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Community ecology in 3D: Tensor decomposition reveals spatio-temporal dynamics of large ecological communities

机译:3D中的社区生态:张量分解揭示了大型生态社区的时空动态

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摘要

Understanding spatio-temporal dynamics of biotic communities containing large numbers of species is crucial to guide ecosystem management and conservation efforts. However, traditional approaches usually focus on studying community dynamics either in space or in time, often failing to fully account for interlinked spatio-temporal changes. In this study, we demonstrate and promote the use of tensor decomposition for disentangling spatio-temporal community dynamics in long-term monitoring data. Tensor decomposition builds on traditional multivariate statistics (e.g. Principal Component Analysis) but extends it to multiple dimensions. This extension allows for the synchronized study of multiple ecological variables measured repeatedly in time and space. We applied this comprehensive approach to explore the spatio-temporal dynamics of 65 demersal fish species in the North Sea, a marine ecosystem strongly altered by human activities and climate change. Our case study demonstrates how tensor decomposition can successfully (i) characterize the main spatio-temporal patterns and trends in species abundances, (ii) identify sub-communities of species that share similar spatial distribution and temporal dynamics, and (iii) reveal external drivers of change. Our results revealed a strong spatial structure in fish assemblages persistent over time and linked to differences in depth, primary production and seasonality. Furthermore, we simultaneously characterized important temporal distribution changes related to the low frequency temperature variability inherent in the Atlantic Multidecadal Oscillation. Finally, we identified six major sub-communities composed of species sharing similar spatial distribution patterns and temporal dynamics. Our case study demonstrates the application and benefits of using tensor decomposition for studying complex community data sets usually derived from large-scale monitoring programs.
机译:了解包含大量物种的生物群落的时空动态对于指导生态系统管理和保护工作至关重要。然而,传统的方法通常侧重于研究空间或时间上的社区动态,常常不能完全解释时空变化的相互联系。在这项研究中,我们证明并促进了张量分解在长期监测数据中解散时空社区动态的用途。张量分解基于传统的多元统计数据(例如主成分分析),但将其扩展到多个维度。此扩展允许对在时间和空间上反复测量的多个生态变量进行同步研究。我们运用这种综合方法探索了北海65种深海鱼类的时空动态,北海是人类活动和气候变化强烈改变的海洋生态系统。我们的案例研究表明张量分解如何成功地(i)表征物种丰富度的主要时空模式和趋势,(ii)识别具有相似空间分布和时间动态的物种子社区,(iii)揭示外部驱动力变化。我们的结果表明,鱼类组合具有很强的空间结构,并随着时间的推移而持续存在,并与深度,初级产量和季节性的差异有关。此外,我们同时表征了与大西洋多年代际振荡固有的低频温度变化有关的重要时间分布变化。最后,我们确定了六个主要亚社区,这些亚社区由具有相似空间分布模式和时间动态的物种组成。我们的案例研究证明了使用张量分解来研究通常来自大型监视程序的复杂社区数据集的应用和好处。

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