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An Improved DFT-based Channel Estimation
Algorithm For MIMO-OFDM Systems
Zhang Jie
School of Information Science & Engineering,
Northeastern University
Shenyang, China
zhangjieshr@163.com
Huang Liqun
Department of Electronic Information,
Northeastern University at Qinhuangdao
Qinhuangdao, China
persistent_hlq@sina.com
Abstract—In this paper, we present an improved DFT-based
channel estimation method. The conventional discrete Fourier
transform(DFT)-based approach will cause energy leakage in
multipath channel with non-sample-spaced time delays. The
improved method uses symmetric property to extend the LS
estimate in frequency domain, and calculates the changing rate of
the leakage energy, and selects useful paths by the changing rate.
The computer simulation results show the improved method can
reduce the leakage energy efficiently, and the performance of the
improved channel estimation method is better than the LS and
conventional DFT algorithm.
Keywords-channel estimation; MIMO-OFDM; DFT; energy
leakage
I. INTRODUCTION
MIMO-OFDM can not only effectively enhance the
transmission rate and capacity of the wireless communication
system but also effectively combat multipath fading and
inter-symbol interference (ISI)[1]. MIMO-OFDM technology
has become one of the most proming solutions in the high data
rate wireless channel transmission. In the OFDM system with
transmit diversity, when the receiver knows the channel
information better, the space-time codes can be decoded
effectively. In order to enhance frequency efficiency, the
receiver also needs to know the channel information for
coherent demodulation[2]. So channel estimation is directly
related to the system performance.
By now, many channel estimation algorithms have been
presented. Least squares (LS) approach is introduced in [3].
The LS estimation is the simplest channel estimation. This
algorithm has lower complexity. However, it has larger mean
square error (MSE) and easily influenced by noise and inter-
carrier interference. Linear minimum mean square error
(LMMSE) algorithm is introduced in [4]. LMMSE algorithm is
a simplified algorithm of Minimum Mean Square Error
(MMSE). Although they can achieve better performance than
LS, they have higher computational-complexity and need to
know the channel statistics which are usually unknown in real
system. In [5] and [6], the algorithms of reducing the
complexity of the LMMSE are proposed. But these two
modified methods still require exact channel covariance
matrices.
In this paper, we focus on DFT-based channel estimation
method. This algorithm can make good compromise between
performance and computational complexity[7]. Most of the
published work on DFT-based channel estimation assumes
each path delay is an integer multiple of the sampling interval
in multipath channel. However, it is difficult to ensure this
condition in real system because of the complexity and
incomprehensibility of the transmission channel. In non-
sample-spaced multipath channels, the channel impulse
response will leak to all taps in the time domain. Reference[8]
propose a method to reduce leakage power by calculating
energy increasing rate. Another approach is also proposed by
extending the LS estimate with a symmetric signal of its own
in [9]. Based on these two methods, we propose a new method
to solve the problem of energy leakage.
The outline of the paper is as follows. In Section II, the
MIMO-OFDM system model is described. In Section III, we
introduce LS and conventional DFT-based algorithms. The
new method is explained in Section IV. Simulation results are
presented in Section V. Finally Section VI provides our
conclusions.
II. MIMO-OFDM SYSTEM MODEL
A. Multipath Channel Model
In multipath fading channel, the channel impulse response
in time domain could be expressed as:
( ) ( )
−
=
−=
1
0
L
l
sll Ttath τδ (1)
Where L is the number of multipaths, la is the complex
time varying channel coefficient of the l -th path, sT is
sampling interval, and slTτ is the delay of the l -th path. When
lτ is an integer, the multipath channel is sample-spaced
channel. Or the multipath channel is non-sample-spaced
channels. From (1) the channel impulse response after
sampling the frequency response of ( )th is expressed as:
Supported by the Scientific Research Program from the Education
Department of Hebei Province under Grant No. Z2005323.
3929
978-1-61284-459-6/11/$26.00 ©2011 IEEE
( )( ) ( )
( )=
−+−
−
=
L
l
l
l
Nn
N
j
ln
n
N
ea
N
h
l
1
1
sin
sin1
τ
π
πττ
π
(2)
The corresponding frequency response is expressed as:
( )
=
−
=
L
l
N
kl
j
nehkH
1
2π
(3)
Figure 1. The channel impulse response in
non-sample-spaced channel
From Figure 1 it can be seen that the energy leaks to all
carriers at the condition of the channel is non-sample-spaced
channel.
