Remote Sensing (Apr 2021)

Evaporation Duct Height Nowcasting in China’s Yellow Sea Based on Deep Learning

  • Jie Han,
  • Jia-Ji Wu,
  • Qing-Lin Zhu,
  • Hong-Guang Wang,
  • Yu-Feng Zhou,
  • Ming-Bo Jiang,
  • Shou-Bao Zhang,
  • Bo Wang

DOI
https://doi.org/10.3390/rs13081577
Journal volume & issue
Vol. 13, no. 8
p. 1577

Abstract

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The evaporation duct is a weather phenomenon that often occurs in marine environments and affects the operation of shipborne radar. The most important evaluation parameter is the evaporation duct height (EDH). Forecasting the EDH and adjusting the working parameters and modes of the radar system in advance can greatly improve radar performance. Traditionally, short-term forecast methods have been used to estimate the EDH, which are characterized by low time resolution and poor forecast accuracy. In this study, a novel approach for EDH nowcasting is proposed based on the deep learning network and EDH data measured in the Yellow Sea, China. The factors that affect nowcasting were analyzed. The time resolution and forecast time were 5 min and 0–2 h, respectively. The results show that our proposed method has a higher forecast accuracy than traditional time series forecasting methods and confirm its feasibility and effectiveness.

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