A reinforcement learning based routing protocol for software-defined networking enabled wireless sensor network forest fire detection
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Abdelbaki El Belrhiti El Alaoui | L. Koutti | A. Boulouz | Edmond Nurellari | Noureddine Moussa | M. Salah | K. Azbeg | K. Afdel
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