Precoding method for transmitting information in a MIMO radio system

Abstract
A method of transmitting a transmit vector comprising symbols to be delivered within a resource unit from a transmitting station with one or more transmit antennas to one or more receiving stations with one or more receive antennas. The method comprises obtaining information on the state of channels between the one or more transmit antennas and the one or more receive antennas; and computing, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations. The transmit vector is multiplied with a precoding matrix P fulfilling the equations
Description

BRIEF DESCRIPTION OF THE DRAWINGS

In the following, the invention will be described in greater detail with reference to the preferred embodiments and the accompanying drawings, in which



FIG. 1 shows an example of a data transmission system;



FIG. 2 illustrates FIG. 2 illustrates an exemplary configuration of a transmitter and receiver;



FIG. 3 illustrates FIG. 3 illustrates the embodied data transmission system in complex baseband notation;



FIG. 4 illustrates en example of the method for transmitting information from a transmitting station to a receiving station;



FIG. 5 illustrates simulation results on the uncoded bit error rate curves for the precoding methods under comparison; and



FIG. 6 illustrates simulation results on the complementary cumulative distribution function of the average per-stream Signal to Interference-plus-Noise Ratio of an equivalent channel a→â.





DETAILED DESCRIPTION OF THE INVENTION

The present invention is applicable to various different digital radio systems where mechanisms for channel state information are available, for example, TDMA, FDMA, CDMA radio systems, and different variants of them. The invention is especially suited for time division duplexing (TDD) systems. In the following, an advantageous embodiment of the data transmission system according to the invention is described in a configuration of a mobile communication system, without limiting the invention to the embodied radio system or the specific terms and elements used in the description.



FIG. 1 illustrates user equipment 10 that is connected to the Core Network (CN) 12 through a Radio Access Network (RAN) 14. In radio access network, coverage area of base transceiver stations (BTS) 16 that belong to the same base station form a cell. The user may move from one cell to another, and the network hands the user over to a different cell according to the movement. Each base station comprises, or is connected to a base station controller (BSC) 18, which controls the radio frequencies and channels used by the base station. The base station controller is connected over a defined interface to a switching centre, and thus provides the interface between the radio access network 14 and the core network 12.


User equipment 10 of the communication system can be a simplified terminal for speech only or a terminal for diverse services. In the latter case the terminal acts as a service platform and supports loading and execution of various functions related to the services. User equipment comprises a mobile equipment and a subscriber identity module, that holds the subscriber identity, performs authentication algorithms, and stores authentication and encryption keys and other subscription information that is needed at the mobile station. The mobile equipment may be any equipment capable of communicating in a mobile communication system or a combination of several pieces of equipment, for instance a multimedia computer to which a card phone has been connected to provide a mobile connection.


It should be noted that only elements and units essential for understanding the invention are illustrated in FIG. 1. For a person skilled in the art it is clear that a digital radio system typically may comprise a plurality of elements that are not shown in FIG. 1.


In the following, the key system elements in implementation of the invention are described in more detail. FIG. 2 illustrates elementary configurations for a transmitter 200 of a transmitting station and a receiver 250 of a receiving station in a transmission path of the radio system. In terms of the embodiment of FIG. 1, the transmitting station may, for example, be a base station and the receiving station may be the user equipment.


The transmitter 200 comprises a transmitter signal processing unit 210, and signal transmitting means 220. The transmitter signal processing unit 210 performs signal processing on the bitstreams input to the transmitter 200 and generates a multiplicity transmit signals to the signal transmitting means 220. The signal transmitting means 220 comprise a plurality of transmitting antennas, for example, in form of an array antenna with one or more antenna elements. The transmit signals are transmitted from the plurality of transmit antennas over a corresponding plurality of transmission channels to a number of receiving stations. This transmission scheme is called spatial multiplexing because one data stream is multiplexed (divided) between multiple transmitting antennas and sent over separate spatial channels.


More specifically, according to the internal processes of the transmit station, the transmitter 200 receives a number of encoded binary data streams that comprise signals to for delivery to a number of mobile users within one resource unit. The transmitter signal processing unit 210 performs signal processing and feeds analog transmit signals to the signal transmitting means 220. The transmitter signal processing unit 210 is a device capable of performing systematic execution of operations upon data, and typically comprises functional units for symbol mapping, signal spreading, and burst generation. In symbol mapping coded bits are mapped into modulation symbols. A pre-defined spreading code is applied on the signal, and a burst is generated. The signal transmitting means 220 comprise a radio frequency part and a plurality of transmit antennas. The radio frequency part performs digital-to-analog conversion, upwards frequency conversion, filtering and amplification of signals such that they may be fed to the plurality of transmitting antennas.


