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1.
多普勒雷达径向速度同化在淮河暴雨数值模拟中的应用   总被引:2,自引:1,他引:1  
针对2007年7月淮河流域的一次强降雨过程,利用WRF中尺度数值模式及其三维变分同化系统(WRF-3DVAR),开展了多普勒雷达径向速度的三维变分同化对暴雨过程模拟效果的影响研究。结果表明:WRF-3DVAR能够有效地同化多普勒雷达径向速度资料,同化后使得模式初始场出现了一定的调整,包含更详尽的中尺度特征信息,进而显著改善模式对大暴雨过程前12h降水的模拟效果。在高分辨率中尺度数值模式中有效地利用多普勒天气雷达资料,能较好地提高中尺度降雨预报。  相似文献   

2.
暴雨模拟中多普勒雷达径向速度变分同化的应用   总被引:1,自引:0,他引:1       下载免费PDF全文
针对2008年6月广东地区的一次强降雨过程,利用WRF中尺度数值模式及其三维变分同化系统(WRF-3DVAR),进行了多普勒雷达径向速度变分同化对暴雨过程模拟效果影响研究。结果表明:WRF-3DVAR能够有效地同化多普勒雷达径向速度,同化后的主要影响在于改进了初始动力场,使得初始场包含有更详尽的中尺度特征信息,进而显著提高模式对广东局地暴雨过程的模拟效果。在高分辨率中尺度数值模式中有效地利用多普勒天气雷达资料,是提高中尺度降雨预报的关键。  相似文献   

3.
多普勒雷达资料在冷涡强对流天气中的同化应用试验   总被引:3,自引:0,他引:3  
陈力强  杨森  肖庆农 《气象》2009,35(12):12-20
应用WRF模式的三维变分同化系统(WRF-3DVAR),对沈阳多普勒天气雷达资料在东北冷涡暴雨个例中的同化应用进行了试验.研制了多普勒雷达资料质量控制系统,实现了对径向风和反射率因子的直接同化,不但可以反演中尺度三维气象要素场,而且可以为模式提供初始场.以天气尺度资料为背景场同化多普勒雷达资料,WRF-3DVAR可以较好地反演冷涡中尺度对流系统的三维结构,反演的地面强对流辐散气流及在对流层中层涡旋都符合中尺度系统概念模型,通过与实际地面探测资料进行了对比,风场环流基本接近,同化了雷达资料的气象要素场可为预报业务提供较好的包含中小尺度系统的实时三维分析场.通过冷涡个例同化试验,应用WRF-3DVAR同化雷达资料后,中尺度模式对对流降水的预报总体有正的影响,对强对流中的一些中小尺度雨团的预报也略有改善.  相似文献   

4.
多普勒天气雷达资料在数值模式ARPS中的试验   总被引:2,自引:2,他引:0  
张蕾  王振会  杨艳蓉 《气象科学》2011,31(5):567-575
利用中尺度预报模式ARPS及其资料分析系统ADAS和三维变分同化系统ARPS3DVAR,直接加入多普勒天气雷达基数据反射率因子和径向速度资料进行数值预报试验。试验包括:控制试验、反射率因子同化试验、径向速度同化试验,两种资料同时同化,多时次连续同化等试验。通过模拟2009年7月7日发生在江苏省附近一次暴雨过程,分析了多普勒天气雷达反射率因子和径向速度资料不同组合的加入对改进模式初始湿度场、风场及预报结果的影响。结果表明:同化雷达反射率因子和径向速度资料,分别对湿度场和风场有显著调整;同时同化两种资料比单独同化在2 h内更显优势;多时次连续同时同化两种资料的试验比起其他试验预报的风速更接近探空风速,预报的降水位置与雷达3 h累积降水产品较为对应,但降水量的预报仍有偏差。  相似文献   

5.
利用中尺度模式WRF(Weather Research and Forecasting Model)及其资料同化系统3DVAR,将国内多普勒天气雷达(CINRAD)反射率因子及径向风资料直接用于中尺度数值模拟;对安徽梅雨期一次暴雨过程进行模拟试验,经过质量控制后,分析同时同化安徽省内六部多普勒天气雷达观测资料对模拟结果的影响。结果表明:(1)经过质量控制后,同化雷达径向风和反射率因子对初始场的风场和湿度场均有较为明显的改善,说明用该雷达资料质量控制方案同化雷达资料是可行的;(2)同化多部雷达径向速度资料能使风场气旋性增强,同化反射率资料能调整初始水汽场,使对流层中下层水汽含量增加;(3)同化多部雷达径向风和反射率因子资料,能提前模拟出强降水回波结构,且其中尺度特征更清晰,降水落区和强度预报更接近实况,同化雷达资料对降水预报能持续影响到12 h,并提高了12 h降水预报准确率。  相似文献   

