WO2007064131A1 - Detecting method of multiple-input multiple-output system - Google Patents

Detecting method of multiple-input multiple-output system Download PDF

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Publication number
WO2007064131A1
WO2007064131A1 PCT/KR2006/005058 KR2006005058W WO2007064131A1 WO 2007064131 A1 WO2007064131 A1 WO 2007064131A1 KR 2006005058 W KR2006005058 W KR 2006005058W WO 2007064131 A1 WO2007064131 A1 WO 2007064131A1
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Prior art keywords
signals
transmit signal
antenna signals
residual
detecting method
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PCT/KR2006/005058
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French (fr)
Inventor
Kyeong-Pyo Kim
Woo-Yong Lee
Hyun Lee
Jin-Kyeong Kim
Yong-Sun Kim
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Electronics And Telecommunications Research Institute
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Priority claimed from KR1020060047744A external-priority patent/KR100738340B1/en
Application filed by Electronics And Telecommunications Research Institute filed Critical Electronics And Telecommunications Research Institute
Priority to US12/095,814 priority Critical patent/US20090252249A1/en
Publication of WO2007064131A1 publication Critical patent/WO2007064131A1/en

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04BTRANSMISSION
    • H04B7/00Radio transmission systems, i.e. using radiation field
    • H04B7/02Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas
    • H04B7/04Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas
    • H04B7/08Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station
    • H04B7/0837Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station using pre-detection combining
    • H04B7/0842Weighted combining
    • H04B7/0848Joint weighting
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04BTRANSMISSION
    • H04B7/00Radio transmission systems, i.e. using radiation field
    • H04B7/02Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas
    • H04B7/04Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas
    • H04B7/08Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station
    • H04B7/0837Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station using pre-detection combining
    • H04B7/0842Weighted combining
    • H04B7/0848Joint weighting
    • H04B7/0851Joint weighting using training sequences or error signal
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04BTRANSMISSION
    • H04B7/00Radio transmission systems, i.e. using radiation field
    • H04B7/02Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas
    • H04B7/04Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas
    • H04B7/08Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station
    • H04B7/0837Diversity systems; Multi-antenna system, i.e. transmission or reception using multiple antennas using two or more spaced independent antennas at the receiving station using pre-detection combining
    • H04B7/0842Weighted combining
    • H04B7/0848Joint weighting
    • H04B7/0854Joint weighting using error minimizing algorithms, e.g. minimum mean squared error [MMSE], "cross-correlation" or matrix inversion

Definitions

  • the present invention relates to a detecting method of a multiple-input multiple- output system; and, more particularly, to a detecting method of a multiple-input multiple-output system, including the steps of: determining K optimal transmit (Tx) signals among all possible combinations of Tx signals at a receiver of the MIMO system, and calculating estimation values of the K optimal Tx signals; determining L antenna signals in which interference of the optimal antenna signals is removed, and calculating L residual Tx signal estimation values; and applying a maximum likelihood (ML) detection scheme to KxL estimated Tx signal candidate groups.
  • Tx transmit
  • ML maximum likelihood
  • the data transmission is greatly influenced by wireless communication environment, e.g., signal fading, interference, and noise. Specifically, the data transmission is influenced by serious signal distortion caused by combination of signals having different phases and amplitudes received through different paths due to multipath fading.
  • MIMO multiple-input multiple-output
  • FIG. 1 is a block diagram of a conventional MIMO system.
  • the MEMO system is a wireless communication system that transmits/receives different data through M transmit (Tx) antennas 1 and N receive (Rx) antennas 2, instead of using wide frequency bandwidth, in order to increase a data rate and a transmission capacity in the wireless communication environment with limited frequency resources.
  • x is Tx signals transmitted differently through the M Tx antennas 1
  • H is multipath radio channels that the Tx signals x pass through before they are received at the Rx antennas 2
  • r is Rx signals received at the N Rx antennas 2 over the multipath radio channels H
  • n is noise signals added to the Rx antennas 2.
  • T [ T 1 r 2 • " r N _ ⁇ r N ]
  • noise signals n are expressed as
  • Tl [ Tl 1 Tl 2 ' " Tl N ⁇ TI N ] and have a complex Gaussian distribution in which a mean of the respective components is zero and a variation is N /2 in each order.
