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Low-visibility forecasts for different flight planning horizons using tree-based boosting models

机译:使用基于树的提升模型的不同飞行规划视野的低可见度预测

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Low-visibility conditions enforce special procedures that reduce the operational flight capacity at airports. Accurate and probabilistic forecasts of these capacity-reducing low-visibility procedure (lvp) states help the air traffic management in optimizing flight planning and regulation. In this paper, we investigate nowcasts, medium-range forecasts, and the predictability limit of the lvp states at Vienna International Airport. The forecasts are generated with boosting trees, which outperform persistence, climatology, direct output of numerical weather prediction (NWP) models, and ordered logistic regression. The boosting trees consist of an ensemble of decision trees grown iteratively on information from previous trees. Their input is observations at Vienna International Airport as well as output of a high resolution and an ensemble NWP model. Observations have the highest impact for nowcasts up to a lead time of +2 h. Afterwards, a mix of observations and NWP forecast variables generates the most accurate predictions. With lead times longer than +7 h, NWP output dominates until the predictability limit is reached at +12 d. For lead times longer than +2 d, output from an ensemble of NWP models improves the forecast more than using a deterministic but finer resolved NWP model. The most important predictors for lead times up to +18 h are observations of lvp and dew point depression as well as NWP dew point depression. At longer lead times, dew point depression and evaporation from the NWP models are most important.
机译:低可见性条件强制执行降低机场运营航班能力的特殊程序。这些能力降低低可见度程序(LVP)国家的准确和概率预测有助于航空交通管理在优化飞行规划和规范方面。在本文中,我们调查了Vienna International Airport在维也纳国际机场的LVP国家的可预测性极限。通过升压树生成预测,其优于持久性,气候学,数值天气预报(NWP)模型的直接输出,以及有序的逻辑回归。升压树木由决策树的集合组成,这些树木迭代地与以前树木的信息一起增长。他们的意见是在维也纳国际机场的观察,以及高分辨率和合奏NWP模型的产出。观察结果对达到+2小时的延期时间的影响最高。然后,混合观测和NWP预测变量产生最准确的预测。具有超过+ 7小时的延长时间,NWP输出占主导地位,直到达到+12天达到可预测性极限。对于长于+2天的交换时间,NWP模型的集合的输出提高了预测,而不是使用确定性但更精细的NWP模型。最重要的预测因子对于+18小时达到+18小时是LVP和露点抑制以及NWP露点抑制的观察。在较长的交货时间内,NWP模型的露点凹陷和蒸发是最重要的。

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