Learning Based Frequency- and Time-Domain Inter-Cell Interference Coordination in HetNets
Meryem Simsek, Mehdi Bennis, Ismail Guvenc

TL;DR
This paper introduces a reinforcement learning-based approach for inter-cell interference coordination in HetNets, optimizing cell association and transmission parameters in both time and frequency domains to significantly improve network performance.
Contribution
It presents a novel two-level RL framework for joint interference management and cell association in HetNets, with extensive LTEA system-level simulation validation.
Findings
Up to 125% throughput gain in time domain
Up to 240% throughput gain at cell edges
Effective multi-flow transmission strategies
Abstract
In this article, we focus on inter-cell interference coordination (ICIC) techniques in heterogeneous network (Het-Net) deployments, whereby macro- and picocells autonomously optimize their downlink transmissions, with loose coordination. We model this strategic coexistence as a multi-agent system, aiming at joint interference management and cell association. Using tools from Reinforcement Learning (RL), agents (i.e., macro- and picocells) sense their environment, and self-adapt based on local information so as to maximize their network performance. Specifically, we explore both time- and frequency domain ICIC scenarios, and propose a two-level RL formulation. Here, picocells learn their optimal cell range expansion (CRE) bias and transmit power allocation, as well as appropriate frequency bands for multi-flow transmissions, in which a user equipment (UE) can be simultaneously served by…
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