TL;DR
This paper introduces a deep learning-based wireless scheduling method that bypasses channel estimation by using geographic locations, achieving near-optimal sum-rate performance and fairness in dense networks.
Contribution
It presents a novel neural network architecture trained unsupervisedly to efficiently schedule links based on location data, improving scalability and generalization over traditional methods.
Findings
Achieves near-optimal sum-rate maximization.
Generalizes well to larger and denser networks.
Provides a fair scheduling approach with high utility.
Abstract
The optimal scheduling of interfering links in a dense wireless network with full frequency reuse is a challenging task. The traditional method involves first estimating all the interfering channel strengths then optimizing the scheduling based on the model. This model-based method is however resource intensive and computationally hard because channel estimation is expensive in dense networks; furthermore, finding even a locally optimal solution of the resulting optimization problem may be computationally complex. This paper shows that by using a deep learning approach, it is possible to bypass the channel estimation and to schedule links efficiently based solely on the geographic locations of the transmitters and the receivers, due to the fact that in many propagation environments, the wireless channel strength is largely a function of the distance dependent path-loss. This is…
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