B. MIMO-OFDM Model
It is assumed that the system has TN transmitter antennas
and RN receiver antennas. The total number of the subcarriers
is N . At the sending end, the data stream is modulated by
inverse fast Fourier transform (IFFT) and a guard interval is
added for every OFDM symbol to eliminate ISI caused by
multi-path fading channel. The receiver performs opposite
operations.
The received signal can be expressed:
( ) ( ) ( ) ( )
=
+=
TN
i
jjiij kWkHkXkY
1
, 10 −≤≤ Nk (4)
Where ( )RNj ,,2,1= , k is the k -th subcarrier, ( )kYj is
the signal of the j -th receive antenna in frequency domain,
( )kXi is the signal of the i -th transmitter antenna, ( )kH ji, is
the discrete response of the channel on subcarrier k between
the i -th transmitter antenna and the j -th receive antenna, and
( )kWj is the complex Gaussian noise with zero-mean and
variance
2
0n
.
III. CHANNEL ESTIMATION ALGORITHM
A. LS Channel Estimaion
LS algorithm is the the simplest channel estimation. It is
assumed that LSH
∧
is the estimate of the channel impulse
response H .The LS estimate of the channle in frequency
domain on subcarrier k can be obtained as:
( ) ( )
( )
( ) ( )
( )kX
kW
kH
kX
kY
kH LS +==
∧
10 −≤≤ Nk (5)
B. Conventional DFT-based Channel Estimation
In OFDM system, the length of the channel impulse
response L is usually less than the length of the cyclic prefix
gL . Conventional DFT-based algorithm just takes advantage
of this feature. It transforms the in-frequency channel
estimation into in-time channel estimation , considers the part
which is larger than gL as noise, and then treats that part as
zero in order to eliminate the impact of the noise. The
algorithm can be summarized as follows:
• Step 1: Calculate the LS estimate ( )kH LS
∧
in the usual
LS manner.
• Step 2: Covert ( )kH LS
∧
to time domain:
( ) ( ) ( ) ( )
10
~
−≤≤
+==
∧∧
Nn
nwnhkHIFFTnh LSLS
(6)
Where
( ) ( ) ( )[ ]kXkWIFFTnw =~ (7)
• Step 3: Eliminate the impact of the noise in time
domain:
( ) ( )=
∧
∧
0
nhnh LS
DFT
1
10
−≤≤
−≤≤
NnL
Ln
g
g
(8)
• Step 4: Covert time-domain response to frequency
response by fast Fourier transform (FFT):
( ) ( )=
∧∧
nhFFTkH DFTDFT 10 −≤≤ Nk (9)
IV. AN IMPROVED CHANNEL ESTIMATION METHOD
DFT contains periodicity. If the original data sequence is
not continuous, it will generate additional high-order
component. In order to reduce these high-order component, we
can use symmetry principle before IFFT. With this
understanding, we will select paths effectively in order to
reduce leakage power by calculating the changing rate of the
leakage energy. The improved algorithm can be summarized as
follows:
3930
• Step 1: Calculate the LS estimate ( )kH LS
∧
.
• Step 2: Extend ( )kH LS
∧
with a symmetric signal of its
own:
( ) ( )
( )−−
= ∧
∧
∧
kNH
kH
kH
LS
LS
symmetric
12
12
10
−≤≤
−≤≤
NkN
Nk
(10)
• Step 3: Covert ( )kH symmetric
∧
to time domain by IFFT:
( ) ( ) ( ) ( )
120
~
−≤≤
+==
∧∧
Nn
nwnhkHIFFTnh symmetricsymmetric
(11)
• Step 4: The energy of the channel impulse response
can be expressed as:
( )
−
=
∧
=
12
0
2N
n
symmetric nhE (12)
From Figure 1, we can see the energy concentrates
at the ends of the sequences after the energy leakage.
