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e-Article

Dynamic Jamming Power Allocation With Incomplete Sensing Information: Improving by GAN and Opponent Modeling
Document Type
Periodical
Source
IEEE Communications Letters IEEE Commun. Lett. Communications Letters, IEEE. 28(5):1077-1081 May, 2024
Subject
Communication, Networking and Broadcast Technologies
Jamming
Sensors
Generative adversarial networks
Training
Receivers
Transmitters
Resource management
Jamming power allocation
incomplete information
deep reinforcement learning
generative adversarial network
opponent modeling
Language
ISSN
1089-7798
1558-2558
2373-7891
Abstract
This letter studies the problem of dynamic jamming power allocation (JPA) with incomplete sensing information in dynamic and unknown environments. Most existing studies assume that jammers have perfect sensing information, without the consideration of the reliability of sensors, leading to poor performance when facing incomplete sensing information. In response, we propose a robust intelligent JPA scheme and adopt a two-stage algorithm namely “offline training and online deploy” to guide the training and deployment process. The approach utilizes the observed values from spatially distributed sensor units as inputs and employs deep reinforcement learning (DRL) for jamming power decision-making. To handle the missing observation data, we designed a data completion module based on the generative adversarial networks (GAN) framework. In addition, we introduce the priority experience replay mechanism (PERM) and opponent modeling (OM) in the decision model to enhance the learning efficiency and decision accuracy of the network. Simulation results show that the proposed approach can achieve efficient jamming with incomplete information, and outperform conventional DRL-based approaches.