Mui Analysis

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    Multiuser interference analysis of

    MC-CDMA system using various spreading

    sequences

    Ki-Chun Cho

    The Graduate SchoolYonsei University

    Department of Electrical and Electronic

    Engineering

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    Multiuser interference analysis of

    MC-CDMA system using various

    spreading sequences

    Ki-Chun Cho

    A Thesis Submitted to the

    Graduate School of Yonsei University

    in Partial Fulfillment of the

    Requirements for the Degree of

    Master of Science

    Supervised by

    Professor Hong-Yeop Song, Ph.D.

    Department of Electrical and Electronic Engineering

    The Graduate School

    YONSEI University

    December 2005

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    This certifies that the thesis of

    Ki-Chun Cho is approved.

    Thesis Supervisor: Hong-Yeop Song

    Jong-Moon Chung

    Soo-Yong Choi

    The Graduate School

    Yonsei University

    December 2005

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    + ;

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    qt9 #Qt\ 1lx_ b6 9 2{9m. =Q ]j

    H {9 b6 t& a>

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    Contents

    List of Figures iv

    List of Tables v

    Abstract vi

    1 Introduction 1

    1.1 Motivation . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 1

    1.2 Overview . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 3

    2 MC-CDMA system model 5

    2.1 Transmitter . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 5

    2.2 L-multipath channel model . . . . . . . . . . . . . . . . . . . . . . . . 6

    2.3 Receiver . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 7

    3 Multiuser interference and spectral correlation 9

    3.1 The Detection model . . . . . . . . . . . . . . . . . . . . . . . . . . . 9

    3.2 Interference analysis according to combining methods . . . . . . . . . . 11

    3.2.1 Maximal Ratio Combining (MRC) . . . . . . . . . . . . . . . . 11

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    3.2.2 Equal Gain Combining (EGC) . . . . . . . . . . . . . . . . . . 14

    3.2.3 Orthogonality Restoring Combining (ORC) . . . . . . . . . . . 17

    3.2.4 Minimum Mean Square Error Combining (MMSEC) . . . . . . 17

    3.3 Spectral correlation according to interleaver . . . . . . . . . . . . . . . 19

    3.4 Simulation results . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 21

    3.4.1 Channel model (1) . . . . . . . . . . . . . . . . . . . . . . . . 21

    3.4.2 Channel model (2) . . . . . . . . . . . . . . . . . . . . . . . . 28

    4 Requirements of frequency spreading sequences 37

    5 Spectral correlation profile 39

    6 Concluding Remarks 46

    Bibliography 49

    Abstract (in Korean) 53

    ii

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    List of Figures

    2.1 MC-CDMA transmitter model . . . . . . . . . . . . . . . . . . . . . . 6

    2.2 MC-CDMA receiver model . . . . . . . . . . . . . . . . . . . . . . . . 8

    3.1 Spectral correlation : |X(8,1)WH8(l)| for Q = 1 . . . . . . . . . . . . . . . 20

    3.2 Spectral correlation : |X(8,1)WH8(l)| for Q = 4 . . . . . . . . . . . . . . . 20

    3.3 BER performance using MRC, EGC (Users:4, Paths:2) . . . . . . . . . 23

    3.4 BER performance using MMSEC, ORC (Users:4, Paths:2) . . . . . . . 23

    3.5 Spectral correlation : X(6,5)WH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 24

    3.6 Spectral correlation : X(7,5)WH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 24

    3.7 Spectral correlation : X(8,5)WH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 24

    3.8 Spectral correlation : X

    (3,2)

    WH8(l) . . . . . . . . . . . . . . . . . . . . . . 25

    3.9 Spectral correlation : X(5,2)WH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 25

    3.10 Spectral correlation : X(8,2)WH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 25

    3.11 BER performance using MRC, EGC (Users:4, Paths:4) . . . . . . . . . 26

    3.12 BER performance using MMSEC, ORC (Users:4, Paths:4) . . . . . . . 26

    3.13 BER performance for Walsh-Hadamard using MRC (Users:2) . . . . . 29

    3.14 BER performance for m-sequence Hadamard using MRC (Users:2) . . 29

    iii

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    3.15 BER performance for m-sequence Hadamard using MRC (Users:2) . . 30

    3.16 BER performance for Walsh-Hadamard and m-sequence Hadamard us-

    ing MMSEC (Users:4) . . . . . . . . . . . . . . . . . . . . . . . . . . 32

    3.17 Spectral correlation :

    u=2,3,4 X(u,1)WH8(l) . . . . . . . . . . . . . . . . . 32

    3.18 Spectral correlation :

    u=3,5,8 X(u,2)WH8

    (l) . . . . . . . . . . . . . . . . . 33

    3.19 Spectral correlation :

    u=3,7,8 X(u,1)MH8

    (l) . . . . . . . . . . . . . . . . . 33

    3.20 Spectral correlation :

    u=2,3,5 X(u,1)MH8

    (l) . . . . . . . . . . . . . . . . . 33

    3.21 BER performance for Walsh-Hadamard and m-sequence Hadamard us-

    ing MMSEC (Users:8) . . . . . . . . . . . . . . . . . . . . . . . . . . 34

    3.22 Spectral correlation :

    u=1 X

    (u,1)

    WH8(l) . . . . . . . . . . . . . . . . . . 35

    3.23 Spectral correlation :

    u=1 X(u,1)MH8

    (l) . . . . . . . . . . . . . . . . . . 35

    5.1 BER performance of Zadoff-Chu and other sequence (Users:8, Paths:8) 43

    5.2 Spectral correlation : X(3,1)Chu8

    (l) . . . . . . . . . . . . . . . . . . . . . . 43

    5.3 Spectral correlation : X(2,1)MH8

    (l) . . . . . . . . . . . . . . . . . . . . . . 44

    5.4 Spectral correlation : X(2,1)OG8

    (l) . . . . . . . . . . . . . . . . . . . . . . 44

    5.5 Spectral correlation : X(2,1)

    QH8 (l) . . . . . . . . . . . . . . . . . . . . . . 44

    iv

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    List of Tables

    3.1 Simulation parameters(1) . . . . . . . . . . . . . . . . . . . . . . . . . 22

    3.2 Simulation parameters(2) . . . . . . . . . . . . . . . . . . . . . . . . . 27

    3.3 Reqired Eb/No according to combining methods . . . . . . . . . . . . 27

    3.4 Simulation parameters(3) . . . . . . . . . . . . . . . . . . . . . . . . . 30

    3.5 Maximum absolute value and required Eb/No for target BER 105 . . . 30

    5.1 Simulation parameters(4) . . . . . . . . . . . . . . . . . . . . . . . . . 43

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    ABSTRACT

    Multiuser interference analysis of MC-CDMA system

    using various spreading sequences

    Ki-Chun Cho

    Department of Electrical

    and Electronic Eng.

    The Graduate SchoolYonsei University

    For effective communication over frequency selective fading channels, multicarrier

    systems have been proposed as a scheme to enable high data rate transmission. Based on

    this perspective, MC-CDMA systems, which is a combination of multicarrier systems

    and CDMA, have been widely studied to achieve high user capacity. Applying frequency

    diversity techniques based on spreading and combining data in the frequency domain can

    results in a gain. When MC-CDMA technology is applied, frequency selectivity distorts

    the amplitude and phase of the subcarriers, which breaks the orthogonality of the users

    and as a result the multiuser interference increases. Therefore, effective control of the

    interference could lead to a performance improvement.