6.
一次大暴雨过程的多普勒雷达资料同化的敏感性试验   总被引:3,自引:1,他引:2  
利用WRF中尺度模式及WRF-3DVAR变分同化系统和LAPS雷达资料前处理模块建立试验平台,直接同化S波段多普勒雷达反射率和径向速度资料,通过对2008年8月15-16日发生在我国长江中游的一次大暴雨过程的各项预报对比试验研究,初步检验和评估不同种类多普勒雷达观测数据同化对改进数值模式初始场及其数值预报能力的影响及作用.初步结果表明:多普勒雷达资料同化对提高暴雨数值预报能力有重要作用.无论在24 h累计降水还是在逐时降水预报方面,同化多普勒雷达资料均可使降水雨带分布和强降水中心预报的准确性得到较大改善;多普勒雷达反射率资料同化对初始水汽场的改变显著,对初始风场影响较小,而同化径向速度对初始水汽场的改变较小,但可增加初始风场的中小尺度信息,使初始风场产生较大变化.总体上看,虽然雷达反射率和径向速度资料同化均可改进强暴雨的数值预报,但雷达反射率资料同化对降水雨带和中心预报的改进更为显著和重要.  相似文献   

7.
采用WRF中尺度模式及其三维变分同化系统WRF-3DVAR,对2014年5月24—25日发生在萍乡、宜春地区一次大暴雨天气过程进行了雷达资料直接同化敏感性试验,并对同化结果和模式降水预报进行了对比分析。结果表明:1)雷达资料的同化能有效改善初始场中风场、湿度场和热力场的量值大小及空间分布,使其包含更多的中尺度系统信息。其中,雷达反射率因子的同化对大气湿度场和温度场的影响较大,而雷达径向速度的同化作用主要是调整大气风场。2)短时降水预报方面,雷达反射率因子的同化对0—12 h短时降水预报的量值影响较大,而径向速度的同化对降水预报的落区影响较大,两者同时的同化对降水预报效果较好。3)雷达资料的同化对较长时间(6—12 h)的降水预报仍有较好效果。  相似文献   

8.
诊断分析了2007年8月8日陕西中南部一次突发性大暴雨过程,利用WRFV3.4数值预报模式及WRF-3DVAR变分同化系统,采用直接同化西安C波段多普勒雷达资料的方法,设计了4组试验方案。结果表明,多普勒雷达资料同化能有效改进WRF数值模式性能,不同的同化方案对模式初始场及预报场有不同的改进,同化反射率对初始水汽场的改变较为显著,而同化径向速度对初始风场的改变更为明显。在加入雷达资料同化后模式系统对中小尺度天气系统特征的模拟效果提高,风场的辐合特征更为明显,水汽也有显著增强,降水强度和中心跟实况更为接近。  相似文献   

9.
利用新一代中尺度预报模式WRFV3.6及其三维变分同化系统(WRF-3DVAR),对2012年7月21日北京地区的一次暴雨过程进行多普勒天气雷达径向风和反射率的同化试验研究,检验和探讨高时空分辨率多普勒天气雷达资料在改进模式初始场及提高对暴雨过程预报的准确率等方面的应用效果及意义。结果发现雷达资料同化能在初始场中加入反映产生降水的低层风场辐合的动力和锋前暖区充足的水汽条件的物理信息,可以在模式积分开始后改善初始场中水汽和风的分布,较快地模拟出局地对流系统的发生、发展,改善由于中尺度观测资料不足而造成的模式初始场里中尺度信息缺乏的问题。径向速度的同化增加了中尺度信息,对初始流场的调整较为显著,侧重于改进风场。而雷达反射率资料的同化对初始温、湿度场和强回波位置的调整更明显,侧重于改进湿度场。累计降水的预报结果显示,同化径向风资料对雨带的位置、范围有较好的改进,同化雷达反射率资料对暴雨强度的预报有明显的改善。通过降水ETS评分发现,同化常规观测试验相对于控制实验,对于5、15 mm和25 mm降水评分能增加0.1左右,径向风同化试验能增加0.2左右,反射率同化试验能增加0.3左右,而径向风加反射率试验增加的评分介于0.2~0.3。雷达资料对于提高定量降水预报的精确度有着重要作用。  相似文献   

