Multi-stage stochastic linear programming for shared autonomous vehicle system operation and design with on-demand and pre-booked requests
This study presents optimization problems to jointly determine long-term network design, mid-term fleet sizing strategy, and short-term routing and ridesharing matching in shared autonomous vehicle (SAV) systems with pre-booked and on-demand trip requests. Based on the dynamic traffic assignment fra...
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Zusammenfassung: | This study presents optimization problems to jointly determine long-term
network design, mid-term fleet sizing strategy, and short-term routing and
ridesharing matching in shared autonomous vehicle (SAV) systems with pre-booked
and on-demand trip requests. Based on the dynamic traffic assignment framework,
multi-stage stochastic linear programming is formulated for joint optimization
of SAV system design and operations. Leveraging the linearity of the proposed
problem, we can tackle the computational complexity due to multiple objectives
and dynamic stochasticity through the weighted sum method and stochastic dual
dynamic programming (SDDP). Our numerical examples verify that the solution to
the proposed problem obtained through SDDP is close enough to the optimal
solution. We also demonstrate the effect of introducing pre-booking options on
optimized infrastructure planning and fleet sizing strategies. Furthermore,
dedicated vehicles to pick-up and drop-off only pre-booked travelers can lead
to incentives to reserve in advance instead of on-demand requests with little
reduction in system performance. |
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DOI: | 10.48550/arxiv.2409.11611 |