That means the leakage energy concentrates in the
middle of the sequences. So (9) can be written as:
( ) ( )
( )
−
=
−
=
−
=
∧∧
=
−−+=
1
0
1
0
1
0
22
12
N
n
N
n
N
n
symmetricsymmetric
nE
nNhnhE
(13)
Where
( ) ( ) ( )
22
12 nNhnhnE symmetricsymmetric −−+=
∧∧
(14)
( )nE is the energy of the n -th sampling point.
leakagel is defined as the first path number of srarting
leaking energy, and ( )leakagelE is defined as the
leakage energy between the leakagel -th path and the
( )leakagelN −−12 -th path. ( )leakagelE can be expressed
as:
( ) ( )
−
=
=
1N
ln
leakage
lealage
nElE 10 −≤≤ Nlleakage (15)
The changing rate of the leakage energy ( )leakagelP
can be defined as:
( )
( ) ( )
( )leakage
leakageleakage
leakage
lE
lElE
lP
1+−
= (16)
If ( )leakagelP is large, it shows that it is not the
concentrated area of the leakage energy between the
leakagel -th path and the ( )leakagelN −−12 -th path. If
( )leakagelP is small, it shows that the change of the
power leakage is not obvious. That means the energy
of the leakagel -th path is small compared with the total
leakage energy. We can treat it as zero. Then the
channel response can be expressed as:
( )
( )
= ∧
nh
nh
symmetric
DFT
0~
other
lNnl leakageleakage −−≤≤ 12
(17)
In (12), ( )nhsymmetric
∧
contains ( )nw~ except for
( )nh . From (7), we can see that ( )nw~ is determined
by ( )kW and ( )kX . ( )kW is white noise, and its
amplitude of the spectrum is constant. So the system
uses the training sequences which have equal
amplitude. Then the the changing rate of the leakage
energy will not be affected by the change of the
amplitude of ( )kX .
• Step 5: After padding with zeros, convert ( )nhDFT
~
to
frequency domain by FFT:
( ) ( )[ ]nhFFTkH DFTDFT
~~
= 120 −≤≤ Nk (18)
• Step 6: According to the symmetric property, the
corresponding frequency response is expressed as:
( )
( ) ( )
10
2
12
~~
−≤≤
−−+
=
∧
Nk
kNHkH
kH DFTDFT
DFT (19)
V. SIMULATION RESULTS
In the simulations, we assume a MIMO-OFDM system
with two transmitter antennas and two receiver antennas. The
multi-path channel consists of 5 independent Rayleigh fading
paths and the the total number of sub-carriers is 128=N . The
guard time interval is 16 sample periods. The symbols are
modulated by 16QAM. The delay of the antenna 1 is delay1=
0 0.4 1.2 2.1 3.4 sμ , and the delay of the antenna 2
is delay2= 0 0.5 1.5 2.7 4.3 sμ . Table 1 shows the
system introduction.
TABLE I. SYSTEM INTRODUCTION
System leakagel ( )leakagelP (%)
LS-DFT1 32 4.95
LS-DFT2 50 0.38
LS-DFT3 100 0.19
Fig.2, 3 respectively shows the MSE and BER performance
of the improved DFT-based channel estimation is better than
the LS estimate and the conventional DFT estimate method.
From Fig.2, we can see that the MSE of the conventional DFT
method appears error floor earlier than the improved method
3931
with ( )leakagelP =4.95 and leakagel =32. And the performance of
improved method becomes better when ( )leakagelP =0.38 and
leakagel =50. However, when ( )leakagelP =0.19 and leakagel =100,
the performance of the improved method degrades. From Fig.3,
we also see it. This is because more noise exists with decrease
of ( )leakagelP . So wo should select proper ( )leakagelP
considering the existence of noise in order to achieve better
performance.
Figure 2. MSE performance of the improved method.
Figure 3. BER performance of the improved method
VI. CONCLUSION
In this paper, an improved DFT-based channel estimation
method in non-sample-spaced multipath channel for MIMO-
OFDM system is proposed. The improved method uses the
symmetric property and calculates the changing rate of the
leakage energy in order to select useful paths. Simulation
results show that the improved method can reduce the leakage
energy efficiently. And the MSE and BER performance of the
improved method are both better than LS estimation and
conventional DFT-based channel estimation method. The
improved method achieves a satisfying tradeoff between
complexity and performance.