    MC-CDMA systems use frequency spreading sequences to separate multiusers. As

    time spreading sequence characteristics affect the user capacity and system performance

    of DS-CDMA, frequency spreading sequence characteristics may affect those of MC-

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    CDMA systems. Spectral correlation is introduced as one of the methods to analyze

    MUI with spreading sequences. This can be derived from a received signal expression,

    and it differs from the conventional correlation properties which focus on time domain.

    In multipath channels, the received signal can be expressed as a sum of many signals

    multiplied by distinct channel coefficients. And this kind of distinct power and time de-

    lay of multipath results in amplitude and phase variation of spreading sequences, which

    brings distortion of orthogonality among users. Spectral correlation shows features of

    frequency spreading sequences including multipath time delay.

    In this paper, we define the spectral correlation more clearly than conventional one to

    be suited to downlink MC-CDMA system. And we can observe the expression of MUI

    and control MUI with spreading sequence properties by using the spectral correlation.

    L-multipath Rayleigh fading channels and multicarrier system are considered. MRC,

    EGC, ORC, MMSEC are applied for combining methods. In this system, we observe

    the relation between MUI and spectral correlation and derive the expression of MUI

    based on sequence properties. And confirmation by simulation follows to investigate

    system performance related to those properties. As a result, for MRC, it was shown that

    MUI could be expressed as product of 3 terms: data symbol, channel elements, spectral

    correlation, and it was observed that spectral correlation directly affected MUI. Here,

    it was examined that the maximum absolute value of spectral correlation played a ma-

    jor role to determine system performance, and good randomness of sequence made the

    maximum absolute value small. Therefore, if spectral correlation at l was 0, correspond-

    ing interference component became 0. And the system performances for 2 users using

    Walsh-Hadamard and m-sequence Hadamard to reach target BER 105 are examined.

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    As a result, the best case using Walsh-Hadarard has 25.7dB and performance deviation

    of 4.3dB, but the worst case using m-sequence Hadamard has 25.7dB and performance

    deviation of 0.9dB. For EGC, a similar conclusion could be obtained by approximation,

    and performance differences relevant to spectral correlation were shown. For MMSEC,

    the performance difference was also given. From the above spectral correlation proper-

    ties, it can be known that the requirements of frequency spreading sequences are as fol-

    lows: orthogonality of spreading sequences, small spectral correlation value, and good

    randomness. And spectral correlation profile informs us of how the amplitude and phase

    of the received signal are changed and how it affects the system performance. As a

    result, the system using Zadoff-Chu sequence and BPSK modulation gained 3dB as op-

    posed to using other sequences. Therefor, the MUI of MC-CDMA can be estimated by

    using spectral correlation, and sequences which is constructed based on the above fact

    and allocation of selected sequences to some users can lead better system performance

    and reduced deviation of system performances.

    Key words : MC-CDMA, spectral correlation, multiuser interference, rayleigh fad-

    ing channel, frequency spreading sequences, combining,

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    Chapter 1

    Introduction

    1.1 Motivation

    CDMA (Code Division Multiple Access) is multiple access system which can transmit

    many users signal simultaneously using code or sequence, and a multiple access sys-

    tem based on direct sequence CDMA has achieved great importance for mobile radio

    applications [1] [2]. Recently, CDMA technique has been considered to be a candi-

    date to support multimedia services in mobile radio communications [3], because it has

    its own capabilities to cope with asynchronous nature of multimedia data traffic, to pro-

    vide higher capacity over conventional access techniques such as TDMA (Time-Division

    Multiple Access) and FDMA (Frequency-Division Multiple Access).

    On the other hand, an interesting approach to combat the distortions due to multipath

    propagation in mobile communications based on multicarrier (MC) systems is consid-

    ered. That system often called OFDM (Orthogonal frequency division multiplexing) is

    applied to combat the frequency selectivity of the channel using a simple one tap equal-

    izer. Furthermore OFDM prevents ISI (Inter Symbol Interference) and ICI (Inter Carrier

    Interference) by inserting a guard interval between adjacent OFDM symbols [4] [5] [6].

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    The efficient combination of multicarrier modulation technique, i.e., OFDM with

    CDMA, known as MC-CDMA has gained considerable attention both from academia

    and industry as a promising technique for high datarate wireless communications sys-

    tems [7] [8] [9]. MC-CDMA possesses the ability to mitigate severe multipath inter-

    ference and the possibility to exploit the frequency diversity by spreading across sub-

    carriers. Moreover, thanks to the guard interval between consecutive OFDM symbols,

    MC-CDMA is an ISI free system as long as the delay spread of the channel is shorter

    than the guard interval. In addition to these properties, MC-CDMA possesses other ad-

    vantages like efficient utilization of bandwidth, flexible resource management and ability

    to generate different data rates within a fixed bandwidth [10]. However, through a fre-

    quency selective fading channel, all the subcarriers have different amplitude levels and

    different phase shifts (although they have high correlation among subcarriers), which

    breaks the orthogonality among theses sequences, and resulting multiuser interference

    (MUI) drastically reduces the system performance[8] [11] [12].

    MC-CDMA system seriously suffers from performance degradation resulted from

    MUI. Consequently, an effective scheme to manage MUI from analyzing it is required.

    As time-domain autocorrelation and crosscorrelation function have been efficiently used

    as criteria for measuring MUI for DS-CDMA systems, spreading sequences may affect

    MC-CDMA system. Especially, selected sequence allocation in a sequence family may

    cause performance difference [13]. But time-domain correlation functions are not proper

    ways to look into MUI of MC-CDMA systems. Hence, it is essential to observe the

    characteristic of spreading sequences including the effect of multipath delay.

    There is a method to analyze the performance of MC-CDMA system, named as

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    spectral correlation function [14]. This can be evaluated from the expression of the

    received signal in MC-CDMA system, which differs from the conventional time-domain

    correlation function which has been applied for observing the correlation characteristic

    among codes in DS-CDMA. In multipath channels, the received signal is the sum of

    transmitted signals passing through different paths. And that results in distortion of

    codes. Spectral correlation function, a method of observing characteristics of codes

    including multipath delay, reflects features of codes and time delay. Therefore, spectral

    correlation could be a criterion measuring MUI in MC-CDMA system.

    It is a goal of this paper to study a method suppressing MUI using spreading se-

    quences from analyzing the relation between MUI and spreading sequences for MC-

    CDMA. In this study, we consider L-multipath channel and MC-CDMA system, and

    MRC, EGC, MMSEC, ORC which are well-known detection techniques for a single

    user. In the above system, we analyze the relation between MUI and spreading sequence

    using spectral correlation and how the characteristic of the sequence affects MUI. Also,

    the requirements of spreading sequences to improve system performance are derived,

    and what characteristic MUI has according to spreading sequence is observed.

    1.2 Overview

    Chapter 2 gives the description of MC-CDMA system model which covers a transmitter,

    a receiver and L-multipath channel model. In Chapter 3, MUI analysis according to

    4 combining methods and how to explain MUI using spectral correlation are carried

    out. And spectral correlation is derived based on the general system model with serial-

    to-parallel (S/P) and interleaver, and its physical meaning is investigated. And related

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    simulation results are shown. In Chapter 4, a summary of the requirements of codes to

    mitigate MUI is given. In Chapter 5, we introduce a spectral correlation profile which

    gives us knowledge of form of MUI. Finally, Chapter 6 draws conclusions and future

    work.

