Abstract
With the rapid development of technology, people's demand for wireless spectrum is increasing. However, due to limited
spectrum resources, how to effectively utilize these resources has become a major challenge in the field of radio. To address this is‐
sue, we establish a cognitive wireless network model where primary and secondary users share the same spectrum resources and
work in a non cooperative manner to improve the throughput of secondary users. Then, we use the SumTree Sampling Deep QNetwork
(ST-DQN) algorithm for power control to ensure priority and diversity in sample selection. Finally, a series of simulation
experiments are conducted using Python to compare and analyze the performance indicators of reward, loss function, and sub user
throughput with traditional Q-learning and free exploration algorithms. We find that the ST-DQN algorithm performs better in power
control.
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