6G Opportunities Arising from Internet of Things Use Cases: A Review Paper
Abstract
:1. Introduction
2. Methodology
3. Healthcare
3.1. Human Activity Monitoring
3.1.1. Introduction
3.1.2. Human Activity Monitoring Using RF Signals
3.1.3. Challenges and Future Directions
3.2. Assistive Technologies for the Visually Impaired
3.2.1. Introduction
3.2.2. Real-Time Objects Detection Framework
3.2.3. Challenges and Future Directions
4. Smart Grid
4.1. Introduction
- Energy Data Resolution: The resolution is greatly dependant on the application and the use of such data. However, higher resolution data are greatly sought as they enable fine-grained monitoring of consumption and recognition of the transient spikes in power demand, which can be useful in energy modelling [77]. Moreover, the availability of real-time consumption can greatly support behavioural change interventions by performing time-series analysis of occupancy vs. consumption to identify where energy-conscious behaviour needs to be promoted.
- Energy load resolution: Another key feature in the collected data is the load resolution, that is, what the collected data reflect in terms of load. For instance, taking a university building as an example, data from the main cable reflect the aggregate electricity consumption in the whole building, and whilst this is useful information, on a top-level, researchers and end-users are more interested in much higher resolutions. Energy sensing at the main supplies can only give an indication of the behaviour and efficiency of energy usage by users and equipment. Therefore, it is crucial to see a higher resolution of energy sensing being performed within a building. For instance, this can be through sub-metering or by installing individual energy-sensing nodes at power sockets and individual distribution boards to get a sense of the actual activity being performed in every part of the building. Such an approach, if combined with AI, can serve many use cases in smart cities, such as occupancy monitoring, activity monitoring for the elderly, and of course, maintaining carbon-efficient operation within the building. However, with the current technologies, there are several challenges that are further highlighted in this section.
- Data logging rate: This is one of the most important parameters and KPIs in any communication system. The first two KPIs deal with the data collection by ensuring that meaningful data are being gathered. However, the instant availability and accessibility of these data is crucial for applications that are time critical. As briefly mentioned earlier, high resolution energy data can serve multiple applications, such as occupancy and activity monitoring, which consequently can help in cases such as emergency evacuation, hence the need for the instant logging of data and rapid processing to avoid catastrophic consequences resulting from any delays in data transmission.
4.2. Promoting Energy-Conscious Behaviour Using Persuasive Technology: A National Health Service (NHS) Use Case
4.3. Challenges and Future Directions: An Evaluation of the Wireless Electricity Data Logger System
5. Transport
5.1. Introduction
5.2. Predicting the Intent to Return to a Vehicle
- Deliver a safer, personalised, and more pleasant driving experience by the timely adaptation of the car interior to prior learnt preferences or the driver profile (e.g., adjusting seats and pre-configuring the infotainment system, and adapting the human–machine interface (HMI), for example, warming/cooling the vehicle.);
- Improve the security features by efficient activation of the key-fob scanner (e.g., for keyless entry or engine start) and exterior-facing vehicle sensors (e.g., cameras for driver recognition).
5.3. Challenges and Future Directions
6. Industry 4.0
6.1. Introduction
6.2. Festo Flexible Manufacturing System (FMS)
6.3. Challenges and Future Directions
7. Challenges and Opportunities in the Context of 6G
8. Conclusions
- Assistive technologies for the visually impaired:
- -
- Can 6G provide users with real-time video-streaming capabilities? If 6G is able to significantly reduce the end-to-end latency and improve the information freshness, then can we improve the usability of the assistive technologies with the connection to the cloud?
- Human activity monitoring:
- -
- To what extent could the concept of 6G sensing contribute to the state of the art of the in-home monitoring of activities?
- Assistive technologies for the visually impaired:
- -
- How can we provide ubiquitous coverage to rural areas using 6G, where visually-impaired users may be located?
- Smart grid:
- -
- Can 6G and its enabling technologies help increase the data resolution of energy monitoring to improve energy-conscious behaviour and make contributions towards the 2050 Net Zero carbon target?
- Industry
- -
- Can 6G communication overcome the challenge of integrating highly robust legacy automation equipment with Industry 4.0 enabling technologies?
- Human activity monitoring:
- -
- Can 6G and its enabling technologies help facilitate the switching from hospital care to in-home care through the real-time monitoring of patients?
- Transport:
- -
- What is the best location to do the computationally complex calculations in future transport systems? In answering this question, it can help manufacturers to determine the best network topology and requirements.
- -
- Can 6G communication provide robust reliability and the required latency for the real-time control of industrial automation systems powered by machine-learning algorithms?
