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Seasonal Analysis of Cloud Objects in the High-Resolution Rapid Refresh (HRRR) Model Using Object-Based Verification

机译:基于对象验证的高分辨率快速刷新(HRRR)模型中云对象的季节性分析

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In this study, object-based verification using the method for object-based diagnostic evaluation(MODE) is used to assess the accuracy of cloud-cover forecasts from the experimental High-Resolution Rapid Refresh (HRRRx) model during the warm and cool seasons. This is accomplished by comparing cloud objects identified by MODE in observed and simulated Geostationary Operational Environmental Satellite 10.7-mm brightness temperatures for August 2015 and January 2016. The analysis revealed that more cloud objects and a more pronounced diurnal cycle occurred during August, with larger object sizes observed in January because of the prevalence of synoptic-scale cloud features. With the exception of the 0-h analyses, the forecasts contained fewer cloud objects than were observed. HRRRx forecast accuracy is assessed using two methods: traditional verification, which compares the locations of grid points identified as observation and forecast objects, and the MODE composite score, an area-weighted calculation using the object-pair interest values computed by MODE. The 1-h forecasts for both August and January were the most accurate for their respective months. Inspection of the individual MODE attribute interest scores showed that, even though displacement errors between the forecast and observation objects increased between the 0-h analyses and 1-h forecasts, the forecasts were more accurate than the analyses because the sizes of the largest cloud objects more closely matched the observations. The 1-h forecasts from August were found to be more accurate than those during January because the spatial displacement between the cloud objects was smaller and the forecast objects better represented the size of the observation objects.
机译:在该研究中,使用基于对象的诊断评估方法(模式)的基于对象验证来评估在温暖和凉爽的季节期间从实验高分辨率快速刷新(HRRRX)模型的云覆盖预测的准确性。这是通过比较2015年8月和2016年1月在观察和模拟的地球静止运营环境卫星10.7毫米亮度温度中确定的模式所识别的云对象来实现的。分析显示,8月期间发生更多的云对象和更明显的昼夜周期,具有较大的物体由于Synoptic-Scale云特征的普及,1月观察到的大小。除了0-H分析之外,预测包含少于观察到的云对象。使用两种方法进行评估HRRRX预测准确性:传统验证,它将被识别为观察和预测对象的网格点的位置和模式综合评分,使用由模式计算的对象对兴趣值的群体加权计算。 8月和1月的1小时预测最准确的是他们各自的几个月。检查各个模式属性的兴趣分数表明,即使预测和观察对象之间的位移误差在0-H分析和1小时内增加之间增加,预测比分析更准确,因为最大云对象的大小更紧密地匹配观察结果。从8月的1小时预测比1月份更准确,因为云对象之间的空间位移较小,并且预测物体更好地表示观察对象的大小。

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