SlideShare a Scribd company logo
1 of 6
Download to read offline
International Journal of Research in Engineering and Science (IJRES)
ISSN (Online): 2320-9364, ISSN (Print): 2320-9356
www.ijres.org Volume 3 Issue 12 ǁ December. 2015 ǁ PP.14-19
www.ijres.org 14 | Page
Performance Analysis of Massive MIMO Downlink System with
Imperfect Channel State Information
Mingfeng He1
, Liang Yang2
, Huiqin Du1
, Weiping Liu1
1
(College of Information Science and Technology, Jinan University, China)
2
(College of Information Engineering, Guangdong University of Technology, China)
ABSTRACT: We investigate the ergodic sum rate and required transmit power of a single-cell massive
multiple-input multiple-output (MIMO) downlink system. The system considered in this paper is based on two
linear beamforming schemes, that is, maximum ratio transmission (MRT) beamforming and zero-forcing (ZF)
beamforming. What’s more, we use minimum mean square error (MMSE) channel estimation to get imperfect
channel state information (CSI). Compared with the perfect CSI case, both theoretical analysis and simulation
results show that the system performance is different when the imperfect CSI is taken into account.
Keywords -massive MIMO; ergodic sum rate; required transmit power; linear beamforming schemes; MMSE
channel estimation
I. Introduction
With the rapid development of multimedia technology and electronic technology, the mobile internet traffic
surge, more and more sensor equipments and machine-to-machine (M2M) communications are also used in
mobile communication networks. To enhance the business support ability, 5G (5th generation mobile
communication technology) has become a hot topic in the mobile communication field for its high transmission
rate and energy efficiency.
Massive MIMO is a promising approach for the physical layer of 5G system. This technology equips
cellular base stations (BSs) with hundreds of antennas in order to achieve the aim of improving the data rate and
energy efficiency[1] . Since its superior performance, massive MIMO system has been studied extensively.
Reference [2] studied the performance of massive MIMO downlink system using ZF beamforming. Reference
[3] provided the comparison of ZF and MRT performance with assuming that BS has full CSI. Reference[4]
proposed a low-complexity hybrid precoding scheme used in massive MIMO system, the proposed scheme is
proved to approach the performance of the virtually optimal yet practically infeasible full-complexity ZF
precoding. The previous works have been drawn good conclusions about the performance of massive MIMO
system, however, they have not taken imperfect CSI into account, and their results could be more
comprehensive if they consider that full CSI is hardly available by BS in actual scene. Actually owing to the
existence of pilot contamination[5] and latency Effects[6] , BSs in practical application are difficult to obtain
full CSI. As a result, considering imperfect CSI has a certain reference value in perfecting the theory of massive
MIMO.
In this paper, we analysis the ergodic sum rate and required transmit power of a massive MIMO downlink
system using MMSE channel estimation to obtain CSI instead of assuming that the BS has perfect CSI in order
to realize the effectiveness and the energy efficiency of a massive MIMO downlink system with imperfect CSI.
Two common linear beamforming schemes are considered in this paper, that is, MRT and ZF. The simulation
results are compared with the results in Reference[3] and [7] to illustrate the performance difference between
imperfect CSI and perfect CSI.
The rest of the paper is organized as follows. The system model is introduced in Section II. Section III
describes the performance analysis. Section IV gives the simulation results and conclusion of this paper is
provided in Section V.
II. System Model
We consider a single cell massive MIMO downlink system, which includes one BS equipped with M
antennas, and K single-antenna user equipments (UEs) that share the same bandwidth. To make sure that the
linear beamforming schemes make sense,we assume thatM ≫ K.
2.1 Channel Model
Let F be a linear beamforming matrix, that is, F = [f1, f2, …,fk, … , fK], where fk is the beamforming vector
of user k . We define H as the channel matrix, hk is the channel vector between the BS and user k. The received
vector at the users is given by
Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information
www.ijres.org 15 | Page
y = 𝑝 𝑑 𝐇𝐅𝐱 + 𝐧 (1)
wherepd represents the downlink transmission power. x is a K × 1 user data vector where is xk a data symbol of
user k. The noise vector nare independent and identically distributed (i.i.d) complex Gaussian random variables
with zero mean and 1 unit variance, that is,𝐧~𝒞𝒩(0,1). The signal received by the user kafter using the linear
beamforming scheme is given by
𝑦 𝑘 = 𝑝 𝑑 𝐡 𝑘 𝐟 𝑘 𝐱 𝑘 + 𝑝 𝑑 𝐡 𝑘 𝐟𝑖 𝐱 𝑖
𝐾
𝑖=1,𝑖≠𝑘 + 𝒏 (2)
On the right hand side of equation(2), the first part is the desired signal term, the second part is the
interference term of other users, and the third part is the noise.
Using(2), the power of the desired signal can be written as 𝐸 𝑧 𝑘 𝑧 𝑘
𝐻
= 𝑝 𝑑 |𝐡 𝑘 𝐟 𝑘|2
. Assuming that inter-user
are independent, the power of the interference can be written as𝐸 𝐼𝑘 𝐼𝑘
𝐻
= 𝑝 𝑑 |𝐡 𝑘 𝐟𝑖|2𝐾
𝑖=1,𝑖≠𝑘 .Then the signal to
interference plus noise ratio (SINR) of user k can be expressed as[7]
𝑆𝐼𝑁𝑅 𝑘 =
𝑝 𝑑|𝐡 𝑘 𝐟 𝑘|2
𝑝 𝑑 |𝐡 𝑘 𝐟𝑖|2𝐾
𝑖=1,𝑖≠𝑘 +1
(3)
2.2 Channel Estimation
In massive MIMO system, uplink and downlink channels tend to be reciprocal, and the BS can exploit the
channel reciprocity to obtain full CSI theoretically. However, in practice, full CSI may not be directly available
due to pilot contamination and feedback delay.
In order to get finite CSI, we use MMSE channel estimation. The channel matrix can be estimated as
𝐇 = 𝜉𝐇 + 1 − 𝜉2 𝐄 (4)
whereξ is the reliability of the estimation,and 𝐄~𝒞𝒩 0,1 represents the error matrix.
2.3Linear Beamforming Schemes
We consider two classical linear beamforming schemes in this work,which include MRT and ZF.
When perfect CSI is available, the MRT beamformer is given as 𝐅 = 𝐇 𝐻
[8] and the ZF beamformer is given as
𝐅 = 𝐇 𝐻
(𝐇𝐇 𝐻
)−1
[8].In practical application,the beamformer use the estimated channel so that the MRT
beamformer is given as
𝐅 = 𝐇 𝐻
(5)
and the ZF beamformer is given as
𝐅 = 𝐇 𝐻
(𝐇 𝐇 𝐻
)−1
(6)
where𝐇 𝐻
represents the complex conjugate transpose of the estimated channel matrix.
III. Performance Analysis
In (5) and (6), it was shown that channel estimation has great influence on linear bemforming schemes. This
means that imperfect CSI has a great effect on performance of massive MIMO downlink system. In this sction,
we derive the expression for the system performance, which includes ergodic sum rate and required downlink
transmit power.
3.1 Ergodic Sum Rate
Ergodic sum rate can be used to describe the effectiveness of a massive MIMO system. For simply
analyzing the ergodic sum rate of the system, we assume that the total downlink power is fixed and equally
shared among all the users in a single cell.
Using (3), the rate of user k can be expressed as
𝑅 𝑘 = log2(1 + 𝑆𝐼𝑁𝑅 𝑘) (7)
Then for K number of users, the ergodic sum rate is given as
𝑅 𝑠𝑢𝑚 = 𝐸{𝑅 𝑘 }𝐾
𝑘=1 (8)
For the derivations we denote
α =
𝑀
𝐾
(9)
Combining(3)~(9), the ergodic sum rate with MRT and ZF can be respectively expressed as
𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
= 𝐾 ∙ log2(1 +
𝜉2 𝑝 𝑑 𝛼
𝑝 𝑑 +1
) (10)
𝑅 𝑠𝑢𝑚
𝑧𝑓
= 𝐾 ∙ log2[1 +
𝜉2 𝑝 𝑑 𝛼−1