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    Chapter 2

    MC-CDMA system model

    2.1 Transmitter

    Figure 2.1 is MC-CDMA transmitter model. Input bit stream is mapped onto modulated

    data symbols through modulation and pass a serial-to-parallel (S/P) block. The Q num-

    ber of data symbols are arranged in parallel and pass Q number of copiers to be copied N

    number of chips respectively. The copied N chips are multiplied by chips of frequency

    spreading sequence of length N, {c(u)n }N1n=0 , where (u) represents a user. At this time,

    total number of subcarriers is QN. Chip-interleaver takes N number of spreaded chips

    ofq-th data symbol on (q+ Qn)-th subcarrier, where n = 0, 1, 2,...,N

    1. Inverse Fast

    Fourier Transform (IFFT) is applied to these QN subcarriers and transmitted signal of

    time duration T is generated. The complex baseband representation of the transmitted

    signal on a (q+ Qn)-th subcarrier, sq+Qn(t), in a signaling interval, T, can be written

    as:

    sq+Qn(t) =

    EsN

    U1u=0

    b(u)q c(u)n e

    j2(q+Qn)t/T, (2.1)

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    k j

    lt

    X

    j

    GGT

    j

    zVw

    )(

    0

    u

    c

    )(

    1

    u

    Nc

    )(

    0

    uc

    )(

    1

    u

    Nc

    Q

    p

    pmm{n

    Figure 2.1: MC-CDMA transmitter model

    and total representation of the transmitted signal can be written as:

    s(t) =

    EsN

    U1u=0

    Q1q=0

    N1n=0

    b(u)q c(u)n e

    j2(q+Qn)t/T, (2.2)

    where Es and b(u)q are the energy per data symbol and the q-th data symbol of (u)-th

    user respectively. N is the length of frequency spreading sequence, and U is the number

    of users.

    2.2 L-multipath channel model

    A wideband fading channel can be modelled as a sum of several differently delayed,

    independent Rayleigh fading processes. The corresponding channel impulse response

    (CIR) is described as:

    h(t, ) =

    L1l=0

    al hl(t)( l), (2.3)

    where al is the normalized amplitude such that L=1l=0 a

    2l = 1.0, hl(t) is the Rayleigh

    fading process with E|hl|2 = 1.0, and () is the Dirac function. {l}L1l=0 is the delay

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    of the l-th path, and l is tap index of channel impulse response model [15].

    For a multipath Rayleigh fading channel, the fading process can be represented by

    hl = lejl , where {l}L1l=0 , {l}L1l=0 are the random CIR tap amplitudes, phases,

    respectively. We assume that {l}L1l=0 , {l}L1l=0 , {l}L1l=0 are mutually independent.

    Fading amplitudes {l}L1l=0 are assumed to be statistically independent random variables

    having a probability density function (PDF) expressed as:

    f(l) =2l

    exp

    2l

    , (2.4)

    where = E[2l ]. The phases {l}L1l=0 of the different paths and of different subcarriers

    are assumed to be uniformly distributed random variables in [0, 2) [16], while the path

    delay of{l}L1l=0 are uniformly distributed in [0, Tmax], where Tmax is maximum delay

    spread.

    2.3 Receiver

    A block diagram of the baseband model of the MC-CDMA receiver for user (0) is rep-

    resented on Figure 2.2. The signal received by user (0) during the symbol interval is

    first OFDM-demodulated by applying an Fast Fourier Transform (FFT) of size QN and

    despreaded with the (0)-th users spreading sequence. {wn}QN1n=0 is a frequency do-

    main equalization gain factor, which is dependent upon the employed diversity combin-

    ing scheme. Combined data symbols are inserted into parallel-to-serial (P/S) block and

    demapped to binary bit stream.

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    kj

    kwVz NQw 1

    k

    mm{np

    y

    *)0(

    0c

    *)0(

    1

    Nc

    *)0(

    0c

    *)0(

    1Nc

    0w

    1Nw

    1QNw

    Figure 2.2: MC-CDMA receiver model

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    Chapter 3

    Multiuser interference and spectral

    correlation

    In this chapter we investigate the received signal according to combining methods and

    analyze the multiuser interference using spectral correlation. In section 3.1, we look into

    the expression of the received signal. In section 3.2, multiuser interference according

    to combining methods is derived and spectral correlation is defined. And how spectral

    correlation affects the multiuser interference and what meaning it has are derived. In

    section 3.3, spectral correlation is applied to more general system with chip interleaver.

    Simulation results supporting derived conclusion are showed in section 3.4.

    3.1 The Detection model

    From Figure 2.2, guard interval is removed from received signal and FFT is applied to

    the signal. The FFT demodulated received symbol {{rq+Qn}N1n=0 }Q1q=0 of the (q+ Qn)-

    th subcarrier can be expressed as:

    rq+Qn = EsN

    U1

    u=0

    b(u)c(u)n Hq+Qn + Nq+Qn, (3.1)

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    where Hq+Qn is the (q+ Qn)-th subcarriers frequency domain channel transfer factor,

    and Nq+Qn is a AWGN process having zero mean and a one-sided power spectral density

    of No. In restoring arbitrary fixed q-th data symbol among Q number of parallel data

    symbols, the decision variable of the (0)-th users q-th data symbol, d(0)q , is given for a

    single user detector as:

    d(0)q =

    N1n=0

    wq+Qn c(0)n rq+Qn, (3.2)

    where () represents the complex conjugation for the complex number. We assume

    that there is no inter-subcarrier interference and frequency and timing synchronization

    is accurate. The decision variable d(0)q can be expanded with the aid of Equation 3.1 and

    3.2 as:

    d(0)q =

    N1n=0

    wq+Qn c(0)n

    EsN

    U1u=0

    b(u)q c

    (u)n Hq+Qn + Nq+Qn

    = + + , (3.3)

    where is the desired signal component given by

    =

    EsN

    b(0)q

    N1

    n=0Hq+Qn wq+Qn, (3.4)

    is the MUI given by

    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n Hq+Qn wq+Qn, (3.5)

    and is the noise component given by

    =

    N1n=0

    c(0)n Nq+Qn wq+Qn. (3.6)

    These three signal components predetermine the performance of the single user detector

    considered[15].

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    3.2 Interference analysis according to combining methods

    3.2.1 Maximal Ratio Combining (MRC)

    Channel estimation technique makes it possible to obtain the frequency domain channel

    transfer factor from which the frequency domain equalization gain factor can be derived.

    The frequency domain channel transfer factor comes from FFT of the time domain chan-

    nel impulse response and can be written as:

    Hq+Qn =

    QN1l=0

    alhlej2(q+Qn)l/(QN)

    =

    QN1

    l=0

    alhlej2ql/(QN)ej2nl/N. (3.7)

    When {{Hq+Qn}N1n=0 }Q1q=0 is frequency domain channel transfer factor, the equalization

    gain factor, wq+Qn, for the MRC is given as:

    wq+Qn = Hq+Qn. (3.8)

    We assume the perfect channel estimation, then the equalization gain factor, from Equa-

    tion 3.7 and Equation 3.8, is given by:

    wq+Qn =

    QN1l=0

    alhlej2ql/(QN)ej2nl/N. (3.9)

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    Using above Equations, wq+QnHq+Qn can be rewritten as:

    wq+QnHq+Qn = Hq+QnHq+Qn

    = a20

    h20

    + a21

    h21

    + ... + a2L1

    h2L1

    +

    a0a1h0h1 + a1a2h1h

    2 + ... + aL2aL1hL2h

    L1

    ej2q1/QNej2m1/N

    +

    a0a1h0h1 + a1a2h

    1h2 + ... + aL2aL1h

    L2hL1

    ej2q1/QNej2m1/N

    +

    a0a2h0h2 + a1a3h1h

    3 + ... + aL3aL1hL3h

    L1

    ej2q2/QNej2m2/N

    +

    a0a2h0h2 + a1a3h

    1h3 + ... + aL3aL1h

    L3hL1

    ej2q2/QNej2m2/N

    ...

