在反应的理解。我们的发现表明,通过在模型布局中纳入多种相互作用和压力来解决其他变化源,有可能获得对生态系统结构和动态的更深刻见解。

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