1−𝜉2 𝑝 𝑑+1
] (11)
Set (10) equal to (11), then get
α =
𝑝 𝑑+1
𝜉2∙𝑝 𝑑
(12)
Equation(12) shows that a cross point is existing in MRT and ZF curves, it means that neither MRT nor ZF
achieves higher ergodic sum rate in the full range of α.
Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information
www.ijres.org 16 | Page
3.2 Required downlink transmit power
A communication system is more energy efficient when less transmit power is needed to reach a targeted
rate with satisfactory quality of service (QoS). For simply analyzing the required downlink transmit power of
the massive MIMO system, we assumed that the total downlink transmit power and the ergodic sum rate is
equally divided among all the users.
Changing the form of equation (10), we obtain
𝑝 𝑑
𝑚𝑟𝑡
=
𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
𝐾 −1
𝜉2∙𝛼 −(𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
𝐾 −1)
(13)
Substituting (9) into (13) gives
𝑝 𝑑
𝑚𝑟𝑡
=
𝐾∙(𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
𝐾 −1)
𝜉2∙𝑀 −𝐾∙(𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
𝐾 −1)
(14)
which is the required downlink transmit power with MRT beamforming scheme.
Similarly, changing the form of equation (11), we obtain
𝑝 𝑑
𝑧𝑓
=
𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑧𝑓
𝐾 −1
𝜉2∙(𝛼−1 −[(𝜉2−1)⋅ 𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑧𝑓
𝐾 −1 ]
(15)
Substituting (9) into (15) gives
𝑝 𝑑
𝑧𝑓
=
𝐾∙(𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑧𝑓
𝐾 −1)
𝜉2∙(𝑀−𝐾 −[𝐾⋅(𝜉2−1)⋅ 𝑒
ln 2∙𝑅 𝑠𝑢𝑚
𝑧𝑓
𝐾 −1 ]
(16)
which is the required downlink transmit power with ZF beamforming scheme.
Comparing (14) with (16), it shows that imperfect CSI has a greater effect on ZF.
IV. Simulation Results
In this section, we conduct the simulation using MATLAB software to validate the theoretical analysis in
section III.
Figure 1 depicts the ergodic sum rate versus the number of BS antennas in both perfect CSI and imperfect
CSI cases with the number of mobile users fixed to 5, the 𝜉2
fixed to 0.5 and the BS downlink transmit power
equal to 0dB. The results shows that as the number of BS antennas increase, the ergodic sum rate for MRT and
ZF increases in both perfect CSI and imperfect CSI cases, in addition, perfect CSI case achieves higher ergodic
sum rate than imperfect CSI case. On the other hand,an obvious cross point is existing in imperfect CSI curves.
When the value of M is smaller than the abscissa of the cross point, MRT achieves higher ergodic sum rate and
ZF achieves higher ergodic sum rate when the value of M is larger than the abscissa of the cross point.
Figure 2 demonstrates the ergodic sum rate versus the number of BS antennas in both perfect CSI and
imperfect CSI cases with the number of BS antennas fixed to 100, the 𝜉2
fixed to 0.5 and the BS downlink
transmit power equal to 0dB. The results shows that perfect CSI case achieves higher ergodic sum rate than
imperfect CSI case for both MRT and ZF. Besides, as the number of users increase,the ergodic sum rate for
MRT increases, however, the ergodic sum rate for ZF increases first, then decreases. It means that there is an
optimal number of users for the highest ergodic sum rate when ZF is used. Moreover,imperfect CSI makes the
optimal number of users and its corresponding ergodic sum rate smaller.
Figure 3, 4 and 5 depict the required downlink transmit power versus the number of BS antennas in both
perfect CSI and imperfect CSI cases with the number of mobile users fixed to 10, the 𝜉2
fixed to 0.5 and the
targeted ergodic sum rate is respectively equal to 5bits/s/Hz, 10bits/s/Hz and 15bits/s/Hz. The results in three
figures show that as the number of BS antennas increases,the required downlink transmit power for MRT and
ZF decreases in both perfect CSI and imperfect CSI cases. Furthermore, with increasing the targeted ergodic
sum rate, two MRT curves, which include the perfect CSI one and the imperfect CSI one, become closer with
respect to the ZF curves. It means that the difference of MRT between perfect CSI and imperfect CSI cases is
becoming smaller compared to the ZF one when the ergodic sum rate achieves higher. In other words, the
imperfect CSI has a greater effect of required downlink transmit power on ZF and the effect is more notable
when the targeted ergodic sum rate is higher.
Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information
www.ijres.org 17 | Page
Fig.1Ergodic sum rate versus the number oftransmit antennas with perfect CSI and imperfect CSI at K=5,
𝜉2
=0.5, 𝑝 𝑑 =0dB
Fig.2Ergodic sum rate versus the number of users with perfect CSI and imperfect CSI at M=100, 𝜉2
=0.5,
𝑝 𝑑 =0dB
Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information
www.ijres.org 18 | Page
Fig.3 Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect
CSI at K=10,𝜉2
=0.5,𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
= 𝑅 𝑠𝑢𝑚
𝑧𝑓
= 5𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧
Fig.4Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect
CSI at K=10, 𝜉2
=0.5,𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
= 𝑅 𝑠𝑢𝑚
𝑧𝑓
= 10𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧
Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information
www.ijres.org 19 | Page
Fig.5Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect
CSI at K=10, 𝜉2
=0.5,𝑅 𝑠𝑢𝑚
𝑚𝑟𝑡
= 𝑅 𝑠𝑢𝑚
𝑧𝑓
= 15𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧
V. Conclusion
In this paper, we have analysed the massive MIMO downlink system performance with imperfect CSI,
which included ergodic sum rate and required downlink transmit power. MRT and ZF beamforming schemes
were considered and MMSE channel estimation is used to obtain CSI. We found that neither MRT nor ZF
achieves higher ergodic sum rate in all cases.Besides,against the required downlink transmit power,imperfect
CSI has a greater effect on ZF than MRT when the target ergodic sum rate is fixed. This work have certain
guiding significance for the actual design of massive MIMO system.
VI. Acknowledgements
This work was supported partly by the National High-Tech R&D Program of China (2015AA015501) and
Special Fund Project for the Development of Modern Information Service Industry inGuangdong province.
References
[1] Marzetta T. L., Non cooperative Cellular Wireless with Unlimited Numbers of Base Station Antennas [J], IEEE Trans. Wireless
Commun. , 9(11), 2010, 3590-3600
[2] Zhu Jun , Bhargava Vijay K. , Schober Robert, Secure Downlink Transmission in Massive MIMO System with Zero-Forcing
Precoding[J], Proceedings of 20th European Wireless Conference, 2014, 1-6
[3] Parfait T. , YujunKuang, Jerry K. ,Performance Analysis and Comparison of ZF and MRT Based Downlink Massive MIMO
Systems[J], 2014 Sixth International Conference on Ubiquitous and Future Networks, 2014, 383-388
[4] Le Liang, Wei Xu, Xiaodai Dong, Low-Complexity Hybrid Precoding in Massive Multiuser MIMO Systems[J], Wireless
Communications Letters, IEEE, 3(6),2014, 653-656
[5] Rusek F. , Persson D. , BuonKiong Lau , Larsson E.G. , Marzetta T.L. , Edfors O. , Tufvesson F. , Scaling Up MIMO:
Opportunities and Challenges with Very Large Arrays[J], Signal Processing Magazine, IEEE, 30(1), 2013 ,40-60
[6] Larsson E. ,Edfors O. , Tufvesson F. , Marzetta T. , Massive MIMO for Next Generation Wireless systems[J], Communications
Magazine, IEEE, 52(2), 2014, 186-195
[7] Sooyong Choi, Special Topics:Massive MIMO, A lecture presentation on Massive MIMO, Yonsei University, 2012
[8] Verdu S. , Multiuser Detection[M], Cambridge University Press, 1998

