...
首页> 外文期刊>Journal of hydrometeorology >Evaluating Skill of Seasonal Precipitation and Temperature Predictions of NCEP CFSv2 Forecasts over 17 Hydroclimatic Regions in China
【24h】

Evaluating Skill of Seasonal Precipitation and Temperature Predictions of NCEP CFSv2 Forecasts over 17 Hydroclimatic Regions in China

机译:中国17个水候区NCEP CFSv2预报的季节性降水和温度预报技能

获取原文
获取原文并翻译 | 示例
           

摘要

Seasonal predictions of precipitation and surface air temperature from the Climate Forecast System, version 2 (CFSv2), are evaluated against gridded daily observations from 1982 to 2007 over 17 hydroclimatic regions in China. The seasonal predictive skill is quantified with skill scores including correlation coefficient, RMSE, and mean bias for spatially averaged seasonal precipitation and temperature forecasts for each region. The evaluation focuses on identifying regions and seasons where significant skill exists, thus potentially contributing to skill in hydrological prediction. The authors find that the predictive skill of CFSv2 precipitation and temperature forecasts has a stronger dependence on seasons and regions than on lead times. Both temperature and precipitation forecasts show higher skill from late summer [July-September (JAS)] to late autumn [October-December (OND)] and from winter [December-February (DJF)] to spring [March-May (MAM)]. The skill of CFSv2 precipitation forecasts is low during summer [June-August (JJA)] and winter (DJF) over all of China because of low potential predictability of the East Asian summer monsoon and the East Asian winter monsoon for China. As expected, temperature predictive skill is much higher than precipitation predictive skill in all regions. As observed precipitation shows significant correlation with the Oceanic Ni~no index over western, southwestern, and central China, the authors found that CFSv2 precipitation forecasts generally show similar correlation pattern, suggesting that CFSv2 precipitation forecasts can capture ENSO signals. This evaluation suggests that using CFSv2 forecasts for seasonal hydrological prediction over China is promising and challenging.
机译:根据第2版(CFSv2)的气候预报系统对降水和地表气温的季节性预测,根据1982年至2007年中国17个水文气候区的网格日观测数据进行了评估。季节性预测技能的技能得分包括相关系数,RMSE和每个区域的空间平均季节性降水和温度预报的平均偏差。评估的重点是确定存在重要技能的地区和季节,从而潜在地促进水文预报技能。作者发现,CFSv2降水和温度预报的预测技能对季节和地区的依赖性比对交货时间的依赖性更大。从夏季末期(7月至9月(JAS))到秋季末期(10月至12月(OND))以及从冬季[12月至2月(DJF)]到春季[3月至5月(MAM)),温度和降水预报均显示出较高的技能。 ]。由于中国东亚夏季风和东亚冬季风的潜在可预测性较低,因此在整个中国的夏季[6-8月(JJA)]和冬季(DJF),CFSv2降水预报的技巧较低。不出所料,在所有地区,温度预报技能远高于降水预报技能。由于观测到的降水显示出与中国西部,西南部和中部地区的海洋Ni〜no指数显着相关,因此作者发现CFSv2降水预报总体上显示出相似的相关模式,这表明CFSv2降水预报可以捕获ENSO信号。该评估表明,将CFSv2预报用于中国的季节性水文预报是充满希望和挑战的。

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