基于深度学习方法的空客A320东南亚地区空气湍流预测

Popphon Laon, P. Phasukkit, C. Pradabpet
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引用次数: 0

摘要

本文采用深度学习方法对东南亚地区空中客车A320型飞机进行了湍流预测。它将收集东南亚地区(泰国和越南)的飞机飞行数据。其中收集了40个航班的数据,预测了三种状态下空气湍流的发生,包括非湍流状态、飞行员无法控制的高度快速下降和上升。本研究采用深度学习与监督学习相结合的方法,建立空气湍流预报的数学模型,以减少对乘客造成的损失。结果,使用5层深度学习(1个输入层,3个隐藏层和1个输出层)。最合适的模型包括垂直速度、标定高度、风速、风向(风角)、温度、纬度、经度、真实空速、指示空速等9个特征。输出层由3类组成(class1=无湍流,class2=增加高度,class3=降低高度),并采用梯度下降优化权值。epoch数为1500,学习率为0.1,训练集的准确率为88%,测试集的准确率为86%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Air Turbulence Forecasting of Airbus type A320 in Southeast Asia using Deep Learning Method
This paper is present the Air Turbulence Forecasting of Airbus type A320 in Southeast Asia using the Deep Learning Method. It will collect flight data of aircraft in the region of Southeast Asia (Thailand and Vietnam). In which data was collected for 40 flights to forecast the occurrence of air turbulence in 3 status consist of non-turbulence, the rapid decrease and increase the altitude is out of pilot control. In this research using deep learning with supervise learning and create the mathematical model for air turbulence forecasting which could help to reduce the wastage that may affect to the passenger. The results, using 5 layers of deep learning (1 input layer, 3 hidden layers, and 1 output layer). The most suitable model consists of 9 features such as vertical speed, calibrated altitude, wind speed, wind direction (wind angle), temperature, latitude, longitude, true airspeed, and indicated airspeed. The output layer consists of 3 classes (class1=non-turbulence, class2=increase altitude, and class3=decrease altitude) and optimization the weight with gradient descent. The epoch number is 1500 and the learning rate is 0.1, which will get accuracy 88% for the train set and 86 % for the test set.
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