Research of Deep Learning-Based Visibility Prediction Model for Foggy Days in Airport

Wu Qian, Liu Cheng, Tang Bin, Wang Xichen
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Abstract

In this paper, we estimate the visibility distance under heavy fog conditions based on the airport video image containing information about the varying process of fog and the observed meteorological data. This article uses data from 00:00:16 to 11:47:48 on March 13, 2020, for an airport. By establishing two regression models, the Multiple Linear Regression (MLR) model and the Multiple Polynomial Regression (MPR) model, to analyzing the relationship between visibility distance and meteorological observation data on the ground, and comparing and evaluating the two models. Experimentally, it was found that MPR models solve relational equations with higher precision, and if it used a higher order of MPR model, it has higher predicted precision. And we establish a deep learning model based on video visibility distance estimation from video data and meteorological observation data of an airport and evaluate the accuracy of the estimated visibility. The experimental results show that the percentage error between the predicted value and the true value is less than 0.25%, which achieves high predictive accuracy and has a very good prediction effect.
基于深度学习的机场雾天能见度预测模型研究
本文基于包含大雾变化过程信息的机场视频图像和气象观测资料,估计大雾条件下的能见度距离。本文使用2020年3月13日00:00:16至11:47:48的机场数据。通过建立多元线性回归(Multiple Linear regression, MLR)模型和多元多项式回归(Multiple Polynomial regression, MPR)模型,分析能见度距离与地面气象观测资料的关系,并对两种模型进行比较评价。实验结果表明,MPR模型求解关系方程具有较高的精度,如果使用更高阶的MPR模型,则具有更高的预测精度。以某机场的视频数据和气象观测数据为基础,建立了基于视频能见度距离估计的深度学习模型,并对估计的能见度精度进行了评价。实验结果表明,预测值与真实值之间的百分比误差小于0.25%,达到了较高的预测精度,具有很好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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