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Probabilistic Assessment of Drought Characteristics Using Hidden Markov Model

机译:用隐马尔可夫模型对干旱特征进行概率评估

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摘要

Droughts are characterized by drought indexes that measure the departures of meteorological and hydrological variables, such as precipitation and streamflow, from their long-term averages. Although many drought indexes have been proposed in the literature, most use predefined thresholds for identifying drought classes, ignoring the inherent uncertainties in characterizing droughts. This study employs a hidden Markov model (HMM) for the probabilistic classification of drought states. Apart from explicitly accounting for the time dependence in the drought states, the HMM-based drought index (HMM-DI) provides model uncertainty in drought classification. The proposed HMM-DI is used to assess drought characteristics in Indiana by using monthly precipitation and streamflow data. The HMM-DI results were compared to those from standard indexes and the differences in classification results from the two models were examined. In addition to providing the probabilistic classification of drought states, the HMM is suited for analyzing the spatio-temporal characterization of droughts of different severities.
机译:干旱的特征是干旱指数,该指数衡量了气象和水文变量(如降水​​和水流)与长期平均值的背离。尽管在文献中已经提出了许多干旱指数,但大多数都使用预定义的阈值来识别干旱类别,而忽略了表征干旱的固有不确定性。本研究采用隐马尔可夫模型(HMM)对干旱状态进行概率分类。除了明确说明干旱状态下的时间依赖性外,基于HMM的干旱指数(HMM-DI)还为干旱分类提供了模型不确定性。拟议的HMM-DI通过使用每月降水和流量数据来评估印第安纳州的干旱特征。将HMM-DI结果与标准指标的结果进行比较,并检查两种模型的分类结果的差异。除了提供干旱状态的概率分类,HMM还适用于分析不同严重程度干旱的时空特征。

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