Approximative Matrix Inverse Computations for Very-large MIMO and Applications to Linear Pre-coding Systems
Author
Summary, in English
matrices for joint processing (pre-coding) at the base station. The dirty paper coding (DPC) is an optimal pre-coding scheme and has a very high complexity. However with increasing number of BS antennas linear pre-coding performance tends
to that of the optimal DPC. Although linear pre-coding is less complex than DPC, there is a need to compute pseudo inverses of large matrices. In this paper we present a low complexity approximation of down-link Zero Forcing linear pre-coding for very-large multi-user MIMO systems. Approximation using a Neumann series expansion is opted for inversion of matrices over traditional exact computations, by making use of special properties of the matrices, thereby reducing the cost of hardware. With this approximation of linear pre-coding,
we can significantly reduce the computational complexity for large enough systems, i.e., where we have enough BS antenna elements. For the investigated case of 8 users, we obtain 90% of the full ZF sum rate, with lower computational complexity, when the number of BS antennas per user is about 20 or more.
Department/s
Publishing year
2013
Language
English
Pages
2710-2715
Publication/Series
[Host publication title missing]
Full text
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Document type
Conference paper
Publisher
IEEE - Institute of Electrical and Electronics Engineers Inc.
Topic
- Electrical Engineering, Electronic Engineering, Information Engineering
Keywords
- linear precoding
- massive mimo
- matrix inverse approximation
Conference name
WCNC (wireless communications and networking conference)
Conference date
2013-04-02
Conference place
Shanghai, China
Status
Published
Project
- Distributed antenna systems for efficient wireless systems
Research group
- Digital ASIC