    +

    a0aL1h0hL1

    ej2q(L1)/QNej2m(L1)/N

    + (a0aL1h0hL1) e

    j2q(L1)/QNej2m(L1)/N

    =L1

    l=(L1)

    R(l) ej2nl/N, (3.10)

    where

    R(l) = ej2ql/(QN)L1l

    k=0akak+lhkh

    k+l, l = 0, 1,...,L 1, (3.11)

    R(l) = ej2ql/(QN)L1lk=0

    akaklhkhkl, l = 1,...,(L 1). (3.12)

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    The corresponding users received signal component for q-th data symbol, , is given

    by:

    = EsN

    b(0)q

    N1

    n=0

    |Hq+Qn|2

    =

    EsN

    b(0)q

    N1n=0

    L1l=(L1)

    R(l)ej2nl/N

    =

    EsN

    b(0)q

    L1l=(L1)

    R(l)N1n=0

    ej2nl/N

    =

    EsN

    R(0)b(0)q

    N1n=0

    1

    = NEsb(0)q R(0). (3.13)

    The MUI associated with MRC is given by:

    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    |Hq+Qn|2c(u)n c(0)n

    =

    EsN

    U1u=1

    b(u)q

    L1l=(L)

    R(l)N1n=0

    c(u)n c(0)n e

    j2nl/N. (3.14)

    Now we define spectral correlation[14] between arbitrary different users (r) and (s)

    which is given by:

    X(r,s)(l) =N1n=0

    c(r)n c(s)n e

    j2nl/N, (3.15)

    and from the Equation 3.14 and 3.15, can be expressed in the form

    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    |Hn|2c(u)n c(0)n

    =

    EsN

    U1u=1

    b(u)q

    L1l=(L1)

    R(l)N1n=0

    c(u)n c(0)n e

    j2nl/N

    =Es

    N

    U1u=1 b

    (u)

    q

    L1l=(L1) R(l)X

    (u,0)

    (l). (3.16)

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    As we can see in the Equation 3.16, MUI consists of 3 terms.

    1) Different users data symbol, b(u)q ,

    2) Channel element, R(l),

    3) Spectral correlation, X(r,s)(l).

    Because different users data symbol is not related to multipath fading, we exclude it

    from considering MUI. Then MUI is regarded as product of the channel elements and

    the spectral correlations. As we know from Equation 3.11 and 3.12, channel element is

    a sum of multipaths multiplied by other multipaths spaced TQNl time apart. Therefore,

    spectral correlation, X(r,s)(l), can be regarded as a weight affecting to correlation value

    between multipaths and other multipaths spaced

    T

    QNl time apart. In other word, spectral

    correlation can influence characteristics of MUI and if X(r,s)(l) is zero or small value,

    then the corresponding interference can become zero or small value.

    3.2.2 Equal Gain Combining (EGC)

    The equalization gain factor, wq+Qn, for the EGC is given as:

    wq+Qn =Hq+Qn

    |Hq+Qn|. (3.17)

    From Equation 3.17, the desired signal component of and MUI ofq-th data symbol are

    given by:

    =

    EsN

    b(0)q

    N1n=0

    Hq+QnHq+Qn

    |Hq+Qn|

    =

    EsN

    b(0)q

    N1n=0

    Hq+QnHq+Qn, (3.18)

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    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n

    Hq+QnHq+Qn

    |Hq+Qn|

    =

    EsN

    U1

    u=1b(u)q

    N1

    n=0c(u)n c

    (0)n

    Hq+QnHq+Qn. (3.19)

    We consider mean value and variance to analyze MUI. The mean value is given as:

    E[Hq+QnHq+Qn] = E

    L1

    l=(L1)

    R(l)ej2nl/N

    = E[R(0)] + E

    L1

    l=(L1)l=0

    R(l)ej2nl/N

    = 1, (3.20)

    and the variance is given as:

    V ar[Hq+QnHq+Qn] = V ar

    L1

    l=(L1)

    R(l)ej2nl/N

    = V ar [R(0)] + V ar

    L1

    l=(L1)l=0

    R(l)ej2nl/N

    = V ar

    L1

    k=0a2kh

    2k

    +

    L1

    l=(L1)l=0

    V ar

    L1l

    k=0akak+lhkh

    k+l

    = 24L1k=0

    a4k +L1

    l=(L1)l=0

    4L1lk=0

    a2ka2k+l

    2a404L + 2a404L(L 1)

    2

    = a404L(L + 1). (3.21)

    From the Taylor series, an expansion of

    x about 1 is given by:

    x 1 + 12

    (x 1) 18

    (x 1)2 + 116

    (x 1)3 . (3.22)

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    And the desired signal component and MUI approximated using Equation 3.22 are given

    as:

    Es

    N

    b(0)q

    N1

    mn=0

    1 + 12

    (Hq+QnHq+Qn

    1)=

    1

    2

    EsN

    b(0)q +

    1

    2

    EsN

    b(0)q

    N1n=0

    Hq+QnHq+Qn

    =1

    2

    EsN

    b(0)q +1

    2

    N Esb

    (0)q R(0), (3.23)

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n

    1 +

    1

    2(Hq+QnHq+Qn 1)

    = 12

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n + 12

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n Hq+QnHq+Qn

    =1

    2

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n +

    1

    2

    EsN

    U1u=1

    b(u)q

    L1l=(L1)

    R(l)Xu,0(l). (3.24)

    In the Equation 3.24, the first term is independent on the channel so that it can be consid-

    ered as constant, especially zero when spreading sequences are orthogonal. The second

    term is dependent on the channel and similar to the expression of MRC, Equation 3.16.

    Therefore, in the case of EGC, MUI can be expressed with spectral correlation like the

    case of MRC and MUI characteristic is analogous to that of the case of MRC, but smaller

    than it by 1/2. The energy of the desired signal is as large as that of MRC, however the

    interference is smaller than that of MRC by 1/2. Hence performance of EGC is better

    than that of MRC.

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    3.2.3 Orthogonality Restoring Combining (ORC)

    The equalization gain ,wq+Qn, for the ORC is given as:

    wq+Qn =

    Hq+Qn

    |Hq+Qn|2 . (3.25)From this Equation 3.25, the desired signal component and MUI of q-th data symbol

    are given by:

    =

    EsN

    b(0)q

    N1n=0

    Hq+QnHq+Qn

    |Hq+Qn|2

    =

    NEsb(0)q , (3.26)

    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n H

    q

    +QnHq

    +Qn|Hq+Qn|2

    =

    EsN

    U1u=1

    b(u)q

    N1n=0

    c(u)n c(0)n . (3.27)

    As shown in above equation, ORC cancels the effect of the channel so that spectral

    correlation is not represented in the expression. Besides, if sequences are orthogonal,

    MUI is equal to zero. But multipath diversity gain could not be acquired.