10.
利用中尺度非静力WRF(Weather Research and Forecasting)模式及其三维变分同化系统,对2007年7月淮河流域的一次强降雨过程进行多普勒雷达径向速度资料的三维变分同化试验,重点考察雷达资料的不同稀疏化方式对同化结果以及对暴雨数值模拟的影响。结果表明:同化多普勒雷达径向速度资料使得模式初始风场包含了更丰富的中尺度特征信息,有效调整了初始场的环流结构,能够改善模式对暴雨过程的模拟效果;以不同的稀疏化处理方式同化多普勒雷达径向速度资料对分析场会产生不同的影响,进而影响模式的降水预报效果,本次试验中当极坐标网格径向分辨率取10 km的时候降水过程的预报效果最好。  相似文献   

11.
The present study designs experiments on the direct assimilation of radial velocity and reflectivity data collected by an S-band Doppler weather radar (CINRAD WSR-98D) at the Hefei Station and the reanalysis data produced by the United States National Centers for Environmental Prediction using the Weather Research and Forecasting (WRF) model, the WRF model with a three-dimensional variational (3DVAR) data assimilation system and the WRF model with an ensemble square root filter (EnSRF) data assimilation system. In addition, the present study analyzes a Meiyu front heavy rainfall process that occurred in the Yangtze -Huaihe River Basin from July 4 to July 5, 2003, through numerical simulation. The results show the following. (1) The assimilation of the radar radial velocity data can increase the perturbations in the low-altitude atmosphere over the heavy rainfall region, enhance the convective activities and reduce excessive simulated precipitation. (2) The 3DVAR assimilation method significantly adjusts the horizontal wind field. The assimilation of the reflectivity data improves the microphysical quantities and dynamic fields in the model. In addition, the assimilation of the radial velocity and reflectivity data can better adjust the wind fields and improve the intensity and location of the simulated radar echo bands. (3) The EnSRF assimilation method can assimilate more small-scale wind field information into the model. The assimilation of the reflectivity data alone can relatively accurately forecast the rainfall centers. In addition, the assimilation of the radial velocity and reflectivity data can improve the location of the simulated radar echo bands. (4) The use of the 3DVAR and EnSRF assimilation methods to assimilate the radar radial velocity and reflectivity data can improve the forecast of precipitation, rain-band areal coverage and the center location and intensity of precipitation.  相似文献   

12.
This study investigated the impact of multiple-Doppler radar data and surface data assimilation on forecasts of heavy rainfall over the central Korean Peninsula;the Weather Research and Forecasting(WRF) model and its three-dimensional variational data assimilation system(3DVAR) were used for this purpose. During data assimilation,the WRF 3DVAR cycling mode with incremental analysis updates(IAU) was used. A maximum rainfall of 335.0 mm occurred during a 12-h period from 2100 UTC 11 July 2006 to 0900 UTC 12 July 2006.Doppler radar data showed that the heavy rainfall was due to the back-building formation of mesoscale convective systems(MCSs).New convective cells were continuously formed in the upstream region,which was characterized by a strong southwesterly low-level jet(LLJ).The LLJ also facilitated strong convergence due to horizontal wind shear,which resulted in maintenance of the storms.The assimilation of both multiple-Doppler radar and surface data improved the accuracy of precipitation forecasts and had a more positive impact on quantitative forecasting(QPF) than the assimilation of either radar data or surface data only.The back-building characteristic was successfully forecasted when the multiple-Doppler radar data and surface data were assimilated.In data assimilation experiments,the radar data helped forecast the development of convective storms responsible for heavy rainfall,and the surface data contributed to the occurrence of intensified low-level winds.The surface data played a significant role in enhancing the thermal gradient and modulating the planetary boundary layer of the model,which resulted in favorable conditions for convection.  相似文献   

13.
多普勒雷达资料对暴雨定量预报的同化对比试验   总被引:7,自引:6,他引:1  
基于NCEP/NCAR再分析资料和连云港雷达探测资料,利用WRF模式及其三维变分同化V2.1系统,对发生在2008年4月19日连云港地区一次区域性暴雨过程进行了三维变分同化数值模拟对比研究.结果表明,同化了雷达资料后,模式预报效果比单独使用NCEP做初始场效果明显改善,暴雨落区和量值更接近实况.同化了雷达资料后,模式预报的垂直运动区、最大上升区、水汽输送通道和高空涡度分布等更接近强降水区,结构也更精细,说明初始场增加雷达资料后,对初始风场的结构、强度和初始云水分布有实质性的改进,从而提高了对暴雨定量预报的效果.  相似文献   

