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Finding physical connections in a statistical model: Using global uncertainty and sensitivity analysis on a multiple predictor analog methodology for downscaling and bias correcting precipitation forecasts.

机译:在统计模型中查找物理联系:在多种预测器模拟方法上使用全局不确定性和敏感性分析,以进行降尺度和偏差校正降水预测。

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摘要

With the recent availability of computationally expensive Numerical Weather Prediction Model archives, the use of analog or pattern matching methodologies has become a viable option for downscaling and bias correction of forecasts. Numerous studies have been performed that show skill using these methods for local scale temperature, reference evapotranspiration and precipitation forecasting. However, as this is a statistical, pattern matching approach, little study has gone into ascertaining a relationship between local climatic physics and the choice of predictors to use in a given condition. This study uses global sensitivity and uncertainty analysis with subsequent Monte-Carlo filtering to determine if there are such linkages with regard to seasonality, lead-day of the forecast, and precipitation event magnitude.;While this study showed that non-atmospheric input factors (search window size and number of analogs used) had the greatest effect in model output variability, it was determined that variations in the weighting of atmospheric predictors does offer the potential for improved forecast skill under different conditions. It was found that for the case of the Tampa Bay region of Florida, the influence of precipitation, precipitable water, relative humidity, the meridional wind vector and the zonal wind vectors changed with respect to the winter dry season and the summer wet season as well as event threshold. Analysis showed these changes to be statistically significant. Relationships are posited whereby these changes are potentially attributed to climatic physics. An example is the increased influence of the east-west wind vector in the summer season as opposed to winter. Due to the common occurrence of convective storm formation from the sea breeze, it is plausible that this signal is showing up in the analog method. While this study is an initial foray into connecting physics to a statistical model and statistically significant variations in predictor influence was observed, further research is required to validate any causal relationships.
机译:随着最近计算量巨大的数值天气预报模型档案的推出,使用模拟或模式匹配方法已成为降尺度和预报偏差校正的可行选择。已经进行了许多研究,显示出使用这些方法进行局部尺度温度,参考蒸散量和降水预报的技能。但是,由于这是一种统计,模式匹配的方法,因此很少有研究可以确定局部气候物理学与在给定条件下使用的预测变量之间的关系。这项研究使用全球敏感性和不确定性分析以及随后的蒙特卡洛滤波来确定在季节性,预报的前一天和降水事件的大小方面是否存在这种联系。;尽管这项研究表明非大气输入因子(搜索窗口的大小和使用的类似物的数量)对模型输出的可变性影响最大,已确定大气预报器权重的变化确实提供了在不同条件下提高预报技巧的潜力。研究发现,对于佛罗里达州坦帕湾地区而言,降水,可降水量,相对湿度,子午风矢量和纬向风矢量的影响也随冬季干燥季节和夏季潮湿季节而变化。作为事件阈值。分析表明,这些变化具有统计学意义。假定存在关系,这些变化可能归因于气候物理学。一个例子是相对于冬季,夏季夏季东西向风矢量的影响增加。由于海风引起的对流风暴形成的普遍现象,以模拟方法显示该信号是合理的。尽管这项研究是将物理学与统计模型联系起来的最初尝试,并且观察到了预测因素影响的统计学显着变化,但仍需要进一步研究以验证任何因果关系。

著录项

  • 作者

    Rooney, Robert W.;

  • 作者单位

    University of Florida.;

  • 授予单位 University of Florida.;
  • 学科 Engineering Environmental.;Meteorology.;Hydrology.;Water Resource Management.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 196 p.
  • 总页数 196
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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