    3.2.4 Minimum Mean Square Error Combining (MMSEC)

    The equalization gain ,wq+Qn, for the MMSEC is given as:

    wq+Qn =Hq+Qn

    |Hq+Qn|2 + 22U NEs. (3.28)

    From this Equation 3.28, the desired signal component and MUI of q-th data symbol

    are given by:

    =Es

    N b(0)

    q

    N1n=0

    Hq+QnHq+Qn

    |Hq+Qn|2 + 22U NEs , (3.29)

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    term is dependent on the channel and similar to the expression of MRC, Equation 3.16.

    Therefore, in the case of MMSEC, MUI can be expressed with spectral correlation like

    the case of MRC and MUI characteristic is analogous to that of the case of MRC. But

    variance of the channel affects the MUI expression. Hence, the feature of MMSEC is

    similar to that of ORC in high SNR, and to that of MRC in low SNR. Therefore, MUI is

    slightly affected by spectral correlation.

    3.3 Spectral correlation according to interleaver

    In Equation 3.16, spectral correlation is a sum of products of reference users sequence,

    c(0)

    n, and another users sequence, c

    (u)

    n, and ej2nl/N, where m = 0, 1,...,N

    1. That

    is the result which IFFT is applied to the product of two sequences and {ej2nl/N}N1n=0 .

    In that equation, Q, the size of S/P, is not shown. But back to the derivation, we can see

    the spectral correlation including Q which is given by:

    X(r,s)(l) =

    N1n=0

    c(r)n c(s)n e

    j2Qnl/QN. (3.34)

    In other words, spectral correlation, Equation 3.15, is defined for Q = 1, and when

    Q > 1, IFFT of size QN is applied to the product of sequences whose chip and another

    chip are spaced Q-chip apart. Therefore, a spectral correlation for Q > 1 has a form of

    repetition of the spectral correlation for Q = 1. Using above fact, the spectral correlation

    for arbitrary Q > 1 and l N is given by:

    X(r,s)(l) = X(r,s)(l), l l(modN), l N > l. (3.35)

    Figure 3.1 is a spectral correlation of Walsh-Hadamard of size 8 for Q = 1, and Figure

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    -6 -4 -2 0 2 4 6-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.1: Spectral correlation : |X(8,1)

    WH8(l)| for Q = 1

    -31 -24 -16 -8 0 8 16 24 31-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.2: Spectral correlation : |X(8,1)WH8(l)| for Q = 4

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    3.2 is for Q = 4. For Q = 4, the spectral correlation for Q = 1 is repeated 4 times

    sequentially. Therefore, regardless of S/P size, Q, we can estimate the feature of MUI

    from only knowing the path delay interval index, l, and the spectral correlation, X(r,s)(l).

    3.4 Simulation results

    In this section, we investigate how BER performance of MC-CDMA system is affected

    by spectral correlations. The channel is assumed to keep constant in one OFDM-CDMA

    symbol and change from symbol to symbol independently. We assume perfect channel

    estimation and accurate timing and frequency synchronization. And maximum delay

    spread is within guard interval. We consider two channel model. First, CIR tap coef-

    ficients are placed every sample point within guard interval and exponentially decayed.

    Second, CIR tap coefficients are placed arbitrary sample points within guard interval and

    exponentially decayed.

    3.4.1 Channel model (1)

    Multipaths delay by one sample, and exponentially decay. 2 multipaths lie within

    0, TQN1

    or within guard interval. Figure 3.3 and Figure 3.4 show some simulation results with

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    Walsh-Hadamard matrix of size 8 which is given by:

    W H8 =

    + + + + + + + +

    + + + + + +

    + +

    + + + ++ + + + + + + ++ + + ++ + + +

    (3.36)

    and simulation parameters are shown on Table 3.1. In those figures, WH(5,6,7,8) means

    that 5,6,7,8-th sequences of above Walsh-Hadamard matrix are allocated to different 4

    users, respectively. Figure 3.3 is for MRC and EGC. BER performances of WH(5,6,7,8)

    for MRC and EGC approach single user performances for MRC and EGC, which acquire

    best performances. But BER performances of WH(2,3,5,8) for MRC and EGC are worse

    than those of WH(5,6,7,8). Figure 3.4 is for MMSEC and ORC. BER performance

    of WH(5,6,7,8) for MMSEC also approaches a single user performance for MMSEC,

    which acquires best performance. But BER performance of WH(2,3,5,8) is worse than

    that of WH(5,6,7,8). Because ORC cancels effect of the channel, there is no difference

    according to spectral correlations.

    Spectral correlations of Walsh-Hadamard of size 8 are shown on from Figure 3.5 to

    Table 3.1: Simulation parameters(1)

    FFT/IFFT

    Points

    Number of

    subcarriersOFDM symbol Modulation QPSK

    8 88+1 samples

    (Guard interval=T/8)QPSK 8

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    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/No[dB]

    BER

    MRC single user

    MRC (5.6.7.8) best

    MRC (2.3.5.8) worse

    EGC single user

    EGC (5.6.7.8) best

    EGC (2.3.5.8) worse

    Figure 3.3: BER performance using MRC, EGC (Users:4, Paths:2)

    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/N

    o[dB]

    BER

    MMSEC single user

    MMSEC (5.6.7.8) better

    MMSEC (2.3.5.8) worse

    ORC (5.6.7.8)

    ORC (2.3.5.8)

    Figure 3.4: BER performance using MMSEC, ORC (Users:4, Paths:2)

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    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    R

    eX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    Im

    X(l)

    Imaginary

    -5 0 5-5

    0

    5

    l

    |X(l)|

    Absolute Value

    Figure 3.5: Spectral correlation : X(6,5)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.6: Spectral correlation : X(7,5)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.7: Spectral correlation : X(8,5)WH8(l)

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    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    R

    eX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    Im

    X(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.8: Spectral correlation : X(3,2)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.9: Spectral correlation : X(5,2)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.10: Spectral correlation : X(8,2)WH8(l)

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    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/No[dB]

    BER

    MRC single user

    MRC (5.6.7.8) better

    MRC (2.3.5.8) worse

    EGC single user

    EGC (5.6.7.8) better

    EGC (2.3.5.8) worse

    Figure 3.11: BER performance using MRC, EGC (Users:4, Paths:4)

    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/N

    o[dB]

    BER

    MMSEC single user

    MMSEC (5.6.7.8) better

    MMSEC (2.3.5.8) worse

    ORC single user

    ORC better

    ORC worse

    Figure 3.12: BER performance using MMSEC, ORC (Users:4, Paths:4)

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    Table 3.2: Simulation parameters(2)

    FFT/IFFT

    Points

    Number of

    subcarriersOFDM symbol Modulation QPSK

    32 3232+4 samples

    (Guard interval=T/8)QPSK 8

    Table 3.3: Reqired Eb/No according to combining methods

    Number of paths:2 Number of path:4

    105 singlebest

    (no MUI)worst single best worst

    MRC 24.9 24.9 36.1 16.5 41.0 x

    EGC 25.3 25.7 32.5 17.5 23.8 x

    MMSEC 25.0 25.7 27.1 16.7 21.0 21.8

    Figure 3.10. X(r,s)WH

    8

    (l) means spectral correlation of Walsh-Hadamard of size 8. From

    Figure 3.5 to Figure 3.7, X(6,5)WH8

    (1) = X(7,5)WH8(1)= X(8,5)WH8

    (1) = 0. Those re-

    sults mean that correlation between multipaths and other multipaths spaced TQNl time

    apart becomes zero. In other words, MUI becomes zero so that the BER performances

    approach single user performances. But from Figure 3.8 to Figure 3.10, because of

    X(5,2)WH8

    (1) = 0 and X(8,2)WH8(1) = 0, MUI exist and BER performances of WH(2,3,5,8)

    for MRC, EGC, MMSEC are degraded.

