Machine Learning Identification of Attributes and Predictors for a Flash Drought in Eastern Australia

Climate Pub Date : 2024-04-08 DOI:10.3390/cli12040049
M. Speer, J. Hartigan, Lance M. Leslie
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Abstract

Flash droughts (FDs) are natural disasters that strike suddenly and intensify quickly. They occur almost anywhere, anytime of the year, and can have severe socio-economic, health and environmental impacts. This study focuses on a recent FD that began in the cool season of the Upper Hunter region of Eastern Australia, an important energy and agricultural local and global exporter that is both flood- and drought-prone. Here, the authors investigate the FD that started abruptly in May 2023 and extended to October 2023. The FD followed floods in November 2021 and much above-average May–October 2022 rainfall. Eight machine learning (ML) regression techniques were applied to the 60 May–October periods from 1963–2022, using a rolling windows attribution search from 45 possible climate drivers, both individually and in combination. The six most prominent climate drivers, and likely predictors, provide an understanding of the major contributors to the FD. Next, the 1963–2022 data were divided into two shorter timespans, 1963–1992 and 1993–2022, generally accepted as representing the early and accelerated global warming periods, respectively. The key attributes were markedly different for the two timespans. These differences are readily explained by the impacts of global warming on hemispheric and synoptic-scale atmospheric circulations.
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用机器学习识别澳大利亚东部山洪暴发干旱的属性和预测因子
山洪暴发的干旱(FDs)是一种突然发生、迅速加剧的自然灾害。它们几乎发生在一年中的任何时间、任何地点,可对社会经济、健康和环境造成严重影响。本研究的重点是最近在澳大利亚东部上猎人地区凉季开始的一次暴洪,该地区是当地重要的能源和农业出口地,也是全球重要的出口地,既容易发生洪灾,也容易发生旱灾。在本文中,作者对 2023 年 5 月突然开始并持续到 2023 年 10 月的 FD 进行了调查。FD 发生在 2021 年 11 月的洪水和远高于平均水平的 2022 年 5-10 月降雨之后。对1963-2022年的60个5-10月降雨期采用了八种机器学习(ML)回归技术,从45个可能的气候驱动因素中进行滚动窗口归因搜索,包括单独和组合。六种最主要的气候驱动因素和可能的预测因子让我们了解了造成冻害的主要因素。接下来,1963-2022 年的数据被分为 1963-1992 年和 1993-2022 年两个较短的时间段,一般认为这两个时间段分别代表全球变暖的早期和加速期。两个时间段的关键属性明显不同。全球变暖对半球和同步尺度大气环流的影响很容易解释这些差异。
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