Abstract

As a major threat to aviation flight safety, it is particularly important to make accurate judgments and forecasts of the ice accumulation environment. Radar is widely used in civil aviation and meteorology, and has the advantages of high timeliness and resolution. In this paper, a variety of machine learning methods are used to establish the relationship between radar data and icing index (Ic) to determine the ice accumulation environment. The research shows the following. (1) A linear model was established, based on the scattering rate factor (Zh), radial velocity (v), spectral width (w), velocity standard deviation (σ) detected by 94 GHz millimeter wave radar, and backward attenuation coefficient (β) detected by 905 nm lidar, so linear regression was carried out. After principal component analysis (PCA), the correction determination coefficient of the linear equation was increased from 0.7127 to 0.7240. (2) Ice accumulation was unlikely for samples that were significantly off-center. By clustering the data into three or four categories, the proportion of icing lattice points could be increased from 18.81% to 33.03%. If the clustering number was further increased, the ice accumulation ratio will not be further increased, and the increased classification is reflected in the classification of pairs of noises and the possibility of omission is also increased. (3) Considering the classification and nonlinear factors of ice accumulation risk, the neural network method was used to judge the ice accumulation environment. Two kinds of neural network structures were established for quantitative calculation: Structure 1 first distinguished whether there was ice accumulation, and further calculated the icing index for the points where there was ice accumulation; Structure 2 directly calculated the temperature and relative humidity, and calculated the icing index according to definition. The accuracy of the above two structures could reach nearly 60%, but the quantitative judgment of the ice accumulation index was not ideal. The reasons for this dissatisfaction may be the small number of variables and samples, the interval between time and space, the difference in instrument detection principle, and the representativeness of the ice accumulation index. Further research can be improved from the above four points. This study can provide a theoretical basis for the diagnosis and analysis of the aircraft ice accumulation environment.

Highlights

  • Common causes of aircraft icing include: (1) encountering clouds with super-cooled water droplets during flight; (2) being contaminated prior to takeoff; and (3) encountering high concentrations of ice crystals during flight [1]

  • In this paper, based on the detection data of millimeter wave radar and Lidar, linear regression, principal component analysis, cluster analysis, and neural network methods are used to study the direct inversion of ice index to realize the quantitative judgment of the ice environment by radar data

  • Equation (3) had the largest coefficient of determination, Equation (9) had the largest corrected coefficient of determination and the smallest p value and error variance, and Equation (10) had the largest F value. This statistic can illustrate the following points: (1) It is significant to use principal component analysis to process data in this study; (2) the variable X1 contains a lot of information, introducing X1 into the linear regression will reduce the correction determination coefficient and linear significance of the equation, and increase the error variance, so it is reasonable not to introduce X1, which confirms that X1 mainly represents the noise in the radar data; and (3) the correlation coefficient of X2 and X3 is small, and the opposite value of their correlation is similar, it will cause the loss of a lot of the main information in the sample if they are removed

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Summary

Introduction

Common causes of aircraft icing include: (1) encountering clouds with super-cooled water droplets during flight; (2) being contaminated prior to takeoff; and (3) encountering high concentrations of ice crystals during flight [1]. It is of great significance to establish a time-efficient and high-resolution algorithm for judging an ice pack environment. In this paper, based on the detection data of millimeter wave radar and Lidar, linear regression, principal component analysis, cluster analysis, and neural network methods are used to study the direct inversion of ice index to realize the quantitative judgment of the ice environment by radar data. This method can improve the resolution and timeliness of the environmental judgment of ice accumulation

Materials and Methods
Feasibility Analysis
Contributions of Radar Data to Icing Index
Qualitative Classifications of Radar Data
Cause Analysis of Test Results
Findings
Conclusions
Full Text
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