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Comparison of the Performance of Hybrid ETKF-3DVAR and 3DVAR Data Assimilation Systems on Short-Range Forecasts during Indian Summer Monsoon Season in a Limited-Area Model

机译:Hybrid Etkf-3dvar和3DVAR数据同化系统在限量区模型中印度夏季季季短程预报下的比较

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The impact of deploying a flow-dependent ensemble error covariance in Weather Research and Forecasting (WRF) three-dimensional variational (3DVAR) data assimilation (DA) system is examined for short-range rainfall forecasts during an Indian summer monsoon season. The flow-dependent background error covariance (BEC) is generated using a 50-member ensemble, which is further updated using the ensemble transform Kalman filter (ETKF). Assimilation is performed using a Hybrid variational-ensemble ("Hybrid") and traditional 3DVAR DA system during the 4 weeks of July 2013. The forecasted wind, temperature, and rainfall from the assimilation experiments are verified against corresponding observations. The results indicate that the flow-dependent ensemble background error covariance in 3DVAR has systematically improved the forecasted wind and temperature when compared to the traditional 3DVAR. Similarly, rainfall forecast skill is superior in the Hybrid experiments relative to that of 3DVAR. Convection-permitting resolution rainfall forecast is validated against 746 telemetric rain gauge observations over the state of Karnataka. The Hybrid experiments show higher quantitative precipitation forecast skill than 3DVAR, particularly towards the later stages of data assimilation cycling. Spatially, the 3DVAR experiment shows a dry bias over the upper peninsular regions and a slight wet bias over the central and the northern Indian regions, while the magnitude of such wet and dry biases is smaller in forecasts from Hybrid analysis. Additionally, the westerly wind over the peninsular Indian landmass analyzed by 3DVAR is considerably weaker than that analyzed by the Hybrid experiments. This is proposed as a possible reason for the reduced dry bias in rainfall forecasts over the Indian landmass in Hybrid versus 3DVAR experiments.
机译:在印度夏季季风季节,研究了在天气研究和预测(WRF)三维变分(3DVAR)数据同化(3DVAR)数据同化(DA)系统中的影响。流动相关的背景错误协方差(BEC)使用50构件集合生成,这是使用集合变换卡尔曼滤波器(ETKF)进一步更新的。在2013年7月4日,使用混合变分 - 集合(“混合”)和传统的3DVAR DA系统进行同化。来自同化实验的预测风,温度和降雨,验证了相应的观察结果。结果表明,与传统的3DVAR相比,3DVAR中的流动依赖集合背景错误协方差系统地改善了预测的风和温度。同样,降雨预测技能在相对于3DVAR的混合实验中优异。对流允许的分辨率降雨预测是针对在卡纳塔克邦的746个遥测雨量尺的观察中验证。混合实验表明比3DVAR更高的定量降水预测技能,特别是朝向数据同化循环的后期阶段。在空间上,3DVAR实验显示了上半岛地区的干燥偏见,并且在中央和北方印度地区略微湿偏压,而这种湿和干燥偏差的大小较小,来自杂化分析。此外,在3DVAR分析的半岛印度陆地上的西风缠绕着比混合实验分析的光临较弱。这提出了作为在Hybrid与3DVAR实验中的印度陆地上的降雨量预测降低干燥偏差的可能原因。

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