TY - JOUR
T1 - Computation Offloading and Beamforming Optimization for Energy Minimization in Wireless-Powered IRS-Assisted MEC
AU - Zhao, Songhan
AU - Liu, Yue
AU - Gong, Shimin
AU - Gu, Bo
AU - Fan, Rongfei
AU - Lyu, Bin
N1 - Publisher Copyright:
© 2023 IEEE.
PY - 2023/11/15
Y1 - 2023/11/15
N2 - Intelligent reflecting surface (IRS) has been recently exploited as a symbiotic radio (SR) technology to improve energy and spectral efficiencies in wireless systems. In this article, we consider a symbiotic IRS-assisted mobile-edge computing (MEC) system that allows edge users to first harvest RF power from a hybrid access point (HAP) and then offload its computational workload to the MEC server associated with the HAP. We aim to minimize the HAP's energy consumption by jointly optimizing the users' offloading schemes, the HAP's active beamforming, and the IRS's passive beamforming strategies. We propose an optimization-driven hierarchical deep deterministic policy gradient (OH-DDPG) framework to decompose the energy minimization problem into the optimization and the learning subproblems, respectively. The outer loop DDPG learning method adapts the IRS's passive beamforming strategy, while the inner loop optimization deals with the other control variables with reduced dimensionality. Moreover, to improve the learning efficiency, we extend OH-DDPG to the multiagent scenario. In particular, the HAP first estimates the users' offloading strategy by the inner-loop optimization and shares it with all user agents. Then, each user agent refines its offloading decision using the DDPG algorithm independently. This can avoid signaling overhead among users and improve the multiuser learning efficiency. Simulation results show that the proposed OH-DDPG and the multiuser extension can achieve significant performance gains compared to the conventional model-free learning algorithms.
AB - Intelligent reflecting surface (IRS) has been recently exploited as a symbiotic radio (SR) technology to improve energy and spectral efficiencies in wireless systems. In this article, we consider a symbiotic IRS-assisted mobile-edge computing (MEC) system that allows edge users to first harvest RF power from a hybrid access point (HAP) and then offload its computational workload to the MEC server associated with the HAP. We aim to minimize the HAP's energy consumption by jointly optimizing the users' offloading schemes, the HAP's active beamforming, and the IRS's passive beamforming strategies. We propose an optimization-driven hierarchical deep deterministic policy gradient (OH-DDPG) framework to decompose the energy minimization problem into the optimization and the learning subproblems, respectively. The outer loop DDPG learning method adapts the IRS's passive beamforming strategy, while the inner loop optimization deals with the other control variables with reduced dimensionality. Moreover, to improve the learning efficiency, we extend OH-DDPG to the multiagent scenario. In particular, the HAP first estimates the users' offloading strategy by the inner-loop optimization and shares it with all user agents. Then, each user agent refines its offloading decision using the DDPG algorithm independently. This can avoid signaling overhead among users and improve the multiuser learning efficiency. Simulation results show that the proposed OH-DDPG and the multiuser extension can achieve significant performance gains compared to the conventional model-free learning algorithms.
KW - Deep reinforcement learning (DRL)
KW - intelligent reflecting surface (IRS)
KW - mobile-edge computing (MEC)
KW - symbiotic radio (SR)
UR - http://www.scopus.com/inward/record.url?scp=85153394082&partnerID=8YFLogxK
U2 - 10.1109/JIOT.2023.3265011
DO - 10.1109/JIOT.2023.3265011
M3 - Article
AN - SCOPUS:85153394082
SN - 2327-4662
VL - 10
SP - 19466
EP - 19478
JO - IEEE Internet of Things Journal
JF - IEEE Internet of Things Journal
IS - 22
ER -