Scalable enrichment of mobility data with weather information

@article{Koutroumanis2020ScalableEO,
  title={Scalable enrichment of mobility data with weather information},
  author={Nikolaos Koutroumanis and Georgios M. Santipantakis and Apostolos Glenis and Christos Doulkeridis and George A. Vouros},
  journal={GeoInformatica},
  year={2020},
  volume={25},
  pages={291 - 309}
}
More and more real-life applications for mobility analytics require the joint exploitation of positional information of moving objects together with weather data that correspond to the movement. In particular, this is evident in fleet management applications for improved routing and reduced fuel consumption, in the maritime domain for more accurate trajectory prediction, as well as in air-traffic management for predicting regulations and reducing delays. Motivated by such applications, in this… 

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