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Does objective cluster analysis serve as a useful precursor to seasonal precipitation prediction at local scale? Application to western Ethiopia

机译:客观聚类分析是否有用作为当地规模时季节降水预测的有用前体?在西部埃塞俄比亚的申请

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Prediction of seasonal precipitation can provide actionable information to guide management of various sectoral activities. For instance, it is often translated into hydrological forecasts for better water resources management. However, many studies assume homogeneity in precipitation across an entire study region, which may prove ineffective for operational and local-level decisions, particularly for locations with high spatial variability. This study proposes advancing local-level seasonal precipitation predictions by first conditioning on regional-level predictions, as defined through objective cluster analysis, for western Ethiopia. To our knowledge, this is the first study predicting seasonal precipitation at high resolution in this region, where lives and livelihoods are vulnerable to precipitation variability given the high reliance on rain-fed agriculture and limited water resources infrastructure. The combination of objective cluster analysis, spatially high-resolution prediction of seasonal precipitation, and a modeling structure spanning statistical and dynamical approaches makes clear advances in prediction skill and resolution, as compared with previous studies. The statistical model improves versus the non-clustered case or dynamical models for a number of specific clusters in northwestern Ethiopia, with clusters having regional average correlation and ranked probability skill score (RPSS) values of up to 0.5 and 33?%, respectively. The general skill (after bias correction) of the two best-performing dynamical models over the entire study region is superior to that of the statistical models, although the dynamical models issue predictions at a lower resolution and the raw predictions require bias correction to guarantee comparable skills.
机译:季节降水预测可以提供可操作的信息,以指导各种部门活动的管理。例如,通常转化为改善水资源管理的水文预报。然而,许多研究在整个研究区域的沉淀中占均匀性,这可能对操作和局部决定来证明无效,特别是对于具有高空间变异性的位置。本研究提出通过对西埃塞俄比亚的目标聚类分析定义的区域级预测来推进地方级季节降水预测。据我们所知,这是预测该地区高分辨率季节降水的第一次研究,其中鉴于对雨粮农业和有限的水资源基础设施的高度依赖,生命和生计易于降水可变性。客观聚类分析的组合,季节降水的空间高分辨率预测和跨越统计和动力学方法的建模结构,与先前的研究相比,预测技能和分辨率明显进展。统计模型改善了埃塞俄比亚西北部埃塞俄比亚的许多特定簇的非聚类案例或动态模型,其中具有区域平均相关性和排名概率的技能得分(RPSS)分别为0.5和33Ω%。在整个研究区域中的两个最佳动态模型的一般技能(偏见校正之后)优于统计模型的技能,尽管动态模型以较低的分辨率发出预测,并且原始预测需要偏置校正以保证可比性技能。

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