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Upper Bounds on MIMO Channel Capacity with Channel Frobenius Norm Constraints Zukang Shen, Jeffrey Andrews, and Brian Evans The University of Texas at Austin Nov. 30, 2005 IEEE Globecom 2005

Upper Bounds on MIMO Channel Capacity with Channel Frobenius Norm Constraints

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Upper Bounds on MIMO Channel Capacity with Channel Frobenius Norm Constraints. Zukang Shen , Jeffrey Andrews, and Brian Evans The University of Texas at Austin Nov. 30, 2005 IEEE Globecom 2005. Multi-Antenna Systems. Exploit spatial dimension with multiple antennas - PowerPoint PPT Presentation

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Upper Bounds on MIMO Channel Capacity with Channel Frobenius

Norm Constraints

Zukang Shen, Jeffrey Andrews, and Brian Evans

The University of Texas at Austin

Nov. 30, 2005

IEEE Globecom 2005

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Multi-Antenna Systems Exploit spatial dimension with multiple antennas Improve transmission reliability – diversity

Combat channel fading [Jakes, 1974]

Combat co-channel interference [Winters, 1984]

Increase spectral efficiency – multiplexing Multiple parallel spatial channels created with multiple antennas at

transmitter and receiver [Winters, 1987] [Foschini et al., 1998] Theoretical results on point-to-point MIMO channel capacity

[Telatar, 1999]

Tradeoff between diversity and multiplexing Theoretical treatment [Zheng et al., 2003]

Switching between diversity and multiplexing [Heath et al. 2005]

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Point-to-Point MIMO Systems Narrowband system model Rayleigh model

Each element in is i.i.d. complex Gaussian Channel energy scales sub-linearly in the number of antennas

[Sayeed et al., 2004]

Ray-tracing models [Yu et al., 2002]

Space-Time

Transmitter

Space-Time

Receiver

User Data User Data

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MIMO Gaussian Broadcast Channels

Duality between MIMO Gaussian broadcast and multiple access channels [Vishwanath et al., 2003]

Dirty paper coding [Costa 1983] Sum capacity achieved with DPC [Vishwanath et al., 2003]

Iterative water-filling [Yu et al., 2004] [Jindal et al., 2005]

Capacity region of MIMO Gaussian broadcast channels [Weingarten et al., 2004]

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Joint Transmitter-Channel Optimization

Transmit signal covariance onlyPoint-to-point

Broadcast channel

Joint transmit-channel optimizationPoint-to-point

Broadcast channel

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Motivations and Related WorkJoint transmit signal and channel optimization

Obtain upper bounds on MIMO channel capacityReveal best channel characteristicsDirect antenna configurations

Related workPoint-to-point case [Chiurtu, et al., 2000]

Convex optimizationEqual energy in every MIMO channel eigenmodeEqual power allocated for each channel eigenmode

Game theoretic approach [Palomar et al., 2003]

No transmit channel state informationEqual power distribution

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Point-to-Point Channel

DenoteNoticeReformulated problem

TX power allocated for the ith eigenmodeThe ith eigenvalue of

Number of transmit antennasNumber of receive antennas

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Point-to-Point ChannelIterative water-filling between

Optimal solutionEqual channel eigenmodesEqual power allocation Number of non-zero eigenmodes optimized

Water-level for TX power

Water-level for channel

Number of non-zero channeleigenmodes

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Broadcast ChannelCooperative channel

User cooperationUpper bound on BC sum capacityEffective point-to-point channel

Upper bound for Joint TX-H optimization

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Broadcast Channel

When for some integer and , the bound is tightConstruct a set ofEach has non-zero singular values ofEqual TX power for non-zero eigenmodes

Bound is asymptotically tight for high SNR when and

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Numerical Results

Maximum capacity vs. SNR Optimal # of eigenmodes vs. SNR, M=10

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Summary Jointly optimize transmit signal covariance and MIMO

channel matrix Obtain upper bounds on MIMO channel capacity Reveal best channel characteristics Direct antenna configurations

Re-derive the optimal solution for point-to-point MIMO channels with iterative water-filling Equal MIMO eigenmode gains Equal transmit power in every MIMO eigenmode Number of eigenmodes optimized to SNR

Upper bound sum capacity of MIMO broadcast channels with cooperative point-to-point channels Orthogonalize user channels Optimize number of user channel eigenmodes