Using machine learning to identify novel hydroclimate states

K. Marvel, B. Cook
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引用次数: 3

Abstract

Anthropogenic climate change is expected to alter drought risk in the future. However, droughts are not uncommon or unprecedented, as documented in tree-ring-based reconstructions of the summer average Palmer drought severity index (PDSI). Using an unsupervised machine-learning method trained on these reconstructions of pre-industrial climate, we identify outliers: years in which the spatial pattern of PDSI is unusual relative to ‘normal' variability. We show that in many regions, outliers are more frequently identified in the twentieth and twenty-first centuries. This trend is more pronounced when the regional drought atlases are combined into a single global dataset. By definition, outlier patterns at the 10% level are expected to occur once per decade, but from 1950 to 2000 more than 6 years per decade are identified as outliers in the global drought atlas (GDA). Extending the GDA through 2020 using an observational dataset suggests that anomalous global drought conditions are present in 80% of years in the twenty-first century. Our results indicate, without recourse to climate models, that the world is more frequently experiencing drought conditions that are highly unusual in the context of past natural climate variability. This article is part of the Royal Society Science+ meeting issue ‘Drought risk in the Anthropocene’.
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使用机器学习来识别新的水文气候状态
预计未来人为气候变化将改变干旱风险。然而,正如基于树木年轮的夏季平均帕尔默干旱严重指数(PDSI)重建所记录的那样,干旱并非罕见或前所未有。通过对这些工业化前气候重建进行训练的无监督机器学习方法,我们确定了异常值:相对于“正常”变率,PDSI的空间格局不寻常的年份。我们表明,在许多地区,在20世纪和21世纪更频繁地发现异常值。当区域干旱地图集合并成一个单一的全球数据集时,这种趋势更加明显。根据定义,10%水平的异常模式预计每十年发生一次,但从1950年到2000年,每十年超过6年被确定为全球干旱地图集(GDA)中的异常值。利用观测数据集将GDA延长至2020年表明,在21世纪80%的年份中存在异常的全球干旱条件。我们的研究结果表明,在没有气候模型的情况下,世界正在更频繁地经历干旱,这在过去的自然气候变率背景下是非常不寻常的。这篇文章是皇家学会科学+会议议题“人类世的干旱风险”的一部分。
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