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An Actor-Critic-Based UAV-BSs Deployment Method for Dynamic Environments

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arxiv 2002.00831 v1 pith:NQ77TF6N submitted 2020-02-03 cs.NI eess.SP

An Actor-Critic-Based UAV-BSs Deployment Method for Dynamic Environments

classification cs.NI eess.SP
keywords methodmomentnetworksprocessactor-critic-baseddecisiondeploymentevery
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In this paper, the real-time deployment of unmanned aerial vehicles (UAVs) as flying base stations (BSs) for optimizing the throughput of mobile users is investigated for UAV networks. This problem is formulated as a time-varying mixed-integer non-convex programming (MINP) problem, which is challenging to find an optimal solution in a short time with conventional optimization techniques. Hence, we propose an actor-critic-based (AC-based) deep reinforcement learning (DRL) method to find near-optimal UAV positions at every moment. In the proposed method, the process searching for the solution iteratively at a particular moment is modeled as a Markov decision process (MDP). To handle infinite state and action spaces and improve the robustness of the decision process, two powerful neural networks (NNs) are configured to evaluate the UAV position adjustments and make decisions, respectively. Compared with the heuristic algorithm, sequential least-squares programming and fixed UAVs methods, simulation results have shown that the proposed method outperforms these three benchmarks in terms of the throughput at every moment in UAV networks.

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