Distributed Optimization of Hierarchical Small Cell Networks: A GNEP Framework
Jiaheng Wang, Wei Guan, Yongming Huang, Robert Schober, Xiaohu You

TL;DR
This paper introduces a unified GNEP framework for distributed interference management in hierarchical small cell networks, enabling scalable optimization of transmit strategies with convergence guarantees.
Contribution
It formulates small cell network optimization as a GNEP, unifying game-theoretic and NUM approaches, and develops distributed algorithms with proven convergence.
Findings
Proposed GNEP-based algorithms achieve equilibrium solutions.
Framework scales from QoS games to sum-rate maximization.
Algorithms converge with proper parameter tuning.
Abstract
Deployment of small cell base stations (SBSs) overlaying the coverage area of a macrocell BS (MBS) results in a two-tier hierarchical small cell network. Cross-tier and inter-tier interference not only jeopardize primary macrocell communication but also limit the spectral efficiency of small cell communication. This paper focuses on distributed interference management for downlink small cell networks. We address the optimization of transmit strategies from both the game theoretical and the network utility maximization (NUM) perspectives and show that they can be unified in a generalized Nash equilibrium problem (GNEP) framework. Specifically, the small cell network design is first formulated as a GNEP, where the SBSs and MBS compete for the spectral resources by maximizing their own rates while satisfying global quality of service (QoS) constraints. We analyze the GNEP via variational…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Advanced Wireless Network Optimization · Cooperative Communication and Network Coding
