In this study, a deep reinforcement learning (DRL) method was employed to solve the joint optimization problem for user association, resource allocation, and power allocation in heterogeneous networks (HetNets), which is an NP-hard problem. Existing studies have taken various optimization objectives into account. The heterogeneous network-deep-Q- network frame-work (HetDQN) is proposed to solve this type of optimization problem in HetNets. Based on maximum spectral efficiency, we designed a 6- layer deep neural network. The state space, objective function, and reward function are presented. In comparison with the existing solution, HetDQN can achieve a higher spectral efficiency. The simulation results revealed that HetDQN has better performance in term of convergence.
Helin YangJun ZhaoKwok‐Yan LamSahil GargQingqing WuZehui Xiong
Satish KumarRajarshi Mahapatra
Xinwu HouYihang HuangYin XuDazhi HeWenjun Zhang
Yuan ZhiJie TianXiaofang DengJingping QiaoDianjie Lu