Using Image Processing Techniques to Identify and Quantify Spatiotemporal Carbon Cycle Extremes

Bharat Sharma, J. Kumar, A. Ganguly, F. Hoffman
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引用次数: 1

Abstract

Rising atmospheric carbon dioxide due to human activities through fossil fuel emissions and land use changes have increased climate extremes such as heat waves and droughts that have led to and are expected to increase the occurrence of carbon cycle extremes. Carbon cycle extremes represent large anomalies in the carbon cycle that are associated with gains or losses in carbon uptake. Carbon cycle extremes could be continuous in space and time and cross political boundaries. Here, we present a methodology to identify large spatiotemporal extremes (STEs) in the terrestrial carbon cycle using image processing tools for feature detection. We characterized the STE events based on neighborhood structures that are three-dimensional adjacency matrices for the detection of spatiotemporal manifolds of carbon cycle extremes. We found that the area affected and carbon loss during negative carbon cycle extremes were consistent with continuous neighborhood structures. In the gross primary production data we used, 100 carbon cycle STEs accounted for more than 75% of all the negative carbon cycle extremes. This paper presents a comparative analysis of the magnitude of carbon cycle STEs and attribution of those STEs to climate drivers as a function of neighborhood structures for two observational datasets and an Earth system model simulation.
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利用图像处理技术识别和量化时空碳循环极值
由于化石燃料排放和土地利用变化等人类活动造成的大气二氧化碳上升,增加了热浪和干旱等极端气候,这些极端气候已经导致并预计将增加极端碳循环的发生。碳循环极值表示与碳吸收的增益或损失有关的碳循环中的巨大异常。极端碳循环在时空上可能是连续的,并跨越政治边界。本文提出了一种利用图像处理工具进行特征检测的方法来识别陆地碳循环中的大时空极值(ste)。我们基于邻域结构对STE事件进行表征,邻域结构是用于检测碳循环极值时空流形的三维邻接矩阵。研究发现,负碳循环极端期的影响面积和碳损失与连续的邻域结构一致。在我们使用的总初级生产数据中,100个碳循环企业占所有负碳循环极端事件的75%以上。本文利用两个观测数据集和一个地球系统模式模拟,比较分析了碳循环STEs的大小以及这些STEs作为邻域结构函数对气候驱动因素的归因。
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