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Smart city article details

Title Communication Systems For Drone Swarms And Remote Operations
ID_Doc 14923
Authors Katna S.; Singh S.K.; Kumar S.; Manro D.; Chhabra A.; Sharma S.K.
Year 2024
Published AI Developments for Industrial Robotics and Intelligent Drones
DOI http://dx.doi.org/10.4018/979-8-3693-2707-4.ch006
Abstract The world is progressively moving towards the smart city concept. Drones are central to this movement. Hence, this research on communication systems for drone swarms is imperative to enhance the operational efficiency and autonomy of unmanned aerial vehicles (UAVs). Alongside, it addresses the unique challenges posed by dynamic network topologies, limited bandwidth, and ensuring seamless collaboration in diverse applications. This study examines the complex domain of communication systems for drone swarms and remote operations. Issues such as bandwidth constraints and changing network configurations are assessed with a focus on innovative technologies like AI-powered decision-making, blockchain security, and edge computing. The assessment looks at the effects of specialized signal processing methods on swarm performance. Case studies authenticate these strategies' efficacy while offering vital real-world insights. Further, this study assists those in the field by guiding them through the challenges associated with drone swarm technology. © 2025, IGI Global Scientific Publishing. All rights reserved.
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