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WRF model input for improved radar rainfall estimates using Kalman Filter

机译:WRF模型输入,用于使用卡尔曼滤波器改善雷达降雨估计

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The indirect measurement of rain through radar reflectivity is associated with various sources of errors such as ground clutter, partial beam occultation, beam blockage and attenuation effects. Removing the systematic error (bias) and enhancing the precision and limitations of radar data sources are the main focus in enhancing radar rainfall accuracy. This research work was to reduce radar rainfall bias due to the process and measurement noises using Kalman Filter with a multivariate analysis technique. The implementation of this technique involved numerical weather prediction (NWP) namely the Weather Research Forecasting (WRF) model data output parameters such as temperature and relative humidity. The study found that filtering technique using Kalman Filter with multivariate analysis applying the WRF model output has satisfactorily improve radar rainfall estimates.
机译:通过雷达反射率间接测量雨水与各种误差源相关,例如地物杂波,部分波束遮挡,波束阻塞和衰减效应。消除系统误差(偏差)并提高雷达数据源的精度和局限性是提高雷达降雨精度的主要重点。这项研究工作是使用卡尔曼滤波器和多变量分析技术来减少由于过程和测量噪声引起的雷达降雨偏差。该技术的实施涉及数值天气预报(NWP),即天气研究预报(WRF)模型数据输出参数,例如温度和相对湿度。研究发现,使用卡尔曼滤波器和WRF模型输出进行多元分析的滤波技术已令人满意地改善了雷达降雨估计。

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