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621.
集合Kalman滤波在土壤湿度同化中的应用 总被引:10,自引:4,他引:6
基于非饱和土壤水模型和集合卡尔曼滤波 (Ensemble Kalman Filter, 简称EnKF) 并结合陆面水文模型——可变下渗能力模型 (Variable Infiltration Capacity, 简称VIC模型) 发展了一个土壤湿度同化方案。利用1998年6~8月淮河流域能量和水循环试验 (HUBEX) 项目外场观测试验区——史灌河流域梅山站土壤湿度逐日观测资料及1986~1993年合肥和南阳两站点的土壤湿度旬观测资料进行同化试验, 结果表明该同化方案能完整估计土壤湿度廓线, 同化的土壤湿度与观测资料基本吻合, 反映了土壤湿度的日、 旬、 月、 季变化, 同化方案是合理的。与基于扩展卡尔曼滤波 (Extended Kalman Filter, 简称EKF) 的土壤湿度同化方案的结果比较, 基于EnKF的土壤湿度同化方案易于实现, 且通过选择恰当的集合样本数其同化效果总体上略优于EKF同化方案, 但前者同化时需要花费较多的计算时间。 相似文献
622.
使用NCEP集合预报资料, 对亚洲中高纬地区2003年6—8月500 hPa高度场的集合预报效果进行了检验。环流预报效果检验结果表明:预报时效大于5 d时, 集合平均预报明显优于单一预报; 使用相同模式分辨率时, 集合平均能将可用预报时效延长12 h以上, 达到7.5 d; 通过集合预报可获得真正意义的概率预报结果, 取得较单一高分辨率预报好的预报效果。阻塞过程的个例分析也表明集合平均的预报效果明显优于单一确定性预报; 特征等值线可反映集合成员的不一致信息和少数集合成员的异常表现, 以此为基础, 可估计分析对象出现与否的概率, 达到提高预报效果的目的。 相似文献
623.
Heavy Rainfall Ensemble Prediction: Initial Condition Perturbation vs Multi-Physics Perturbation 总被引:4,自引:0,他引:4 下载免费PDF全文
Mesoscale ensemble is an encouraging technology for improving the accuracy of heavy rainfall predictions. Occurrences of heavy rainfall are closely related to convective instability and topography. In mid-latitudes, perturbed initial fields for medium-range weather forecasts are often configured to focus on the baroclinic instability rather than the convective instability. Thus, alternative approaches to generate initial perturba- tions need to be developed to accommodate the uncertainty of the convective instability. In this paper, an initial condition perturbation approach to mesoscale heavy rainfall ensemble prediction, named as Different Physics Mode Method (DPMM), is presented in detail. Based on the PSU/NCAR mesoscale model MM5, an ensemble prediction experiment on a typical heavy rainfall event in South China is carried out by using the DPMM, and the structure of the initial condition perturbation is analyzed. Further, the DPMM ensem- ble prediction is compared with a multi-physics ensemble prediction, and the results show that the initial perturbation fields from the DPMM have a reasonable mesoscale circulation structure and could reflect the prediction uncertainty in the sensitive regions of convective instability. An evaluation of the DPMM ini- tial condition perturbation indicates that the DPMM method produces better ensemble members than the multi-physics perturbation method, and can significantly improve the precipitation forecast than the control non-ensemble run. 相似文献
624.
An investigation of the difference in seasonal
precipitation forecast skills between the multiple linear regression
(MLR) ensemble and the simple multimodel ensemble mean (EM) was
based on the forecast quality of individual models. The possible
causes of difference in previous studies were analyzed. In order to
make the simulation capability of studied regions relatively
uniform, three regions with different temporal correlation
coefficients were chosen for this study. Results show the causes
resulting in the incapability of the MLR approach vary among
different regions. In the Nino3.4 region, strong co-linearity
within individual models is generally the main reason. However, in
the high latitude region, no significant co-linearity can be found
in individual models, but the abilities of single models are so poor
that it makes the MLR approach inappropriate for superensemble
forecasts in this region. In addition, it is important to note that
the use of various score measurements could result in some
discrepancies when we compare the results derived from different
multimodel ensemble approaches. 相似文献
625.
The ensemble Kalman filter (EnKF), as a unified approach to both data assimilation and ensemble forecasting problems, is used to investigate the performance of dust storm ensemble forecasting targeting a dust episode in the East Asia during 23–30 May 2007. The errors in the input wind field, dust emission intensity, and dry deposition velocity are among important model uncertainties and are considered in the model error perturbations. These model errors are not assumed to have zero-means. The model error me... 相似文献
626.
After the consideration of the nonlinear nature changes of monsoon index,and the subjective determination of network structure in traditional artificial neural network prediction modeling,monthly and seasonal monsoon intensity index prediction is studied in this paper by using nonlinear genetic neural network ensemble prediction(GNNEP)modeling.It differs from traditional prediction modeling in the following aspects: (1)Input factors of the GNNEP model of monsoon index were selected from a large quantity of preceding period high correlation factors,such as monthly sea temperature fields,monthly 500-hPa air temperature fields,monthly 200-hPa geopotential height fields,etc.,and they were also highly information-condensed and system dimensionality-reduced by using the empirical orthogonal function(EOF)method,which effectively condensed the useful information of predictors and therefore controlled the size of network structure of the GNNEP model.(2)In the input design of the GNNEP model,a mean generating function(MGF)series of predictand(monsoon index)was added as an input factor;the contrast analysis of results of predic- tion experiments by a physical variable predictor-predictand MGF GNNEP model and a physical variable predictor GNNEP model shows that the incorporation of the periodical variation of predictand(monsoon index)is very effective in improving the prediction of monsoon index.(3)Different from the traditional neural network modeling,the GNNEP modeling is able to objectively determine the network structure of the GNNNEP model,and the model constructed has a better generalization capability.In the case of identical predictors,prediction modeling samples,and independent prediction samples,the prediction accuracy of our GNNEP model combined with the system dimensionality reduction technique of predictors is clearly higher than that of the traditional stepwise regression model using the traditional treatment technique of predictors,suggesting that the GNNEP model opens up a vast range of possibilities for operational weather prediction. 相似文献
627.
