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Characterization of ecosystem responses to climatic controls using artificial neural networks.

机译:利用人工神经网络表征生态系统对气候控制的反应。

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Understanding and modeling ecosystem responses to their climatic controls is one of the major challenges for predicting the effects of global change. Usually, the responses are implemented in models as parameterized functional relationships of a fixed type. In contrast, the inductive approach presented here based on artificial neural networks (ANNs) allows the relationships to be extracted directly from the data. It has been developed to explore large, fragmentary, noisy, and multidimensional datasets, such as the carbon fluxes measured at the ecosystem level with the eddy covariance technique. To illustrate this, our approach has been systematically applied to the daytime carbon flux dataset of the deciduous broadleaf forest Hainich in Germany. The total explainable variability of the half-hourly carbon fluxes from the driving climatic variables was 93.1%, showing the excellent data mining capability of the ANNs. Total photosynthetic photon flux density was identified as the dominant control of the daytime response, followed by the diffuse radiation. The vapor pressure deficit was the most important nonradiative control. From the ANNs, we were also able to deduce and visualize the dependencies and sensitivities of the response to its climatic controls. With respect to diffuse radiation, the daytime carbon response showed no saturation and the light use efficiency was three times greater for diffuse compared with direct radiation. However, with less potential radiation reaching the forest, the overall effect of diffuse radiation was slightly negative. The optimum uptake of carbon occurred at diffuse fractions between 30% and 40%. By identifying the hierarchy of the climatic controls of the ecosystem response as well as their multidimensional functional relationships, our inductive approach offers a direct interface to the data. This provides instant insight in the underlying ecosystem physiology and links the observational relationships to their representation in the modeling world.
机译:了解和模拟生态系统对气候变化的反应是预测全球变化影响的主要挑战之一。通常,响应在模型中作为固定类型的参数化功能关系实现。相反,此处介绍的基于人工神经网络(ANN)的归纳方法允许直接从数据中提取关系。它被开发来探索大型的,零散的,嘈杂的和多维的数据集,例如使用涡度协方差技术在生态系统水平上测量的碳通量。为了说明这一点,我们的方法已系统地应用于德国Hainich落叶阔叶林的白天碳通量数据集。来自驱动气候变量的半小时碳通量的总可解释变异性为93.1%,显示了人工神经网络的出色数据挖掘能力。总光合光子通量密度被确定为白天响应的主要控制,其次是散射辐射。蒸气压不足是最重要的非辐射控制。从人工神经网络,我们还能够推断并可视化响应对其气候控制的依赖性和敏感性。关于漫射辐射,白天的碳响应未显示饱和,并且与直接辐射相比,漫射的光利用效率高三倍。然而,随着潜在辐射到达森林的减少,扩散辐射的总体影响略为负面。碳的最佳吸收发生在30%至40%的扩散分数之间。通过确定生态系统响应的气候控制层次结构及其多维功能关系,我们的归纳方法为数据提供了直接接口。这提供了对潜在生态系统生理的即时见解,并将观察关系与其在建模世界中的表示联系起来。

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