基于千米NWP模型输出的机器学习回归能见度预测

D. Bari
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引用次数: 14

摘要

低能见度条件对空中和道路交通有很大影响,其预测对气象学家来说仍然是一个挑战,特别是其空间覆盖范围。在本研究中,利用最先进的机器学习回归技术,从运行的NWP模型AROME输出中开发了估计摩洛哥北部的能见度产品。已开发的模式的性能仅在大陆部分进行了评估,其依据是2年来在37个天气站收集的实际数据。结果分析表明,所建立的能见度估算模型具有较强的区分白天和夜间能见度的能力。然而,随着时间的推移,kdd开发的模型显示出较低的通用性。性能评价偏差为-9m,平均绝对误差为1349m,相关系数为0.87,均方根误差为2150m。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visibility Prediction Based on Kilometric NWP Model Outputs Using Machine-Learning Regression
Low visibility conditions have a strong impact on air and road traffics and their prediction is still a challenge for meteorologists, particularly its spatial coverage. In this study, an estimated visibility product over the north of Morocco, from the operational NWP model AROME outputs using the state-of-the art of Machine-learning regression, has been developed. The performance of the developed model has been assessed, over the continental part only, based on real data collected at 37 synoptic stations over 2 years. Results analysis points out that the developed model for estimating visibility has shown a strong ability to differentiate between visibilities occurring during daytime and nighttime. However, the KDD-developed model have shown low performance of generality across time. The performance evaluation indicates a bias of -9m, a mean absolute error of 1349m with 0.87 correlation and a root mean-square error of 2150m.
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