Fast Online Movement Optimization of Aerial Base Stations Based on Global Connectivity Map
Yiling Wang, Jiangbin Lyu, Liqun Fu

TL;DR
This paper introduces a fast online movement optimization algorithm for aerial base stations using a global connectivity map, significantly improving coverage rates in dynamic environments with reduced computation time.
Contribution
It proposes a novel global connectivity map concept and a fast online stochastic subgradient descent algorithm for near-optimal ABS placement in complex, obstacle-rich, and dynamic scenarios.
Findings
Achieves coverage rates close to optimal solutions with much faster computation.
Outperforms existing methods like K-means and DRL-based algorithms in efficiency and coverage.
Demonstrates effectiveness in obstacle-rich, dynamic environments.
Abstract
Aerial base stations (ABSs) mounted on unmanned aerial vehicles (UAVs) are capable of extending wireless connectivity to ground users (GUs) across a variety of scenarios. However, it is an NP-hard problem with exponential complexity in and , in order to maximize the coverage rate (CR) of GUs by jointly placing ABSs with limited coverage range. The complexity of the problem escalates in environments where the signal propagation is obstructed by localized obstacles such as buildings, and is further compounded by the dynamic GU positions. In response to these challenges, this paper focuses on the optimization of a multi-ABS movement problem, aiming to improve the mean CR for mobile GUs within a site-specific environment. Our proposals include 1) introducing the concept of global connectivity map (GCM) which contains the connectivity information between given pairs of ABS/GU…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Simulation and Modeling Applications