    Figure 3.11 and Figure 3.12 show BER performances for 4 multipaths and sim-

    ulation parameters are shown on Table 3.2. 4 multipaths delayed by one sample lie

    within

    0, TQN3

    or within guard interval and are exponentially decayed. For these

    cases, BER performances of WH(5,6,7,8) for MRC, EGC, MMSEC are better than

    those of WH(2,3,5,8), too. Because X(6,5)WH8

    (l) = 0 for l = 0, 1, 2, 3 and oth-

    ers have some values, not zero. Therefore, MUI for WH(5,6,7,8) get smaller than those

    for WH(2,3,5,8), and the system using WH(5,6,7,8) acquires better performance. Table

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    3.3 summarizes required Eb/No[dB] for MC-CDMA systems that shown in this section

    to attain BER 105.

    3.4.2 Channel model (2)

    In this section, we consider more general case. 8 multipaths are within guard interval,

    64 samples, and uniformly distributed in that and exponentially decayed.

    Figure 3.13 and Figure 3.14 show BER performances of MC-CDMA system using

    Walsh-Hadamard and m-sequence Hadamard for 2 users, and Figure 3.15 compares the

    performances between those systems. And simulation parameters are shown on Table

    3.4. m-sequence Hadamard matrix is obtained from the matrix consisting of all cyclic

    shifts of m-sequence by bordering the matrix on the top with a row of all zeros and on

    the right by a column of all zeros. The m-sequence Hadamard matrix of size 8 we used

    is given by:

    M H8 =

    + + + + + + + +

    + + + ++ + + + + + +

    + + + + + + + + + + + + + + + +

    (3.37)

    The notation WH(1,2) means that we use 1-st and 2-nd row of Walsh-Hadamard

    matrix, Equation 3.36, as spreading sequences of MC-CDMA system and allocate to

    two different users respectively, and the notation MH(1,2) is for m-sequence Hadamard.

    Figure 3.13, 3.14, and 3.15 show differences in BER performances according to selected

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    20 21 22 23 24 25 26 27 28 29 3010

    -6

    10-5

    10-4

    10-3

    Eb/No[dB]

    BER

    WH(1,2).worst

    WH(1,3).worse

    WH(1,4).worse

    WH(1,5).good

    WH(1,6).good

    Figure 3.13: BER performance for Walsh-Hadamard using MRC (Users:2)

    20 21 22 23 24 25 26 27 28 29 3010

    -6

    10-5

    10-4

    10-3

    Eb/N

    o[dB]

    BER

    MH(1,8).worst

    MH(1,2).good

    MH(1,5).good

    MH(1,7).good

    Figure 3.14: BER performance for m-sequence Hadamard using MRC (Users:2)

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    20 21 22 23 24 25 26 27 28 29 3010

    -6

    10-5

    10-4

    10-3

    Eb/N

    o[dB]

    BER

    WH(1,2).worst

    WH(1,5).good

    MH(1,8).worst

    MH(1,2).good

    Figure 3.15: BER performance for m-sequence Hadamard using MRC (Users:2)

    Table 3.4: Simulation parameters(3)

    FFT/IFFT

    Points

    Number of

    subcarriersOFDM symbol Modulation QPSK

    512 512512+64 samples

    (Guard interval=T/8)QPSK 8

    Table 3.5: Maximum absolute value and required Eb/No for target BER 105

    Pair of

    sequencesWH(1,2)

    WH(1,3)

    WH(1,4)

    WH(1,5)

    WH(1,8)deviation MH(1,8)

    MH(1,2)

    MH(1,7)deviation

    Masimum

    absolute value8 5.6569 5.2263 2.7737 5.2263 4 1.2263

    Largest/Smallest

    of MAVlargest smallest largest smallest

    dB 30.0 27.2 25.7 4.3 25.7 24.8 0.9

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    sequences. Maximum of absolute value of spectral correlation can explain that. We de-

    fine the value as maximum absolute value. Maximum absolute value is the largest value

    among absolute values over N < l < Nin a spectral correlation, maxN

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    20 20.5 21 21.5 22 22.5 23 23.5 2410

    -6

    10-5

    10-4

    Eb/N

    o[dB]

    BER

    WH(1,2,3,4).worse

    MH(2,3,5,8).worse

    MH(1,3,7,8).better

    WH(2,3,5,8).better

    Figure 3.16: BER performance for Walsh-Hadamard and m-sequence Hadamard usingMMSEC (Users:4)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    46

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    46

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    46

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.17: Spectral correlation :

    u=2,3,4X

    (u,1)WH8

    (l)

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    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    R

    eX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    Im

    X(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.18: Spectral correlation :

    u=3,5,8 X(u,2)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.19: Spectral correlation :

    u=3,7,8 X(u,1)MH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.20: Spectral correlation :

    u=2,3,5 X(u,1)MH8(l)

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    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/No[dB]

    BER

    WH

    MH

    Figure 3.21: BER performance for Walsh-Hadamard and m-sequence Hadamard usingMMSEC (Users:8)

    ing Walsh-Hadamard and m-sequence Hadamard for 4 users are shown and simulation

    parameters are shown on Table 3.4. WH(1,2,3,4) means that 1,2,3,4-th row of Walsh-

    Hadamard, Equation 3.36, are allocated to each user. From Figure 3.17 to Figure 3.20

    show spectral correlations for 4 users. Spectral correlation for many users is expressed

    as a sum of spectral correlation for 2 users and defined as:

    r=s

    X(r,s)(l) =r=s

    N1n=0

    c(r)n c(s)n e

    j2nl/N. (3.38)

    From Figure 3.16, WH(1,2,3,4), MH(1,2,3,5), MH(1,3,7,8), WH(2,3,5,8) are in or-

    der of bad performance. And WH(1,2,3,4) only has maximum absolute value 8, and

    the others have 7.3910. Therefore WH(1,2,3,4) has the worst performance, and the

    34

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    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.22: Spectral correlation : u=1 X(u,1)WH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 3.23: Spectral correlation :

    u=1 X(u,1)MH8

    (l)

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    others are better than WH(1,2,3,4) and have little performance differences. Therefore

    maximum absolute value of spectral correlation is major factor to decide BER perfor-

    mance. Figure 3.21 shows BER performances using Walsh-Hadamard and m-sequence

    Hadamard for 8 users, and simulation parameters are shown on Table 3.4. BER perfor-

    mances of both systems are same for 8 users. This is due to same maximum absolute

    values of 8 for two sequences as shown in Figure 3.22 and Figure 3.23.

