Capacity of multi-antenna Gaussian Channels, I. E. Telatar - PowerPoint PPT Presentation

About This Presentation
Title:

Capacity of multi-antenna Gaussian Channels, I. E. Telatar

Description:

Idea: multiplex in an arbitrary coordinate system B, and do joint ML decoding at ... Diversity/multiplexing tradeoff (Zheng & Tse) Conclusion. MIMO can greatly ... – PowerPoint PPT presentation

Number of Views:240
Avg rating:3.0/5.0
Slides: 21
Provided by: imadja
Learn more at: http://web.mit.edu
Category:

less

Transcript and Presenter's Notes

Title: Capacity of multi-antenna Gaussian Channels, I. E. Telatar


1
MIT 6.441
  • Capacity of multi-antenna Gaussian Channels, I.
    E. Telatar

May 11, 2006
By Imad Jabbour
2
Introduction
  • MIMO systems in wireless comm.
  • Recently subject of extensive research
  • Can significantly increase data rates and reduce
    BER
  • Telatars paper
  • Bell Labs (1995)
  • Information-theoretic aspect of single-user MIMO
    systems
  • Classical paper in the field

3
Preliminaries
  • Wireless fading scalar channel
  • DT Representation
  • H is the complex channel fading coefficient
  • W is the complex noise,
  • Rayleigh fading , such that H is
    Rayleigh distributed
  • Circularly-symmetric Gaussian
  • i.i.d. real and imaginary parts
  • Distribution invariant to rotations

4
MIMO Channel Model (1)
  • I/O relationship
  • Design parameters
  • t Tx. antennas and r Rx. antennas
  • Fading matrix
  • Noise
  • Power constraint
  • Assumption
  • H known at Rx. (CSIR)

5
MIMO Channel Model (2)
  • System representation
  • Telatar the fading matrix H can be
  • Deterministic
  • Random and changes over time
  • Random, but fixed once chosen

Transmitter
Receiver
6
Deterministic Fading Channel (1)
  • Fading matrix is not random
  • Known to both Tx. and Rx.
  • Idea Convert vector channel to a parallel one
  • Singular value decomposition of H
  • SVD , for U and V unitary, and D diagonal
  • Equivalent system , where
  • Entries of D are the singular values of H
  • There are singular values

7
Deterministic Fading Channel (2)
  • Equivalent parallel channel nminmin(r,t)
  • Tx. must know H to pre-process it, and Rx. must
    know H to post-process it

8
Deterministic Fading Channel (3)
  • Result of SVD
  • Parallel channel with sub-channels
  • Water-filling maximizes capacity
  • Capacity is
  • Optimal power allocation
  • is chosen to meet total power constraint

9
Random Varying Channel (1)
  • Random channel matrix H
  • Independent of both X and W, and memoryless
  • Matrix entries
  • Fast fading
  • Channel varies much faster than delay requirement
  • Coherence time (Tc) period of variation of
    channel

10
Random Varying Channel (2)
  • Information-theoretic aspect
  • Codeword length should average out both additive
    noise and channel fluctuations
  • Assume that Rx. tracks channel perfectly
  • Capacity is
  • Equal power allocation at Tx.
  • Can show that
  • At high power, C scales linearly with nmin
  • Results also apply for any ergodic H

11
Random Varying Channel (3)
  • MIMO capacity versus SNR (from 2)

12
Random Fixed Channel (1)
  • Slow fading
  • Channel varies much slower than delay requirement
  • H still random, but is constant over transmission
    duration of codeword
  • What is the capacity of this channel?
  • Non-zero probability that realization of H does
    not support the data rate
  • In this sense, capacity is zero!

13
Random Fixed Channel (2)
  • Telatars solution outage probability pout
  • pout is probability that R is greater that
    maximum achievable rate
  • Alternative performance measure is
  • Largest R for which
  • Optimal power allocation is equal allocation
    across only a subset of the Tx. antennas.

14
Discussion and Analysis (1)
  • Whats missing in the picture?
  • If H is unknown at Tx., cannot do SVD
  • Solution V-BLAST
  • If H is known at Tx. also (full CSI)
  • Power gain over CSIR
  • If H is unknown at both Tx. and Rx (non-coherent
    model)
  • At high SNR, solution given by Marzetta
    Hochwald, and Zheng
  • Receiver architectures to achieve capacity
  • Other open problems

15
Discussion and Analysis (2)
  • If H unknown at Tx.
  • Idea multiplex in an arbitrary coordinate system
    B, and do joint ML decoding at Rx.
  • V-BLAST architecture can achieve capacity

16
Discussion and Analysis (3)
  • If varying H known at Tx. (full CSI)
  • Solution is now water-filling over space and time
  • Can show optimal power allocation is P/nmin
  • Capacity is
  • What are we gaining?
  • Power gain of nt/nmin as compared to CSIR case

17
Discussion and Analysis (4)
  • If H unknown at both Rx. and Tx.
  • Non-coherent channel channel changes very
    quickly so that Rx. can no more track it
  • Block fading model
  • At high SNR, capacity gain is equal to (Zheng)

18
Discussion and Analysis (5)
  • Receiver architectures 2
  • V-BLAST can achieve capacity for fast
    Rayleigh-fading channels
  • Caveat Complexity of joint decoding
  • Solution simpler linear decoders
  • Zero-forcing receiver (decorrelator)
  • MMSE receiver
  • MMSE can achieve capacity if SIC is used

19
Discussion and Analysis (6)
  • Open research topics
  • Alternative fading models
  • Diversity/multiplexing tradeoff (Zheng Tse)
  • Conclusion
  • MIMO can greatly increase capacity
  • For coherent high SNR,
  • How many antennas are we using?
  • Can we beat the AWGN capacity?

20
Thank you!
  • Any questions?
Write a Comment
User Comments (0)
About PowerShow.com