气候变化下亚马逊河流域植被分析的NARX模型辨识

Angesh Anupam
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引用次数: 1

摘要

亚马逊雨林是一个重要的景观,拥有广泛的生物多样性。这被认为是地球上最大的人为碳汇之一。毫无疑问,该盆地植被的任何实质性变化都会对碳吸收产生巨大的影响。然而,气候变化对亚马逊雨林的影响使问题进一步复杂化。本研究首次利用系统识别方法,在更广泛的机器学习领域下,对亚马逊雨林站点的叶面积指数(LAI)和地表温度之间的非线性动态关系进行建模。选择的模型结构是带有外生输入的非线性自回归(NARX)。本研究中涉及的训练和测试数据集与NASA地球观测相对应。与现有的亚马逊河流域建模方法相反,这种数据驱动的方法产生了一个由自回归项和时间滞后的地表温度组成的简约模型结构。因此,它对温度变化对亚马逊植被的影响有了更深入的了解,为这片至关重要的雨林的潜在管理提供了信心。一个温度依赖模式也有助于在政府间气候变化专门委员会(IPCC)的各种情景下进行预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NARX model identification for analysing Amazon vegetation under climate change
The Amazon rainforest is a critical landscape and harbours a wide range of biodiversity. This is considered to be one of the largest sink for anthropogenic carbon sequestration on the Earth. Undoubtably, any substantial variation in the vegetation of this basin have tremendous impact upon the carbon absorption. Nonetheless, the impact of changing climate on the Amazon rainforest further complicates the matter. This study, for the first time, utilises the system identification method, under a wider realm of machine learning, for modelling the nonlinear dynamical relationship among the Leaf Area Index (LAI) and surface temperature for an Amazon rainforest site. The chosen model structure is Nonlinear Autoregressive with Exogenous Inputs (NARX). The training and testing datasets involved in this study correspond to the NASA Earth Observations. On contrary to the existing modelling methods performed for the Amazon, this data driven method results into a parsimonious model structure consisting of autoregressive terms as well as time lagged surface temperature. It therefore gives a deeper insights about the effects of temperature variation on the Amazon vegetation, emboldening the potential management of this crucial rainforest. A temperature dependent model also facilitates the forecasting under the various scenarios of the Intergovernmental Panel on Climate Change (IPCC).
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