More Related Content

What's hot

VTC-location based channel estimation for massive full-dimensional MIMO systems
VTC-location based channel estimation for massive full-dimensional MIMO systemsVTC-location based channel estimation for massive full-dimensional MIMO systems
VTC-location based channel estimation for massive full-dimensional MIMO systemsQian Han
 
Limitation of Maasive MIMO in Antenna Correlation
Limitation of Maasive MIMO in Antenna CorrelationLimitation of Maasive MIMO in Antenna Correlation
Limitation of Maasive MIMO in Antenna CorrelationVARUN KUMAR
 
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...T. E. BOGALE
 
BER performance simulation in a multi user MIMO Presentation
BER performance simulation in a multi user MIMO PresentationBER performance simulation in a multi user MIMO Presentation
BER performance simulation in a multi user MIMO PresentationVikas Pandey
 
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...Eng. Mohammed Ahmed Siddiqui
 
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...Ayman Alsawah
 
MIMO system (potential candidate for 4G system)
MIMO system (potential candidate for 4G system)MIMO system (potential candidate for 4G system)
MIMO system (potential candidate for 4G system)Virak Sou
 
Mimo tutorial by-fuyun_ling
Mimo tutorial by-fuyun_lingMimo tutorial by-fuyun_ling
Mimo tutorial by-fuyun_lingFuyun Ling
 
LTE Transmission Modes and BeamForming
LTE Transmission Modes and BeamFormingLTE Transmission Modes and BeamForming
LTE Transmission Modes and BeamFormingPraveen Kumar
 
MartinDickThesis
MartinDickThesisMartinDickThesis
MartinDickThesisMartin Dick
 
PhySec_MassiveMIMO
PhySec_MassiveMIMOPhySec_MassiveMIMO
PhySec_MassiveMIMOJun Zhu
 
Massive MIMO and Random Matrix
Massive MIMO and Random MatrixMassive MIMO and Random Matrix
Massive MIMO and Random MatrixVARUN KUMAR
 
Nutaq's TitanMIMO Massive MIMO Testbeds
Nutaq's TitanMIMO Massive MIMO TestbedsNutaq's TitanMIMO Massive MIMO Testbeds
Nutaq's TitanMIMO Massive MIMO TestbedsNutaq
 
BIO Massive MIMO Test Bed
BIO Massive MIMO Test BedBIO Massive MIMO Test Bed
BIO Massive MIMO Test BedAndrew Nix
 

What's hot (20)

VTC-location based channel estimation for massive full-dimensional MIMO systems
VTC-location based channel estimation for massive full-dimensional MIMO systemsVTC-location based channel estimation for massive full-dimensional MIMO systems
VTC-location based channel estimation for massive full-dimensional MIMO systems
 
Limitation of Maasive MIMO in Antenna Correlation
Limitation of Maasive MIMO in Antenna CorrelationLimitation of Maasive MIMO in Antenna Correlation
Limitation of Maasive MIMO in Antenna Correlation
 
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...
Beamforming for Multiuser Massive MIMO Systems: Digital versus Hybrid Analog-...
 
BER performance simulation in a multi user MIMO Presentation
BER performance simulation in a multi user MIMO PresentationBER performance simulation in a multi user MIMO Presentation
BER performance simulation in a multi user MIMO Presentation
 
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...
Comparison between Zero Forcing (ZF) & Maximum Ratio Transmission (MRT) on th...
 
Mimo
MimoMimo
Mimo
 
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...
HIAST-Ayman Alsawah Lecture on Multiple-Antenna Techniques in Advanced Mobile...
 
MIMO system (potential candidate for 4G system)
MIMO system (potential candidate for 4G system)MIMO system (potential candidate for 4G system)
MIMO system (potential candidate for 4G system)
 
VIJAY_Internship_ppt
VIJAY_Internship_pptVIJAY_Internship_ppt
VIJAY_Internship_ppt
 
Mimo tutorial by-fuyun_ling
Mimo tutorial by-fuyun_lingMimo tutorial by-fuyun_ling
Mimo tutorial by-fuyun_ling
 
LTE Transmission Modes and BeamForming
LTE Transmission Modes and BeamFormingLTE Transmission Modes and BeamForming
LTE Transmission Modes and BeamForming
 
MartinDickThesis
MartinDickThesisMartinDickThesis
MartinDickThesis
 
Massive mimo
Massive mimoMassive mimo
Massive mimo
 
PhySec_MassiveMIMO
PhySec_MassiveMIMOPhySec_MassiveMIMO
PhySec_MassiveMIMO
 
Massive MIMO and Random Matrix
Massive MIMO and Random MatrixMassive MIMO and Random Matrix
Massive MIMO and Random Matrix
 
Mimo [new]
Mimo [new]Mimo [new]
Mimo [new]
 
Nutaq's TitanMIMO Massive MIMO Testbeds
Nutaq's TitanMIMO Massive MIMO TestbedsNutaq's TitanMIMO Massive MIMO Testbeds
Nutaq's TitanMIMO Massive MIMO Testbeds
 
BLAST
BLASTBLAST
BLAST
 
BIO Massive MIMO Test Bed
BIO Massive MIMO Test BedBIO Massive MIMO Test Bed
BIO Massive MIMO Test Bed
 
Mimo radar(1)
Mimo radar(1)Mimo radar(1)
Mimo radar(1)
 

Viewers also liked

TCP Fairness for Uplink and Downlink Flows in WLANs
TCP Fairness for Uplink and Downlink Flows in WLANsTCP Fairness for Uplink and Downlink Flows in WLANs
TCP Fairness for Uplink and Downlink Flows in WLANsambitlick
 
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...T. E. BOGALE
 
Introduction to Massive Mimo
Introduction to Massive MimoIntroduction to Massive Mimo
Introduction to Massive MimoAhmed Nasser Agag
 
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...T. E. BOGALE
 
MSE uplink-downlink duality of MIMO systems under imperfect CSI
MSE uplink-downlink duality of MIMO systems under imperfect CSIMSE uplink-downlink duality of MIMO systems under imperfect CSI
MSE uplink-downlink duality of MIMO systems under imperfect CSIT. E. BOGALE
 

Viewers also liked (7)

5G: Your Questions Answered
5G: Your Questions Answered5G: Your Questions Answered
5G: Your Questions Answered
 
TCP Fairness for Uplink and Downlink Flows in WLANs
TCP Fairness for Uplink and Downlink Flows in WLANsTCP Fairness for Uplink and Downlink Flows in WLANs
TCP Fairness for Uplink and Downlink Flows in WLANs
 
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...
Weighted Sum Rate Optimization for Downlink Multiuser MIMO Systems with per A...
 
