The SMS–GPS-Trip method: A new method for collecting trip information in travel behavior research

Telecommunications Policy - Tập 39 - Trang 363-373 - 2015
Kristian Hegner Reinau1, Henrik Harder2, Michael Weber2
1Aalborg University, Department of Development and Planning, Vestre Havnepromenade 5, 9000 Aalborg, Denmark
2Aalborg University, Department of Architecture, Design & Media Technology, Gammeltorv 6, 9000 Aalborg, Denmark

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