Abstract

An evaporation duct is a type of atmospheric stratification that affects radio systems. Atmospheric duct prediction is helpful for radar detection. In this paper, we used the deep forest, which is different from a deep learning framework, to predict the atmospheric duct height. At the same time, the long short-term memory neural network and other machine learning algorithms, such as the logistic regression, random forest, Bayes, and support vector regression algorithms, were adopted to predict the evaporation duct height. The predicted results with filled and unfilled missing data show that an accurate prediction of the evaporation duct height can be achieved using the deep forest.

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