The Role of 5G Technologies: Challenges in Smart Cities and Intelligent Transportation Systems
Abstract
:1. Introduction
2. 5G for Smart Cities
2.1. Personal and Home Applications
2.2. Utilities Applications
2.3. Industrial Applications
2.4. Mobility Applications
3. 5G for Intelligent Transportation Systems
3.1. Vehicular Communication
3.2. Autonomous Driving
- No Automation (Level 0): Driver continuously in control.
- Driver Assistance (Level 1): Minor driving task performed by system.
- Partial Automation (Level 2): Driver must monitor dynamic driving tasks.
- Conditional Automation (Level 3): Driver does not need to monitor driving tasks, but must be able to resume control.
- High Automation (Level 4): Driver not required during defined use case.
- Full Automation (Level 5): The highest level refers to a fully autonomous system, no driver required.
3.3. Tele-Operated Driving
3.4. Road Safety
3.5. Intelligent Navigation
3.6. File and Media Downloading
4. Deployment Challenges
4.1. Technological and Economic Implications
- Device-to-Device (D2D) communication: To direct transmission between proximate devices, without relaying information through a network infrastructure [52]. Such a direct transmission improves spectral efficiency, increases simultaneous connection and reduces end-to-end latency by using short-range links. Additionally, D2D communication guarantees a lower energy consumption by consequence of the lower transmission power required by short-range connections with nearby devices [53]. This implies that the device activity time in data transmission and reception can be severely reduced, getting energy consumption reduction, highly valuable in the view of meeting the energy efficiency requirements into smart cities [54].
- Massive Multiple-Input Multiple-Output (MIMO): Use large antenna arrays at base stations to obtain a wireless network that allows for transmitting and receiving of more than one data signal simultaneously over the same radio channel [55,56]. In fact, massive MIMO ability to reach multiple users simultaneously within a dense area while maintaining fast data rates and consistent performance makes it a perfect technology to address the needs of the IoV services.
- mm-Wave: Millimetre Waves (mm-waves) are broadcasted at frequencies between 30 and 300 GHz, compared to the bands below 6 GHz that were used for mobile devices traditionally [57]. This technology promises higher data capacity than the one that we currently have now. Nevertheless, there is one major drawback in mm-waves. Higher frequencies are traditionally not potent enough for outdoor applications due to high propagation loss and susceptibility to blockage from buildings and rain drops. Once solved by 5G networks will likely augment traditional cellular towers with another new technology, called Small Cells [58].
- Small cells: A small cell is a portable miniature base station that requires minimal power to operate. To prevent propagation loss, thousands of these stations are to be installed in smart cities. A small cell is a term that encompasses pico cells, micro cells, femto cells depending on the output power. It can comprise of indoor or outdoor systems [59]. With a traditional macro base station, there is one path to going into the network; with small cells, it breaks the principal path generating many others. The main goals of small cells are to increase the data capacity of macro cells, the data rate and overall network efficiency.
4.2. Security and Privacy Implications
- Identity management. Networks should uniquely identify and authenticate users/vehicles and control access to remote services with a timely update of certificates. Due to the very high-speed data rate and extremely low latency requirement in vehicular communications, authentication in 5G, it is expected to be much faster than legacy mobile networks.
- Privacy protection. Anonymity service in 5G deserves much more attention than in the legacy cellular networks. The massive data flows in 5G carry extensive personal privacy information such as identity, position, and private contents [65]. In some cases, privacy leakage may cause severe consequences. For example, health monitoring data reveals the sensitive personal health information or vehicle routing data can expose the location privacy [67] (and the references therein). Depending on the privacy requirements of the applications, privacy protection is a big challenge in 5G wireless networks.
- Data encryption and protection. Data encryption has been widely used to secure the data confidentiality by preventing unauthorized users from extracting any useful information from the broadcast information.
4.3. Sustainability Implications
4.4. Ethical and Social Implications
5. Discussion and Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Guevara, L.; Auat Cheein, F. The Role of 5G Technologies: Challenges in Smart Cities and Intelligent Transportation Systems. Sustainability 2020, 12, 6469. https://doi.org/10.3390/su12166469
Guevara L, Auat Cheein F. The Role of 5G Technologies: Challenges in Smart Cities and Intelligent Transportation Systems. Sustainability. 2020; 12(16):6469. https://doi.org/10.3390/su12166469
Chicago/Turabian StyleGuevara, Leonardo, and Fernando Auat Cheein. 2020. "The Role of 5G Technologies: Challenges in Smart Cities and Intelligent Transportation Systems" Sustainability 12, no. 16: 6469. https://doi.org/10.3390/su12166469
APA StyleGuevara, L., & Auat Cheein, F. (2020). The Role of 5G Technologies: Challenges in Smart Cities and Intelligent Transportation Systems. Sustainability, 12(16), 6469. https://doi.org/10.3390/su12166469