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Probabilistic assessment of meteorological drought over South Korea under RCP scenarios using a hidden Markov model

机译:使用隐马尔可夫模型对RCP情景下韩国气象干旱的概率评估

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摘要

Most drought indices are evaluated based on pre-defined thresholds, which are inadequate for demonstrating the inherent uncertainty of drought. This study employed a hidden Markov model-based drought index (HMM-DI) for probabilistic assessment of meteorological drought in South Korea. The HMM-DI was developed to take into account the inherent uncertainty embedded in daily precipitation and to assess drought severity without using pre-defined thresholds. Daily rainfall data recorded during 1973-2015 at 56 stations over South Korea were aggregated with 6- and 12-month windows to develop HMM-DIs for various time scales. The HMM-DIs were extended to assess future droughts in South Korea using synthesized monthly rainfall data (2016-2100) under Representative Concentration Pathway (RCP) 4.5 and 8.5 scenarios. The overall results indicated that the HMM-DI can classify drought conditions considering inherent uncertainty embedded in observations and can also demonstrate the probabilistic drought occurrence in the future.
机译:大多数干旱指数是根据预定义的阈值评估的,该阈值不足以证明干旱的内在不确定性。这项研究采用了基于隐马尔可夫模型的干旱指数(HMM-DI)来对韩国的气象干旱进行概率评估。 HMM-DI的开发考虑到了日常降水中嵌入的内在不确定性,并且无需使用预定义的阈值即可评估干旱的严重程度。 1973-2015年在韩国56个站点上记录的每日降雨量数据与6个月和12个月的窗口进行了汇总,以开发不同时间范围的HMM-DI。 HMM-DIs已扩展为使用“代表浓度路径”(RCP)4.5和8.5情景下的合成月降雨量数据(2016-2100)来评估韩国未来的干旱。总体结果表明,HMM-DI可以考虑到观测结果中固有的不确定性对干旱条件进行分类,并且还可以证明未来发生概率性干旱的可能性。

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