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Data set used for comparison of different machine learning approaches, for predicting aircraft departure delays, due to the circumstances of the defrosting process.

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NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/11154141
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One of the standard procedures carried out at airports during winter months is the de-icing and anti-icing procedure for aircraft. Circumstances accompanying this procedure such as aircraft type, amount of fluid used, external temperature, wind speed and dew point, directly affect the duration of the procedure and lead to delays as they are conducted immediately before takeoff. A useful tool that could efficiently predict the length of departure delays based on current circumstances, alert airport staff, and indicate the need for additional measures to reduce undesirable delays would be valuable. Specific data collected at "Konstantin Veliki" Airport in Niš, for the period from November 2020 to March 2024, were processed using two of the most common machine learning methods: regression analysis and classification. During model testing for classification, the input data for training the neural network consists of 108 instances. The data set is presented in TABLE1.
创建时间:
2024-05-08
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