Title
Topology control for effective interference cancellation in multiuser MIMO networks
Abstract
In multiuser multiple-input-multiple-output (MIMO) networks, receivers decode multiple concurrent signals using successive interference cancellation (SIC). With SIC, a weak target signal can be deciphered in the presence of stronger interfering signals. However, this is only feasible if each strong interfering signal satisfies a signal-to-noise-plus-interference ratio (SINR) requirement. This necessitates the appropriate selection of a subset of links that can be concurrently active in each receiver's neighborhood; in other words, a subtopology consisting of links that can be simultaneously active in the network is to be formed. If the selected subtopologies are of small size, the delay between the transmission opportunities on a link increases. Thus, care should be taken to form a limited number of subtopologies. We find that the problem of constructing the minimum number of subtopologies such that SIC decoding is successful with a desired probability threshold is NP-hard. Given this, we propose MUSIC, a framework that greedily forms and activates subtopologies in a way that favors successful SIC decoding with a high probability. MUSIC also ensures that the number of selected subtopologies is kept small. We provide both a centralized and a distributed version of our framework. We prove that our centralized version approximates the optimal solution for the considered problem. We also perform extensive simulations to demonstrate that: 1) MUSIC forms a small number of subtopologies that enable efficient SIC operations; the number of subtopologies formed is at most 17% larger than the optimum number of topologies, discovered through exhaustive search (in small networks); 2) MUSIC outperforms approaches that simply consider the number of antennas as a measure for determining the links that can be simultaneously active. Specifically, MUSIC provides throughput improvements of up to four times, as compared to such an approach, in various topological settings. The improvements can be directly attributable to a significantly higher probability of correct SIC based decoding with MUSIC.
Year
DOI
Venue
2013
10.1109/TNET.2012.2205160
IEEE/ACM Transactions on Networking
Keywords
Field
DocType
multiuser mimo network,optimum number,sic decoding,minimum number,successful sic decoding,small number,activates subtopologies,topology control,effective interference cancellation,correct sic,selected subtopologies,efficient sic operation,limited number,mimo,transmitters,interference,np hard problem,sinr,decoding,multiple signal classification,probability,throughput,topology,music,radio receivers,antennas
Small number,Topology,Topology control,Brute-force search,Computer science,Control theory,Single antenna interference cancellation,Computer network,MIMO,Network topology,Throughput,Decoding methods
Journal
Volume
Issue
ISSN
21
2
1063-6692
Citations 
PageRank 
References 
21
0.99
20
Authors
7
Name
Order
Citations
PageRank
Ece Gelal1473.35
Jianxia Ning2614.64
Konstantinos Pelechrinis369248.45
Tae-Suk Kim428515.95
Ioannis Broustis542529.27
Srikanth Krishnamurthy61919124.08
Bhaskar Rao74037449.28