ACKNOWLEDGMENT
This work was supported by the Scientific Research
Program from the Education Department of Hebei Province
(No. z2005323).
REFERENCES
[1] G.L. Stuber, J.R. Barry, S.W. McLaughlin, Ye Li, M.A. Ingram and
T.G. Pratt, “Broadband MIMO-OFDM wireless communications,”
Proceedings of the IEEE, vol. 92, No. 2, pp. 271-294, February. 2004.
[2] Jan-Jaap van de Beek, O.Edfors, and M.Sandell, “On channel estimation
in OFDM systems,” Presented at in proceedings of Vehicular
Technology, Chicago, pp. 815-819, 1995.
[3] B.Song, L.Gui, and W.Zhang, “Comb type pilot aided channel
estimation in OFDM systems with transmit diversity,” IEEE Trans.
Broadcast., vol. 52, pp. 50-57, March. 2006.
[4] Noh. M., Lee. Y. , and Park. H. “A low complexity LMMSE channel
estimation for OFDM,” IEE Proc. Commum., vol. 153, No. 5, pp. 645-
650, 2006.
[5] M. K. Özdemir, H. Arslan, E. Arvas. “Towards Real–Time Adaptive
Low–Rank Lmmse Channel Estimation of MIMO–OFDM Systems,”
IEEE Trans. Wireless Commun., vol. 5, no. 10, pp. 2675–2678,
October.2006.
[6] I. Tolochko, M. Faulkner. “Real Time Lmmse Channel Estimation for
Wireless OFDM Systems with Transmitter Diversity,” Proc. IEEE Vehic.
Tech. Conf. vol. 3, Vancouver, Canada, pp. 1555-1559. September.
2002.
[7] O. Edfors, M. Sandell, J.-J. van de Beek, S. K. Wilson, and P. O.
Börjesson, “Analysis of DFT-based channel estimators for OFDM,”
Wireless Personal Commun, vol. 12, pp. 55-70, January. 2000.
[8] Li Li, Wang ke, and Han li. “Channel Estimation Based on DFT for
OFDM Systems on Non-sample Spaced Channel,” Journal of Wuhan
University of Technology, vol. 33, No. 6, pp. 1195-1198, December.
2009.
[9] Y. Wang, L. Li, P. Zhang and Z. Liu, “Channel estimation for OFDM
systems in non-sample-spaced multipath channels,” Electronics Letters,
vol. 45, January. 2009.
3932

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An improved dft based channel estimation

  • 1. An Improved DFT-based Channel Estimation Algorithm For MIMO-OFDM Systems Zhang Jie School of Information Science & Engineering, Northeastern University Shenyang, China zhangjieshr@163.com Huang Liqun Department of Electronic Information, Northeastern University at Qinhuangdao Qinhuangdao, China persistent_hlq@sina.com Abstract—In this paper, we present an improved DFT-based channel estimation method. The conventional discrete Fourier transform(DFT)-based approach will cause energy leakage in multipath channel with non-sample-spaced time delays. The improved method uses symmetric property to extend the LS estimate in frequency domain, and calculates the changing rate of the leakage energy, and selects useful paths by the changing rate. The computer simulation results show the improved method can reduce the leakage energy efficiently, and the performance of the improved channel estimation method is better than the LS and conventional DFT algorithm. Keywords-channel estimation; MIMO-OFDM; DFT; energy leakage I. INTRODUCTION MIMO-OFDM can not only effectively enhance the transmission rate and capacity of the wireless communication system but also effectively combat multipath fading and inter-symbol interference (ISI)[1]. MIMO-OFDM technology has become one of the most proming solutions in the high data rate wireless channel transmission. In the OFDM system with transmit diversity, when the receiver knows the channel information better, the space-time codes can be decoded effectively. In order to enhance frequency efficiency, the receiver also needs to know the channel information for coherent demodulation[2]. So channel estimation is directly related to the system performance. By now, many channel estimation algorithms have been presented. Least squares (LS) approach is introduced in [3]. The LS estimation is the simplest channel estimation. This algorithm has lower complexity. However, it has larger mean square error (MSE) and easily influenced by noise and inter- carrier