MIMO.ppt (2) 2
MIMO.ppt (2) 2MIMO.ppt (2) 2
MIMO.ppt (2) 2
 
Introduction to Massive Mimo
Introduction to Massive MimoIntroduction to Massive Mimo
Introduction to Massive Mimo
 
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...
Transceiver design for single-cell and multi-cell downlink multiuser MIMO sys...
 
MSE uplink-downlink duality of MIMO systems under imperfect CSI
MSE uplink-downlink duality of MIMO systems under imperfect CSIMSE uplink-downlink duality of MIMO systems under imperfect CSI
MSE uplink-downlink duality of MIMO systems under imperfect CSI
 

Similar to Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information

A Weighted Duality based Formulation of MIMO Systems
A Weighted Duality based Formulation of MIMO SystemsA Weighted Duality based Formulation of MIMO Systems
A Weighted Duality based Formulation of MIMO SystemsIJERA Editor
 
Effect of Scattering Parameters On MIMO System Capacity
Effect of Scattering Parameters On MIMO System CapacityEffect of Scattering Parameters On MIMO System Capacity
Effect of Scattering Parameters On MIMO System CapacityIOSR Journals
 
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...IJECEIAES
 
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...IRJET Journal
 
International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)ijceronline
 
Effect on Channel Capacity of Multi-User MIMO System in Crowded Area
Effect on Channel Capacity of Multi-User MIMO System in Crowded AreaEffect on Channel Capacity of Multi-User MIMO System in Crowded Area
Effect on Channel Capacity of Multi-User MIMO System in Crowded AreaIJEEE
 
On limits of Wireless Communications in a Fading Environment: a General Param...
On limits of Wireless Communications in a Fading Environment: a General Param...On limits of Wireless Communications in a Fading Environment: a General Param...
On limits of Wireless Communications in a Fading Environment: a General Param...ijeei-iaes
 
Performance evaluation with a
Performance evaluation with aPerformance evaluation with a
Performance evaluation with aijmnct
 
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...IOSRJECE
 
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...cscpconf
 
Influence of channel fading correlation on performance of detector algorithms...
Influence of channel fading correlation on performance of detector algorithms...Influence of channel fading correlation on performance of detector algorithms...
Influence of channel fading correlation on performance of detector algorithms...csandit
 
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...ijwmn
 
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...IJCNCJournal
 
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...SINR Analysis and Interference Management of Macrocell Cellular Networks in D...
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...umere15
 
Optimum Network Reconfiguration using Grey Wolf Optimizer
Optimum Network Reconfiguration using Grey Wolf OptimizerOptimum Network Reconfiguration using Grey Wolf Optimizer
Optimum Network Reconfiguration using Grey Wolf OptimizerTELKOMNIKA JOURNAL
 
BER Performance of MU-MIMO System using Dirty Paper Coding
BER Performance of MU-MIMO System using Dirty Paper CodingBER Performance of MU-MIMO System using Dirty Paper Coding
BER Performance of MU-MIMO System using Dirty Paper CodingIJEEE
 

Similar to Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information (20)

A Weighted Duality based Formulation of MIMO Systems
A Weighted Duality based Formulation of MIMO SystemsA Weighted Duality based Formulation of MIMO Systems
A Weighted Duality based Formulation of MIMO Systems
 
Effect of Scattering Parameters On MIMO System Capacity
Effect of Scattering Parameters On MIMO System CapacityEffect of Scattering Parameters On MIMO System Capacity
Effect of Scattering Parameters On MIMO System Capacity
 
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...
Beam division multiple access for millimeter wave massive MIMO: Hybrid zero-f...
 
Ko3518201823
Ko3518201823Ko3518201823
Ko3518201823
 
G1034247
G1034247G1034247
G1034247
 
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...
An investigation of Max-Min Fairness Power Control in Cell-Free Massive MIMO ...
 
International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)
 
Effect on Channel Capacity of Multi-User MIMO System in Crowded Area
Effect on Channel Capacity of Multi-User MIMO System in Crowded AreaEffect on Channel Capacity of Multi-User MIMO System in Crowded Area
Effect on Channel Capacity of Multi-User MIMO System in Crowded Area
 
On limits of Wireless Communications in a Fading Environment: a General Param...
On limits of Wireless Communications in a Fading Environment: a General Param...On limits of Wireless Communications in a Fading Environment: a General Param...
On limits of Wireless Communications in a Fading Environment: a General Param...
 
Performance evaluation with a
Performance evaluation with aPerformance evaluation with a
Performance evaluation with a
 
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...
Broad-Spectrum Model for Sharing Analysis between IMTAdvanced Systems and FSS...
 
D010512126
D010512126D010512126
D010512126
 
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...
INFLUENCE OF CHANNEL FADING CORRELATION ON PERFORMANCE OF DETECTOR ALGORITHMS...
 
Influence of channel fading correlation on performance of detector algorithms...
Influence of channel fading correlation on performance of detector algorithms...Influence of channel fading correlation on performance of detector algorithms...
Influence of channel fading correlation on performance of detector algorithms...
 
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...
BER Performance of Antenna Array-Based Receiver using Multi-user Detection in...
 
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...
IMPROVEMENT OF LTE DOWNLINK SYSTEM PERFORMANCES USING THE LAGRANGE POLYNOMIAL...
 
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...SINR Analysis and Interference Management of Macrocell Cellular Networks in D...
SINR Analysis and Interference Management of Macrocell Cellular Networks in D...
 
Be35317323
Be35317323Be35317323
Be35317323
 
Optimum Network Reconfiguration using Grey Wolf Optimizer
Optimum Network Reconfiguration using Grey Wolf OptimizerOptimum Network Reconfiguration using Grey Wolf Optimizer
Optimum Network Reconfiguration using Grey Wolf Optimizer
 
BER Performance of MU-MIMO System using Dirty Paper Coding
BER Performance of MU-MIMO System using Dirty Paper CodingBER Performance of MU-MIMO System using Dirty Paper Coding
BER Performance of MU-MIMO System using Dirty Paper Coding
 

More from IJRES Journal

Exploratory study on the use of crushed cockle shell as partial sand replacem...
Exploratory study on the use of crushed cockle shell as partial sand replacem...Exploratory study on the use of crushed cockle shell as partial sand replacem...
Exploratory study on the use of crushed cockle shell as partial sand replacem...IJRES Journal
 
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...IJRES Journal
 
Review: Nonlinear Techniques for Analysis of Heart Rate Variability
Review: Nonlinear Techniques for Analysis of Heart Rate VariabilityReview: Nonlinear Techniques for Analysis of Heart Rate Variability
Review: Nonlinear Techniques for Analysis of Heart Rate VariabilityIJRES Journal
 
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...IJRES Journal
 
Study and evaluation for different types of Sudanese crude oil properties
Study and evaluation for different types of Sudanese crude oil propertiesStudy and evaluation for different types of Sudanese crude oil properties
Study and evaluation for different types of Sudanese crude oil propertiesIJRES Journal
 
A Short Report on Different Wavelets and Their Structures
A Short Report on Different Wavelets and Their StructuresA Short Report on Different Wavelets and Their Structures
A Short Report on Different Wavelets and Their StructuresIJRES Journal
 
A Case Study on Academic Services Application Using Agile Methodology for Mob...
A Case Study on Academic Services Application Using Agile Methodology for Mob...A Case Study on Academic Services Application Using Agile Methodology for Mob...
A Case Study on Academic Services Application Using Agile Methodology for Mob...IJRES Journal
 
Wear Analysis on Cylindrical Cam with Flexible Rod
Wear Analysis on Cylindrical Cam with Flexible RodWear Analysis on Cylindrical Cam with Flexible Rod
Wear Analysis on Cylindrical Cam with Flexible RodIJRES Journal
 