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Short Biography of Authors
Basel Barakat Basel Barakat a lecturer at the School of Engineering and Built Environment Edinburgh Napier University. He received his BSc, MSc and PhD from the University of Greenwich in 2013, 2014 and 2019. During his PhD, he was a visiting researcher at the University of Cambridge. Prior to his PhD, he worked as a Research Fellow at the University of Greenwich project titled ‘Towards 5G: Air interface Techniques to enhance carrier aggregation in the 5th generation of wireless communication (5G)’ investigating radio resources allocation for Internet of Things. His research interests are wireless communication, real-time systems, information freshness, Internet of things, machine learning, and mathematical modelling. | |
Ahmad Taha received his B.Sc. with Honours from October University for Modern Sciences and Arts (MSA) in Egypt in 2012. He was a recipient of two scholarship to pursue his M.Sc., after ranking 1st during his B.Sc., and PhD, after a successful Vice-Chancellor award application, in 2013 and 2016, respectively, at the University of Greenwich. Ahmad completed his M.Sc degree, with a distinction, in Embedded Systems in 2014 and his PhD in 2020, which was partially funded and in collaboration with Medway NHS Foundation Trust in Kent, UK. He is currently a Research Associate at the University of Glasgow (UofG) working in collaboration with several industrial and academic partners including Cisco and University of Strathclyde, on the 5G New Thinking project, funded by the Department for Digital, Culture, Media and Sport (DCMS). His research interests include the utilisation of the IoT in energy management applications, non-invasive wireless activity monitoring, and the applications of persuasive technology in various sectors of the society. He was nominated for the Energy Institute award in 2019 due to his contributions in technology-based energy-saving systems in the NHS. | |
Ryan Samson received both B.Eng. and M.Sc. from Edinburgh Napier University. Following the completion of his MSc in Automation and Control he was offered an associate lecturing position to help with teaching along with robotics lab development within the School of Engineering and Built Environment at Napier University, at this point his interest in teaching and research increased and motivated him to apply for a PhD position at Napier where the focus is to assist with the implementation of Industry 4.0 technology to the manufacturing sector. | |
Shuja Ansari (M’15-SM’20) received the M.Sc. degree (distinction) in Telecommunications Engineering in 2015, and the Ph.D. degree in Engineering in 2019 from Glasgow Caledonian University (GCU), UK. He is currently a Research Associate at University of Glasgow (UofG) and Wave-1 Urban 5G use case implementation lead at Glasgow 5G Testbed funded by the Scotland 5G Center. His research interests include wireless communications, intelligent transport systems, terrestrial/airborne mobile networks, healthcare and cloud networking technologies. | |
Patrick Langdon Professor Patrick Langdon is a Professor of Engineering Design, Transportation, and Inclusion at Edinburgh NAPIER School of Engineering and the Built Environment (SEBE). He is an Experimental Psychologist and has worked in AI, Robotics and Engineering Design for over 20 Years. Historically he has led research in Inclusive Design and contributed to its literature. His current research concerns the application of Cognitive science and AI to multidisciplinary areas of research such as the design, use and provision for Autonomous vehicles in current transportation planning. Multidisciplinary research centred on Engineering is a key theme in his research and his goal is to foster new programmes of research in this area. | |
Ian J. Wassell received the B.Sc. and B.Eng. degrees from the University of Loughborough, Loughborough, U.K., in 1983, and the Ph.D. degree from the University of Southampton, Loughborough, U.K., in 1990. He is a Senior Lecturer with the University of Cambridge Computer Laboratory and has in excess of 15 years experience in the simulation and design of radio communication systems gained via a number of positions in industry and higher education. He has authored or coauthored more than 180 papers concerning wireless communication systems. His current research interests include fixed wireless access, sensor networks, cooperative networks, propagation modelling, compressive sensing, and cognitive radio. He is a member of the IET and a Chartered Engineer. | |
Qammer Abbasi (SM’16) received the B.Sc. and M.Sc. degrees in electronics and telecommunication engineering from the University of Engineering and Technology (UET), Lahore, Pakistan, and the Ph.D. degree in electronic and electrical engineering from the Queen Mary University of London (QMUL), U.K., in 2012. He is currently a Lecturer (Assistant Professor) with the James Watt School of Engineering, University of Glasgow, U.K. and research investigator with Scotland 5G Center. He has received several recognitions for his research, which include appearance on BBC, STV, local and international newspapers, most downloaded articles, U.K. exceptional talent endorsement by Royal Academy of Engineering, National Talent Pool Award by Pakistan, International Young Scientist Award by NSFC China, URSI Young Scientist Award, National Interest Waiver by USA, four best paper awards, and best representative image of an outcome by QNRF. He is an Associate Editor for the IEEE JOURNAL OF ELECTROMAGNETICS, RF AND MICROWAVES IN MEDICINE AND BIOLOGY, the IEEE SENSORS JOURNAL, IEEE OPEN ACCESS ANTENNA AND PROPAGATION, IEEE ACCESS and acted as a guest editor for numerous special issues in top notch journals. | |
