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Understanding Climate-Vegetation Interactions in Global Rainforests Through a GP-Tree Analysis

机译:通过GP树分析了解全球雨林中的气候-植被相互作用

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The tropical rainforests are the largest reserves of terrestrial carbon and therefore, the future of these rainforests is a question that is of immense importance in the geoscience research community. With the recent severe Amazonian droughts in 2005 and 2010 and on-going drought in the Congo region for more than two decades, there is growing concern that these forests could succumb to precipitation reduction, causing extensive carbon release and feedback to the carbon cycle. However, there is no single ecosystem model that quantifies the relationship between vegetation health in these rainforests and climatic factors. Small scale studies have used statistical correlation measure and simple linear regression to model climate-vegetation interactions, but suffer from the lack of comprehensive data representation as well as simplistic assumptions about dependency of the target on the covariates. In this paper we use genetic programming (GP) based symbolic regression for discovering equations that govern the vegetation climate dynamics in the rainforests. Expecting micro-regions within the rainforests to have unique characteristics compared to the overall general characteristics, we use a modified regression-tree based hierarchical partitioning of the space to build individual models for each partition. The discovery of these equations reveal very interesting characteristics about the Amazon and the Congo rainforests. Our method GP-tree shows that the rainforests exhibit tremendous resiliency in the face of extreme climatic events by adapting to changing conditions.
机译:热带雨林是陆地碳的最大储量,因此,这些雨林的未来是一个在地球科学研究界具有极其重要意义的问题。随着最近在2005年和2010年发生的亚马逊地区严重干旱以及刚果地区持续二十多年的干旱,人们越来越担心这些森林可能屈服于降水减少,从而导致大量的碳释放和碳循环的反馈。但是,没有单一的生态系统模型可以量化这些雨林中的植被健康与气候因素之间的关系。小型研究使用统计相关性测度和简单的线性回归来模拟气候-植被相互作用,但是却缺乏全面的数据表示以及关于目标对协变量的依赖性的简单假设。在本文中,我们使用基于遗传编程(GP)的符号回归来发现控制热带雨林植被气候动态的方程式。期望雨林中的微区域具有与整体总体特征相比独特的特征,我们使用基于空间的改进的基于回归树的分层分区为每个分区建立单独的模型。这些方程的发现揭示了关于亚马逊河和刚果雨林的非常有趣的特征。我们的GP-树方法表明,雨林通过适应不断变化的条件,在极端气候事件面前表现出极大的适应力。

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