Fast Uplink Grant for Machine Type Communications: Challenges and Opportunities
Samad Ali, Nandana Rajatheva, Walid Saad

TL;DR
This paper explores the potential of fast uplink grants in cellular networks to support massive machine type communications by reducing signaling overhead and improving scheduling through traffic prediction and machine learning.
Contribution
It introduces a two-stage approach combining traffic prediction and optimized scheduling, including novel methods for event-driven traffic prediction and machine learning-based grant allocation.
Findings
Proposed solutions can significantly reduce signaling overhead.
Enhanced traffic prediction improves uplink resource allocation.
Machine learning methods enable efficient grant scheduling.
Abstract
The notion of a fast uplink grant is emerging as a promising solution for enabling massive machine type communications (MTCs) in the Internet of Things over cellular networks. By using the fast uplink grant, machine type devices (MTD) will no longer require random access (RA) channels to send scheduling requests. Instead, uplink resources can be actively allocated to MTDs by the base station. In this paper, the challenges and opportunities for adopting the fast uplink grant to support MTCs are investigated. First, the fundamentals of fast uplink grant and its advantages over conventional access schemes: i) fully scheduled with RA process and ii) uncoordinated access, are presented. Then, the key challenges that include the prediction of set of MTDs with data to transmit, as well as the optimal scheduling of MTDs, are exposed. To overcome these challenges, a two-stage approach that…
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