Muhammad Imran (M’03–SM’12) received the M.Sc. (Hons.) and Ph.D. degrees from Imperial College London, U.K., in 2002 and 2007, respectively. He is Dean Glasgow College UESTC and a Professor of communication systems with the James Watt School of Engineering, University of Glasgow, U.K. He is an Affiliate Professor at the University of Oklahoma, USA, and a Visiting Professor at the 5G Innovation Centre, University of Surrey, U.K. He is leading research in University of Glasgow for Scotland 5G Center. He has over 18 years of combined academic and industry experience, working primarily in the research areas of cellular communication systems. He has been awarded 15 patents, has authored/co-authored over 400 journal and conference publications, and has been principal/co-principal investigator on over £6 million in sponsored research grants and contracts. He has supervised 40+ successful Ph.D. graduates. He has an award of excellence in recognition of his academic achievements, conferred by the President of Pakistan. He was also awarded the IEEE Comsoc’s Fred Ellersick Award 2014, the FEPS Learning and Teaching Award 2014, and the Sentinel of Science Award 2016. He was twice nominated for the Tony Jean’s Inspirational Teaching Award. | |
Simeon Keates received the M.A. and Ph.D. degrees in engineering from the Department of Engineering, University of Cambridge, Cambridge, U.K. He is currently the Deputy Vice-Chancellor (DVC) of the University of Chichester. Prior to Chichester, Simeon was the dean of the School of Engineering and the Built Environment at Edinburgh Napier University and former Deputy Pro Vice-Chancellor of the Faculty of Engineering and Science at the University of Greenwich. He was previously Chair of HCI and Head of School of Engineering, Computing and Applied Mathematics at the University of Abertay Dundee and Associate Professor at the IT University of Copenhagen. He obtained his PhD from the University of Cambridge, where he also worked as an Industrial Research Fellow in the Engineering Design Centre. After 12 years at Cambridge, he moved to the US and joined the Accessibility Research Group at the IBM TJ Watson Research Center before moving to Boston and working at ITA Software (now part of Google) designing airport systems for Air Canada. |
Sector | Use Case | Challenges | Opportunities and Future Directions: What Can 6G Offer? | Relevant Literature |
---|---|---|---|---|
Healthcare | Human Activity Monitoring [34] | 1. High latency 2. Limited number of sensing nodes 3. Reliable communication of critical information | 1. High data rates 2. Ultra-low latency 3. Unlimited number of sensing nodes by integrating them in the 6G radio antennas 4. Utilising IRS | [19,24,25,26,27,32,33,34,35,36,37,38,39,40,41,42] |
Assistive Technologies for the Visually Impaired [49] | 1. Limited Number of objects’ classification 2. Limited computing power 3. Delay in video feed | 1. Edge Computing 2. Ultra-lo latency 3. Large network coverage | [43,44,45,46,47,48,49,50,51,52,53,54,55,56,57,58,58] | |
Smart Grid | Promoting Energy-conscious Behaviour in the NHS [66] | 1. Limited data logging rates 2. Limited data resolution 3. Limited energy-load resolution | 1. Network Intelligence 2. Service Intelligence 3. High data rates 4. Ultra-low latency 5. Unlimited number of energy sensing nodes | [2,18], [59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77,78,79,80,81] |
Transport | Predicting the Intent to Return to a Vehicle [90,91,92] | Real-time ubiquitous communication between the driver and the car | 1. Connectivity for all things 2. Ultra-low latency 3. High data rates 4. Reliable communication links | [82,83,84,85,86,87,88,89,90,91,92,93] |
Industry 4.0 | Festo Flexible Manufacturing System [107] | 1. Reliable connectivity 2. Timely communication of information | 1. Connectivity for all things 2. Ultra-low latency 3. High data rates 4. Reliable communication links | [96,97,98,99,100,101,102,103,104,105,106,108,109] |
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Barakat, B.; Taha, A.; Samson, R.; Steponenaite, A.; Ansari, S.; Langdon, P.M.; Wassell, I.J.; Abbasi, Q.H.; Imran, M.A.; Keates, S. 6G Opportunities Arising from Internet of Things Use Cases: A Review Paper. Future Internet 2021, 13, 159. https://doi.org/10.3390/fi13060159
Barakat B, Taha A, Samson R, Steponenaite A, Ansari S, Langdon PM, Wassell IJ, Abbasi QH, Imran MA, Keates S. 6G Opportunities Arising from Internet of Things Use Cases: A Review Paper. Future Internet. 2021; 13(6):159. https://doi.org/10.3390/fi13060159
Chicago/Turabian StyleBarakat, Basel, Ahmad Taha, Ryan Samson, Aiste Steponenaite, Shuja Ansari, Patrick M. Langdon, Ian J. Wassell, Qammer H. Abbasi, Muhammad Ali Imran, and Simeon Keates. 2021. "6G Opportunities Arising from Internet of Things Use Cases: A Review Paper" Future Internet 13, no. 6: 159. https://doi.org/10.3390/fi13060159
APA StyleBarakat, B., Taha, A., Samson, R., Steponenaite, A., Ansari, S., Langdon, P. M., Wassell, I. J., Abbasi, Q. H., Imran, M. A., & Keates, S. (2021). 6G Opportunities Arising from Internet of Things Use Cases: A Review Paper. Future Internet, 13(6), 159. https://doi.org/10.3390/fi13060159