DDOS Attacks-A Stealthy Way of Implementation and Detection
DDOS Attacks-A Stealthy Way of Implementation and DetectionDDOS Attacks-A Stealthy Way of Implementation and Detection
DDOS Attacks-A Stealthy Way of Implementation and DetectionIJRES Journal
 
An improved fading Kalman filter in the application of BDS dynamic positioning
An improved fading Kalman filter in the application of BDS dynamic positioningAn improved fading Kalman filter in the application of BDS dynamic positioning
An improved fading Kalman filter in the application of BDS dynamic positioningIJRES Journal
 
Positioning Error Analysis and Compensation of Differential Precision Workbench
Positioning Error Analysis and Compensation of Differential Precision WorkbenchPositioning Error Analysis and Compensation of Differential Precision Workbench
Positioning Error Analysis and Compensation of Differential Precision WorkbenchIJRES Journal
 
Status of Heavy metal pollution in Mithi river: Then and Now
Status of Heavy metal pollution in Mithi river: Then and NowStatus of Heavy metal pollution in Mithi river: Then and Now
Status of Heavy metal pollution in Mithi river: Then and NowIJRES Journal
 
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...IJRES Journal
 
Experimental study on critical closing pressure of mudstone fractured reservoirs
Experimental study on critical closing pressure of mudstone fractured reservoirsExperimental study on critical closing pressure of mudstone fractured reservoirs
Experimental study on critical closing pressure of mudstone fractured reservoirsIJRES Journal
 
Correlation Analysis of Tool Wear and Cutting Sound Signal
Correlation Analysis of Tool Wear and Cutting Sound SignalCorrelation Analysis of Tool Wear and Cutting Sound Signal
Correlation Analysis of Tool Wear and Cutting Sound SignalIJRES Journal
 
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...IJRES Journal
 
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...IJRES Journal
 
A novel high-precision curvature-compensated CMOS bandgap reference without u...
A novel high-precision curvature-compensated CMOS bandgap reference without u...A novel high-precision curvature-compensated CMOS bandgap reference without u...
A novel high-precision curvature-compensated CMOS bandgap reference without u...IJRES Journal
 
Structural aspect on carbon dioxide capture in nanotubes
Structural aspect on carbon dioxide capture in nanotubesStructural aspect on carbon dioxide capture in nanotubes
Structural aspect on carbon dioxide capture in nanotubesIJRES Journal
 
Thesummaryabout fuzzy control parameters selected based on brake driver inten...
Thesummaryabout fuzzy control parameters selected based on brake driver inten...Thesummaryabout fuzzy control parameters selected based on brake driver inten...
Thesummaryabout fuzzy control parameters selected based on brake driver inten...IJRES Journal
 

More from IJRES Journal (20)

Exploratory study on the use of crushed cockle shell as partial sand replacem...
Exploratory study on the use of crushed cockle shell as partial sand replacem...Exploratory study on the use of crushed cockle shell as partial sand replacem...
Exploratory study on the use of crushed cockle shell as partial sand replacem...
 
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...
Congenital Malaria: Correlation of Umbilical Cord Plasmodium falciparum Paras...
 
Review: Nonlinear Techniques for Analysis of Heart Rate Variability
Review: Nonlinear Techniques for Analysis of Heart Rate VariabilityReview: Nonlinear Techniques for Analysis of Heart Rate Variability
Review: Nonlinear Techniques for Analysis of Heart Rate Variability
 
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...
Dynamic Modeling for Gas Phase Propylene Copolymerization in a Fluidized Bed ...
 
Study and evaluation for different types of Sudanese crude oil properties
Study and evaluation for different types of Sudanese crude oil propertiesStudy and evaluation for different types of Sudanese crude oil properties
Study and evaluation for different types of Sudanese crude oil properties
 
A Short Report on Different Wavelets and Their Structures
A Short Report on Different Wavelets and Their StructuresA Short Report on Different Wavelets and Their Structures
A Short Report on Different Wavelets and Their Structures
 
A Case Study on Academic Services Application Using Agile Methodology for Mob...
A Case Study on Academic Services Application Using Agile Methodology for Mob...A Case Study on Academic Services Application Using Agile Methodology for Mob...
A Case Study on Academic Services Application Using Agile Methodology for Mob...
 
Wear Analysis on Cylindrical Cam with Flexible Rod
Wear Analysis on Cylindrical Cam with Flexible RodWear Analysis on Cylindrical Cam with Flexible Rod
Wear Analysis on Cylindrical Cam with Flexible Rod
 
DDOS Attacks-A Stealthy Way of Implementation and Detection
DDOS Attacks-A Stealthy Way of Implementation and DetectionDDOS Attacks-A Stealthy Way of Implementation and Detection
DDOS Attacks-A Stealthy Way of Implementation and Detection
 
An improved fading Kalman filter in the application of BDS dynamic positioning
An improved fading Kalman filter in the application of BDS dynamic positioningAn improved fading Kalman filter in the application of BDS dynamic positioning
An improved fading Kalman filter in the application of BDS dynamic positioning
 
Positioning Error Analysis and Compensation of Differential Precision Workbench
Positioning Error Analysis and Compensation of Differential Precision WorkbenchPositioning Error Analysis and Compensation of Differential Precision Workbench
Positioning Error Analysis and Compensation of Differential Precision Workbench
 
Status of Heavy metal pollution in Mithi river: Then and Now
Status of Heavy metal pollution in Mithi river: Then and NowStatus of Heavy metal pollution in Mithi river: Then and Now
Status of Heavy metal pollution in Mithi river: Then and Now
 
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...
The Low-Temperature Radiant Floor Heating System Design and Experimental Stud...
 
Experimental study on critical closing pressure of mudstone fractured reservoirs
Experimental study on critical closing pressure of mudstone fractured reservoirsExperimental study on critical closing pressure of mudstone fractured reservoirs
Experimental study on critical closing pressure of mudstone fractured reservoirs
 
Correlation Analysis of Tool Wear and Cutting Sound Signal
Correlation Analysis of Tool Wear and Cutting Sound SignalCorrelation Analysis of Tool Wear and Cutting Sound Signal
Correlation Analysis of Tool Wear and Cutting Sound Signal
 
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...
Reduce Resources for Privacy in Mobile Cloud Computing Using Blowfish and DSA...
 
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...
Resistance of Dryland Rice to Stem Borer (Scirpophaga incertulas Wlk.) Using ...
 
A novel high-precision curvature-compensated CMOS bandgap reference without u...
A novel high-precision curvature-compensated CMOS bandgap reference without u...A novel high-precision curvature-compensated CMOS bandgap reference without u...
A novel high-precision curvature-compensated CMOS bandgap reference without u...
 
Structural aspect on carbon dioxide capture in nanotubes
Structural aspect on carbon dioxide capture in nanotubesStructural aspect on carbon dioxide capture in nanotubes
Structural aspect on carbon dioxide capture in nanotubes
 
Thesummaryabout fuzzy control parameters selected based on brake driver inten...
Thesummaryabout fuzzy control parameters selected based on brake driver inten...Thesummaryabout fuzzy control parameters selected based on brake driver inten...
Thesummaryabout fuzzy control parameters selected based on brake driver inten...
 

