Mobility, Citizens, Innovation and Technology in Digital and Smart Cities
Abstract
:1. Introduction
- (i)
- technological solutions that will be used in the digital cities transportation environment, both for the public and private interest;
- (ii)
- blockchain based technologies for promoting distributed trust on transportation systems;
- (iii)
- consider social aspects, highlighting how citizens are now interacting with the transportation services offered within the cities, such as carpooling, smart parking, and alternative transports.
- (iv)
- discussions about the possibilities that CI inspired tools have been offering for the future of our cities, pondering a trade-off between technology and quality of life.
- (i)
- understanding some of the current transportation systems that are reality in some parts of the globe, as well as envisioning possibilities and technologies that might come to;
- (ii)
- creating awareness among citizens, researchers, teachers and students about the importance of the transformations that are occurring in urban environments, aligned with the SC paradigms;
- (iii)
- introducing state-of-the-art concepts about decentralized solutions, such as those using blockchain;
- (iv)
- highlighting the importance of considering multi-objective optimization problems and multi-criteria analysis;
- (v)
- motivating the academy and the industry to develop and work towards “fully” distributed and “transparent” approaches, in order to balance the goals of different autonomous agents;
- (vi)
- understanding the potential that DLT technologies have in removing the trust barriers in Peer-to-Peer (P2P) Transportation systems.
2. The Search for an Optimized Urban Transportation Ecosystem
2.1. Graph Modeling
2.2. Smart Routing Problems: Multi-Objective Optimization
2.3. The Role of Metaheuristic and High-Performance Optimization
3. Cities Transportation Trends
3.1. Mobility and Citizens
3.2. Smart Parking
- (i)
- Where is the parking located that makes it easier access to activities [87]? What size should they have? What are the transportation systems that this parking will cover?
- (ii)
- How should these new operators (parking assistants) organize their routes to satisfy all demands at minimum costs?
- (iii)
- How can the price be evaluated to charge customers for this service?
- (iv)
- Is it better to have a flexible organization in which pickup and delivery of the cars may be done at any point, or a more rigid one where the pickup and delivery points are fixed stations similar to taxi ones (with the difference that, in this new station, cars will be picked instead of people)? Where can those parking assistant stations be located?
- (v)
- What is the system centered on? Citizens (target age, common local activities) or cost (greening techs and time savings)?
3.3. Electric Based Transportation Systems
3.3.1. Unmanned Aerial Vehicle and Emerging Technologies
3.3.2. Superconducting Based Technologies
3.4. Decentralization via Multi Agent Systems
3.5. Blockchain for Managing Cities’ Transportation Data and Contracts
3.5.1. The Core of the Blockchain and Smart Contracts
3.5.2. Removing the Trust Barrier
3.5.3. The Potential of 5G and V2X
3.5.4. Applications for Carpooling and Ride-Sharing
4. Final Remarks
4.1. Final Considerations
4.2. Future Research Directions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Abbreviations
CI | Computational Intelligence |
BFT | Byzantine Fault Tolerance |
DApps | Decentralized Applications |
DER | Distributed Energy Resources |
DLT | Distributed Ledger Technologies |
DSRC | Dedicated Short Range Communications |
EV | Electric Vehicle |
ICT | Information and Communication Technologies |
IoT | Internet of Things |
IoV | Internet of Value |
MAS | Multi Agent Systems |
MCCP | Minimum Coloring Cut Problem |
P2P | Peer-to-peer |
SC | Smart Cities |
SMES | Superconductive Magnetic Energy Storage |
SQUID | Superconducting Quantum Interference Device |
UAV | Unmanned Aerial Vehicle |
V2G | Vehicle-to-Grid |
V2X | Vehicle-to-Everything |
VRP | Vehicle Routing Problems |
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Oliveira, T.A.; Gabrich, Y.B.; Ramalhinho, H.; Oliver, M.; Cohen, M.W.; Ochi, L.S.; Gueye, S.; Protti, F.; Pinto, A.A.; Ferreira, D.V.M.; et al. Mobility, Citizens, Innovation and Technology in Digital and Smart Cities. Future Internet 2020, 12, 22. https://doi.org/10.3390/fi12020022
Oliveira TA, Gabrich YB, Ramalhinho H, Oliver M, Cohen MW, Ochi LS, Gueye S, Protti F, Pinto AA, Ferreira DVM, et al. Mobility, Citizens, Innovation and Technology in Digital and Smart Cities. Future Internet. 2020; 12(2):22. https://doi.org/10.3390/fi12020022
Chicago/Turabian StyleOliveira, Thays A., Yuri B. Gabrich, Helena Ramalhinho, Miquel Oliver, Miri W. Cohen, Luiz S. Ochi, Serigne Gueye, Fábio Protti, Alysson A. Pinto, Diógenes V. M. Ferreira, and et al. 2020. "Mobility, Citizens, Innovation and Technology in Digital and Smart Cities" Future Internet 12, no. 2: 22. https://doi.org/10.3390/fi12020022