Correspondingly, the receiver 250 comprises a receiver signal processing unit 260, and signal receiving means 270. The signal receiving means 270 comprise a plurality of transmitting antennas, for example, in form of an array antenna with one or more antenna elements. The signals are received from the plurality of transmit antennas over a corresponding plurality of transmission channels, and fed to the receiver signal processing unit 260. The receiver signal processing unit 260 demultiplexes the spatial streams, recovers the original data and outputs a received signal to the internal processed of the receiving station.


More specifically, a received signal is processed in a radio frequency (RF) part of the signal receiving means 270. The radio frequency part transfers the radio frequency signal to either intermediate frequency or to a base band frequency, converts the downconverted signal from analog to digital, samples the signal and feeds the digitized input samples to the receiver signal processing unit 260. The receiver signal processing unit 260 is a device capable of performing systematic execution of operations upon data. Corresponding to the transmission end, the receiver signal processing unit typically comprises the functional units for at least burst splitting, signal despreading, and integration to user data symbols, delay compensation and channel estimation. These result in channel-compensated symbols that are combined into a received signal. According to the invention, the receiver signal processing unit 260 comprises a filter that is used to determine and update the current multipath delay profile of the channel, compute a linear and thereby adjust the generation of the received signal such that the improved performance is achieved.


It should be noted that for conciseness, only elements necessary for disclosing the invention are described herein. The transmitting station and/or the receiving station typically comprises a transmitter and a receiver, such that the station is capable of two-way communication. Additionally, an interaction between the transmitter and the receiver of a station may be arranged such that information on the radio interface may be fed back from the receiver to the transmitter to be used as a basis for the computations utilizing the knowledge on the channel state. Alternatively, the transmitter may comprise uplink measurement functionality for obtaining knowledge on the channel state. A signal processing unit may be implemented as a single processor or as an integrated combination of several processors, or in the form of hardware components, such as integrated circuits, discrete components, or a combination of any of these, which is evident to one skilled in the art. The functional units are formed as logical entities by a combination of a shared or dedicated physical resource of the signal processing unit and a set of predefined algorithms necessary for execution of the operations for the functionality of the respective unit.


According to the invention, the transmit signal processing unit 220 according to the invention further comprises a precoder, i.e. a functional unit for precoding the transmit signals on the basis of knowledge of the communication channels between the transmitter and the receivers. The precoder thus comprises functionality for receiving defined information on the state of the communication channels, and functionality for computing a preceding matrix on the basis of the received information. Furthermore, the precoder also comprises a functionality for receiving transmit data containing symbols for users served within a resource unit and a functionality for multiplying the transmit data with the computed precoding matrix.


In the following, the linear precoding procedure and the use of the precoder and the filter will be described in more detail. The following expressions refer to frequency flat channels. In case of Orthogonal frequency-division multiplexing (OFDM) systems, the implementation can be seen as precoding on each resource unit. FIG. 3 illustrates the embodied system in complex baseband notation. In FIG. 3 it is assumed that the transmitter (in terms of FIG. 2, the transmitting station) has MT antennas and it serves K receivers (in terms of FIG. 2, receiving stations) within the same resource unit. A total number of MR receive antennas are distributed among these users according to








M
R

=




k
=
1

K







M

R
,
k




,




where MR,k denotes the number of antennas at the k th user. Let us furthermore assume that the k th user receives Sk independent data streams, and






S
=




k
=
1

K







S
k






is the total number of streams to be transmitted.


The transmit vector a is denoted by






a=[a
1
T
,a
2
T
, . . . ,a
K
T]TεCS.


where akεCSk is the data vector containing the Sk symbols for the k th user. We assume that the data symbols are normalized such that E{aaH}=IS.


The linear precoding step is expressed by premultiplication with the matrix






P=[P
1
,P
2
, . . . ,P
K
]εC
M

T

×S,


where the submatrix PkεCMT×Sk corresponds to user k. The transmit vector xεCMT is then given by x=Pa, and its average power is constrained by






E{∥x∥
2}=trace(PHP)=Ptr.


