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首页> 外文期刊>Journal of hydrometeorology >Quantitative Spatiotemporal Evaluation of Dynamically Downscaled MM5 Precipitation Predictions over the Tampa Bay Region, Florida
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Quantitative Spatiotemporal Evaluation of Dynamically Downscaled MM5 Precipitation Predictions over the Tampa Bay Region, Florida

机译:佛罗里达坦帕湾地区动态缩减的MM5降水预测的定量时空评估

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This research quantitatively evaluated the ability of the fifth-generation Pennsylvania State University– National Center for Atmospheric Research Mesoscale Model (MM5) to reproduce observed spatiotemporal variability of precipitation in the Tampa Bay region over the 1986–2008 period. RawMM5model results were positively biased; therefore, the raw model precipitation outputs were bias corrected at 53 long-term precipitation stations in the region using the cumulative distribution function (CDF) mapping approach. CDF mapping effectively removed the bias in the mean daily, monthly, and annual precipitation totals and improved the RMSE of these rainfall totals. Observed daily precipitation transition probabilities were also well predicted by the bias-corrected MM5 results. Nevertheless, significant error remained in predicting specific daily, monthly, and annual total time series. After bias correction, MM5 successfully reproduced seasonal geostatistical precipitation patterns, with higher spatial variance of daily precipitation in the wet season and lower spatial variance of daily precipitation in the dry season. Bias-corrected daily precipitation fields were kriged over the study area to produce spatiotemporally distributed precipitation fields over the dense grids needed to drive hydrologic models in the Tampa Bay region. Cross validation at the 53 long-term precipitation gauges showed that kriging reproduced observed rainfall with average RMSEs lower than the RMSEs of individually bias-corrected point predictions. Results indicate that although significant error remains in predicting actual daily precipitation at rain gauges, kriging the bias-corrected MM5 predictions over a hydrologic model grid produces distributed precipitation fields with sufficient realism in the daily, seasonal, and interannual patterns to be useful for multidecadal water resource planning in the Tampa Bay region.
机译:这项研究定量评估了第五代宾夕法尼亚州立大学国家大气研究中尺度模型(MM5)再现1986-2008年期间坦帕湾地区降水的时空变化的能力。 RawMM5模型结果存在正偏倚;因此,使用累积分布函数(CDF)映射方法对该地区的53个长期降水站的原始模型降水量进行了偏差校正。 CDF映射有效地消除了平均日,月和年降水总量的偏差,并改善了这些降水总量的均方根误差。偏差校正的MM5结果也很好地预测了观测到的每日降水转变概率。但是,在预测特定的每日,每月和每年的总时间序列方面仍然存在重大错误。经过偏差校正后,MM5成功地再现了季节性地统计降水模式,在潮湿季节每日降水的空间变化较大,而在干旱季节每日降水的空间变化较小。在研究区域上对经过偏斜校正的每日降水场进行克里格法校正,以便在驱动坦帕湾地区水文模型所需的密集网格上产生时空分布的降水场。在53个长期降水量仪上进行的交叉验证表明,克里金法再现了观测到的降雨,其平均RMSE低于单个偏差校正点预测的RMSE。结果表明,尽管在预测雨量器的实际日降水量方面仍然存在重大误差,但在水文模型网格上使用克里格(Kriging)偏差校正的MM5预测产生的分布降水场在日,季节和年际模式中具有足够的真实性,可用于多年代际水坦帕湾地区的资源规划。

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