interference. Linear minimum mean square error (LMMSE) algorithm is introduced in [4]. LMMSE algorithm is a simplified algorithm of Minimum Mean Square Error (MMSE). Although they can achieve better performance than LS, they have higher computational-complexity and need to know the channel statistics which are usually unknown in real system. In [5] and [6], the algorithms of reducing the complexity of the LMMSE are proposed. But these two modified methods still require exact channel covariance matrices. In this paper, we focus on DFT-based channel estimation method. This algorithm can make good compromise between performance and computational complexity[7]. Most of the published work on DFT-based channel estimation assumes each path delay is an integer multiple of the sampling interval in multipath channel. However, it is difficult to ensure this condition in real system because of the complexity and incomprehensibility of the transmission channel. In non- sample-spaced multipath channels, the channel impulse response will leak to all taps in the time domain. Reference[8] propose a method to reduce leakage power by calculating energy increasing rate. Another approach is also proposed by extending the LS estimate with a symmetric signal of its own in [9]. Based on these two methods, we propose a new method to solve the problem of energy leakage. The outline of the paper is as follows. In Section II, the MIMO-OFDM system model is described. In Section III, we introduce LS and conventional DFT-based algorithms. The new method is explained in Section IV. Simulation results are presented in Section V. Finally Section VI provides our conclusions. II. MIMO-OFDM SYSTEM MODEL A. Multipath Channel Model In multipath fading channel, the channel impulse response in time domain could be expressed as: ( ) ( ) − = −= 1 0 L l sll Ttath τδ (1) Where L is the number of multipaths, la is the complex time varying channel coefficient of the l -th path, sT is sampling interval, and slTτ is the delay of the l -th path. When lτ is an integer, the multipath channel is sample-spaced channel. Or the multipath channel is non-sample-spaced channels. From (1) the channel impulse response after sampling the frequency response of ( )th is expressed as: Supported by the Scientific Research Program from the Education Department of Hebei Province under Grant No. Z2005323. 3929 978-1-61284-459-6/11/$26.00 ©2011 IEEE
  • 2. ( )( ) ( ) ( )= −+− − = L l l l Nn N j ln n N ea N h l 1 1 sin sin1 τ π πττ π (2) The corresponding frequency response is expressed as: ( ) = − = L l N kl j nehkH 1 2π (3) Figure 1. The channel impulse response in non-sample-spaced channel From Figure 1 it can be seen that the energy leaks to all carriers at the condition of the channel is non-sample-spaced channel. B. MIMO-OFDM Model It is assumed that the system has TN transmitter antennas and RN receiver antennas. The total number of the subcarriers is N . At the sending end, the data stream is modulated by inverse fast Fourier transform (IFFT) and a guard interval is added for every OFDM symbol to eliminate ISI caused by multi-path fading channel. The receiver performs opposite operations. The received signal can be expressed: ( ) ( ) ( ) ( ) = += TN i jjiij kWkHkXkY 1 , 10 −≤≤ Nk (4) Where ( )RNj ,,2,1= , k is the k -th subcarrier, ( )kYj is the signal of the j -th receive antenna in frequency domain, ( )kXi is the signal of the i -th transmitter antenna, ( )kH ji, is the discrete response of the channel on subcarrier k between the i -th transmitter antenna and the j -th receive antenna, and ( )kWj is the complex Gaussian noise with zero-mean and variance 2 0n . III. CHANNEL ESTIMATION ALGORITHM A. LS Channel Estimaion LS algorithm is the the simplest channel estimation. It is assumed that LSH ∧ is the estimate of the channel impulse response H .The LS estimate of the channle in frequency domain on subcarrier