D. Romanov, I. Akimov, M. Penzin, O. Kuchinskaia, I. Samokhvalov, I. Bryukhanov
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引用次数: 0
Abstract
The paper focuses on machine learning algorithms used to predict backscattering phase matrix (BSPM) elements of high-level clouds based on meteorological observations. Several machine learning methods, such as random forest, support vector, and linear regression, are used to detect the relationship between meteorological parameters and BSPM elements. It is shown that the random forest algorithm provides the most accurate predictions compared to other models. Despite a relatively small amount of the initial data, these methods have a good potential for their use in analyzing complex atmospheric interactions.
期刊介绍:
Russian Physics Journal covers the broad spectrum of specialized research in applied physics, with emphasis on work with practical applications in solid-state physics, optics, and magnetism. Particularly interesting results are reported in connection with: electroluminescence and crystal phospors; semiconductors; phase transformations in solids; superconductivity; properties of thin films; and magnetomechanical phenomena.