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雷达资料同化对2015年台风彩虹数值模拟改进

冯佳宁 端义宏 徐晶 张兴海 胡皓

冯佳宁, 端义宏, 徐晶, 等. 雷达资料同化对2015年台风彩虹数值模拟改进. 应用气象学报, 2017, 28(4): 399-413. DOI: 10.11898/1001-7313.20170402..
引用本文: 冯佳宁, 端义宏, 徐晶, 等. 雷达资料同化对2015年台风彩虹数值模拟改进. 应用气象学报, 2017, 28(4): 399-413. DOI: 10.11898/1001-7313.20170402.
Feng Jianing, Duan Yihong, Xu Jing, et al. Improving the simulation of typhoon Mujigae (2015) based on radar data assimilation. J Appl Meteor Sci, 2017, 28(4): 399-413. DOI:  10.11898/1001-7313.20170402.
Citation: Feng Jianing, Duan Yihong, Xu Jing, et al. Improving the simulation of typhoon Mujigae (2015) based on radar data assimilation. J Appl Meteor Sci, 2017, 28(4): 399-413. DOI:  10.11898/1001-7313.20170402.

雷达资料同化对2015年台风彩虹数值模拟改进

DOI: 10.11898/1001-7313.20170402
资助项目: 

国家自然科学基金项目 41375068

国家重点基础研究发展计划项目 2015CB452805

中国气象科学研究院基本科研业务费专项 2016Z003

详细信息
    通信作者:

    端义宏, email:duanyh@cma.gov.cn

Improving the Simulation of Typhoon Mujigae (2015) Based on Radar Data Assimilation

  • 摘要: 基于WRF中尺度模式,采用集合卡尔曼滤波方法同化中国岸基多普勒天气雷达径向速度资料,对2015年登陆台风彩虹(1522)进行数值试验。从台风强度、路径、结构等方面验证了同化效果,并对不同区域雷达观测资料的同化敏感性进行讨论。试验结果表明:在同化窗内同化分析场台风位置误差相比未同化平均减小15 km,最多时刻减小38 km,同化资料时次越多,确定性预报路径误差越小。同化雷达资料后较好地反映出台风彩虹(1522)近海加强过程,台风中心最低气压同化分析和预报误差相比未同化最大减小超过25 hPa,台风眼的尺度、眼墙处对流非对称结构相比未同化与观测更加接近。试验还表明:台风内核100 km范围内的雷达观测对同化效果影响最大,仅同化这部分资料(约占总量的20%)各方面效果与同化全部资料相近,而仅同化100 km以外资料效果明显不及同化所有资料。仅同化台风内核雷达观测资料可以在不影响同化效果的前提下,使集合同化计算机时减小为原来的1/3,该策略可为台风实际业务预报提供一定参考。
  • 图  1  模拟试验设计方案(a)海口多普勒天气雷达(Z9898) 及其扫描覆盖范围与台风彩虹实测路径示意图(虚线表示资料同化时段), (b)模拟试验网格区域设置

    Fig. 1  Experiment design of modeling (a)location of Haikou Doppler radar(site number is Z9898) and its radial velocity coverage with best track of Typhoon Mujigae(2015)(the dashed line denotes the period during which radar data is assimilated), (b)domain configuration of model

    图  2  雷达超级观测资料分布(a)全部资料,(b)距台风中心小于100 km范围资料,(c)距台风中心100~200 km范围资料,(d)距台风中心200 km以外资料

    Fig. 2  Scattering gram of super observations(SO) in assimilation experiments (a)total SO, (b)SO within 100 km from the typhoon center, (c)SO in 100-200 km from the typhoon center, (d)SO out of 200 km from the typhoon center

    图  3  台风彩虹路径分析(EnKF同化试验)与预报(DF_03T22,DF_04T00,DF_04T02,DF_04T04)

    Fig. 3  The EnKF analysis and deterministic forecast (DF_03T22, DF_04T00, DF_04T02, DF_04T04) of Typhoon Mujigae(2015)

    图  4  2015年10月3—4日台风彩虹最低海平面气压(a)同化分析,(b)确定性预报

    Fig. 4  Minimum sea-level pressure of Typhoon Mujigae(2015) by EnKF analysis(a) and forecast(b) from 3 Oct to 5 Oct in 2015

    图  5  2015年10月3—4日雷达组合反射率因子

    Fig. 5  The composite radar reflectivity of Typhoon Mujigae(2015) from 3 Oct to 4 Oct in 2015

    图  6  同化分析增量(a)2015年10月3日20:00 300 hPa位温增量(填色)和风矢量增量,(b)2015年10月4日04:00 300 hPa位温增量(填色)和风矢量增量,(c)2015年10月3日20:00 850 hPa涡度增量,(d)2015年10月4日04:00 850 hPa涡度增量(黑色圆点和绿色圆点分别表示观测和分析场台风位置)

    Fig. 6  Analysis increments (a)300 hPa potential temperature increment(the shaded) and wind increment at 2000 UTC 3 Oct 2015, (b)300 hPa potential temperature increment(the shaded) and wind increment at 0400 UTC 4 Oct 2015, (c)850 hPa vorticity increment at 2000 UTC 3 Oct 2015, (d)850 hPa vorticity increment at 0400 UTC 4 Oct 2015 (black and green dots denote typhoon location of observation and analysis)

    图  7  3组敏感性试验雷达超级观测资料盒须图(a)全部资料,(b)距台风中心小于100 km范围资料,(c)距台风中心100~200 km范围资料,(d)距台风中心200 km以外资料(折线为最佳路径近中心最大风速)

    Fig. 7  Box-and-whisker plot of radar SO in assimilation experiments (a)total SO, (b)SO within 100 km from the typhoon center, (c)SO in 100-200 km from the typhoon center, (d)SO out of 200 km from the typhoon center(the black curve denotes the maximum wind speed from JTWC best track)

    图  8  不同同化敏感性试验同化分析对比

    (a)强度,(b)路径,(c)路径误差,(d)路径相对EnKF同化试验偏差

    Fig. 8  Minimum sea surface level pressure(a), track(b), track error(c) and track bias to EnKF(d) of Typhoon Mujigae(2015) in sensitivie experiments

    图  9  2015年10月4日敏感性试验模拟雷达组合反射率因子

    Fig. 9  The composite radar reflectivity of Typhoon Mujigae(2015) in sensitive experiments

    图  10  2015年10月3—4日不同试验雷达超级观测资料数量对比

    Fig. 10  The number of SO in sensitivie expriments from 3 Oct to 4 Oct in 2015

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  • 收稿日期:  2017-03-10
  • 修回日期:  2017-05-19
  • 刊出日期:  2017-07-31

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