Joint Robust Beamforming Design for WPT-assisted D2D Communications in MISO-NOMA: Fractional Programming and Deep Reinforcement Learning
Shiyu Jiao, Fang Fang, Zhiguo Ding

TL;DR
This paper introduces a novel joint robust beamforming approach for WPT-assisted D2D communications in MISO-NOMA networks, employing fractional programming and deep reinforcement learning to optimize energy efficiency under various channel conditions.
Contribution
It develops a fractional programming algorithm and a DRL-based method for robust beamforming, improving energy efficiency in WPT-assisted D2D MISO-NOMA systems with channel uncertainties.
Findings
The proposed PFP algorithm outperforms the DDPG-based method with accurate CSI.
The DDPG-based method is more robust under poor channel estimation.
NOMA provides higher energy efficiency gains than OMA in the studied networks.
Abstract
This paper proposes a scheme for the envisioned sixth-generation (6G) ultra-massive Machine Type Communications(umMTC). In particular, wireless power transfer (WPT) assisted communication is deployed in non-orthogonal multiple access (NOMA) downlink networks to realize spectrum and energy cooperation. This paper focuses on joint robust beamforming design to maximize the energy efficiency of WPT-assisted D2D communications in multiple-input single-output (MISO)-NOMA downlink networks. To efficiently address the formulated non-concave energy efficiency maximization problem, a pure fractional programming (PFP) algorithm is proposed, where the time switching coefficient of the WPT device and the beamforming vectors of the base station are alternatively optimized by applying the Dinkelbach method and quadratic transform respectively. To prove the optimality of the proposed algorithm, the…
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Taxonomy
TopicsEnergy Harvesting in Wireless Networks · Advanced Wireless Communication Technologies · Wireless Power Transfer Systems
MethodsBalanced Selection
