Estimating of time-dependent travel times vía Mixed Integer Programming
Metadatos:
Mostrar el registro completo del ítemAutor/es:
Zunino, Juan José
Miranda Bront, Juan José
Fecha:
2024-08-29Resumen
Routing and distribution problems have been widely studied
within the Operations Research (OR) community. When restricting to
distribution problems in large cities, the congestion of the road network
becomes a key aspect with a significant practical impact. These problems
are known as Time-Dependent VRPs (TDVRPs), as they naturally
capture the effect of congestion by assuming that the travel time between
any two customers varies depending on the departure time. The
TDVRP literature has widely accepted to model the time-dependent
travel time model between two customers as continuous piecewise linear
(PWL) function that satisfies the first-in first-out (FIFO) condition. In
this paper, we investigate the problem of estimating these continuous
PWL travel time functions from real data travel time data. We benchmark
two recently proposed Mixed Integer Programming based models
for estimating general PWL functions and a well-known heuristic proposed
within the context of travel-time estimations. In addition, we also
contribute with a new dataset of instances created using real-world data
as input.
Este artículo se encuentra originalmente publicado en Memorias de las JAIIO (ISSN 2451-7496)