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Book chapter

SMART mobility via prediction, optimization and personalization

In Demand for Emerging Transportation Systems — 2019, pp. 227-265
From

Department of Technology, Management and Economics, Technical University of Denmark1

Transport, Department of Technology, Management and Economics, Technical University of Denmark2

Machine Learning, Transport, Department of Technology, Management and Economics, Technical University of Denmark3

Massachusetts Institute of Technology4

Singapore-MIT Alliance5

American University of Beirut6

In this chapter, we present a methodological approach for Smart Mobility that integrates three key features: prediction, optimization, and personalization. They are integrated in such a way that when a travel menu is offered, predicted conditions are considered in the attributes of alternatives and optimized system-level policies are maintained.

Similarly, user-level estimations and updates are used by prediction and optimization methods at the system-level in order to represent the population with most up-to-date behavioral estimates. Furthermore, a simulation-based evaluation methodology enables to validate the performance of prediction, optimization, and personalization before Smart Mobility is implemented in real-life.

Two case studies are presented based on the proposed methodologies together with platforms that facilitate their application. Potential benefits of the proposed methodologies are evaluated which can be classified into user-level and system-level benefits. User-level benefits include consumer surplus, waiting times, etc., and system-level is concerned with congestion, throughput, system-wide travel time, etc.

As there is normally a tradeoff between the individual decision-making and system-wide decision-making, Smart Mobility bridges them together with appropriate methodologies on each end. For example, for our Flexible Mobility on Demand case study, we observe 10%–20% reduction in volume-to-capacity ratio as a system-level benefit.

Moreover, we see that the tradeoff between consumer surplus and operator profit can be managed with an appropriate objective function..

Language: English
Publisher: Elsevier
Year: 2019
Pages: 227-265
Journal subtitle: Modeling Adoption, Satisfaction, and Mobility Patterns
ISBN: 0128150181 , 012815019X , 012815019x , 9780128150184 and 9780128150191
Types: Book chapter
DOI: 10.1016/B978-0-12-815018-4.00012-7
ORCIDs: Lima Azevedo, Carlos M.

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