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首页> 外文期刊>Frontiers of earth science >Improvement of typhoon rainfall prediction based on optimization of the Kain-Fritsch convection parameterization scheme using a micro-genetic algorithm
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Improvement of typhoon rainfall prediction based on optimization of the Kain-Fritsch convection parameterization scheme using a micro-genetic algorithm

机译:基于微遗传算法的Kain-Fritsch对流参数化方案优化的台风降雨预报改进

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Inclusion of cloud processes is essential for precipitation prediction with a numerical weather prediction model. However, convective parameterization contains numerous parameters whose values are in large uncertainties. In particular, it is still not clear how the parameters of a sub-grid-scale convection scheme can be modified to improve high-resolution precipitation prediction. To address these issues, a micro-genetic (micro-GA) algorithm is coupled to the Kain-Fritsch (KF) convective parameterization scheme (CPS) in the WRF to improve the quantitative precipitation forecast (QPF). The optimization focuses on two parameters in the KF scheme: the convective time scale and the conversion rate. The optimizing process is controlled by the micro-GA using a QPF skill score as the fitness function. Two heavy rainfall events related to typhoons that made landfall over the south-east coastal region of China are selected, and for each case the parameter values are adjusted to achieve the best QPF skill. Significant improvements in QPF are evident with an increase in the average equitable threat score (ETS) by 5.8% for the first case, and by 18.4% for the second case. The results demonstrate that the micro-GAKF coupling system is effective in optimizing the parameter values, which affect the applicability of CPS in a high-resolution model, and therefore improves the rainfall prediction in both ETS and spatial distribution.
机译:包含云过程对于使用数值天气预报模型进行降水预测至关重要。但是,对流参数化包含许多参数,这些参数的值具有很大的不确定性。特别是,尚不清楚如何修改亚网格尺度对流方案的参数以改善高分辨率降水预测。为了解决这些问题,将微遗传(micro-GA)算法与WRF中的Kain-Fritsch(KF)对流参数化方案(CPS)耦合,以改善定量降水预报(QPF)。优化重点在于KF方案中的两个参数:对流时间尺度和转换率。微型GA使用QPF技能得分作为适应度函数来控制优化过程。选择了两次与台风有关的强降雨事件,这些事件使中国东南沿海地区登陆,并针对每种情况调整参数值以获得最佳QPF技能。 QPF的显着提高是明显的,第一种情况的平均公平威胁评分(ETS)提高了5.8%,第二种情况的平均公平威胁得分提高了18.4%。结果表明,微GAKF耦合系统可以有效地优化参数值,从而影响CPS在高分辨率模型中的适用性,从而改善了ETS和空间分布中的降雨预报。

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