Deep Contextual Bandit and Reinforcement Learning for IRS-Assisted MU-MIMO Systems
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Deep Contextual Bandit and Reinforcement Learning for IRS-Assisted MU-MIMO SystemsData
2023-07Cita bibliográfica
D. Pereira-Ruisánchez, Ó. Fresnedo, D. Pérez-Adán and L. Castedo, "Deep Contextual Bandit and Reinforcement Learning for IRS-Assisted MU-MIMO Systems," in IEEE Transactions on Vehicular Technology, vol. 72, no. 7, pp. 9099-9114, July 2023, doi: 10.1109/TVT.2023.3249353.
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https://doi.org/10.1109/TVT.2023.3249353
Resumo
[Abstract]: The combination of multiple-input multiple-output (MIMO) systems and intelligent reflecting surfaces (IRSs) is foreseen as a critical enabler of beyond 5G (B5G) and 6G. In this work, two different approaches are considered for the joint optimization of the IRS phase-shift matrix and MIMO precoders of an IRS-assisted multi-stream (MS) multi-user MIMO (MU-MIMO) system. Both approaches aim to maximize the system sum-rate for every channel realization. The first proposed solution is a novel contextual bandit (CB) framework with continuous state and action spaces called deep contextual bandit-oriented deep deterministic policy gradient (DCB-DDPG). The second is an innovative deep reinforcement learning (DRL) formulation where the states, actions, and rewards are selected such that the Markov decision process (MDP) property of reinforcement learning (RL) is appropriately met. Both proposals perform remarkably better than state-of-the-art heuristic methods in scenarios with high multi-user interference.
Palabras chave
Deep contextual bandit
DDPG
Deep reinforcement learning
Intelligent reflecting surfaces
MIMO
DDPG
Deep reinforcement learning
Intelligent reflecting surfaces
MIMO
Descrición
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ISSN
0018-9545