Publication:
AMO-Driven Multi-UAV Deployment for Equitable User Allocation and Reduced Power Consumption

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Unmanned Aerial Vehicles (UAVs) have swiftly emerged as essential tools in civilian applications, particularly in disaster response and indoor wireless communication. However, the optimization of the three-dimensional placement of multiple UAVs to ensure equitable user allocation while enhancing power efficiency remains a complex challenge. This study introduces the Animal Migration optimization (AMO) algorithm to address this challenge comprehensively.Our investigation delves into diverse building scenarios encompassing varying dimensions and user distributions. We employ a multi-UAV strategy wherein users are systematically assigned to UAVs based on fitness values, fostering balanced resource allocation. Our experiments consistently demonstrate that the multi-UAV AMO approach outperforms single UAV strategies in both best and mean values across these diverse scenarios.Our research contributes critical insights for improving UAV deployments, with a specific focus on equitable user allocation in disaster response and indoor communication scenarios. As UAV applications continue to proliferate, our findings provide a robust foundation for enhancing deployment efficiency. Future research endeavors can further refine and advance these multi-UAV strategies, driving progress in this dynamic field. © 2023 IEEE.

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-- 31st Telecommunications Forum, TELFOR 2023 -- 2023-11-21 through 2023-11-22 -- Belgrade -- 196114

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