An efficient genetic algorithm for large-scale planning of robust industrial wireless networks
Xu Gong, David Plets, Emmeric Tanghe, Toon De Pessemier, Luc Martens,, Wout Joseph

TL;DR
This paper introduces a genetic algorithm-based method for efficiently planning large-scale, robust industrial wireless networks, addressing challenges of shadowing effects and deployment costs in harsh indoor environments.
Contribution
It proposes a novel overdimensioning model and a genetic algorithm tailored for large-scale IWLAN deployment, including redundancy and cost minimization strategies.
Findings
GAOD reduces AP count by up to 20% compared to benchmarks.
GAOD outperforms greedy heuristic by up to 25% in AP reduction.
Validated with real-world deployment in industrial environments.
Abstract
An industrial indoor environment is harsh for wireless communications compared to an office environment, because the prevalent metal easily causes shadowing effects and affects the availability of an industrial wireless local area network (IWLAN). On the one hand, it is costly, time-consuming, and ineffective to perform trial-and-error manual deployment of wireless nodes. On the other hand, the existing wireless planning tools only focus on office environments such that it is hard to plan IWLANs due to the larger problem size and the deployed IWLANs are vulnerable to prevalent shadowing effects in harsh industrial indoor environments. To fill this gap, this paper proposes an overdimensioning model and a genetic algorithm based over-dimensioning (GAOD) algorithm for deploying large-scale robust IWLANs. As a progress beyond the state-of-the-art wireless planning, two full coverage layers…
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