UAV Control Optimization via Decentralized Markov Decision Processes
Md Ali Azam

TL;DR
This paper introduces a decentralized control framework for UAV swarms using Markov decision processes, enabling scalable and effective control for formation and multitarget tracking tasks.
Contribution
It develops a novel decentralized control strategy based on Dec-MDPs and adapts approximate dynamic programming to address computational challenges.
Findings
Effective decentralized control for UAV swarms demonstrated
Applicable to formation control and multitarget tracking
Improves scalability over centralized methods
Abstract
Unmanned aerial vehicle (UAV) swarm control has applications including target tracking, surveillance, terrain mapping, and precision agriculture. Decentralized control methods are particularly useful when the swarm is large, as centralized methods (a single command center controlling the UAVs) suffer from exponential computational complexity, i.e., the computing time to obtain the optimal control for the UAVs grow exponentially with the number of UAVs in the swarm in centralized approaches. Although many centralized control methods exist, literature lacks decentralized control frameworks with broad applicability. To address this knowledge gap, we present a novel decentralized UAV swarm control strategy using a decision-theoretic framework called decentralized Markov decision process (Dec-MDP). We build these control strategies in the context of two case studies: a) swarm formation…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · UAV Applications and Optimization · Reinforcement Learning in Robotics