  • the receiver of the MEMO system uses a maximum likelihood (ML) detection scheme.
  • the ML detection scheme is to select an input signal having a minimum squared Euclidean distance among the possible combinations of the Tx signals x. [15] Referring to Fig. 1 and Eq. 1, the ML detection scheme determines a solution
  • C M is a vector set that the Tx signals x can have within a signal con-
  • the ML detection scheme exhibits the optimal performance in terms of a bit error rate (BER).
  • BER bit error rate
  • the ML detection scheme must calculate the square of the Euclidean distance for all possible Tx signals and compare the calculated values from one another. Thus, the operation of Eq. 2 must be performed L times.
  • SIC successive interference cancellation
  • the interference-cancelled signals are randomly sorted, for example in ascending order of signal-to-noise ratio (SNR), and a signal to be first removed is determined.
  • SNR signal-to-noise ratio
  • an estimation value of the Tx signal is calculated through quantization of the determined signal into the signal constellation, and the influence of the calculated estimation value is removed from the Rx signal.
  • the SIC method can greatly reduce the amount of calculation and complexity. However, because noise increases when the interference between the Tx signals is removed in the first step, the BER performance is degraded.
  • the ML detection scheme has a problem of the complexity and the SIC scheme has a problem of the degraded BER performance. Therefore, there is a demand for a detecting method that can provide the reduced complexity and the improved BER performance and can easily implement the MIMO system.
  • MIMO system including the steps of: determining K optimal transmit (Tx) signals among all possible combinations of Tx signals at a receiver of the MEMO system, and calculating estimation values of the K optimal Tx signals; determining L antenna signals in which interference of the optimal antenna signals is removed, and calculating L residual Tx signal estimation values; and applying a maximum likelihood (ML) detection scheme to KxL estimated Tx signal candidate groups.
  • Tx transmit
  • ML maximum likelihood
  • a detecting method of a MEMO system using multipath radio channels including the steps of: a) canceling interference between transmit signals by assigning weight values to signals received through a plurality of antennas, and determining K optimal antenna signals through channel gain estimation, where K is an arbitrary positive integer; b) calculating L transmit signal estimation values by quantizing the optimal antenna signals according to a predefined constellation size of L, where L is an arbitrary positive integer; c) calculating L residual antenna signals, in which interference of the transmit signal estimation values is removed from the received signals using the L Tx signal estimation values; d) calculating L residual transmit signal estimation values by quantizing the L residual antenna signals according to the predefined constellation size; and e) creating KxL estimated transmit signal candidate groups by repeating the calculation of the L residual transmit signal estimation values for each of the K optimal antenna signals, and detecting transmit signals from the estimated transmit signal candidate groups.
  • the complexity of the ML detection scheme can be remarkably reduced and the BER performance can be greatly improved.
  • the MIMO system capable of solving the problem of the limited frequency resources can be easily implemented.
  • Fig. 1 is a block diagram of a conventional MIMO system
  • FIG. 2 is a flowchart illustrating a detecting method of a MIMO system according to an embodiment of the present invention.
  • FIG. 2 is a flowchart illustrating a detecting method of a MIMO system according to an embodiment of the present invention.
  • Optimal antenna signals are determined among the possible Tx signals of the Tx antennas 1 in step SlOl. That is, the receiver of the MIMO system cancels the interference between the Tx signals by assigning weight values to the Rx signals and then determines the K optimal antenna signals by estimating channel gains using SNR, log likelihood ratio, or preamble.
  • Step SlOl will be described in detail with reference to Eqs. 3 to 5 below.
  • Eq. 3 represents a weight matrix W to be multiplied by the Rx signal r in order to cancel the interference between the Rx signals.
  • the weight matrix W is expressed as
  • the weight matrix W is calculated using a minimum mean square error (MMSE) scheme or a zero forcing (ZF) scheme. Since the MMSE scheme and the ZF scheme are well known, their detailed description will be omitted.
  • MMSE minimum mean square error
  • ZF zero forcing
  • Eq. 4 represents the interference-cancelled signal y obtained by multiplying the Rx signal r by the weight matrix W of Eq. 3.
  • Eq. 5 represents an n* signal y n extracted from the signal y. Since the number of the
  • Tx antennas 1 is M, l ⁇ n ⁇ M.
