Fast and computationally efficient generative adversarial network
algorithm for unmanned aerial vehicle-based network coverage optimization
- URL: http://arxiv.org/abs/2203.13607v1
- Date: Fri, 25 Mar 2022 12:13:21 GMT
- Title: Fast and computationally efficient generative adversarial network
algorithm for unmanned aerial vehicle-based network coverage optimization
- Authors: Marek Ru\v{z}i\v{c}ka, Marcel Volo\v{s}in, Juraj Gazda, Taras
Maksymyuk, Longzhe Han, Mischa Dohler
- Abstract summary: The challenge of dynamic traffic demand in mobile networks is tackled by moving cells based on unmanned aerial vehicles.
Considering the tremendous potential of unmanned aerial vehicles in the future, we propose a new algorithm for coverage optimization.
The proposed algorithm is implemented based on a conditional generative adversarial neural network, with a unique multilayer sum-pooling loss function.
- Score: 1.2853186701496802
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: The challenge of dynamic traffic demand in mobile networks is tackled by
moving cells based on unmanned aerial vehicles. Considering the tremendous
potential of unmanned aerial vehicles in the future, we propose a new heuristic
algorithm for coverage optimization. The proposed algorithm is implemented
based on a conditional generative adversarial neural network, with a unique
multilayer sum-pooling loss function. To assess the performance of the proposed
approach, we compare it with the optimal core-set algorithm and quasi-optimal
spiral algorithm. Simulation results show that the proposed approach converges
to the quasi-optimal solution with a negligible difference from the global
optimum while maintaining a quadratic complexity regardless of the number of
users.
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