Furthermore, the physical transmission channel itself and the receiver noise are given as y=Hx+n. The combined channel matrix H is






H=[H
1
T
,H
2
T
, . . . ,H
K
T
]εC
M

R

×M

T
,


where HkεCMR,k×MT is the channel matrix of the k th user. The vector n denotes additive zero-mean receiver noise with covariance matrix Rnn. Additionally,






n=[n
1
T
,n
2
T
, . . . ,n
K
T]TεCMR,


where nkεCMR,k is the noise vector at the k th user. Finally, we define Rnn,k=E{nknkH}.


At the receiver end of the transmission chain, the linear operator VεCS×MR is applied to obtain â=Vy, which contains the estimates of the true transmitted data symbols. Since the users may reside at distinct locations, and hence are not able to perform cooperative receive processing, V is block-diagonal, i.e.,







V
=


[




V
1



0





0




0



V
2






0













0




0


0


0



V
K




]



C

S
×

M
R





,




where VkεCSk×MR,k is the decoding matrix of the k th user.


The system output âεCS servers as an estimate for the original transmit vector a. It can be expressed as â=VHPa+Vn, or equivalently,







a
^

=



[



a
^

1
T

,


a
^

2
T

,

,


a
^

K
T


]

T








ds







S








a
^

k


=



V
k



H
k






l
=
1

K








P
l



a
l




+


V
k



n
k




,



k

=
1

,
2
,

,

K
.








The number of data streams for each user, Sk, is chosen a-priori, and is not subject to prioritization. The choice must satisfy Sk≦MR,k and Sk≦MT. The objective function is defined as






E{∥a−{circumflex over (a1)}∥2}=F=F(P,V).′,


whereby the optimization may be expressed as


{P,V}LMP=arg min F(P,V) PεCMT×S VεCS×MR,block diagonal subject to tr (PHP)=Ptr.

By taking into account the equation for âK, we get







=


E


{




k
=
1

K












V
k



H
k






l
=
1

K








P
l



a
l




+


V
k



n
k


-

a
k




2


}






=

E



{



k



(





l
,
m





a
l
H



P
l
H



H
k
H



V
k
H



V
k



K
k



P
m



a
m



-



l




a
l
H



P
l
H



H
k
H



V
k
H



a
k



+


n
k
H



V
k
H



V
k



n
k


-



m




a
k
H



V
k



H
k



P
m



a
m



+


a
k
H



a
k



)


}

.







where Σi is used as an abbreviation for Σi−1K. In the last equation, use has been made of the property that the signal and noise components are uncorrelated. The trace operator can now be applied to the scalar terms, and the expectation moved as far inside the equation as possible. Thus







=



k




(





l
,
m




tr


(


P
l
H



H
k
H



V
k
H



V
k



K
k



P
m


E


{


a
m



a
l
H


}


)



-



l



tr


(


P
l
H



H
k
H



V
k
H


E


{


a
k



a
l
H


}


)



-



m



tr


(


V
k



H
k



P
m


E


{


a
m



a
k
H


}


)



+

tr


(


V
k
H



V
k


E


{


n
k



n
k
H


}


)


+

tr


(

E


{


a
k



a
k
H


}


)



)

.






The expressions of the type E{amalH} evaluate to the identity matrix if m=l and the zero matrix otherwise. Additionally, we now use Rnn,k as defined earlier. Hence,







=


(

P
,
V

)

=



k




(




l



tr


(


P
l
H



H
k
H



V
k
H



V
k



H
k



P
l


)



-

tr


(


P
k
H



H
k
H



V
k
H


)


-

tr


(


V
k



H
k



P
k


)


+

tr


(


V
k
H



V
k



R

nn
,
k



)


+

tr


(

I

S
k


)



)

.







In order to find the optimum parameters P and V in the sense of the optimization expression, the Lagrangian multiplier method will be applied. The modified objective function is






L(P,V,λ)=F(P,V)+λ(Σktr(PkHPk)−Ptr),


where λεR is the Lagrangian multiplier. Note that L(P, V, λ) is equivalent to the more detailed notation L(P1, . . . ,PK,V1, . . . ,VK,λ).


Next the derivatives of L are computed with respect to Pi, Vi, and λ. These derivatives can be formed directly by using the convention that arranges the derivatives with respect to each matrix component in a new ‘gradient’ matrix. This method is not fully consistent, since the ‘gradient’ definition does not fulfill f(χ0+Δχ)=f(χ0)+(grad f)(χ0)·Δχ+O(∥Δχ∥2) due to dimensionality. For the specific purpose of setting the derivative to zero, the convention is useful. The mathematically rigorous way would be to express the objective function in terms of vec(P) and vec(V) instead of P and V, where vec(•) is the stacking operation. The gradient with respect to a vector argument is well defined and could then be used. This approach, however, makes the derivation unnecessarily complex while yielding the same result.


