Extimation if I/Q Imblance in Mimo OFDM System

DOI : 10.17577/IJERTV2IS100489

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Extimation if I/Q Imblance in Mimo OFDM System

CH .Manoharkumar Smt. S. SanthaKumari U.subha B.sashikanth

Radar and Microwave Associate professor Asst.Professor Asst.Professor

Andhra university Andhra university Raghu Engineering College DIET,anakapalli

ABSTRACT:

In this paper, we study the joint estimation of in phase and quadrature-phase (I/Q) imbalance, carrier frequency offset (CFO), and channel response for multiple-input multiple output (MIMO) orthogonal frequency division multiplexing (OFDM) systems using training sequences. A new concept called channel residual energy (CRE) is introduced. We show that by minimizing the CRE, we can jointly estimate the I/Q imbalance and CFO without knowing the channel response. The proposed method needs only one OFDM block for training and the training symbols can be arbitrary. Moreover when the training block consists of two repeated sequences, a low complexity two-step approach is proposed to solve the joint estimation problem. Simulation results show that the mean-squared error (MSE) of the proposed method is close to the Cramer-Rao bound (CRB).

Index TermsMIMO OFDM, CFO, I/Q imbalance, channel estimation.

  1. INTRODUCTION

    IN recent years, direct conversion receiver has drawn a lot of attention due to its low power consumption and low implementation cost. However some mismatches in direct conversion receiver can seriously degrade the system performance, such as in-phase and quadrature-phase (I/Q1) imbalance and carrier frequency offset (CFO). The I/Q imbalance is due to the amplitude and phase mismatches between the I and Q-branch of the local oscillator whereas the CFO is due to the mismatch of carrier frequency at the transmitter and receiver. It is known that the I/Q imbalance and CFO can cause a serious inter-carrier interference (ICI) in orthogonal frequency division multiplexing (OFDM) systems. As a result, the bit error rate (BER) has an error-flooring. There have been many reports in the literature on the compensation of the I/Q imbalance and CFO. Several compensation methods for I/Q imbalance in OFDM systems have been proposed.

  2. SYSTEM DESCRIPTION

    In MIMO OFDM system where the numbers of the transmit and receive antenna are and

    respectively. The input vector s(see Fig. 1) is an×1 vector containing the modulation symbols. After taking the -point IDFT of s, we obtain the

    × 1 vector x. After the insertion of a CP of length

    1, the signal is transmitted from the th transmit antenna. Let the channel impulse response from the

    th transmit antenna to the th receive antenna be , (). We assume that the lengths of all the channels are and the length of the cyclic prefix (CP) is

    1. So there is no interblock interference between adjacent OFDM blocks afterCP removal. The received vector at the th receive antenna can be written as

Where is an×circulant matrix with the first column

andqis the × 1 blocked version of channel noise. After passing rthrough the -point DFT, we can employ a frequency domain equalizer (FEQ) to recover the transmit signal s.

Suppose now that the system suffers from carrier frequency offset (CFO) . Define the normalized CFO as

Whereis the size of the DFT matrix and is the sample spacing. The vector due to CFO is

Whereris the desired baseband vector in (1) and

Eis an×diagonal matrix

Suppose in addition to the CFO, there is also I/Q mismatch at the receiver. The received vector due to I/Q mismatch becomes

whereand are the I/Q parameters at the receiver. They are related to the amplitude mismatch and phase mismatch as

Substituting (4) into (6), we get

The received vector zconsists of not only the desired baseband vector rbut also its complex conjugate rk. Moreover, the presence of Edue to CFO will also destroy the subcarrier orthogonality. In later sections, we will show how to jointly estimate the I/Q imbalance, CFO and MIMO channel response using training sequences. Suppose that we have estimates of the I/Q imbalance and CFO at the receiver. We will show how to recover the desired baseband vector rfrom z. Define a parameter

that is related to the I/Q imbalance parameters as

If is known at the receiver, from (6) we can get

If is also known at the receiver, from (4) we can recover a scaled version of the desired baseband vector by

III PROPOSED JOINT ESTIMATION METHOD

In this section, we propose a new method to estimate the channel response when there are CFO and I/Q imbalances. We will first consider the simpler problem of the joint estimation of channel response and I/Q imbalance under the assumption that there is no CFO. In this special case, the optimal solution is given in closed form. Then the joint estimation of the channel response, CFO and I/Q imbalance will be studied. Below we will show how to estimate and

from one

Received vector zat the th receive antenna. For notational simplicity, we will drop the receive antenna index as the problem can be solved separately for each receive antenna.

