ITLGAug 31, 2020

Fast Grant Learning-Based Approach for Machine Type Communications with NOMA

arXiv:2009.00105v16 citations
Originality Incremental advance
AI Analysis

This addresses network congestion for machine-type devices in massive IoT scenarios, representing an incremental improvement through hybrid methods.

The paper tackles congestion in machine-type communications by proposing a NOMA-based framework with fast uplink grant and distributed pairing, which reduces resource wastage from prediction errors and achieves near-optimal OMA performance with manageable complexity.

In this paper, we propose a non-orthogonal multiple access (NOMA)-based communication framework that allows machine type devices (MTDs) to access the network while avoiding congestion. The proposed technique is a 2-step mechanism that first employs fast uplink grant to schedule the devices without sending a request to the base station (BS). Secondly, NOMA pairing is employed in a distributed manner to reduce signaling overhead. Due to the limited capability of information gathering at the BS in massive scenarios, learning techniques are best fit for such problems. Therefore, multi-arm bandit learning is adopted to schedule the fast grant MTDs. Then, constrained random NOMA pairing is proposed that assists in decoupling the two main challenges of fast uplink grant schemes namely, active set prediction and optimal scheduling. Using NOMA, we were able to significantly reduce the resource wastage due to prediction errors. Additionally, the results show that the proposed scheme can easily attain the impractical optimal OMA performance, in terms of the achievable rewards, at an affordable complexity.

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