With the development of wireless communication technology, the requirement
for data rate is growing rapidly. Mobile communication system faces the
problem of shortage of spectrum resources. Cognitive radio technology allows
secondary users to use the frequencies authorized to the primary user with
the permission of the primary user, which can effectively improve the
utilization of spectrum resources. In this article, we establish a
cognitive network model based on under1 lay model and propose a cognitive
network resource allocation algorithm based on DDQN (Double Deep Q Network).
The algorithm jointly optimizes the spectrum efficiency of the cognitive
network and QoE (Quality of Experience) of cognitive users through channel
selection and power control of the cognitive users. Simulation results show
that proposed algorithm can effectively improve the spectral efficiency and
QoE. Compared with Q-learning and DQN, this algorithm can converge faster
and obtain higher spectral efficiency and QoE. The algorithm shows a more
stable and efficient performance.
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