  • the receiver of the MIMO system determines the K optimal antenna signals using the SNRs or log likelihood ratios of the M extracted signals
  • the receiver of the MIMO system determines the K optimal antenna signals among the Tx signals in step SlOl, and quantizes the K optimal antenna signals into all possible values of a predefined constellation size L to calculate L optimal Tx signal estimation values in step S 102. That is, the receiver of the MIMO system calculates the L optimal Tx signal estimation values with respect to the n extracted signal y n , and calculates L optimal Tx signal estimation values with respect to each of the remaining
  • Step S 102 will be described in more detail with reference to Eq. 6 below.
  • Eq. 6 represents the optimal Tx signal estimation value
  • the receiver of the MIMO system calculates the L optimal Tx signal estimation value
  • the receiver of the MIMO system calculates the L optimal Tx signal estimation values with respect to each of the K optimal antenna signals in step S 102, and calculates L residual Rx signals in which the interference of the optimal Tx signal estimation values is cancelled from all Rx signals in step S 103.
  • Step S 102 will be described in more detail with reference to Eqs. 7 to 10.
  • Eq. 10 [74] Eq. 7 represents the cancellation of the interference of the optimal Tx signal estimation values, calculated in Eq. 6, from all Tx signals. Since the calculation of the optimal Tx signal estimation value
  • Eq. 8 represents an interference-cancelled channel matrix H' for removing the influence of the optimal Tx signal estimation value from the multipath radio channels H. That is, it can be seen from Eq. 8 that h is removed.
  • Eq. 9 represents a weight matrix W calculated using the multipath radio channel matrix H' of Eq. 8, in which the influence of the optimal Tx signal estimation value is removed. Since the weight matrix of Eq. 9 is calculated in the same manner as Eq. 8, its detailed description will be omitted. Using Eq. 9, the weight matrix W for canceling the interference of the Tx signals, in which the influence of the optimal Tx signal estimation signal is removed, can be obtained.
  • Eq. 10 represents the residual antenna signal obtained by multiplying the weight matrix W of Eq. 9 by the residual Rx signal r' of Eq. 7.
  • L residual antenna signals y' are calculated because the number of the residual Rx signals r' is L.
  • step S 103 the receiver of the MIMO system calculates the L residual antenna signals in which the interference of the optimal Tx signal estimation values is removed.
  • step S 104 L estimated Tx signal values (hereinafter, referred to as residual Tx signal estimation values) are calculated by quantizing the residual antenna signals into the possible values of the predefined constellation size L.
  • Step S 104 will be described below with reference to Eq. 11 below.
  • Eq. 11 represents the residual Tx signal estimation value calculated using the residual antenna signals. It can be seen that
  • Eq. 11 determines the L residual Tx signal estimation values because the residual antenna signals y' are generated as many as the constellation size L. [84] When the receiver of the MEMO system selects the K optimal antenna signals in step SlOl, steps S 102 to S 104 are repeated for each of the K optimal antenna signals.
  • steps S 102 to S 104 are repeated until the L residual Tx signal estimation values are determined.
  • step S 105 as the results of the K-time repetition, the receiver of the MEMO system generates estimated Tx signal candidate groups as many as the L residual Tx signal estimation values in each of the K optimal antenna signals. That is, the number of the estimated Tx signal candidate groups created is KxL, which is the product of the number of the optimal antenna signals and the number of the residual Tx signal estimation values.
  • step S 106 the receiver of the MEMO system detects the Tx signals by applying the ML detection scheme to the signals of the estimated Tx signal candidate groups. Since the ML detection scheme is well known, its detailed description will be omitted.
  • the methods in accordance with the embodiments of the present invention can be realized as programs and stored in a computer-readable recording medium that can execute the programs.
  • Examples of the computer-readable recording medium include CD-ROM, RAM, ROM, floppy disks, hard disks, magneto-optical disks and the like.

