...
首页> 外文期刊>Journal of Climate >Improvements to the WRF Seasonal Hindcasts over South Africa by Bias Correcting the Driving SINTEX-F2v CGCM Fields
【24h】

Improvements to the WRF Seasonal Hindcasts over South Africa by Bias Correcting the Driving SINTEX-F2v CGCM Fields

机译:偏差校正了SINTEX-F2v CGCM行驶领域,改善了WRF在南非的季节性后播

获取原文
获取原文并翻译 | 示例
           

摘要

In an attempt to improve the forecast skill of the austral summer precipitation over South Africa, an ensemble of 1-month-lead seasonal hindcasts generated by the Scale Interaction Experiment-Frontier Research Center for Global Change (SINTEX-F2v) coupled global circulation model is downscaled using the Weather Research and Forecasting (WRF) Model. The WRF Model with two-way interacting domains at horizontal resolutions of 27 and 9 km is used in the study. Evaluation of the deterministic skill score using the anomaly correlation coefficients shows that SINTEX-F2v has significant skill in precipitation forecasts confined to western regions of South Africa. Dynamical downscaling of SINTEX-F2v forecasts using the WRF Model is found to further improve the skill scores over South Africa. However, larger improvements in the skill scores are achieved when the WRF Model is forced by a form of bias-corrected SINTEX-F2v forecasts. The systematic biases in the original fields of the SITNEX-F2v forecasts are removed by superimposing the SINTEX-F2v 6-hourly anomalies over the ERA-Interim 6-hourly climatological fields. The WRF Model forced by the bias-corrected SINTEX-F2v shows significant skill in the forecast anomalies of precipitation over most parts of South Africa. Interestingly, the WRF Model runs with the bias correction did not help to improve the SINTEX-F2v forecast of 2-m air temperatures. Perhaps this is because of the large biases in the precipitation forecast by the WRF Model driven by the bias-corrected SINTEX-F2v. These results are important for potentially improving seasonal forecasts over South Africa.
机译:为了提高南非南方夏季降水的预报技巧,由全球变化规模互作用试验前沿研究中心(SINTEX-F2v)耦合的全球环流模型产生的1个月领先的季节性后兆合奏是使用天气研究和预报(WRF)模型缩小规模。本研究使用水平分辨率为27 km和9 km的具有双向交互作用域的WRF模型。使用异常相关系数对确定性技能得分的评估表明,SINTEX-F2v在仅限于南非西部地区的降水预报中具有重要技能。发现使用WRF模型对SINTEX-F2v预测进行动态降级可进一步提高南非的技能得分。但是,当WRF模型由于某种形式的偏差校正SINTEX-F2v预测而被迫实现时,技能得分会得到更大的提高。通过将SINTEX-F2v 6小时异常叠加在ERA-Interim 6小时气候域上,可以消除SITNEX-F2v预报原始字段中的系统偏差。由偏差校正后的SINTEX-F2v强迫建立的WRF模型在预测南非大部分地区的降水异常方面显示出显着的技能。有趣的是,采用偏差校正的WRF模型无法帮助改善SINTEX-F2v对2 m气温的预测。也许这是由于由WRF模型预测的降水量存在较大偏差,而WRF模型由偏差校正后的SINTEX-F2v驱动。这些结果对于潜在改善南非的季节性预报非常重要。

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