A Reinforcement Learning Framework for Resource Allocation in Uplink Carrier Aggregation in the Presence of Self Interference
Jaswanth Bodempudi, Batta Siva Sairam, Madepalli Haritha, Sandesh Rao Mattu, Ananthanarayanan Chockalingam

TL;DR
This paper introduces a reinforcement learning framework using a compound-action actor-critic algorithm to optimize uplink carrier aggregation and power allocation in mobile networks, effectively managing self interference for improved throughput.
Contribution
It presents a novel RL-based approach with a custom reward function for joint carrier selection and power allocation considering self interference constraints.
Findings
Achieves higher sum throughput compared to naive schemes.
Adapts effectively to environments with and without self interference.
Demonstrates online learning capability for dynamic environments.
Abstract
Carrier aggregation (CA) is a technique that allows mobile networks to combine multiple carriers to increase user data rate. On the uplink, for power constrained users, this translates to the need for an efficient resource allocation scheme, where each user distributes its available power among its assigned uplink carriers. Choosing a good set of carriers and allocating appropriate power on the carriers is important. If the carrier allocation on the uplink is such that a harmonic of a user's uplink carrier falls on the downlink frequency of that user, it leads to a self coupling-induced sensitivity degradation of that user's downlink receiver. In this paper, we model the uplink carrier aggregation problem as an optimal resource allocation problem with the associated constraints of non-linearities induced self interference (SI). This involves optimization over a discrete variable (which…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Network Optimization · Cognitive Radio Networks and Spectrum Sensing