Recently uploaded

Robotics Group 10 (Control Schemes) cse.pdf
Robotics Group 10  (Control Schemes) cse.pdfRobotics Group 10  (Control Schemes) cse.pdf
Robotics Group 10 (Control Schemes) cse.pdfsahilsajad201
 
Curve setting (Basic Mine Surveying)_MI10412MI.pptx
Curve setting (Basic Mine Surveying)_MI10412MI.pptxCurve setting (Basic Mine Surveying)_MI10412MI.pptx
Curve setting (Basic Mine Surveying)_MI10412MI.pptxRomil Mishra
 
Energy Awareness training ppt for manufacturing process.pptx
Energy Awareness training ppt for manufacturing process.pptxEnergy Awareness training ppt for manufacturing process.pptx
Energy Awareness training ppt for manufacturing process.pptxsiddharthjain2303
 
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdfDEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdfAkritiPradhan2
 
STATE TRANSITION DIAGRAM in psoc subject
STATE TRANSITION DIAGRAM in psoc subjectSTATE TRANSITION DIAGRAM in psoc subject
STATE TRANSITION DIAGRAM in psoc subjectGayathriM270621
 
11. Properties of Liquid Fuels in Energy Engineering.pdf
11. Properties of Liquid Fuels in Energy Engineering.pdf11. Properties of Liquid Fuels in Energy Engineering.pdf
11. Properties of Liquid Fuels in Energy Engineering.pdfHafizMudaserAhmad
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionMebane Rash
 
Novel 3D-Printed Soft Linear and Bending Actuators
Novel 3D-Printed Soft Linear and Bending ActuatorsNovel 3D-Printed Soft Linear and Bending Actuators
Novel 3D-Printed Soft Linear and Bending ActuatorsResearcher Researcher
 
TEST CASE GENERATION GENERATION BLOCK BOX APPROACH
TEST CASE GENERATION GENERATION BLOCK BOX APPROACHTEST CASE GENERATION GENERATION BLOCK BOX APPROACH
TEST CASE GENERATION GENERATION BLOCK BOX APPROACHSneha Padhiar
 
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptx
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptxTriangulation survey (Basic Mine Surveying)_MI10412MI.pptx
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptxRomil Mishra
 
70 POWER PLANT IAE V2500 technical training
70 POWER PLANT IAE V2500 technical training70 POWER PLANT IAE V2500 technical training
70 POWER PLANT IAE V2500 technical trainingGladiatorsKasper
 
List of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfList of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfisabel213075
 
Artificial Intelligence in Power System overview
Artificial Intelligence in Power System overviewArtificial Intelligence in Power System overview
Artificial Intelligence in Power System overviewsandhya757531
 
Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfModule-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfManish Kumar
 
Levelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodLevelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodManicka Mamallan Andavar
 
"Exploring the Essential Functions and Design Considerations of Spillways in ...
"Exploring the Essential Functions and Design Considerations of Spillways in ..."Exploring the Essential Functions and Design Considerations of Spillways in ...
"Exploring the Essential Functions and Design Considerations of Spillways in ...Erbil Polytechnic University
 
Immutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfImmutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfDrew Moseley
 
multiple access in wireless communication
multiple access in wireless communicationmultiple access in wireless communication
multiple access in wireless communicationpanditadesh123
 
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Sumanth A
 
CS 3251 Programming in c all unit notes pdf
CS 3251 Programming in c all unit notes pdfCS 3251 Programming in c all unit notes pdf
CS 3251 Programming in c all unit notes pdfBalamuruganV28
 

Recently uploaded (20)

Robotics Group 10 (Control Schemes) cse.pdf
Robotics Group 10  (Control Schemes) cse.pdfRobotics Group 10  (Control Schemes) cse.pdf
Robotics Group 10 (Control Schemes) cse.pdf
 
Curve setting (Basic Mine Surveying)_MI10412MI.pptx
Curve setting (Basic Mine Surveying)_MI10412MI.pptxCurve setting (Basic Mine Surveying)_MI10412MI.pptx
Curve setting (Basic Mine Surveying)_MI10412MI.pptx
 
Energy Awareness training ppt for manufacturing process.pptx
Energy Awareness training ppt for manufacturing process.pptxEnergy Awareness training ppt for manufacturing process.pptx
Energy Awareness training ppt for manufacturing process.pptx
 
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdfDEVICE DRIVERS AND INTERRUPTS  SERVICE MECHANISM.pdf
DEVICE DRIVERS AND INTERRUPTS SERVICE MECHANISM.pdf
 
STATE TRANSITION DIAGRAM in psoc subject
STATE TRANSITION DIAGRAM in psoc subjectSTATE TRANSITION DIAGRAM in psoc subject
STATE TRANSITION DIAGRAM in psoc subject
 
11. Properties of Liquid Fuels in Energy Engineering.pdf
11. Properties of Liquid Fuels in Energy Engineering.pdf11. Properties of Liquid Fuels in Energy Engineering.pdf
11. Properties of Liquid Fuels in Energy Engineering.pdf
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of Action
 
Novel 3D-Printed Soft Linear and Bending Actuators
Novel 3D-Printed Soft Linear and Bending ActuatorsNovel 3D-Printed Soft Linear and Bending Actuators
Novel 3D-Printed Soft Linear and Bending Actuators
 
TEST CASE GENERATION GENERATION BLOCK BOX APPROACH
TEST CASE GENERATION GENERATION BLOCK BOX APPROACHTEST CASE GENERATION GENERATION BLOCK BOX APPROACH
TEST CASE GENERATION GENERATION BLOCK BOX APPROACH
 
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptx
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptxTriangulation survey (Basic Mine Surveying)_MI10412MI.pptx
Triangulation survey (Basic Mine Surveying)_MI10412MI.pptx
 
70 POWER PLANT IAE V2500 technical training
70 POWER PLANT IAE V2500 technical training70 POWER PLANT IAE V2500 technical training
70 POWER PLANT IAE V2500 technical training
 
List of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdfList of Accredited Concrete Batching Plant.pdf
List of Accredited Concrete Batching Plant.pdf
 
Artificial Intelligence in Power System overview
Artificial Intelligence in Power System overviewArtificial Intelligence in Power System overview
Artificial Intelligence in Power System overview
 
Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdfModule-1-(Building Acoustics) Noise Control (Unit-3). pdf
Module-1-(Building Acoustics) Noise Control (Unit-3). pdf
 
Levelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument methodLevelling - Rise and fall - Height of instrument method
Levelling - Rise and fall - Height of instrument method
 
"Exploring the Essential Functions and Design Considerations of Spillways in ...
"Exploring the Essential Functions and Design Considerations of Spillways in ..."Exploring the Essential Functions and Design Considerations of Spillways in ...
"Exploring the Essential Functions and Design Considerations of Spillways in ...
 
Immutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdfImmutable Image-Based Operating Systems - EW2024.pdf
Immutable Image-Based Operating Systems - EW2024.pdf
 
multiple access in wireless communication
multiple access in wireless communicationmultiple access in wireless communication
multiple access in wireless communication
 
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
Robotics-Asimov's Laws, Mechanical Subsystems, Robot Kinematics, Robot Dynami...
 
