학술논문

Empowering Reconfigurable Intelligent Surfaces with Artificial Intelligence to Secure Air-To-Ground Internet-of-Things
Document Type
Periodical
Source
IEEE Internet of Things Magazine IEEE Internet Things M. Internet of Things Magazine, IEEE. 7(2):14-21 Mar, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Reconfigurable intelligent surfaces
Autonomous aerial vehicles
Security management
Artificial intelligence
Surveillance
Wireless sensor networks
Wireless communication
Vehicle dynamics
Trajectory
Sensors
Air-to-ground communicatoin
Language
ISSN
2576-3180
2576-3199
Abstract
Reconfigurable intelligent surfaces (RISs) and unmanned aerial vehicles (UAVs) have the potential to play a significant role in enhancing the security of the Internet-of-Things (IoT). RISs can be deployed as intelligent reflectors to augment wireless coverage passively. UAVs offer flexible and dynamic IoT platforms for communication, sensing, and monitoring. In this article, a particular interest is given to RIS-assisted, anti-jamming, UAV communication and radio surveillance, which are generally nonconvex and difficult to solve using traditional optimization tools. New artificial intelligence (AI) tools, more specifically, deep reinforcement learning (DRL), are developed to tackle the problems of UAV and RIS design. The use of DRL allows a UAV to learn its trajectory and RIS configuration to diffuse jamming signals and maximize its communication rate based on its received data rate. It also allows the UAV to maximize its eavesdropping rate based on the transmit rate of a suspicious transmitter that the UAV observes when conducting radio surveillance. The UAVs no longer rely on explicit knowledge of the channel state information, and can learn through trial and error. Simulations confirm the effectiveness of using UAVs, RISs, and AI to enhance the security of air-to-ground IoT networks, compared to baseline schemes without RIS or with non-AI-based RIS configurations.