The arguments of L are complex-valued. The proper way to form the gradient is to treat the argument and its conjugate/conjugate transpose as independent variables. The derivative is then taken only with respect to the conjugate argument.


Under these conventions, also ∂tr(AHB)/∂AH=BT. The partial derivatives of L with respect to Pi, Vi, and λ evaluate to








(








P
i
H



)

T

=





k




H
k
H



V
k
H



V
k



H
k



P
i



-


H
i
H



V
i
H


+

λ








P
i





(








V
i
H



)

T



=




l




V
i



H
i



P
l



P
l
H



H
i
H



-


P
i
H



H
i
H


+


V
i



R

nn
,
i


















λ


=





k
=
1

K







tr


(


P
k
H



P
k


)



-


P
tr

.






In order to obtain a necessary condition on the optimum P and V, these equations have to be set simultaneously to zero. Using





ΣkHkHVkHVkHk=HHVHVH





ΣlPlPlH=PPH,


the equations can be written as






H
H
V
H
VHP
i
−H
i
H
V
i
H
+λP
i=0MT×Si,i=1 . . . K






V
i
H
i
PP
H
H
i
H
−P
i
H
H
i
H
+V
i
R
nn,i=0Si×MR,i,i=1 . . . K






tr(PHP)=Ptr.


Furthermore, the K equations in the first line can be aggregated by concatenating all columns next to each other. Extracting common factors, it can be concluded that:





(HHVHVH=λIMT)P=HHVH






V
i(HiPPHHiH+Rnn,i)=PiHHiH,i=1 . . . K






tr(PHP)=Ptr.


A direct solution of equations 1(a) to 1(c) is not easily possible. Realizing that equation 1(a) can be used to express P in terms of V, all occurrences of P can be eliminated from the set of equations. The problem can then be rewritten in a least-squares formulation








{



V

1
,

,




V
K


,
λ

}

LMP

=



arg





min





V
i



C


S
i

×

M

R
,
i





,


i



λ

R





(





k
=
1

K












V
i



(



H
i



P
V



P
V
H



H
i
H


+

R

nn
,
i



)


-


P

V
,
i

H



H
i
H





F
2


+





tr


(


P
V
H



P
V


)


-

P
tr




2


)






where Pv is the specific P as of function of V and λ that results from equation (1a), and ∥•∥F denotes the Frobenius matrix norm. Equation (1b) lends itself to numerical methods well known to a person skilled in the art. For initial guess off the free variables, successive minimum mean square error (S-MMSE) or block diagonalization (BD) schemes can be used as initial guesses for V.


It can be seen that for a fixed P, the above equations show that Vi is a well-known linear MMSE receiver for user i. More specifically, in the receiving end effective channel may be estimated as





Heq,i=HiPi


and the interference plus noise covariance matrix







R

eq
,
i


=




H
i



(





k
=
1


k

i


K








P
k



P
k
H



)




H
i
H


+


R

nn
.
i


.






These may be used to compute the standard LMMSE receiver filter





{circumflex over (V)}
i
=H
eq,i
H(Heq,iHeq,iH+Req,i)−1.


Hence, Vi need not be forwarded from the transmitting station to the receiving station, but their components can be estimated locally. The absence of need for additional over-the-air interaction in order to achieve the improved performance is a considerable advantage of the invention.



FIG. 4 illustrates the steps of the embodied method for transmitting information from a transmitting station to a receiving station. It should be noted that the method illustrates the operation of the whole data transmission system, and therefore shows functions from the point of view of the receiving station as well as of the transmitting station. In step 40, the transmitting station obtains a transmit vector a comprising transmit vectors for K receiving stations, each vector comprising the symbols for a receiving station. In step 41, the transmitting station obtains the channel state information in form of the covariance matrix Rnn and the combined channel matrix H. Channel state information may be obtained via feedback from the receiver branch, derived from uplink measurements, a predefined values may be utilized. Typically Rnn is obtained via feedback, H either via feedback or, in case of time-division duplexing (TDD) systems also from uplink measurements. Definitions of the covariance matrix and the combined channel matrix have been widely discussed in the field and are, as such, generally known to a person skilled in the art.


