Periodic Reporting for period 1 - MAPNET (Mathematical Modelling and Optimization of Programmable 5G Networks)
Periodo di rendicontazione: 2019-01-01 al 2020-12-31
The primary goal of MAPNET is to propose new modelling techniques for 5G-and-beyond networks mainly characterized by a very dense deployment and heterogeneous radio access technologies coupled with the requirements of energy- efficiency and the applications’ quality of service in terms of latency and data rates.
The specific objectives are listed as follows:
(i) Mathematical modelling of ultra-dense networks
(ii )Energy-efficiency maximization of ultra-dense networks
(iii) Network slicing reformulations to satisfy user demands
1. Deep reinforcement learning based optimization of ultra-dense Millimeter wave networks
We developed a DRL based framework for power and beamwidth allocation in ultra-dense mmWave deployment.
2. Energy efficiency maximization of ultra-dense Millimeter wave networks
Energy efficiency is a very important metric for ultra-dense mmWave deployments catering for the high data-rate applications. To address this challenge, we defined a novel energy consumption analysis model of mmWave UDNs.
3. Latency and energy Optimization of mobile edge/fog computing systems
We considered a fog/edge computing aided drone communication system where latency and energy consumption optimizations are highly important. We formulated the joint minimization of both service latency and energy consumption as a bi-objective minimization problem.
4. Admission control in radio access network slicing systems
We proposed strategies to avoid frequent switching behavior using the tool of game theory resulting in a more stable tenant behavior and increased profit for the MNOs.