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Prediction of Flight Time Deviation for Lithuanian Airports Using Supervised Machine Learning Model

机译:利用监督机器学习模型预测立陶宛机场的飞行时间偏差

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In the paper, the flight time deviation of Lithuania airports has been analyzed. The supervised machine learning model has been implemented to predict the interval of time delay deviation of new flights. The analysis has been made using seven algorithms: probabilistic neural network, multilayer perceptron, decision trees, random forest, tree ensemble, gradient boosted trees, and support vector machines. To find the best parameters which give the highest accuracy for each algorithm, the grid search has been used. To evaluate the quality of each algorithm, the five measures have been calculated: sensitivity/recall, precision, specificity, F-measure, and accuracy. All experimental investigation has been made using the newly collected dataset from Lithuania airports and weather information on departure/landing time. The departure flights and arrival flights have been investigated separately. To balance the dataset, the SMOTE technique is used. The research results showed that the highest accuracy is obtained using the tree model classifiers and the best algorithm of this type to predict is gradient boosted trees.
机译:本文分析了立陶宛机场的飞行时间偏差。已经实施了监督机器学习模型以预测新航班的时间间隔延迟偏差。该分析已经使用了七种算法:概率神经网络,多层的感知,决策树,随机林,树合奏,渐变增强树木,以及支持向量机。为了找到给每种算法提供最高精度的最佳参数,已经使用了网格搜索。为了评估每种算法的质量,已经计算了五项措施:灵敏度/召回,精度,特异性,F测量和准确性。所有的实验调查都是使用来自立陶宛机场和天气信息的新收集的数据集进行了出发/着陆时间。出发航班和抵达航班分别调查。要平衡数据集,使用SMOTE技术。研究结果表明,使用树模型分类器获得最高的精度,以及这种类型的最佳算法预测是梯度提升树。

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