In step 42 the transmitting station calculates a preceding matrix P that is minimum mean-square error (MMSE) optimal. MMSE relates to an estimator having estimates with the minimum mean squared error possible. MMSE estimators are commonly described as optimal. P is calculated used the equations (1(a), 1(b), and 1(c)). In step 43, the transmit vector a is multiplied with the precoding matrix P and in step 44 the precoded transmit vector x is transmitted via the MT transmit antennas of the transmitting station. In step 45, the receiver vector y is received with the multiple receive antennas of the K receiving stations. In step 46, the receiving station estimates its effective channel matrix and the interference plus noise covariance matrix, and uses them to compute a standard linear minimum mean-square error (LMMSE) receiver filter {circumflex over (V)}i=Heq,iH(Heq,iHeq,iH+Req,i)−1. In step 47, the receiving station performs filtering by {circumflex over (V)}i=Vi in order to generate soft bits for forward error correction (FEC) decoding.


The invented solution provides a significantly improved performance over the existing techniques for transmitting information from a transmitting station with multiple transmit antennas to a receiving station with multiple receive antennas. In order to compare performance of the invented solution with the prior art BD and S-MMSE solutions, Monte Carlo simulations for cases with single data stream per user were carried out. This was implemented by choosing Sk=1, Sk=1, ∀k for Lk for the invented method, and applying dominant eigenmode transmission for the prior art methods.



FIG. 5 shows uncoded bit error rate curves for the preceding methods under comparison. The curves have been generated for a setup with K=3 users having 1, 2, and 3 receive antennas, respectively, and with 6 transmit antennas. For the plot, the bit error rates have been averaged over all users. The channel realizations have been drawn randomly with independent Rayleigh fading, where each element of the channel matrix has unit average power. The noise has been assumed to be independent between all receive antennas. On each data stream, random QPSK symbols with unit power have been transmitted. The receiver noise has been assumed to be complex Gaussian with power N02N. Furthermore, ES is defined as the average transmit power per data symbol.



FIG. 6 shows the complementary cumulative distribution function (CCDF) of the average per-stream Signal to Interference-plus-Noise Ratio (SINR) of the equivalent channel a→â. For a given channel realization (H, Rnn), the precoding and decoding matrices P and V are used to express the equivalent channel as (Heq, Rnn,eq)=(VHP, VRnnVH). The SINRk for the kth user and the average value SINRdb over all users are then readily available as








SIN






R
k


=






(

H
eq

)


k
,
k




2




(

R

nn
,
eq


)


k
,
k


+





l
=
1


l

k


K







(

H
eq

)


k
,
l




2





,






SIN






R
dB


=


1
/
K





k



10






dB
·



log
10



(

SIN






R
k


)


.










The same system parameters as for FIG. 5 have been used and ES/N0 has been fixed at 5 dB. For each channel realization, a single sample of SINRdb was computed, which was averaged over all users. A total of 10000 of these samples for each precoding method have been used to produce the plot.


Both FIGS. 5 and 6 show that the invented method achieves a significantly improved performance when compared to previously existing methods. The ES/N0 gain at a bit error rate of 10−2 is approximately 4.5 dB over S-MMSE and 11.6 dB over BD. Using the invented solution, the 10% outage value for the average per-stream SINR is 1,4 dB higher than for S-MMSE and 5.2 higher than for BD.


In an aspect, the invention provides a computer program product encoding a computer program of instructions for executing a computer process.


In another aspect, the invention provides a computer program distribution medium readable by a computer and encoding a computer program of instructions for executing a computer process.


The distribution medium may include a computer readable medium, a program storage medium, a record medium, a computer readable memory, a computer readable software distribution package, a computer readable signal, a computer readable telecommunications signal, and/or a computer readable compressed software package.


Embodiments of the computer process are shown and described in conjunction with FIG. 4. The computer program may be executed in the signal processing unit of the transmitter and/or the receiver.


Even though the invention is described above with reference to an example according to the accompanying drawings, it is clear that the invention is not restricted thereto but it can be modified in several ways within the scope of the appended claims.