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  • Engineering & Computer Science (AREA)
  • Computer Networks & Wireless Communication (AREA)
  • Signal Processing (AREA)
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Abstract

A detecting method of a multiple-input multiple-output system includes the steps of: a) canceling interference between transmit signals by assigning weight values to signals received through a plurality of antennas, and determining K optimal antenna signals through channel gain estimation; b) calculating L transmit signal estimation values by quantizing the optimal antenna signals according to a predefined constellation size of L; c) calculating L residual antenna signals, in which interference of the transmit signal estimation values is removed from the received signals using the L Tx signal estimation values; d) calculating L residual transmit signal estimation values by quantizing the L residual antenna signals according to the predefined constellation size; and e) creating K×L estimated transmit signal candidate groups by repeating the calculation of the L residual transmit signal estimation values for each of the K optimal antenna signals, and detecting transmit signals from the estimated transmit signal candidate groups.

Description

Description
DETECTING METHOD OF MULTIPLE-INPUT MULTIPLE- OUTPUT SYSTEM
Technical Field
[1] The present invention relates to a detecting method of a multiple-input multiple- output system; and, more particularly, to a detecting method of a multiple-input multiple-output system, including the steps of: determining K optimal transmit (Tx) signals among all possible combinations of Tx signals at a receiver of the MIMO system, and calculating estimation values of the K optimal Tx signals; determining L antenna signals in which interference of the optimal antenna signals is removed, and calculating L residual Tx signal estimation values; and applying a maximum likelihood (ML) detection scheme to KxL estimated Tx signal candidate groups.
[2]
Background Art
[3] In recent years, as the wireless communication service is changing from a voice service to a high-quality multimedia service, studies on data transmission technologies are actively in progress in order to transmit a larger amount of data at a lower error rate more rapidly than ever.
[4] The data transmission, however, is greatly influenced by wireless communication environment, e.g., signal fading, interference, and noise. Specifically, the data transmission is influenced by serious signal distortion caused by combination of signals having different phases and amplitudes received through different paths due to multipath fading.
[5] To solve the signal fading, a multiple-input multiple-output (hereinafter, referred to as a MIMO) system has been proposed.
[6] Fig. 1 is a block diagram of a conventional MIMO system.
[7] Referring to Fig. 1, the MEMO system is a wireless communication system that transmits/receives different data through M transmit (Tx) antennas 1 and N receive (Rx) antennas 2, instead of using wide frequency bandwidth, in order to increase a data rate and a transmission capacity in the wireless communication environment with limited frequency resources.
[8] In the MEMO system, signals received at the Rx antennas 2 are expressed as Eq. 1 below.
[9]
[10] r=Hx+n Eq.1
[11] where x is Tx signals transmitted differently through the M Tx antennas 1, H is multipath radio channels that the Tx signals x pass through before they are received at the Rx antennas 2, r is Rx signals received at the N Rx antennas 2 over the multipath radio channels H, and n is noise signals added to the Rx antennas 2.
[12] The Tx signals x are expressed as
Figure imgf000004_0001
, the Rx signals r are expressed as
T = [ T 1 r2 " rN_γ rN]
, and the multi-path radio channels H are expressed as
H-I h1 h2 • • • h hM]
[13] In addition, the noise signals n are expressed as
Tl = [ Tl 1 Tl 2 ' " Tl TIN] and have a complex Gaussian distribution in which a mean of the respective components is zero and a variation is N /2 in each order. [14] Meanwhile, the receiver of the MEMO system uses a maximum likelihood (ML) detection scheme. The ML detection scheme is to select an input signal having a minimum squared Euclidean distance among the possible combinations of the Tx signals x. [15] Referring to Fig. 1 and Eq. 1, the ML detection scheme determines a solution
JC using Eq. 2 below. [16] [17]
Figure imgf000004_0002
X
Eq. 2
[18] In Eq. 2, CM is a vector set that the Tx signals x can have within a signal con-
M stellation. The number of elements of the vector set is L , where L is a constellation size. [19] In the MEMO system, the ML detection scheme exhibits the optimal performance in terms of a bit error rate (BER). However, as can be seen from Eq. 2, the ML detection scheme must calculate the square of the Euclidean distance for all possible Tx signals and compare the calculated values from one another. Thus, the operation of Eq. 2 must be performed L times.
[20] As the constellation size L or the number M of the Tx antennas 1 increases, the processing time and complexity exponentially increase, so that the practical implementation is difficult.
[21] Meanwhile, a successive interference cancellation (SIC) scheme is proposed to reduce the complexity of the ML detection scheme. The SIC scheme is carried out as follows.
[22] In the first step, interference between Tx signals is cancelled by linearly assigning weight values to Rx signals, and the Tx signals are separated according to Tx antennas 1.
