首页> 外文期刊>Weather and forecasting >Statistical Prediction of Waterspout Probability for the Florida
【24h】

Statistical Prediction of Waterspout Probability for the Florida

机译:佛罗里达州水域概率的统计预测

获取原文
获取原文并翻译 | 示例
       

摘要

A statistical model of waterspout probability was developed for wet-season (June-September) days over the Florida Keys. An analysis was performed on over 200 separate variables derived from Key West 1200 UTC daily wet-season soundings during the period 2006-14. These variables were separated into two subsets: days on which a waterspout was reported anywhere in the Florida Keys coastal waters and days on which no waterspouts were reported. Days on which waterspouts were reported were determined from the National Weather Service (NWS) Key West local storm reports. The sounding at Key West was used for this analysis since it was assumed to be representative of the atmospheric environment over the area evaluated in this study. The probability of a waterspout report day was modeled using multiple logistic regression with selected predictors obtained from the sounding variables. The final model containing eight separate variables was validated using repeated fivefold cross validation, and its performance was compared to that of an existing waterspout index used as a benchmark. The performance of the model was further validated in forecast mode using an independent verification wet-season dataset from 2015-16 that was not used to define or train the model. The eight-predictor model was found to produce a probability forecast with robust skill relative to climatology and superior to the benchmark waterspout index in both the cross validation and in the independent verification.
机译:在佛罗里达群体的湿季(九月)天开发了水域概率的统计模型。在2006-14期间,在2006-14期间,对来自基韦斯特1200 UTC每日潮流季节探测的200多个单独变量进行了分析。这些变量分为两个子集:在佛罗里达群岛沿海水域的任何地方报告了一个水域的天数,并报告了没有下行水域的日子。据报道的日报是由国家天气服务(NWS)基韦斯特当地风暴报告确定的日子。关键西部的声音用于该分析,因为它被认为是在本研究中评估的区域的大气环境中的代表性。使用多个Logistic回归模拟Waterspout报告日的概率,该回归与从探测变量获得的所选预测器。使用重复的五倍交叉验证验证包含八个单独变量的最终模型,并将其性能与作为基准的现有水域索引进行了比较。使用2015-16的独立验证湿季数据集进一步验证了模型的性能,从2015-16不用于定义或培训模型。发现八个预测的模型产生了相对于气候学的强大技能的概率预测,并且优于交叉验证和独立验证的基准水域索引。

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