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Learning to Adapt: Communication Load Balancing via Adaptive Deep Reinforcement Learning | IEEE Conference Publication | IEEE Xplore

Learning to Adapt: Communication Load Balancing via Adaptive Deep Reinforcement Learning


Abstract:

The association of mobile devices with network resources (e.g., base stations, frequency bands/channels), known as load balancing, is critical to reduce communication tra...Show More

Abstract:

The association of mobile devices with network resources (e.g., base stations, frequency bands/channels), known as load balancing, is critical to reduce communication traffic congestion and network performance. Reinforcement learning (RL) has shown to be effective for communication load balancing and achieves better performance than currently used rule-based methods, especially when the traffic load changes quickly. However, RL-based methods usually need to interact with the environment for a large number of time steps to learn an effective policy and can be difficult to tune. In this work, we aim to improve the data efficiency of RL-based solutions to make them more suitable and applicable for real-world applications. Specifically, we propose a simple, yet efficient and effective deep RL-based wireless network load balancing framework. In this solution, a set of good initialization values for control actions are selected with some cost-efficient approach to center the training of the RL agent. Then, a deep RL-based agent is trained to find offsets from the initialization values that optimize the load balancing problem. Experimental evaluation on a set of dynamic traffic scenarios demonstrates the effectiveness and efficiency of the proposed method.
Date of Conference: 04-08 December 2023
Date Added to IEEE Xplore: 26 February 2024
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Conference Location: Kuala Lumpur, Malaysia

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