...
首页> 外文期刊>Hydrology and Earth System Sciences >Regression-based season-ahead drought prediction for southern Peru conditioned on large-scale climate variables
【24h】

Regression-based season-ahead drought prediction for southern Peru conditioned on large-scale climate variables

机译:基于回归的季节 - 前方干旱预测秘鲁南部调节大规模气候变量

获取原文
           

摘要

Located at a complex topographic, climatic, and hydrologic crossroads, southern Peru is a semiarid region that exhibits high spatiotemporal variability in precipitation. The economic viability of the region hinges on this water, yet southern Peru is prone to water scarcity caused by seasonal meteorological drought. Meteorological droughts in this region are often triggered during El Ni?o episodes; however, other large-scale climate mechanisms also play a noteworthy role in controlling the region's hydrologic cycle. An extensive season-ahead precipitation prediction model is developed to help bolster the existing capacity of stakeholders to plan for and mitigate deleterious impacts of drought. In addition to existing climate indices, large-scale climatic variables, such as sea surface temperature, are investigated to identify potential drought predictors. A principal component regression framework is applied to 11 potential predictors to produce an ensemble forecast of regional January–March precipitation totals. Model hindcasts of 51?years, compared to climatology and another model conditioned solely on an El Ni?o–Southern Oscillation index, achieve notable skill and perform better for several metrics, including ranked probability skill score and a hit–miss statistic. The information provided by the developed model and ancillary modeling efforts, such as extending the lead time of and spatially disaggregating precipitation predictions to the local level as well as forecasting the number of wet–dry days per rainy season, may further assist regional stakeholders and policymakers in preparing for drought.
机译:秘鲁南部位于复杂的地形,气候和水文十字路口,是一种半干旱地区,其沉淀在沉淀下的高时变异性。该地区对该水域的经济可行性铰接,但秘鲁南部易于季节气象干旱引起的水资源稀缺。在EL NI o的剧集期间通常触发该区域的气象干旱;然而,其他大规模的气候机制也在控制该地区的水文周期方面发挥了值得注意的作用。开发了广泛的季节前进降水预测模型,以帮助加强利益攸关方的现有能力,计划和减轻干旱的有害影响。除了现有的气候指标外,还研究了大规模的气候变量,如海面温度,以识别潜在的干旱预测因子。主要成分回归框架适用于11个潜在预测因子,以产生区域1 - 3月降水量的集合预测。模型Hindcasts 51?多年,与气候学和另一个模型相比,仅在El Ni?O-Southern振荡指数上调节,实现了显着的技能,并且对几个度量进行了更好的表现,包括排名概率技能得分和命中小姐的统计数据。由开发的模型和辅助建模工作提供的信息,例如将延长时间和空间地分解局部水平的降水预测以及每雨季的湿干天数延伸,可能进一步帮助区域利益攸关方和政策制定者在准备干旱方面。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号