Abstract
Vehicle automation, together with the development of communications, is already leading to the emergence of new forms of mobility and allows aspiring to new paradigms that are increasingly efficient, safe, sustainable, and inclusive. Obviously, these changes must also reach traffic management for these positive effects to become a reality. In this regard, major challenges such as the processing of huge amounts of data in real time are already the subject of research around the world. In some cases, it will be enough to improve the accuracy of existing management strategies based on these data and on fusion methodologies, AI, etc. However, it will also be necessary to open the mind and explore new ideas, new forms of management to which only cooperative mobility gives meaning. All these topics could give rise to a book, or many. This chapter is intended only to serve as a transition to the following ones and to highlight some of the characteristics of such cooperative scenarios, as well as some expected mobility impacts.
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Martínez-Díaz, M. (2022). Travel Time Information Systems in the Era of Cooperative Automated Vehicles. In: Martínez-Díaz, M. (eds) The Evolution of Travel Time Information Systems. Springer Tracts on Transportation and Traffic, vol 19. Springer, Cham. https://doi.org/10.1007/978-3-030-89672-0_5
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