CS 3251 Programming in c all unit notes pdf
CS 3251 Programming in c all unit notes pdfCS 3251 Programming in c all unit notes pdf
CS 3251 Programming in c all unit notes pdf
 

Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information

  • 1. International Journal of Research in Engineering and Science (IJRES) ISSN (Online): 2320-9364, ISSN (Print): 2320-9356 www.ijres.org Volume 3 Issue 12 ǁ December. 2015 ǁ PP.14-19 www.ijres.org 14 | Page Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information Mingfeng He1 , Liang Yang2 , Huiqin Du1 , Weiping Liu1 1 (College of Information Science and Technology, Jinan University, China) 2 (College of Information Engineering, Guangdong University of Technology, China) ABSTRACT: We investigate the ergodic sum rate and required transmit power of a single-cell massive multiple-input multiple-output (MIMO) downlink system. The system considered in this paper is based on two linear beamforming schemes, that is, maximum ratio transmission (MRT) beamforming and zero-forcing (ZF) beamforming. What’s more, we use minimum mean square error (MMSE) channel estimation to get imperfect channel state information (CSI). Compared with the perfect CSI case, both theoretical analysis and simulation results show that the system performance is different when the imperfect CSI is taken into account. Keywords -massive MIMO; ergodic sum rate; required transmit power; linear beamforming schemes; MMSE channel estimation I. Introduction With the rapid development of multimedia technology and electronic technology, the mobile internet traffic surge, more and more sensor equipments and machine-to-machine (M2M) communications are also used in mobile communication networks. To enhance the business support ability, 5G (5th generation mobile communication technology) has become a hot topic in the mobile communication field for its high transmission rate and energy efficiency. Massive MIMO is a promising approach for the physical layer of 5G system. This technology equips cellular base stations (BSs) with hundreds of antennas in order to achieve the aim of improving the data rate and energy efficiency[1] . Since its superior performance, massive MIMO system has been studied extensively. Reference [2] studied the performance of massive MIMO downlink system using ZF beamforming. Reference [3] provided the comparison of ZF and MRT performance with assuming that BS has full CSI. Reference[4] proposed a low-complexity hybrid precoding scheme used in massive MIMO system, the proposed scheme is proved to approach the performance of the virtually optimal yet practically infeasible full-complexity ZF precoding. The previous works have been drawn good conclusions about the performance of massive MIMO system, however, they have not taken imperfect CSI into account, and their results could be more comprehensive if they consider that full CSI is hardly available by BS in actual scene. Actually owing to the existence of pilot contamination[5] and latency Effects[6] , BSs in practical application are difficult to obtain full CSI. As a result, considering imperfect CSI has a certain reference value in perfecting the theory of massive MIMO. In this paper, we analysis the ergodic sum rate and required transmit power of a massive MIMO downlink system using MMSE channel estimation to obtain CSI instead of assuming that the BS has perfect CSI in order to realize the effectiveness and the energy efficiency of a massive MIMO downlink system with imperfect CSI. Two common linear beamforming schemes are considered in this paper, that is, MRT and ZF. The simulation results are compared with the results in Reference[3] and [7] to illustrate the performance difference between imperfect CSI and perfect CSI. The rest of the paper is organized as follows. The system model is introduced in Section II. Section III describes the performance analysis. Section IV gives the simulation results and conclusion of this paper is provided in Section V. II. System Model We consider a single cell massive MIMO downlink system, which includes one BS equipped with M antennas, and K single-antenna user equipments (UEs) that share the same bandwidth. To make sure that the linear beamforming schemes make sense,we assume thatM ≫ K. 2.1 Channel Model Let F be a linear beamforming matrix, that is, F = [f1, f2, …,fk, … , fK], where fk is the beamforming vector of user k . We define H as the channel matrix, hk is the channel vector between the BS and user k. The received vector at the users is given by
  • 2. Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information www.ijres.org 15 | Page y = 𝑝 𝑑 𝐇𝐅𝐱 + 𝐧 (1) wherepd represents the downlink transmission power. x is a K × 1 user data vector where is xk a data symbol of user k. The noise vector nare independent and identically distributed (i.i.d) complex Gaussian random variables with zero mean and 1 unit variance, that is,𝐧~𝒞𝒩(0,1). The signal received by the user kafter using the linear beamforming scheme is given by 𝑦 𝑘 = 𝑝 𝑑 𝐡 𝑘 𝐟 𝑘 𝐱 𝑘 + 𝑝 𝑑 𝐡 𝑘 𝐟𝑖 𝐱 𝑖 𝐾 𝑖=1,𝑖≠𝑘 + 𝒏 (2) On the right hand side of equation(2), the first part is the desired signal term, the second part is the interference term of other users, and the third part is the noise. Using(2), the power of the desired signal can be written as 𝐸 𝑧 𝑘 𝑧 𝑘 𝐻 = 𝑝 𝑑 |𝐡 𝑘 𝐟 𝑘|2 . Assuming that inter-user are independent, the power of the interference can be written as𝐸 𝐼𝑘 𝐼𝑘 𝐻 = 𝑝 𝑑 |𝐡 𝑘 𝐟𝑖|2𝐾 𝑖=1,𝑖≠𝑘 .Then the signal to interference plus noise ratio (SINR) of user k can be expressed as[7] 𝑆𝐼𝑁𝑅 𝑘 = 𝑝 𝑑|𝐡 𝑘 𝐟 𝑘|2 𝑝 𝑑 |𝐡 𝑘 𝐟𝑖|2𝐾 𝑖=1,𝑖≠𝑘 +1 (3) 2.2 Channel Estimation In massive MIMO system, uplink and downlink channels tend to be reciprocal, and the BS can exploit the channel reciprocity to obtain full CSI theoretically. However, in practice, full CSI may not be directly available due to pilot contamination and feedback delay. In order to get finite CSI, we use MMSE channel estimation. The channel matrix can be estimated as 𝐇 = 𝜉𝐇 + 1 − 𝜉2 𝐄 (4) whereξ is the reliability of the estimation,and 𝐄~𝒞𝒩 0,1 represents the error matrix. 2.3Linear Beamforming Schemes We consider two classical linear beamforming schemes in this work,which include MRT and ZF. When perfect CSI is available, the MRT beamformer is given as 𝐅 = 𝐇 𝐻 [8] and the ZF beamformer is given as 𝐅 = 𝐇 𝐻 (𝐇𝐇 𝐻 )−1 [8].In practical application,the beamformer use the estimated channel so that the MRT beamformer is given as 𝐅 = 𝐇 𝐻 (5) and the ZF beamformer is given as 𝐅 = 𝐇 𝐻 (𝐇 𝐇 𝐻 )−1 (6) where𝐇 𝐻 represents the complex conjugate transpose of the estimated channel matrix. III. Performance Analysis In (5) and (6), it was shown that channel estimation has great influence on linear bemforming schemes. This means that imperfect CSI has a great effect on performance of massive MIMO downlink system. In this sction, we derive the expression for the system performance, which includes ergodic sum rate and required downlink transmit power. 3.1 Ergodic Sum Rate Ergodic sum rate can be used to describe the effectiveness of a massive MIMO system. For simply analyzing the ergodic sum rate of the system, we assume that the total downlink power is fixed and equally shared among all the users in a single cell. Using (3), the rate of user k can be expressed as 𝑅 𝑘 = log2(1 + 𝑆𝐼𝑁𝑅 𝑘) (7) Then for K number of users, the ergodic sum rate is given as 𝑅 𝑠𝑢𝑚 = 𝐸{𝑅 𝑘 }𝐾 𝑘=1 (8) For the derivations we denote α = 𝑀 𝐾 (9) Combining(3)~(9), the ergodic sum rate with MRT and ZF can be respectively expressed as 𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 = 𝐾 ∙ log2(1 + 𝜉2 𝑝 𝑑 𝛼 𝑝 𝑑 +1 ) (10) 𝑅 𝑠𝑢𝑚 𝑧𝑓 = 𝐾 ∙ log2[1 + 𝜉2 𝑝 𝑑 𝛼−1 1−𝜉2 𝑝 𝑑+1 ] (11) Set (10) equal to (11), then get α = 𝑝 𝑑+1 𝜉2∙𝑝 𝑑 (12) Equation(12) shows that a cross point is existing in MRT and ZF curves, it means that neither MRT nor ZF achieves higher ergodic sum rate in the full range of α.
