Secured and Intelligent Massive Machine-to-Machine Communication for 6G

Lead Research Organisation: IRIS Automation Ltd
Department Name: Research and development

Abstract

To satisfy the expected plethora of demanding services, 6G is envisioned as a revolutionary paradigm to carry forward the capacities of enhanced broadband, massive access, and Ultra-reliable and low latency services in 5G wireless networks to a more robust and intelligent level. This move will introduce significant new multidisciplinary research challenges emerging throughout the wireless communication protocol stacks, including the way the mobile network is modelled and deployed. The structure of 6G networks will be highly heterogeneous, densely deployed, and dynamic. Combined with the tight quality of services, such complex architecture will result in the untenability of legacy network operation routines. In response, artificial intelligence (AI), especially machine learning (ML), Semantic Communication and Digital Twin (DT) are emerging as solutions to realize the fully intelligent network orchestration and management. By learning from uncertain and dynamic environments, AI-enabled channel estimation and spectrum management will open up opportunities for bringing the excellent performance of Ultra-broadband techniques into full play. Additionally, challenges brought by Ultra-massive access concerning energy and security can be mitigated by applying AI-based approaches.

The overall research objective of the SCION project is to develop and design the network systems for seamless wireless access for Secure and Intelligent Massive Machine-to-Machine Communications for 6G. In addition to technology development, to meet the urgent needs for the future working force of the coming 6G era, this collaborative project will create a training network for Doctoral Candidates who will contribute to the design and implementation of future 6G networks.

Publications

10 25 50
 
Description Project Collaboration for Doctorate Candidate Registration with Nottingham Trent University 
Organisation Nottingham Trent University
Country United Kingdom 
Sector Academic/University 
PI Contribution IRIS Automation and Nottingham Trent University (NTU), UK agreed collaboration with Professor Shahid Mumtaz in order for the PhD student to register and access the resources and research facilities required for the completion of PhD. Our research team has discussed with NTU to provide direction for the PhD programme.
Collaborator Contribution Professor Shahid Mumtaz from NTU has agreed to be the director of studies for the PhD candidate. Through this collaboration, the PhD candidate has access to Quantum lab in order to run experiments and explore the application of quantum computing for developing smart city virtual twin integrated with telecommunication technologies.
Impact The collaboration is multi-disciplinary involving a number of research areas namely AI, Digital Twin, Smart City, 6G and Quantum Computing. IRIS and Professor Rahat Iqbal provides expertise in the area of AI, digital twin and smart city. NTU and Professor Shahid Mumtaz provides expertise in the area of 6G and beyond and Quantum Computing
Start Year 2023
 
Description Scion project workshop and consortium meeting 
Form Of Engagement Activity Participation in an activity, workshop or similar
Part Of Official Scheme? No
Geographic Reach International
Primary Audience Postgraduate students
Results and Impact The event was attended by 10 doctorate students and consortium members including academics and business professionals.
the outcome of the event included:
1) Timeline for the milestones and deliverables related to SCION use cases
2) feedback on doctorate PhD proposals
3) Doctoral training for academic writing and presentation
Year(s) Of Engagement Activity 2023,2024