OD Mobility Estimation Using Artificial Neural Networks

  1. Turias, I. J. 1
  2. Acosta Sánchez, Luis E.
  3. González-Enrique, Javier 1
  4. Moscoso-López, J. A. 1
  5. Ruiz-Aguilar, J. J. 1
  1. 1 Universidad de Cádiz
    info

    Universidad de Cádiz

    Cádiz, España

    ROR https://ror.org/04mxxkb11

Libro:
INCREaSE 2019

Editorial: Springer

Año de publicación: 2019

Páginas: 643-652

Tipo: Capítulo de Libro

DOI: 10.1007/978-3-030-30938-1_49 GOOGLE SCHOLAR

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