NSF-AoF: CNS Core: Small: Machine Learning Based Physical Layer and Mobility Management Solutions Towards 6G
Bidragets beskrivning
5G evolution and future 6G cellular networks are targeting operation at higher millimeter wave and sub-THz bands due to large available channel bandwidths. However, the use of these bands for mobile radio access imposes substantial technical challenges, including the quality, cost- and energy-efficiency of the electronics, the extreme path loss and propagation characteristics, and the overall deployment costs to provide indoor and outdoor network coverage with mobility support. Considering these challenges, this project will harness machine learning algorithms for designing physical layer technologies and network management procedures that aim to improve robustness and reliability of connectivity under mobility. The project's expected contributions are at the forefront of emerging 6G standard and applications of modern machine learning tools in wireless communications at high frequency bands. The project is a joint effort between Tampere University, Finland, and UCLA, US.
Visa merStartår
2023
Slutår
2026
Beviljade finansiering
Finansiär
Finlands Akademi
Typ av finansiering
Bilaterala avtal, gemensamma utlysningar
Övriga uppgifter
Finansieringsbeslutets nummer
357730
Vetenskapsområden
El-, automations- och telekommunikationsteknik, elektronik
Forskningsområden
Tietoliikennetekniikka
Identifierade teman
5G, 6G, wireless networks, wireless communication