[23] In the second step, the interference-cancelled signals are randomly sorted, for example in ascending order of signal-to-noise ratio (SNR), and a signal to be first removed is determined.
[24] In the third step, an estimation value of the Tx signal is calculated through quantization of the determined signal into the signal constellation, and the influence of the calculated estimation value is removed from the Rx signal.
[25] Then, the first to third steps are repeated until all Tx signals are detected.
[26] Compared with the ML detection scheme, the SIC method can greatly reduce the amount of calculation and complexity. However, because noise increases when the interference between the Tx signals is removed in the first step, the BER performance is degraded.
[27] Further, because the entire performance of the SIC scheme is greatly dependent on the reliability of the initially detected signal, the sorting step plays an important role.
[28] That is, the ML detection scheme has a problem of the complexity and the SIC scheme has a problem of the degraded BER performance. Therefore, there is a demand for a detecting method that can provide the reduced complexity and the improved BER performance and can easily implement the MIMO system.
[29]
Disclosure of Invention Technical Problem
[30] It is, therefore, an object of the present invention to provide a detecting method of a
MIMO system, including the steps of: determining K optimal transmit (Tx) signals among all possible combinations of Tx signals at a receiver of the MEMO system, and calculating estimation values of the K optimal Tx signals; determining L antenna signals in which interference of the optimal antenna signals is removed, and calculating L residual Tx signal estimation values; and applying a maximum likelihood (ML) detection scheme to KxL estimated Tx signal candidate groups.
[31]
Technical Solution
[32] In accordance with one aspect of the present invention, there is provided a detecting method of a MEMO system using multipath radio channels, including the steps of: a) canceling interference between transmit signals by assigning weight values to signals received through a plurality of antennas, and determining K optimal antenna signals through channel gain estimation, where K is an arbitrary positive integer; b) calculating L transmit signal estimation values by quantizing the optimal antenna signals according to a predefined constellation size of L, where L is an arbitrary positive integer; c) calculating L residual antenna signals, in which interference of the transmit signal estimation values is removed from the received signals using the L Tx signal estimation values; d) calculating L residual transmit signal estimation values by quantizing the L residual antenna signals according to the predefined constellation size; and e) creating KxL estimated transmit signal candidate groups by repeating the calculation of the L residual transmit signal estimation values for each of the K optimal antenna signals, and detecting transmit signals from the estimated transmit signal candidate groups.
[33]
Advantageous Effects
[34] In accordance with the present invention, the complexity of the ML detection scheme can be remarkably reduced and the BER performance can be greatly improved.
[35] Furthermore, the MIMO system capable of solving the problem of the limited frequency resources can be easily implemented.
[36]
Brief Description of the Drawings
[37] The above and other objects and features of the present invention will become apparent from the following description of the preferred embodiments given in conjunction with the accompanying drawings, in which:
[38] Fig. 1 is a block diagram of a conventional MIMO system; and
[39] Fig. 2 is a flowchart illustrating a detecting method of a MIMO system according to an embodiment of the present invention.
[40]
Best Mode for Carrying Out the Invention [41] Other objects and aspects of the invention will become apparent from the following description of the embodiments with reference to the accompanying drawings, which is set forth hereinafter.
[42] Fig. 2 is a flowchart illustrating a detecting method of a MIMO system according to an embodiment of the present invention.
[43] Since the present invention is applied to the MIMO system of Fig. 1, a detailed description of the MEMO system will be omitted.
[44] Referring to Fig. 2, when the Rx antennas 2 in the receiver of the MIMO system receive signals in step SlOO, K (l≤K≤M) antenna signals having the highest reliability (hereinafter, referred to as "Optimal antenna signals" are determined among the possible Tx signals of the Tx antennas 1 in step SlOl. That is, the receiver of the MIMO system cancels the interference between the Tx signals by assigning weight values to the Rx signals and then determines the K optimal antenna signals by estimating channel gains using SNR, log likelihood ratio, or preamble.
[45] Step SlOl will be described in detail with reference to Eqs. 3 to 5 below.
