Keran Chen, Yuan Zhou, Ping Wang, Pingping Wang, Xiaojun Yang, Nan Zhang, Di Wang
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引用次数: 0
摘要
风速数值天气预报需要对系统误差进行统计后处理,以获得可靠和准确的预报。然而,对于大风等极端天气事件,使用后处理模型往往不可取。在此,我们提出了一种基于大风感知深度注意力网络的后处理算法,以同时改进风速预报和大风区域预警。具体来说,该算法包括一个可将模型聚焦于潜在大风区域的大风感知损失函数,以及一个可减轻数据网格化造成的极端值缺失问题的观测站监督策略。通过使用 235 个风速观测站的数据,验证了所提模型的有效性。实验结果表明,我们的模型可生成均方根误差为 1.1547 m s-1 的风速预报,汉森-奎帕斯判别得分为 0.517,性能优于其他后处理算法。
Improving Wind Forecasts Using a Gale-Aware Deep Attention Network
Numerical weather prediction of wind speed requires statistical postprocessing of systematic errors to obtain reliable and accurate forecasts. However, use of postprocessing models is often undesirable for extreme weather events such as gales. Here, we propose a postprocessing algorithm based on a gale-aware deep attention network to simultaneously improve wind speed forecasts and gale area warnings. Specifically, the algorithm includes both a galeaware loss function that focuses the model on potential gale areas, and an observation station supervision strategy that alleviates the problem of missing extreme values caused by data gridding. The effectiveness of the proposed model was verified by using data from 235 wind speed observation stations. Experimental results show that our model can produce wind speed forecasts with a root-mean-square error of 1.1547 m s−1, and a Hanssen–Kuipers discriminant score of 0.517, performance that is superior to that of the other postprocessing algorithms considered.
期刊介绍:
Journal of Meteorological Research (previously known as Acta Meteorologica Sinica) publishes the latest achievements and developments in the field of atmospheric sciences. Coverage is broad, including topics such as pure and applied meteorology; climatology and climate change; marine meteorology; atmospheric physics and chemistry; cloud physics and weather modification; numerical weather prediction; data assimilation; atmospheric sounding and remote sensing; atmospheric environment and air pollution; radar and satellite meteorology; agricultural and forest meteorology and more.