Claims
  • 1. A method of transmitting a transmit vector comprising symbols to be delivered within a resource unit from a transmitting station with one or more transmit antennas to one or more receiving stations with one or more receive antennas, the method comprising: obtaining information on the state of channels between the one or more transmit antennas and the one or more receive antennas;computing, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations;precoding the transmit vector with a precoding matrix P fulfilling the equations (HHVHVH=λI)P=HHVH Vi(HiPPHHiH+Rnn,k)=PiHHiH trace(PHP)=Ptr performing filtering in the receiving station using a receiver filter corresponding to the block-diagonal linear operator V.
  • 2. A method according to claim 1, further comprising obtaining information on the state of channels through feedback.
  • 3. A method according to claim 1, further comprising obtaining information on the state of channels through uplink measurements.
  • 4. A radio system comprising a transmitting station, and a receiving station, the transmitting station comprising a transmitter for transmission of a transmit vector including symbols for one or more receiving stations through one or more transmit antennas within a resource unit;the receiving station comprising a receiver for receiving a receive vector from the one or more transmit antennas through one or more receive antennas within a resource unit;the transmitter being further configured to compute, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations, and precode the transmit vector with a preceding matrix P fulfilling the equations (HHVHVH=λI)P=HHVH Vi(HiPPHHiH+Rnn,k)=PiHHiH trace(PHP)=Ptr the receiver being further configured to perform filtering in the receiving station using a receiver filter corresponding to the block-diagonal linear operator V.
  • 5. A system according to claim 4, wherein the transmitting station comprises also a receiver, and the transmitter is configured to obtain information on the state of channels through feedback from the receiver.
  • 6. A system according to claim 4, wherein the transmitter is configured to obtain information on the state of channels through uplink measurements.
  • 7. A signal processing unit configured to receive information and generate a transmit vector comprising symbols to be delivered within a resource unit from a transmitting station with one or more transmit antennas to one or more receiving stations with one or more receive antennas, the unit being further configured to: receive information on the state of channels between the one or more transmit antennas and the one or more receive antennas;compute, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations;precode the transmit vector with a precoding matrix P fulfilling the equations (HHVHVH=λI)P=HHVH Vi(HiPPHHiH+Rnn,k)=PiHHiH trace(PHP)=Ptr
  • 8. A signal processing unit according to claim 7, wherein the unit is configured to obtain information on the state of channels through feedback from the receiver.
  • 9. A signal processing unit according to claim 7, wherein the unit is configured to obtain information on the state of channels through uplink measurements.
  • 10. A transmitting station comprising: signal transmission means comprising a plurality of transmit antennas, and a signal processing unit according to claim 7.
  • 11. A transmitting station according to claim 10, wherein the transmitting station is a base station for a radio system.
  • 12. A transmitting station according to claim 11, wherein the transmitting station is a base station for a TDD radio system.
  • 13. A computer program product encoding a computer process of instructions for executing a computer process for transmitting a transmit vector comprising symbols to be delivered within a resource unit from a transmitting station with one or more transmit antennas to one or more receiving stations with one or more receive antennas,obtaining information on the state of channels between the one or more transmit antennas and the one or more receive antennas;computing, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations;preceding the transmit vector with a precoding matrix P fulfilling the equations (HHVHVH=λI)P=HHVH Vi(HiPPHHiH+Rnn,k)=PiHHiH trace(PHP)=Ptr performing filtering in the receiving station using a receiver filter corresponding to the block-diagonal linear operator V.
  • 14. A computer program distribution medium readable by a computer and encoding a computer program of instructions for executing a computer process, the process including: transmitting a transmit vector comprising symbols to be delivered within a resource unit from a transmitting station with one or more transmit antennas to one or more receiving stations with one or more receive antennas,obtaining information on the state of channels between the one or more transmit antennas and the one or more receive antennas;computing, on the basis of the channel states between the one or more transmit antennas and the one or more receive antennas, a covariance matrix Rnn, a combined channel matrix H, and a block-diagonal linear operator V of decoding matrices of the receiving stations;precoding the transmit vector with a precoding matrix P fulfilling the equations (HHVHVH=λI)P=HHVH Vi(HiPPHHiH+Rnn,k)=PiHHiH trace(PHP)=Ptr performing filtering in the receiving station using a receiver filter corresponding to the block-diagonal linear operator V.
  • 15. The computer program distribution medium of claim 14, the distribution medium comprising a computer readable medium, a program storage medium, a record medium, a computer readable memory, a computer readable software distribution package, a computer readable signal, a computer readable telecommunications signal, and a computer readable compressed software package.
Priority Claims (1)
Number Date Country Kind
20065278 Apr 2006 FI national