4D flight trajectory prediction using a hybrid Deep Learning prediction method based on ADS-B technology: a case study of Hartsfield-Jackson Atlanta International Airport(ATL)

@article{Sahfienya20214DFT,
  title={4D flight trajectory prediction using a hybrid Deep Learning prediction method based on ADS-B technology: a case study of Hartsfield-Jackson Atlanta International Airport(ATL)},
  author={Hesam Sahfienya and Amelia C. Regan},
  journal={ArXiv},
  year={2021},
  volume={abs/2110.07774}
}

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