distributed power control and spectrum sharing in wireless networks

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ECE559VV – Fall07 Course Project Presented by Guanfeng Liang Distributed Power Control and Spectrum Sharing in Wireless Networks

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Distributed Power Control and Spectrum Sharing in Wireless Networks. ECE559VV – Fall07 Course Project Presented by Guanfeng Liang. Outline. Background Power control Spectrum sharing Conclusion. Background. Interference is the key factor that limits the performance of wireless networks - PowerPoint PPT Presentation

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Page 1: Distributed Power Control and Spectrum Sharing in Wireless Networks

ECE559VV – Fall07 Course Project

Presented by Guanfeng Liang

Distributed Power Control and Spectrum Sharing in Wireless

Networks

Page 2: Distributed Power Control and Spectrum Sharing in Wireless Networks

OutlineBackgroundPower controlSpectrum sharingConclusion

Page 3: Distributed Power Control and Spectrum Sharing in Wireless Networks

BackgroundInterference is the key factor that limits the

performance of wireless networksTo handle interference, can optimize by

means of Frequency allocation:

Power control:

Or, jointly - spectrum sharing:

f

f

f

Page 4: Distributed Power Control and Spectrum Sharing in Wireless Networks

Power ControlN users, M base stations, single channel,

uplinkPj - transmit power of user j

hkj - gain from user j to BS k

zk – variance of independent noise at BS k)()(SIR pp kjj

jikiki

kjjkj up

zph

hp

Page 5: Distributed Power Control and Spectrum Sharing in Wireless Networks

General Interference ConstraintsFixed Assignment: BS aj is assigned to user

j

Minimum Power Assignment: each user is assigned to the BS that maximizes its SIR

Limited Diversity: BS’s in Kj are assigned to user j

)()()(

ppp

ja

jFAjjjjaj

j

j uIpup

)(min)()(max

,, p

ppjk

j

k

MPAjjjjkj

k uIpup

)( ,)( , )(

)()(p

p ppp

j

j

Kk jk

jLDjjjKk jkj uIpup

Page 6: Distributed Power Control and Spectrum Sharing in Wireless Networks

Standard Interference functionDefinition: Interference function I(p) is

standard if for all p≥0, the following properties are satisfied.Positivity - I(p) ≥0Monotonicity - If p ≥ p’, then I(p) ≥ I(p’).Scalability – For all a>1, aI(p)>I(ap).

IFA, IMPA, ILD are standard.For standard interference functions,

minimized total power can be achieved by updating p(t+1)=I(p(t)) in a distributed fashion, asynchronously. (Yates’95)

Page 7: Distributed Power Control and Spectrum Sharing in Wireless Networks

Spectrum Sharing• Power is uniformly allocated across bandwidth

W• Transmission rate is not considered

• What should we do if power is allowed to be allocated unevenly?

• Can “rate” optimality be achieved in a distributed manner?

Page 8: Distributed Power Control and Spectrum Sharing in Wireless Networks

SettingsM fixed 1-to-1 user-BS assignmentsNoise profile at each BS: Ni(f)Random Gaussian codebooks – interference

looks like Gaussian noise

i

W

i

W

ij jiji

iiii

Pdffp

dffphfN

fphR

0

0,

,

)( subject to

)()(

)(1log

Page 9: Distributed Power Control and Spectrum Sharing in Wireless Networks

Rate RegionRate Region

Pareto Optimal Point

MifpP(f)dfp

dffphfN

fphR

ii

W

i

W

ij jiji

iiii

,...,1for 0)( with and

)()(

)(1log:

0

0,

,

R

MiR,RR

RRRRRR

Mii

iiiM

,...,1for ),,...,~

,...,(~

:),...,(

1

111*

Page 10: Distributed Power Control and Spectrum Sharing in Wireless Networks

Optimization ProblemGlobal utility optimization maximization

U(R1,…,RM) reflects the fairness issueSum rate: Usum (R1,…,RM) = R1+…+RM

Proportional fairness: UPF (R1,…,RM) = log(R1)+…+log(RM)