k can be obtained as: ( ) ( ) ( ) ( ) ( ) ( )kX kW kH kX kY kH LS +== ∧ 10 −≤≤ Nk (5) B. Conventional DFT-based Channel Estimation In OFDM system, the length of the channel impulse response L is usually less than the length of the cyclic prefix gL . Conventional DFT-based algorithm just takes advantage of this feature. It transforms the in-frequency channel estimation into in-time channel estimation , considers the part which is larger than gL as noise, and then treats that part as zero in order to eliminate the impact of the noise. The algorithm can be summarized as follows: • Step 1: Calculate the LS estimate ( )kH LS ∧ in the usual LS manner. • Step 2: Covert ( )kH LS ∧ to time domain: ( ) ( ) ( ) ( ) 10 ~ −≤≤ +== ∧∧ Nn nwnhkHIFFTnh LSLS (6) Where ( ) ( ) ( )[ ]kXkWIFFTnw =~ (7) • Step 3: Eliminate the impact of the noise in time domain: ( ) ( )= ∧ ∧ 0 nhnh LS DFT 1 10 −≤≤ −≤≤ NnL Ln g g (8) • Step 4: Covert time-domain response to frequency response by fast Fourier transform (FFT): ( ) ( )= ∧∧ nhFFTkH DFTDFT 10 −≤≤ Nk (9) IV. AN IMPROVED CHANNEL ESTIMATION METHOD DFT contains periodicity. If the original data sequence is not continuous, it will generate additional high-order component. In order to reduce these high-order component, we can use symmetry principle before IFFT. With this understanding, we will select paths effectively in order to reduce leakage power by calculating the changing rate of the leakage energy. The improved algorithm can be summarized as follows: 3930
  • 3. • Step 1: Calculate the LS estimate ( )kH LS ∧ . • Step 2: Extend ( )kH LS ∧ with a symmetric signal of its own: ( ) ( ) ( )−− = ∧ ∧ ∧ kNH kH kH LS LS symmetric 12 12 10 −≤≤ −≤≤ NkN Nk (10) • Step 3: Covert ( )kH symmetric ∧ to time domain by IFFT: ( ) ( ) ( ) ( ) 120 ~ −≤≤ +== ∧∧ Nn nwnhkHIFFTnh symmetricsymmetric (11) • Step 4: The energy of the channel impulse response can be expressed as: ( ) − = ∧ = 12 0 2N n symmetric nhE (12) From Figure 1, we can see the energy concentrates at the ends of the sequences after the energy leakage. That means the leakage energy concentrates in the middle of the sequences. So (9) can be written as: ( ) ( ) ( ) − = − = − = ∧∧ = −−+= 1 0 1 0 1 0 22 12 N n N n N n symmetricsymmetric nE nNhnhE (13) Where ( ) ( ) ( ) 22 12 nNhnhnE symmetricsymmetric −−+= ∧∧ (14) ( )nE is the energy of the n -th sampling point. leakagel is defined as the first path number of srarting leaking energy, and ( )leakagelE is defined as the leakage energy between the leakagel -th path and the ( )leakagelN −−12 -th path. ( )leakagelE can be expressed as: ( ) ( ) − = = 1N ln leakage lealage nElE 10 −≤≤ Nlleakage (15) The changing rate of the leakage energy ( )leakagelP can be defined as: ( ) ( ) ( ) ( )leakage leakageleakage leakage lE lElE lP 1+− = (16) If ( )leakagelP is large, it shows that it is not the concentrated area of the leakage energy between the leakagel -th path and the ( )leakagelN −−12 -th path. If ( )leakagelP is small, it shows that the change of the power leakage is not obvious. That means the energy of the leakagel -th path is small compared with the total leakage energy. We can treat it as zero. Then the channel response can be expressed as: ( ) ( ) = ∧ nh nh symmetric DFT 0~ other lNnl leakageleakage −−≤≤ 12 (17) In (12), ( )nhsymmetric ∧ contains ( )nw~ except for ( )nh . From (7), we can see that ( )nw~ is determined by ( )kW and ( )kX . ( )kW is white noise, and its amplitude of the spectrum is constant. So the system uses the training sequences which have equal amplitude. Then the the changing rate of the leakage energy will not be affected by the change of the amplitude of ( )kX . • Step 5: After padding with zeros, convert ( )nhDFT ~ to frequency domain by FFT: ( ) ( )[ ]nhFFTkH DFTDFT ~~ = 120 −≤≤ Nk (18) • Step 6: According to the symmetric property, the corresponding frequency response is expressed as: ( ) ( ) ( ) 10 2 12 ~~ −≤≤ −−+ = ∧ Nk kNHkH kH DFTDFT DFT (19) V. SIMULATION RESULTS In the simulations, we assume a MIMO-OFDM system with two transmitter antennas and two receiver antennas. The multi-path channel consists of 5 independent Rayleigh fading paths and the the total number of sub-carriers is 128=N . The guard time interval is 16 sample periods. The symbols are modulated by 16QAM. The delay of the antenna 1 is delay1= 0 0.4 1.2 2.1 3.4 sμ , and the delay of the antenna 2 is delay2= 0 0.5 1.5 2.7 4.3 sμ . Table 1 shows the system introduction. TABLE I. SYSTEM INTRODUCTION System leakagel ( )leakagelP (%) LS-DFT1 32 4.95 LS-DFT2 50 0.38 LS-DFT3 100 0.19 Fig.2, 3 respectively shows the MSE and BER performance of the improved DFT-based channel estimation is better than the LS estimate and the conventional DFT estimate method. From Fig.2, we can see that the MSE of the conventional DFT method appears error floor earlier than the improved method 3931
  • 4. with ( )leakagelP =4.95 and leakagel =32. And the performance of improved method becomes better when ( )leakagelP =0.38 and leakagel =50. However, when ( )leakagelP =0.19 and leakagel =100, the performance of the improved method degrades. From Fig.3, we also see it. This is because more noise exists with decrease of ( )leakagelP . So wo should select proper ( )leakagelP considering the existence of noise in order to achieve better performance. Figure 2. MSE performance of the improved method. Figure 3. BER performance of the improved method VI. CONCLUSION In this paper, an improved DFT-based channel estimation method in non-sample-spaced multipath channel for MIMO- OFDM system is proposed. The improved method uses the symmetric property and calculates the changing rate of the leakage energy in order to select useful paths. Simulation results show that the improved method can reduce the leakage energy efficiently. And the MSE and BER performance of the improved method are both better than LS estimation and conventional DFT-based channel estimation method. The improved method achieves a satisfying tradeoff between complexity and performance. ACKNOWLEDGMENT This work was supported by the Scientific Research Program from the Education Department of Hebei Province (No. z2005323). REFERENCES [1] G.L. Stuber, J.R. Barry, S.W. McLaughlin, Ye Li, M.A. Ingram and T.G. Pratt, “Broadband MIMO-OFDM wireless communications,” Proceedings of the IEEE, vol. 92, No. 2, pp. 271-294, February. 2004. [2] Jan-Jaap van de Beek, O.Edfors, and M.Sandell, “On channel estimation in OFDM systems,” Presented at in proceedings of Vehicular Technology, Chicago, pp. 815-819, 1995. [3] B.Song, L.Gui, and W.Zhang, “Comb type pilot aided channel estimation in OFDM systems with transmit diversity,” IEEE Trans. Broadcast., vol. 52, pp. 50-57, March. 2006. [4] Noh. M., Lee. Y. , and Park. H. “A low complexity LMMSE channel estimation for OFDM,” IEE Proc. Commum., vol. 153, No. 5, pp. 645- 650, 2006. [5] M. K. Özdemir, H. Arslan, E. Arvas. “Towards Real–Time Adaptive Low–Rank Lmmse Channel Estimation of MIMO–OFDM Systems,” IEEE Trans. Wireless Commun., vol. 5, no. 10, pp. 2675–2678, October.2006. [6] I. Tolochko, M. Faulkner. “Real Time Lmmse Channel Estimation for Wireless OFDM Systems with Transmitter Diversity,” Proc. IEEE Vehic. Tech. Conf. vol. 3, Vancouver, Canada, pp. 1555-1559. September. 2002. [7] O. Edfors, M. Sandell, J.-J. van de Beek, S. K. Wilson, and P. O. Börjesson, “Analysis of DFT-based channel estimators for OFDM,” Wireless Personal Commun, vol. 12, pp. 55-70, January. 2000. [8] Li Li, Wang ke, and Han li. “Channel Estimation Based on DFT for OFDM Systems on Non-sample Spaced Channel,” Journal of Wuhan University of Technology, vol. 33, No. 6, pp. 1195-1198, December. 2009. [9] Y. Wang, L. Li, P. Zhang and Z. Liu, “Channel estimation for OFDM systems in non-sample-spaced multipath channels,” Electronics Letters, vol. 45, January. 2009. 3932