One of the main concerns in regional climate modeling is to which extent limited-area regional climate models (RCM) reproduce
the large-scale atmospheric conditions of their driving general circulation model (GCM). In this work we investigate the ability
of a multi-model ensemble of regional climate simulations to reproduce the large-scale weather regimes of the driving conditions.
The ensemble consists of a set of 13 RCMs on a European domain, driven at their lateral boundaries by the ERA40 reanalysis
for the time period 1961–2000. Two sets of experiments have been completed with horizontal resolutions of 50 and 25 km, respectively.
The spectral nudging technique has been applied to one of the models within the ensemble. The RCMs reproduce the weather regimes
behavior in terms of composite pattern, mean frequency of occurrence and persistence reasonably well. The models also simulate
well the long-term trends and the inter-annual variability of the frequency of occurrence. However, there is a non-negligible
spread among the models which is stronger in summer than in winter. This spread is due to two reasons: (1) we are dealing
with different models and (2) each RCM produces an internal variability. As far as the day-to-day weather regime history is
concerned, the ensemble shows large discrepancies. At daily time scale, the model spread has also a seasonal dependence, being
stronger in summer than in winter. Results also show that the spectral nudging technique improves the model performance in
reproducing the large-scale of the driving field. In addition, the impact of increasing the number of grid points has been
addressed by comparing the 25 and 50 km experiments. We show that the horizontal resolution does not affect significantly
the model performance for large-scale circulation. 相似文献
628.
基于超级集合思想的数值预报产品变权集成方法探讨 总被引:5,自引:3,他引:2
针对目前地方气象台站能获取的国内外数值预报产品种类多、数量大、质量参差不齐的实际情况,探讨了几种基于超级集合思想的多模式数值预报动态变权集成处理方法.该方法经济、简便、有效,为预报员从海量的数值产品信息中提取更为准确和精细的集成形势场、物理量场、降水预报、冷空气活动预报、集成矩、特征线路图等多种具有较高质量的集成统计新产品,能动态反映各类数值预报模式的预报能力变化,在一定程度上提高了不同时间、不同区域的精细化预报水平和数值产品的利用效率,为业务预报提供了有价值的参考. 相似文献
629.
Different multimodel ensemble methods are used to forecast precipitations in China, 1998, and their forecast skills are compared with those of individual models. Datasets were obtained from monthly simulations of eight models during the period of January 1979 to December 1998 from the “Climate of the 20th Century Experiment” (20C3M) for the Fourth IPCC Assessment Report. Climate Research Unit (CRU) data were chosen for the observation analysis field. Root mean square (RMS) error and correlation coeffi-cients (R) are used to measure the forecast skills. In addition, superensemble forecasts based on different input data and weights are analyzed. Results show that for original data, superensemble forecasting based on multiple linear regression (MLR) performs best. However, for bias-corrected data, the superensemble based on singular value decomposition (SVD) produces a lower RMS error and a higher R than in the MLR superensemble. It is an interesting result that the SVD superensemble based on bias-corrected data performs better than the MLR superensemble, but that the SVD superensemble based on original data is inferior to the corresponding MLR superensemble. In addition, weights calculated by different data formats are shown to affect the forecast skills of the superensembles. In comparison with the MLR superensemble, a slightly significant effect is present in the SVD superensemble. However, both the SVD and MLR superensembles based on different weight formats outperform the ensemble mean of bias-corrected data. 相似文献
630.
Statistical Downscaling for Multi-Model Ensemble Prediction
of Summer Monsoon Rainfall in the Asia-Pacific
Region Using Geopotential Height Field 总被引:16,自引:1,他引:15
The 21-yr ensemble predictions of model precipitation and circulation in the East Asian and western North Pacific (Asia-Pacific) summer monsoon region (0°-50°N, 100° 150°E) were evaluated in nine different AGCM, used in the Asia-Pacific Economic Cooperation Climate Center (APCC) multi-model ensemble seasonal prediction system. The analysis indicates that the precipitation anomaly patterns of model ensemble predictions are substantially different from the observed counterparts in this region, but the summer monsoon circulations are reasonably predicted. For example, all models can well produce the interannual variability of the western North Pacific monsoon index (WNPMI) defined by 850 hPa winds, but they failed to predict the relationship between WNPMI and precipitation anomalies. The interannual variability of the 500 hPa geopotential height (GPH) can be well predicted by the models in contrast to precipitation anomalies. On the basis of such model performances and the relationship between the interannual variations of 500 hPa GPH and precipitation anomalies, we developed a statistical scheme used to downscale the summer monsoon precipitation anomaly on the basis of EOF and singular value decomposition (SVD). In this scheme, the three leading EOF modes of 500 hPa GPH anomaly fields predicted by the models are firstly corrected by the linear regression between the principal components in each model and observation, respectively. Then, the corrected model GPH is chosen as the predictor to downscale the precipitation anomaly field, which is assembled by the forecasted expansion coefficients of model 500 hPa GPH and the three leading SVD modes of observed precipitation anomaly corresponding to the prediction of model 500 hPa GPH during a 19-year training period. The cross-validated forecasts suggest that this downscaling scheme may have a potential to improve the forecast skill of the precipitation anomaly in the South China Sea, western North Pacific and the East Asia Pacific regions, wh 相似文献