[46]
[47]
W= (HHH+σJ2 ) ' XHH, (MMSE)
[48]
Figure imgf000007_0001
Eq. 3 [49] [50] y = Wr= WHx= Wn
Eq. 4 [51] [52]
Eq. 5
[53] Eq. 3 represents a weight matrix W to be multiplied by the Rx signal r in order to cancel the interference between the Rx signals. The weight matrix W is expressed as
T
TV= [ ΛV 1 ΛV ΛV M\ [54] The weight matrix W is calculated using a minimum mean square error (MMSE) scheme or a zero forcing (ZF) scheme. Since the MMSE scheme and the ZF scheme are well known, their detailed description will be omitted.
[55] Eq. 4 represents the interference-cancelled signal y obtained by multiplying the Rx signal r by the weight matrix W of Eq. 3.
[56] Eq. 5 represents an n* signal y n extracted from the signal y. Since the number of the
Tx antennas 1 is M, l≤n≤M.
[57] Specifically, the receiver of the MIMO system determines the K optimal antenna signals using the SNRs or log likelihood ratios of the M extracted signals
{y\^ " ^n^ " ^M} given by Eq. 5. For convenience, it will be assumed that one of the K optimal antenna signals is an n* extracted signal y n and is applied to following equations. Since the ap- plication of the remaining (K-I) optimal antenna signals is identical to that of the extracted signal y n , its detailed description will be omitted.
[58] The receiver of the MIMO system determines the K optimal antenna signals among the Tx signals in step SlOl, and quantizes the K optimal antenna signals into all possible values of a predefined constellation size L to calculate L optimal Tx signal estimation values in step S 102. That is, the receiver of the MIMO system calculates the L optimal Tx signal estimation values with respect to the n extracted signal y n , and calculates L optimal Tx signal estimation values with respect to each of the remaining
(K-I) optimal antenna signals.
[59] Step S 102 will be described in more detail with reference to Eq. 6 below.
[60]
[61]
Figure imgf000008_0001
Eq. 6 [62] Eq. 6 represents the optimal Tx signal estimation value
x n obtained by quantizing the n* extracted signal y n according to the predefined con- stellation size L.
[63] In this manner, the receiver of the MIMO system calculates the L optimal Tx signal estimation value
Λ x n by substituting all values of the constellation, that is, the first to last signals whose number is equal to the constellation size L.
[64] Meanwhile, the receiver of the MIMO system calculates the L optimal Tx signal estimation values with respect to each of the K optimal antenna signals in step S 102, and calculates L residual Rx signals in which the interference of the optimal Tx signal estimation values is cancelled from all Rx signals in step S 103.
[65] Step S 102 will be described in more detail with reference to Eqs. 7 to 10.
[66]
/\ r '=r-hnx „
Eq. 7 [67] [68]
Figure imgf000009_0001
Eq. 8
[69] [70]
Figure imgf000009_0002
[71]
W=(H^H')' λH'H, (ZF)
Eq. 9
[72] [73] y '= Wr '
Eq. 10 [74] Eq. 7 represents the cancellation of the interference of the optimal Tx signal estimation values, calculated in Eq. 6, from all Tx signals. Since the calculation of the optimal Tx signal estimation value
* n is performed as many times as the constellation size L in Eq. 7, the residual Rx signals r' are generated as many as the constellation size L. [75] Eq. 8 represents an interference-cancelled channel matrix H' for removing the influence of the optimal Tx signal estimation value from the multipath radio channels H. That is, it can be seen from Eq. 8 that h is removed. [76] Eq. 9 represents a weight matrix W calculated using the multipath radio channel matrix H' of Eq. 8, in which the influence of the optimal Tx signal estimation value is removed. Since the weight matrix of Eq. 9 is calculated in the same manner as Eq. 8, its detailed description will be omitted. Using Eq. 9, the weight matrix W for canceling the interference of the Tx signals, in which the influence of the optimal Tx signal estimation signal is removed, can be obtained.
[77] Eq. 10 represents the residual antenna signal obtained by multiplying the weight matrix W of Eq. 9 by the residual Rx signal r' of Eq. 7. In Eq. 10, L residual antenna signals y' are calculated because the number of the residual Rx signals r' is L.
[78] Meanwhile, in step S 103, the receiver of the MIMO system calculates the L residual antenna signals in which the interference of the optimal Tx signal estimation values is removed. In step S 104, L estimated Tx signal values (hereinafter, referred to as residual Tx signal estimation values) are calculated by quantizing the residual antenna signals into the possible values of the predefined constellation size L.
