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Nowcasting daily minimum air and grass temperature

机译:临近预报每日最低气温和草地温度

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Site-specific and accurate prediction of daily minimum air and grass temperatures, made available online several hours before their occurrence, would be of significant benefit to several economic sectors and for planning human activities. Site-specific and reasonably accurate nowcasts of daily minimum temperature several hours before its occurrence, using measured sub-hourly temperatures hours earlier in the morning as model inputs, was investigated. Various temperature models were tested for their ability to accurately nowcast daily minimum temperatures 2 or 4 h before sunrise. Temperature datasets used for the model nowcasts included sub-hourly grass and grass-surface (infrared) temperatures from one location in South Africa and air temperature from four subtropical sites varying in altitude (USA and South Africa) and from one site in central sub-Saharan Africa. Nowcast models used employed either exponential or square root functions to describe the rate of nighttime temperature decrease but inverted so as to determine the minimum temperature. The models were also applied in near real-time using an open web-based system to display the nowcasts. Extrapolation algorithms for the site-specific nowcasts were also implemented in a datalogger in an innovative and mathematically consistent manner. Comparison of model 1 (exponential) nowcasts vs measured daily minima air temperatures yielded root mean square errors (RMSEs) 1 A degrees C for the 2-h ahead nowcasts. Model 2 (also exponential), for which a constant model coefficient (b = 2.2) was used, was usually slightly less accurate but still with RMSEs 1 A degrees C. Use of model 3 (square root) yielded increased RMSEs for the 2-h ahead comparisons between nowcasted and measured daily minima air temperature, increasing to 1.4 A degrees C for some sites. For all sites for all models, the comparisons for the 4-h ahead air temperature nowcasts generally yielded increased RMSEs, 2.1 A degrees C. Comparisons for all model nowcasts of the daily grass and grass-surface minima yielded increased RMSEs compared to those for air temperature at 2 m. The sufficiently small RMSEs using the 2-h ahead nowcasts of the air temperature minimum, for the exponential model, demonstrate that the methodology used may be applied operationally but with increased errors for grass minimum temperature and the 4-h nowcasts.
机译:特定地点的每日最低气温和草地温度的准确预测,在它们发生前几个小时就可以在线获取,这将对几个经济部门和人类活动计划产生重大益处。研究了每天最低温度发生几小时之前针对特定地点进行的合理准确的近日预报,使用早晨早几个小时的亚小时温度作为模型输入。对各种温度模型进行了测试,以准确地预报日出前2或4小时的每日最低温度的能力。用于模型临近预报的温度数据集包括来自南非一个位置的每小时不到的草和草表面(红外)温度以及来自海拔高度不同的四个亚热带站点(美国和南非)以及来自中亚中心的一个站点的每小时气温。撒哈拉以南非洲。所使用的Nowcast模型采用指数或平方根函数来描述夜间温度下降的速率,但倒转以确定最低温度。该模型还通过使用基于Web的开放系统几乎实时地显示了临近广播。还在特定情况下在数据记录器中以创新且数学上一致的方式实现了针对特定站点临近广播的外推算法。将模型1(指数)临近预报与每日最低气温的测量值进行比较,得出提前2小时临近预报的均方根误差(RMSE)<1 A摄氏度。使用恒定模型系数(b = 2.2)的模型2(也为指数模型)通常精度稍差,但均方根误差小于1 A摄氏度。使用模型3(平方根)会产生均方根2的均方根误差-h提前预报和测得的每日最低气温之间的比较,在某些地方,该最低气温增加到1.4 A摄氏度。对于所有模型的所有地点,对提前4小时气温临近预报的比较通常会产生<2.1 A摄氏度的均方根误差。气温为2 m。对于指数模型,使用最低气温提前2小时临近预报的足够小的RMSE,表明所使用的方法可以在操作中应用,但最低气温和4小时最高预报误差增加。

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