In general, U is component-wise monotonically increasing => optimal allocation must occur on the boundary R*

),...,(subject to

),...,(max

1

1

M

M

RR

RRU

Page 11: Distributed Power Control and Spectrum Sharing in Wireless Networks

Examples

Page 12: Distributed Power Control and Spectrum Sharing in Wireless Networks

Infinite DimensionTheorem 1:

Any point in the achievable rate region R can be obtained with M power allocations that are piecewise constant in the intervals [0,w1), [w1,w2),…,[w2M-1,W], for some choice of {wi}i=1.

2M-1.

Theorem 2:Let (R1,…,RM) be a Pareto efficient rate vector achieved with power allocations {pi(f)}i=1,…,M. If hi,jhj,i>hi,ihj,j then pi(f)pj(f)=0 for all f [0,W].

Page 13: Distributed Power Control and Spectrum Sharing in Wireless Networks

Non-Cooperative ScenariosNon-convex capacity expression -> rate

region not easy to compute

Another approach: view the interference channel as a non-cooperative game among the competing users-> competitive optimal

Assumptions:Selfish usersuser i tries to maximize Ui(Ri) -> maximize Ri

Page 14: Distributed Power Control and Spectrum Sharing in Wireless Networks

Gaussian Interference Game(GIG)Each user tries to maximize its own rate,

assuming other users’ power allocation are

known.

Well-known Water-filling power allocation

i

W

i

W

ij jiji

iiii

Pdffp

dffphfN

fphR

0

0 *,

,

)( subject to

)()(

)(1log maximize

Page 15: Distributed Power Control and Spectrum Sharing in Wireless Networks

Iterative Water-filling (Yu’02)

)(

)(

1,1

1

fh

fN

)(

)(

2,2

2

fh

fN

22P 11P

1,11,222,22,11 /,/ hhhh

Page 16: Distributed Power Control and Spectrum Sharing in Wireless Networks

EquilibriumTheorem 3:

Under a mild condition, the GIG has a competitive equilibrium. The equilibrium is unique, and it can be reached by iterative water-filling.

Nash Equilibrium

MiSs

sssssRssR

ii

MiiiiMi

,...,1, allfor

),...,,,...,(),...,( **1

*1

*1

**1

Page 17: Distributed Power Control and Spectrum Sharing in Wireless Networks

Is the Equilibrium Optimal?NO!Example:

h1,1=h2,2=1, h1,2=h2,1=1/4, W=1, N1=N2=1, P1=P2=P

Water-filling -> flat power allocation:

Orthogonal power allocation

PP/PRR as )5log()]41/(1log[21

PPRR as ]21log[)2/1(21

Page 18: Distributed Power Control and Spectrum Sharing in Wireless Networks

Repeated GameUtility of user i :

Decision made based on complete history

Advantage: much richer set of N.E., hence have more flexibility in obtaining a fair and efficient resource allocation

)1,0(,)()1(0

t

it

i tRU

Page 19: Distributed Power Control and Spectrum Sharing in Wireless Networks

Equilibriums of a Repeated GameFact: frequency-flat power allocations is a N.E. of

the repeated game with AWGN.

Theorem 4:The rate Ri

FS achieved by frequency-flat power spread is the reservation utility of player i in the GIG.

Result: If the desired operating point (R1,…,RM) is component-wise greater than (R1

FS,…,RMFS), there

is no performance loss due to lack of cooperation. (Tse’07)

Page 20: Distributed Power Control and Spectrum Sharing in Wireless Networks

Results

Page 21: Distributed Power Control and Spectrum Sharing in Wireless Networks

SummaryPerformance optimization of wireless

networks1-D: power = power control

Distributed power control with constant power allocation

2-D: power + frequency = spectrum sharingOne shot GIG – iterative water-fillingRepeated game

3-D: power + frequency + timeCognitive radio

Page 22: Distributed Power Control and Spectrum Sharing in Wireless Networks

Thank you and Questions?