利用中尺度WRF模式和地球遥感数据提高白俄罗斯境内短期数值天气预报的准确性

IF 0.1 Q4 MULTIDISCIPLINARY SCIENCES DOKLADY NATSIONALNOI AKADEMII NAUK BELARUSI Pub Date : 2023-03-04 DOI:10.29235/1561-8323-2023-67-1-66-73
S. Lysenko, P. O. Zaiko
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引用次数: 0

摘要

考虑了通过吸收地球遥感数据来改善白俄罗斯境内WRF数值天气模式性能的问题。结果表明,在冬季,利用高空间分辨率的卫星资料,包括土地利用结构、反照率、叶片指数和下垫面吸收的光合有效辐射,可使短期(48 h以内)地表温度预报的均方根误差降低0.53 ~ 1.11°С。在夏季数值试验的基础上,估算了地表反照率的最优校正因子。这使得白俄罗斯气象站在+12、+24、+36和+48 h的预报均方根误差平均分别降低0.30°С、0.10°С、0.15°С和0.16°С。
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Improving the accuracy of short-term numerical weather forecasts for the territory of Belarus using the mesoscale WRF model and earth remote sensing data
The problem of improving the WRF numerical weather model performance for the territory of Belarus by assimilating the Earth remote sensing data is considered. It is shown that for the winter period, the use of satellite data of high spatial resolution, including on the structure of land use , albedo, leaf index and photosynthetically active radiation absorbed by the underlying surface can reduce a root-mean-square error of the short-term forecast (up to 48 h) of the air surface temperature by 0.53–1.11 °С. For the summer period, on the basis of numerical experiments the optimal correction factor for the land surface albedo was estimated. This made it possible to reduce a root-mean-square error of temperature forecast at the meteorological stations of Belarus for the lead time of +12, +24, +36, and +48 h by an average of 0.30 °С, 0.10 °С, 0.15 °С, and 0.16 °С, respectively.
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DOKLADY NATSIONALNOI AKADEMII NAUK BELARUSI
DOKLADY NATSIONALNOI AKADEMII NAUK BELARUSI MULTIDISCIPLINARY SCIENCES-
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