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Improving drought predictability in Arkansas using the ensemble PDSI forecast technique

机译:使用集成PDSI预报技术提高阿肯色州的干旱预报能力

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摘要

Drought prediction is important for improved water resources management and agriculture planning. Although Arkansas has suffered severe droughts and economic loss in recent years, no significant study has been done. This study proposes a local nonparametric autore-gressive model with designed stochastic residual-resampling approach to produce ensemble drought forecasts with associated confidence. The proposed model utilizes historical climate records, including drought indices, temperature, and precipitation to improve the quality of the short-term forecast of drought indices. Monthly forecasts of Palmer Drought Severity Index (PDSI) in Arkansas climate divisions show remarkable skills with 2-3 month lead-time based on selected performance measure such as, Normalized Root Mean Square Error (NRMSE) and the Kuiper Skill Score (KSS). Rank histograms also show that the model captures the natural variability very well in the produced drought forecasts. The incorporation of categorical long-term precipitation prediction significantly enhances the performance of the monthly drought forecasts.
机译:干旱预报对于改善水资源管理和农业规划很重要。尽管近年来阿肯色州遭受了严重的干旱和经济损失,但尚未进行重大研究。这项研究提出了一种局部非参数自回归模型,该模型具有设计的随机残差重采样方法,可以产生具有相关置信度的整体干旱预报。该模型利用历史气候记录(包括干旱指数,温度和降水)来提高短期干旱指数预报的质量。阿肯色州气候区的Palmer干旱严重度指数(PDSI)的月度预测显示,基于选定的性能指标(如归一化均方根误差(NRMSE)和Kuiper技能得分(KSS)),非凡技能具有2-3个月的前置时间。等级直方图还显示,该模型在产生的干旱预报中很好地捕捉了自然变化。结合长期分类降水预报可以显着提高月度干旱预报的性能。

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