Online Learning Based Efficient Resource Allocation for LoRaWAN Network
By: Ruiqi Wang , Wenjun Li , Jing Ren and more
Potential Business Impact:
Helps devices send messages farther using less power.
The deployment of large-scale LoRaWAN networks requires jointly optimizing conflicting metrics like Packet Delivery Ratio (PDR) and Energy Efficiency (EE) by dynamically allocating transmission parameters, including Carrier Frequency, Spreading Factor, and Transmission Power. Existing methods often oversimplify this challenge, focusing on a single metric or lacking the adaptability needed for dynamic channel environments, leading to suboptimal performance. To address this, we propose two online learning-based resource allocation frameworks that intelligently navigate the PDR-EE trade-off. Our foundational proposal, D-LoRa, is a fully distributed framework that models the problem as a Combinatorial Multi-Armed Bandit. By decomposing the joint parameter selection and employing specialized, disaggregated reward functions, D-LoRa dramatically reduces learning complexity and enables nodes to autonomously adapt to network dynamics. To further enhance performance in LoRaWAN networks, we introduce CD-LoRa, a hybrid framework that integrates a lightweight, centralized initialization phase to perform a one-time, quasi-optimal channel assignment and action space pruning, thereby accelerating subsequent distributed learning. Extensive simulations and real-world field experiments demonstrate the superiority of our frameworks, showing that D-LoRa excels in non-stationary environments while CD-LoRa achieves the fastest convergence in stationary conditions. In physical deployments, our methods outperform state-of-the-art baselines, improving PDR by up to 10.8% and EE by 26.1%, confirming their practical effectiveness for scalable and efficient LoRaWAN networks.
Similar Papers
D-LoRa: a Distributed Parameter Adaptation Scheme for LoRa Network
Networking and Internet Architecture
Makes wireless signals work better and faster.
Energy-Efficient Flying LoRa Gateways: A Multi-Agent Reinforcement Learning Approach
Networking and Internet Architecture
Drones help small devices save power.
Diffusion-RL for Scalable Resource Allocation for 6G Networks
Networking and Internet Architecture
Makes phone networks faster and more reliable.