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    Chapter 4

    Requirements of frequency

    spreading sequences

    From Equation 3.16, MUI is consists of channel elements and spectral correlation. First,

    only to investigate effect of channel, we calculate mean and variance of channel cross

    product, R(l). Mean value is given by:

    E[R(l)] =

    1, for l = 0,

    0, for l = 0.(4.1)

    From the channel model, we assume that normalized amplitudes, {al}L1l=0 , have ampli-

    tudes ofa0

    a1

    aL1. Hence, variance is given by:

    V ar [R(l)] = 4L1lk=0

    a2ka2k+l 4a20a2l (L 1). (4.2)

    From Equation 4.1 and Equation 4.2, channel element for l = 0 has mean value 1

    and larger variance than any other elements. Other elements have mean value 0 and

    smaller variance than 1 as l is larger. Therefore, spectral correlation at l = 0 should

    be 0, X(r,s)(0) =

    N1m=0 c

    (r)m c

    (s)m = 0, and this means that spreading sequences are

    orthogonal. In Equation 3.24, first term of the expression can be 0, and in Equation 3.27,

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    interference can be 0, when spreading sequences are orthogonal. Hence, orthogonality

    is most essential factor for frequency spreading sequences.

    The first term of the MUI can be removed by using orthogonal sequences but the

    other terms still remained. But those terms are consist of the channel elements and

    spectral correlations so that each term can be controlled by spectral correlation value,

    i.e., if a spectral correlation is zero or small, the term containing it is also zero or small.

    If two multipaths are apaced by 1T/QN, MUI can be 0 by using spreading sequence

    whose spectral correlation at 1 is 0, Xr,s(1) = 0. As we see simulation results at

    secton 3.4, considering channel model and setting corresponding spectral correlation 0

    or very small, MUI can be 0 or very small.

    But if CIR tap coefficients are lied uniformly within guard interval larger than N

    samples, it is not enough to consider particular spectral correlation being 0 or small.

    In this case, we consider not only spectral correlation at particular l, but also at all

    N < l < N. At that time, maximum absolute value of spectral correlation is regarded

    as a major factor to system performance, and smaller it is, less MUI is, and better BER

    performance. Random characteristic of spreading sequence influence BER performance

    difference according to user combinations. More random sequence is, smaller perfor-

    mance deviation is.

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    Chapter 5

    Spectral correlation profile

    In this section, we investigate MUI more deeply and introduce spectral correlation pro-

    file. Spectral correlation basically has complex value. Therefore, real part, imaginary

    part, and absolute value of spectral correlation has various figures according to spreading

    sequence. In this case, X(r,s)(l) and X(r,s)(l) for l = 0, 1,...,N 1 can be complex

    conjugate pair or not. We define spectral correlation profile as figure of spectral correla-

    tion on complex plane.

    From Equation 3.16 of MUI expression, R(l) and R(l) are complex conjugate

    pair. And MUI has form ofR(l)X(r,s)(l) + R(l)X(r,s)(l). Therefore, figure of MUI

    can be changed by figures of spectral correlations, X(r,s)(l) and X(r,s)(l). Now, we

    consider two cases.

    1) X(r,s)(l) = X(r,s)(l),

    2) Either X(r,s)(l) or X(r,s)(l) is zero.

    For the case 1), we use X(r,s)(l) = X(r,s)(l) to express Equation 3.16, then MUI

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    is given by:

    1 =

    ESN

    U1u=1

    b(u)q

    L1l=1

    2R

    R(l)X(u,0)(l)

    , (5.1)

    where

    R{}is a function which results real value. In this case,

    RR(l)X(u,0)(l) has

    only influence on real part of channel elements but imaginary part. Therefore, magnitude

    of MUI becomes twice of real part of R(l)X(u,0)(l), and phase of MUI is distorted by

    only data symbol.

    For the case 2), we use X(r,s)(l) = 0 to express Equation 3.16, then MUI is given

    by:

    1 =

    ESN

    U1

    u=1b(u)q

    L1

    l=1R(l)X(u,0)(l). (5.2)

    In this case, R(l)X(u,0)(l) has complex form, which has influence on both real and

    imaginary part of channel elements. Therefore, magnitude of MUI becomes that of

    R(l)X(u,0)(l), and phases of MUI is distorted by both data symbol and R(l)X(u,0)(l).

    To investigate above phenomenon, some simulations using some sequences are per-

    formed. We use Zadoff-Chu sequence, Walsh-Hadamard, m-sequence Hadamard, Or-

    thogonal Gold sequence, Quadri-phase Hadamard, and introduce about those first.

    Zadoff-Chu sequence [17] has optimum correlation properties. From that, orthog-

    onal sequence set can be constructed. Zadoff-Chu orthogonal sequences of size 8 and

    length 8 is given by:

    ej2

    k2

    2+qk

    /2N

    , k = 0, 1,...,N 1, q = 0, 1,...,N 1, (5.3)

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    and for the simulation, we set the exponent as matrix

    k2

    2 + qk

    , which is given by:

    k2

    2+ qk

    =

    0 3 12 11 0 11 12 3

    0 9 8 13 8 9 0 13

    0 15 4 15 0 7 4 70 5 0 1 8 5 8 1

    0 11 12 3 0 3 12 11

    0 1 8 5 8 1 0 5

    0 7 4 7 0 15 4 15

    0 13 0 9 8 13 8 9

    . (5.4)

    Orthogonal Gold sequence [18] is constructed using m-sequence and its preferred

    pair by using optimum autocorrelation property, and it is constructively similar to m-

    sequence Hadamard. For the simulation, we use Orthogonal Gold sequence of size 8

    given by:

    OG8 =

    + + + ++ + + + + ++ + + + + + + + + +

    + + +

    + + +

    + + + + + + + + + +

    . (5.5)

    Quadri-phase Hadamard [19] of size 8 is 4-ary complex sequence having 4 symbols,

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    {1, 1, j, j}. For the simulation, we use Quadri-phase Hadamard of size 8 given by:

    QH8 =

    +1 +j +1 +1 +j +j j 1+1 j +1 +1 j j +j 1+1 +j

    1 +1 +j

    j +j +1

    +1 j 1 +1 j +j j +1+1 +j +1 1 j j j +1+1 j +1 1 +j +j +j +1+1 +j 1 1 j +j +j 1+1 j 1 1 +j j j 1

    . (5.6)

    Figure 5.1 shows BER performances whose modulation methods are BPSK, and Table5.1

    shows simulation parameters of the systems. We can observe that the system using

    Zadoff-Chu sequence gains 3dB at target BER 105. This comes from the fact that

    spectral correlation profiles of binary sequence and Quadri-phase Hadamard belong to

    the case 1) previous mentioned, but that of Zadoff-Chu sequence belongs to the case

    2). While using BPSK modulation which has data symbol as {+1, 1}, we decide

    the sign of data symbol only on real part. For the case 1), MUI is under influence

    of 2RR(l)X(u,0)(l), while for the case 2),RR(l)X(u,0)(l). In other words, forthe system which use Zadoff-Chu sequence and decide the sign of data symbol on 1-

    dimension like BPSK, MUI reduced by half.

    Figure 5.2, 5.3, 5.4, and 5.5 are spectral correlation of Zadoff-Chu sequence, m-

    sequence Hadamard, Orthogonal Gold, and Quadri-phase Hadamard. As we can see

    the figures, X(r,s)Chu8

    (2) = 8, X(r,s)Chu8(2) = 0, thus Zadoff-Chu belongs to the case 2).