  1. Joint Estimation of Channel Response and I/Q Imbalance

    In this subsection, we assume that there is no CFO. Hence we have = 0 and E = I. From (11), r is related to the received vector z as

    (12)

    From (23) and (29), if is given, an estimate of the MIMO channel response can be obtained as

    (13)

    WhereB is defined in (22). When is estimated perfectly, the first entries of each hin the above expression will give us an estimate of the channel response and the last () entries

    of dare solely due to the channel noise. For moderately high SNR, the energy of these entries should be small. Let us define a quantity called the channel residual energy (CRE) as

    (14)

    Where denotes the th entry of Any error in the estimation of will increase the CRE (see the analysis at the end of this section). Based on this observation, by minimizing

    the CRE we are able to estimate the I/Q parameter

    without knowing the channel response. To do this, we first define the ( ) ×matrix

    (15)

    Suppose that >so that P is not a zero matrix. Multiplying d by P, we can rewrite the CRE as

    (16)

    Our goal is to find that minimizes the CRE. Since for most applications, is small, (33) can be approximated as

    realized using circular convolution.

  2. Joint Estimation of Channel Response, I/Q Imbalance and CFO

When the receiver suffers from both CFO and I/Q mismatch, the received vector z is given by (8). From Sec. 2, we know that if and are known, we can recover the desired baseband

vector from z using (11) and it is given by

(19)

where the diagonal matrix E is given in (5). We can obtain an estimate of the MIMO channel response as

(20)

From the above equation, when and are perfectly estimated, the last entries of dare again solely due to the channel noise. By summing up the energy of these entries, we have the CRE

(21)

(17)

From linear algebra, it is known that the optimal

that minimizes the CRE is

(18)

By substituting into (30), we get the estimated MIMO channel response

For the compensation of I/Q imbalance, one can employ (29) to obtain r. Notice that there is no need to compensate the factor because it will be canceled when we use to implement the FEQ. From (35), we see that to get , we only need to compute and perform vector inner products at th numerator and denominator2. When the training sequence in [9] is used, B becomes unitary and circulant. As B^(-1) is also circulant and unitary, can be efficiently

WhereP is defined in (32). Notice that the CRE is a function 0f both and . Substituting (37) into the above equation, we can rewrite the CRE as

(22)

Where Following the argument in the previous subsection, we get an estimate of and

by minimizing the CRE. The joint optimization problem is solved in 2 steps: For

a given , we derive the optimal , based on that we optimize . Since , the above expression can be approximated As

(23)

Given , the optimal is given by

(24)

Note that () is a function of because F depends on

. Substituting () into (40), the CRE can be written as

(25)

Then the optimal estimate of CFO is given by

(26)

Once the optimal is obtained from the above optimization, the optimal can be obtained by substituting into (41) and the estimated channel response is found by substituting and into (37). Then we can use (36) for symbol recovery. Note that no iteration is needed in the above optimization process. However, a one-dimensional search is needed to obtain the CFO estimate. In many practical applications, the training data often consist of repeated sequences. In this case, the one-dimensional search problem in (42) can be avoided

and the joint optimization problem can be solved efficiently using a two-step approach as demonstrated later.

IV. JOINT ESTIMATION USING TWO REPEATED TRAINING SEQUENCES

Suppose that two repeated training sequences are available. That means the training block is a (+1)×1 vector in the

form of where the training

sequence x is an vector, and the CP length is 1. This repeated structure has been proposed to solve the problem of CFO estimation. In what follows, we will exploit the repeated structure to solve the joint estimation of CFO, I/Q and channel response. Suppose that there are CFO and I/Q mismatch. From

(8), the two received vectors are in the form of

(27)

whereand are the OFDM block indexes and y is an vector in (4). Our goal is to jointly estimate CFO, I/Q and channel response from zand z. Below we will first show how to solve the two sub problems: (A) given , estimate and (B) given , estimate and (). Then the joint estimation of ,

and () will be solved by a two-step approach. RESULTS:

REFERENCES

VII. CONCLUSION

In this paper, we propose new methods for the joint estimation of the I/Q imbalance, CFO and channel response for MIMO OFDM systems by using training sequences. When only one OFDM block is available for training, the first method is able to give an accurate estimate of the CFO,I/Q parameter and channel responses. The CFO is obtained through one- dimensional search algorithm. When two repeated OFDM blocks are available for training, a low complexity two step approach is proposed to solve the joint estimation problem.

Simulation results show that the MSEs of the proposed methods are very close to the CRB.

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