  • 3. Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information www.ijres.org 16 | Page 3.2 Required downlink transmit power A communication system is more energy efficient when less transmit power is needed to reach a targeted rate with satisfactory quality of service (QoS). For simply analyzing the required downlink transmit power of the massive MIMO system, we assumed that the total downlink transmit power and the ergodic sum rate is equally divided among all the users. Changing the form of equation (10), we obtain 𝑝 𝑑 𝑚𝑟𝑡 = 𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 𝐾 −1 𝜉2∙𝛼 −(𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 𝐾 −1) (13) Substituting (9) into (13) gives 𝑝 𝑑 𝑚𝑟𝑡 = 𝐾∙(𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 𝐾 −1) 𝜉2∙𝑀 −𝐾∙(𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 𝐾 −1) (14) which is the required downlink transmit power with MRT beamforming scheme. Similarly, changing the form of equation (11), we obtain 𝑝 𝑑 𝑧𝑓 = 𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑧𝑓 𝐾 −1 𝜉2∙(𝛼−1 −[(𝜉2−1)⋅ 𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑧𝑓 𝐾 −1 ] (15) Substituting (9) into (15) gives 𝑝 𝑑 𝑧𝑓 = 𝐾∙(𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑧𝑓 𝐾 −1) 𝜉2∙(𝑀−𝐾 −[𝐾⋅(𝜉2−1)⋅ 𝑒 ln 2∙𝑅 𝑠𝑢𝑚 𝑧𝑓 𝐾 −1 ] (16) which is the required downlink transmit power with ZF beamforming scheme. Comparing (14) with (16), it shows that imperfect CSI has a greater effect on ZF. IV. Simulation Results In this section, we conduct the simulation using MATLAB software to validate the theoretical analysis in section III. Figure 1 depicts the ergodic sum rate versus the number of BS antennas in both perfect CSI and imperfect CSI cases with the number of mobile users fixed to 5, the 𝜉2 fixed to 0.5 and the BS downlink transmit power equal to 0dB. The results shows that as the number of BS antennas increase, the ergodic sum rate for MRT and ZF increases in both perfect CSI and imperfect CSI cases, in addition, perfect CSI case achieves higher ergodic sum rate than imperfect CSI case. On the other hand,an obvious cross point is existing in imperfect CSI curves. When the value of M is smaller than the abscissa of the cross point, MRT achieves higher ergodic sum rate and ZF achieves higher ergodic sum rate when the value of M is larger than the abscissa of the cross point. Figure 2 demonstrates the ergodic sum rate versus the number of BS antennas in both perfect CSI and imperfect CSI cases with the number of BS antennas fixed to 100, the 𝜉2 fixed to 0.5 and the BS downlink transmit power equal to 0dB. The results shows that perfect CSI case achieves higher ergodic sum rate than imperfect CSI case for both MRT and ZF. Besides, as the number of users increase,the ergodic sum rate for MRT increases, however, the ergodic sum rate for ZF increases first, then decreases. It means that there is an optimal number of users for the highest ergodic sum rate when ZF is used. Moreover,imperfect CSI makes the optimal number of users and its corresponding ergodic sum rate smaller. Figure 3, 4 and 5 depict the required downlink transmit power versus the number of BS antennas in both perfect CSI and imperfect CSI cases with the number of mobile users fixed to 10, the 𝜉2 fixed to 0.5 and the targeted ergodic sum rate is respectively equal to 5bits/s/Hz, 10bits/s/Hz and 15bits/s/Hz. The results in three figures show that as the number of BS antennas increases,the required downlink transmit power for MRT and ZF decreases in both perfect CSI and imperfect CSI cases. Furthermore, with increasing the targeted ergodic sum rate, two MRT curves, which include the perfect CSI one and the imperfect CSI one, become closer with respect to the ZF curves. It means that the difference of MRT between perfect CSI and imperfect CSI cases is becoming smaller compared to the ZF one when the ergodic sum rate achieves higher. In other words, the imperfect CSI has a greater effect of required downlink transmit power on ZF and the effect is more notable when the targeted ergodic sum rate is higher.
  • 4. Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information www.ijres.org 17 | Page Fig.1Ergodic sum rate versus the number oftransmit antennas with perfect CSI and imperfect CSI at K=5, 𝜉2 =0.5, 𝑝 𝑑 =0dB Fig.2Ergodic sum rate versus the number of users with perfect CSI and imperfect CSI at M=100, 𝜉2 =0.5, 𝑝 𝑑 =0dB
  • 5. Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information www.ijres.org 18 | Page Fig.3 Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect CSI at K=10,𝜉2 =0.5,𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 = 𝑅 𝑠𝑢𝑚 𝑧𝑓 = 5𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧 Fig.4Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect CSI at K=10, 𝜉2 =0.5,𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 = 𝑅 𝑠𝑢𝑚 𝑧𝑓 = 10𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧
  • 6. Performance Analysis of Massive MIMO Downlink System with Imperfect Channel State Information www.ijres.org 19 | Page Fig.5Required downlink transmit power versus the number of transmit antennas with perfect CSI and imperfect CSI at K=10, 𝜉2 =0.5,𝑅 𝑠𝑢𝑚 𝑚𝑟𝑡 = 𝑅 𝑠𝑢𝑚 𝑧𝑓 = 15𝑏𝑖𝑡𝑠/𝑠/𝐻𝑧 V. Conclusion In this paper, we have analysed the massive MIMO downlink system performance with imperfect CSI, which included ergodic sum rate and required downlink transmit power. MRT and ZF beamforming schemes were considered and MMSE channel estimation is used to obtain CSI. We found that neither MRT nor ZF achieves higher ergodic sum rate in all cases.Besides,against the required downlink transmit power,imperfect CSI has a greater effect on ZF than MRT when the target ergodic sum rate is fixed. This work have certain guiding significance for the actual design of massive MIMO system. VI. Acknowledgements This work was supported partly by the National High-Tech R&D Program of China (2015AA015501) and Special Fund Project for the Development of Modern Information Service Industry inGuangdong province. References [1] Marzetta T. L., Non cooperative Cellular Wireless with Unlimited Numbers of Base Station Antennas [J], IEEE Trans. Wireless Commun. , 9(11), 2010, 3590-3600 [2] Zhu Jun , Bhargava Vijay K. , Schober Robert, Secure Downlink Transmission in Massive MIMO System with Zero-Forcing Precoding[J], Proceedings of 20th European Wireless Conference, 2014, 1-6 [3] Parfait T. , YujunKuang, Jerry K. ,Performance Analysis and Comparison of ZF and MRT Based Downlink Massive MIMO Systems[J], 2014 Sixth International Conference on Ubiquitous and Future Networks, 2014, 383-388 [4] Le Liang, Wei Xu, Xiaodai Dong, Low-Complexity Hybrid Precoding in Massive Multiuser MIMO Systems[J], Wireless Communications Letters, IEEE, 3(6),2014, 653-656 [5] Rusek F. , Persson D. , BuonKiong Lau , Larsson E.G. , Marzetta T.L. , Edfors O. , Tufvesson F. , Scaling Up MIMO: Opportunities and Challenges with Very Large Arrays[J], Signal Processing Magazine, IEEE, 30(1), 2013 ,40-60 [6] Larsson E. ,Edfors O. , Tufvesson F. , Marzetta T. , Massive MIMO for Next Generation Wireless systems[J], Communications Magazine, IEEE, 52(2), 2014, 186-195 [7] Sooyong Choi, Special Topics:Massive MIMO, A lecture presentation on Massive MIMO, Yonsei University, 2012 [8] Verdu S. , Multiuser Detection[M], Cambridge University Press, 1998