    Others are X(r,s)(l) = X(r,s)(l) and belong to the case 1). In fact, all binary

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    Table 5.1: Simulation parameters(4)

    FFT/IFFT

    Points

    Number of

    subcarriersOFDM symbol Modulation QPSK

    64 6464+8 samples

    (Guard interval=T/8)BPSK 8

    0 5 10 15 20 25 3010

    -6

    10-5

    10-4

    10-3

    10-2

    10-1

    100

    Eb/N

    o[dB]

    BER

    Zadoff-Chu

    Walsh-Hadamard

    m-sequence Hadamard

    Orthogonal Gold

    Quadi-phase Hadamard

    Figure 5.1: BER performance of Zadoff-Chu and other sequence (Users:8, Paths:8)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 5.2: Spectral correlation : X(3,1)

    Chu8(l)

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    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    R

    eX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    Im

    X(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 5.3: Spectral correlation : X(2,1)MH8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    24

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 5.4: Spectral correlation : X(2,1)OG8

    (l)

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ReX(l)

    Real

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    ImX(l)

    Imaginary

    -5 0 5-8

    -6

    -4

    -2

    0

    2

    4

    6

    8

    l

    |X(l)|

    Absolute Value

    Figure 5.5: Spectral correlation : X(2,1)

    QH8 (l)

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    integer sequences are in case 1) because of below expression as:

    X(r,s)(l) =N1m=0

    c(r)m c(s)m exp

    j2m(l)/N

    =N1

    m=0

    c(r)m c(s)m expj2ml/N

    = X(r,s)(l). (5.7)

    Quadri-phase Hadamard sequence is a nonbinary, complex sequence. But it has c(r)m c

    (s)m =

    c(r)m c

    (s)m so that it belongs to the case 1). In other words, we can see how MUI appears

    as observing spectral correlation profile.

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    Chapter 6

    Concluding Remarks

    In this paper, we have analyzed the relation between a multiuser interference and fre-

    quency spreading sequences in a MC-CDMA system by using a spectral correlation.

    Based on this, we investigated requirements of frequency spreading sequence and what

    figure MUI takes on according to the spectral correlation profile. MRC, EGC, ORC,

    and MMSEC were considered as combining methods of the MC-CDMA system for sin-

    gle user detection as well as an L-multipath Rayleigh fading channel. As a result of

    examining MUI using 4 methods, MUI of the system using MRC was drawn as prod-

    uct of 3 terms: data symbol, channel elements, and spectral correlation. And we veri-

    fied that MUI of the system using EGC and MMSEC had a similar form to that using

    MRC through approximation and simulation. In the system with S/P and interleaver, we

    showed that MUI is also derived from spectral correlation.

    Spectral correlation is weight which has an effect on interference so that X(r,s)(l)

    directly affects products of multipaths spaced l apart. Thus, we verified that if spectral

    correlation at some l is 0, the corresponding interference could be 0 by derivation and

    simulation. In order to confirm this, we have observed the required Eb/No[dB] for target

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    BER 105 in the channel which has 2 multipaths spaced TQN apart by using 4 different

    Walsh-Hadamard sequences, which have X(r,s)(1) = 0. As a result, the system for a

    single user using MRC, EGC, and MMSEC needed 24.9, 25.3, and 25 dB, respectively,

    and for 4 users, about 24.9, 25.7, and 25.7 dB, respectively. These show that there are

    nearly no interferences.

    The maximum absolute value of spectral correlation is a major factor affecting an

    interference. Smaller the maximum absolute value is, the better the system performance,

    and smaller the deviation of maximum absolute values is, the smaller the deviation of

    system performances according to user allocation is. This relates to the randomness of

    sequences so that sequences which have good randomness have small maximum absolute

    values and small deviation of maximum absolute values. A typical binary sequence

    which has good randomness is m-sequence Hadamard. m-sequence Hadamard of size

    8 and length 8 has smallest the maximum absolute value of 4, which is smaller than

    that of Walsh-Hadamard of 5.2263, and it has the largest maximum absolute value of

    5.2263, which is smaller than that of Walsh-Hadamard of 8, and it has a smaller deviation

    of maximum absolute values. Thus, when the sequences are allocated to some users,

    the system using m-sequence Hadamard is better than that of Walsh-Hadamard, and

    has a smaller deviation of performances. In order to confirm this, we have observed

    the required Eb/No[dB] for target BER 105 in the channel which has 8 multipaths

    spaced arbitrary apart within the guard interval. A system using MRC and m-sequence

    Hadamard for 2 users needed 24.8 and 25.7dB with respect to the maximum absolute

    values of 4 and 5.2263, respectively, and the one using Walsh-Hadamard needed 25.7

    and 30.3dB with respect to the maximum absolute values of 5.2263 and 8, respectively.

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    A system using MMSEC and m-sequence Hadamard for 4 users needed about 21.4dB

    with respect to both the largest and the smallest maximum absolute values and the one

    using Walsh-Hadamard needed 21.6 and 21.7 dB with respect to the largest and the

    smallest maximum absolute values.

    As a consequence of the above results, we mention the requirements of frequency

    spreading sequences. First, the orthogonality of sequences to distinguish multiusers

    is essential. From the derived MUI expression, the largest interference factor can be

    removed by using the orthogonal sequence. Second, spectral correlation should be 0 or

    small. From the expression, spectral correlation directly affects channel elements, which

    also affects the interference. Third, good randomness of a sequence is required. The

    more random a sequence is, the smaller the spectral correlation value and the deviation

    of system performance and the better the system performance are in case of allocation

    of selected sequences to some users is carried out.

    On the other hand, spectral correlation profile offers us what form MUI takes and

    how it affects the system. All binary sequences and Quadri-phase Hadamard used in

    this paper have same spectral correlation profile, but Zadoff-Chu sequence has a differ-

    ent spectral correlation profile. Therefore, in a system which performs 1-dimensional

    decision like BPSK, the interference affecting the decision is reduced. In order to con-

    firm this, we have observed the required Eb/No[dB] for target BER 106 using BPSK

    modulation. In that simulation, the system using Zadoff-Chu sequence gained 3dB as

    opposed to using other sequences.

    MC-CDMA which would use advantages of OFDM and CDMA is widely studied

    for high data rate multimedia communication. But MUI greatly degrades system perfor-

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    mance. In this paper, spectral correlation and spectral correlation profile are introduced

    as a method to manage and analyze MUI. And we verified it by derivation and simula-

    tion. The MUI of MC-CDMA can be estimated by using spectral correlation. Therefore,

    sequences which is constructed based on the above fact and allocation of selected se-

    quences to some users can lead better system performance and reduced deviation of

    system performances.

    Binary sequences are mainly dealt in this study; complex sequences, however, have

    more various appearances which affect spectral correlation and system performance than

    binary sequences do. Therefore, examining the relation between spectral correlation of

    complex sequences and system performance would contribute to development of system

    performance.

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    DGH

    SX\Ps6xMC-CDMAr%7_6x

    [Or$3

    &h sGV,\"f5qX

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    67/68

    tr 4"rSX \P_ l< 0A_o\ 4R< SX \P_ f$

    =/BGr.&7!3ar\_rt

  • 7/28/2019 Mui Analysis

    68/68

    'SX\Ps#Q+rf$,r&7!3

    a,:$s +e. &7!3arFY(R4+G

    V, :x_ l< 0As #QbG>9 r%7 $0px\ #QbG>

    6xHt\e.r$3 Zadoff-Chu\P6x BPSKlr%7

    sr\P[t6x\qK3lq BER 106 %3l0A Eb/No[dB]s

    3dBrSX+e%3."f&7!3as6x#MC-CDMA_

    [O&+e,s\\P[O>#&hr%7$0px

    +es.

    d&H : MC-CDMA,&7!3a,6x[O,SX\P,

    YU{9o sGV,,+