14.
A heavy rainfall case related to Mesoscale Convective Systems (MCSs) over the Korean Peninsula was selected to investigate the impact of radar data assimilation on a heavy rainfall forecast. The Weather Research and Forecasting (WRF) three-dimensional variational (3DVAR) data assimilation system with tuning of the length scale of the background error covariance and observation error parameters was used to assimilate radar radial velocity and reflectivity data. The radar data used in the assimilation experiments were preprocessed using quality-control procedures and interpolated/thinned into Cartesian coordinates by the SPRINT/CEDRIC packages. Sensitivity experiments were carried out in order to determine the optimal values of the assimilation window length and the update frequency used for the rapid update cycle and incremental analysis update experiments. The assimilation of radar data has a positive influence on the heavy rainfall forecast. Quantitative features of the heavy rainfall case, such as the maximum rainfall amount and Root Mean Squared Differences (RMSDs) of zonal/meridional wind components, were improved by tuning of the length scale and observation error parameters. Qualitative features of the case, such as the maximum rainfall position and time series of hourly rainfall, were enhanced by an incremental analysis update technique. The positive effects of the radar data assimilation and the tuning of the length scale and observation error parameters were clearly shown by the 3DVAR increment.  相似文献   

15.
In this study, both reflectivity and radial velocity are assimilated into the Weather Research and Forecasting (WRF) model using ARPS 3DVAR technique and cloud analysis procedure for analysis and very short range forecast of cyclone ÁILA. Doppler weather radar (DWR) data from Kolkata radar are assimilated for numerical simulation of landfalling tropical cyclone. Results show that the structure of cyclone AILA has significantly improved when radar data is assimilated. Radar reflectivity data assimilation has strong influence on hydrometeor structures of the initial vortex and precipitation pattern and relatively less influence is observed on the wind fields. Divergence/convergence conditions over cyclone inner-core area in the low-to-middle troposphere (600–900 hPa) are significantly improved when wind data are assimilated. However, less impact is observed on the moisture field. Analysed minimum sea level pressure (SLP) is improved significantly when both reflectivity and wind data assimilated simultaneously (RAD-ZVr experiment), using ARPS 3DVAR technique. In this experiment, the centre of cyclone is relocated very close to the observed position and the system maintains its intensity for longer duration. As compared to other experiments track errors are much reduced and predicted track is very much closer to the best track in RAD-ZVr experiment. Rainfall pattern and amount of rainfall are better captured in this experiment. The study also reveals that cyclone structure, intensification, direction of movement, speed and location of cyclone are significantly improved and different stages of system are best captured when both radar reflectivity and wind data are assimilated using ARPS 3DVAR technique and cloud analysis procedure. Thus optimal impact of radar data is realized in RAD-ZVr experiment. The impact of DWR data reduces after 12 h forecast and it is due to the dominance of the flow from large-scale global forecast system model. Successful coupling of data assimilation package ARPS 3DVAR with WRF model for Indian DWR data is also demonstrated.  相似文献   

16.
利用中尺度WRF模式及其3DVAR同化系统对2014年3月30日发生在我国华南地区的一次飑线过程展开多普勒天气雷达资料的同化效果试验研究。首先对雷达资料进行去地物杂波、退速度模糊等预处理,后设计了基于不同雷达观测量的同化试验及同化频次的敏感性试验。结果表明:直接循环同化雷达径向风资料和雷达反射率因子能够增加数值模式中的中小尺度信息,提供可靠的水汽分布;不同的同化频次对同化结果影响显著,每12 min同化间隔的结果略优于30 min、60 min同化间隔;同化雷达反射率因子和径向风资料分别对模式的总水场和风场有显著调整,联合同化雷达反射率因子和径向风资料比单独同化反射率因子或径向风更能改善飑线垂直结构配置,促使地面冷池和雷暴高压配合,进一步改善模式对大雨和暴雨量级降水预报效果。  相似文献   

17.
局地分析预报系统在GRAPES模式中的应用   总被引:1,自引:0,他引:1       下载免费PDF全文
在分析美国局地分析预报系统 (LAPS) 和GRAPES_Meso数值预报系统,实现GRAPES-LAPS接口的基础上,通过两种数据融合方案,即GRAPES/LAPS方案 (简称LAPS方案) 和GRAPES/3DVAR方案 (3DVAR方案),对2008—2010年华南地区的28个个例的地面、探空常规和加密资料,以及多部多普勒天气雷达数据等融合、同化,开展两种方案的对比模拟试验。结果表明:LAPS方案获得的初始场,水汽条件有所改善,其辐合辐散相耦合触发中小尺度系统发展加强的中尺度环境场,有助于提高模式对强对流天气的预报能力。两种方案的24 h要素场均方根误差检验结果和降水TS评分大体相当,但28个个例中,LAPS方案报出了10个暴雨,而3DVAR方案只报出了5个,LAPS方案的中雨、大雨和暴雨的24 h降水预报TS评分要略好于3DVAR方案相应预报的TS评分,表明LAPS方案对强降水的预报较3DVAR方案有一定改进。  相似文献   

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