[79] Step S 104 will be described below with reference to Eq. 11 below.
[80]
[81]
Figure imgf000010_0001
Eq. 11
[82] Eq. 11 represents the residual Tx signal estimation value calculated using the residual antenna signals. It can be seen that
Figure imgf000010_0002
is removed. [83] In addition, Eq. 11 determines the L residual Tx signal estimation values because the residual antenna signals y' are generated as many as the constellation size L. [84] When the receiver of the MEMO system selects the K optimal antenna signals in step SlOl, steps S 102 to S 104 are repeated for each of the K optimal antenna signals.
In other words, steps S 102 to S 104 are repeated until the L residual Tx signal estimation values are determined. [85] In step S 105, as the results of the K-time repetition, the receiver of the MEMO system generates estimated Tx signal candidate groups as many as the L residual Tx signal estimation values in each of the K optimal antenna signals. That is, the number of the estimated Tx signal candidate groups created is KxL, which is the product of the number of the optimal antenna signals and the number of the residual Tx signal estimation values. [86] In step S 106, the receiver of the MEMO system detects the Tx signals by applying the ML detection scheme to the signals of the estimated Tx signal candidate groups. Since the ML detection scheme is well known, its detailed description will be omitted.
[87] The methods in accordance with the embodiments of the present invention can be realized as programs and stored in a computer-readable recording medium that can execute the programs. Examples of the computer-readable recording medium include CD-ROM, RAM, ROM, floppy disks, hard disks, magneto-optical disks and the like.
[88] The present application contains subject matter related to Korean patent application
Nos. 2005-0116134 and 2006-0047744, filed with the Korean Intellectual Property Office on December 1, 2005, and May 26, 2006, respectively, the entire contents of which is incorporated herein by reference.
[89] While the present invention has been described with respect to certain preferred embodiments, it will be apparent to those skilled in the art that various changes and modifications may be made without departing from the scope of the invention as defined in the following claims.

Claims

Claims
[1] A detecting method of a multiple-input multiple-output system using multipath radio channels, comprising the steps of: a) canceling interference between transmit signals by assigning weight values to signals received through a plurality of antennas, and determining K optimal antenna signals through channel gain estimation, where K is an arbitrary positive integer; b) calculating L transmit signal estimation values by quantizing the optimal antenna signals according to a predefined constellation size of L, where L is an arbitrary positive integer; c) calculating L residual antenna signals, in which interference of the transmit signal estimation values is removed from the received signals using the L Tx signal estimation values; d) calculating L residual transmit signal estimation values by quantizing the L residual antenna signals according to the predefined constellation size; and e) creating KxL estimated transmit signal candidate groups by repeating the calculation of the L residual transmit signal estimation values for each of the K optimal antenna signals, and detecting transmit signals from the estimated transmit signal candidate groups.
[2] The detecting method as recited in claim 1, wherein the K optimal antenna signals are determined through the channel gain estimation using a signal- to-noise ratio in the step a).
[3] The detecting method as recited in claim 1, wherein the K optimal antenna signals are determined through the channel gain estimation using a log likelihood ratio in step a).
[4] The detecting method as recited in claim 1, wherein the K optimal antenna signals are determined through the channel gain estimation using a preamble.
[5] The detecting method as recited in claim 1, wherein the weight vales in the step a) are calculated using a multipath radio channel matrix in accordance with one of a minimum mean square error (MMSE) scheme and a zero forcing (ZF) scheme.
[6] The detecting method as recited in claim 1, wherein the residual antenna signals in the step c) are calculated by canceling the interference of the transmit signal estimation values and assigning the weight values thereto.
[7] The detecting method as recited in claim 6, wherein the weight values are calculated using a multipath radio channel matrix in which the interference of the transmit signal estimation values is removed in accordance with one of a minimum mean square error (MMSE) scheme and a zero forcing (ZF) scheme. [8] The detecting method as recited in claim 1, wherein the step e) detects the transmit signals by applying a maximum likelihood (ML) detection scheme to the estimated transmit signal candidate groups.
PCT/KR2006/005058 2005-12-01 2006-11-28 Detecting method of multiple-input multiple-output system WO2007064131A1 (en)

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