The present application is related to U.S. patent application Ser. No. 12/401,711, filed Mar. 11, 2009, and concurrently filed U.S. patent application Ser. No. 12/554,082 (GENERALIZED DECISION FEEDBACK EQUALIZER PRECODER WITH RECEIVER BEAMFORMING FOR MATRIX CALCULATIONS IN MULTI-USER MULTIPLE-INPUT MULTIPLE-OUTPUT WIRELESS TRANSMISSION SYSTEMS), the entire disclosures of which are incorporated herein by reference.
The present invention relates generally to multiple-input multiple-output (MIMO) communications systems and, more particularly, to Generalized Decision Feedback Equalizer (GDFE) based precoder configuration in MIMO systems and input covariance matrix calculation.
It is well known that a Generalized Decision Feedback Equalizer (GDFE) based precoder provides the optimal capacity solution for Multi-user Multiple-Input Multiple-Output (MU-MIMO) wireless systems. However, the computational cost of determining various filters associated with the GDFE precoder is often prohibitive and is not suitable for many practical systems.
There are several known precoding techniques which can enable a Base Station (BS) equipped with multiple antennas to send simultaneous data streams to multiple user terminals (UTs) in order to optimize system capacity. In general, precoding for a MU-MIMO system aims to optimize a certain criterion such as system capacity or bit error rate. Selected references are noted below, together with a description of relevant aspects of the techniques proposed therein.
Q. H Spencer, A. L. Swindlehurst, and M. Haardt, “Zero-forcing methods for downlink spatial multiplexing in multi-user MIMO channels”, IEEE Transactions on Signal Processing, pp. 461-471, February 2004 [1] describes a linear precoding technique, known as Block Diagonalization (BD), which separates out the data streams to different UTs by ensuring that interference spans the Null Space of the victim UT's channel. The BD technique diagonalizes the effective channel matrix so as to create multiple isolated MIMO sub-channels between the BS and the UTs. Although this scheme is simple to implement, it limits system capacity somewhat.
C. Windpassinger, R. F. H Fischer, T. Vencel, and J. B Huber, “Precoding in multi-antenna and multi-user communications”, IEEE Transactions on Wireless Communications, pp. 1305-1316, July 2004 [2] describes a non-linear precoding scheme known as Tomlinson-Harashima Precoding (THP). This scheme relies on successive interference pre-cancellation at the BS. A modulo operation is used to ensure that transmit power is not exceeded. Different from BD, THP triangularizes the effective channel matrix and provides somewhat higher system capacity when compared to BD.
In W. Yu, “Competition and Cooperation in Multi-User Communication Environments”, PhD Dissertation, Stanford University, February 2002 [3] and W. Yu and J. Cioffi, “Sum capacity of Gaussian vector broadcast channels”, IEEE Transactions on Information Theory, pp. 1875-1892, September 2004 [4], Wei Yu introduced the GDFE precoder and showed that it achieves a high degree of system capacity. The basic components of this scheme are illustrated in
The filtered vector symbols x are then passed through a transmit filter 103 denoted by matrix B to produce transmitted signals y. In reference [3] and [4], a technique based on the covariance matrix (Szz) corresponding to “Least Favorable Noise” is proposed to compute the GDFE precoder components. Although, this technique achieves a high degree of system capacity, the computational cost of determining the GDFE precoder components is effectively prohibitive for a real-time implementation required by most practical systems.
X. Shao, J. Yuan and P. Rapajic, “Precoder design for MIMO broadcast channels”, IEEE International Conference on Communications (ICC), pp. 788-794, May 2005 [5] proposes a different precoding technique which achieves a capacity close to the theoretical maximum system capacity. The proposed method is computationally less complex compared to the GDFE precoder technique. However, the proposed method allocates equal power to all data streams, which may not be an effective technique for practical systems using a finite number of quantized bit-rates. Also, the proposed technique is limited to invertible channel matrices, which may not always be the case.
N. Jindal, W. Rhee, S. Vishwanath, S. A. Jafar, and A. Goldsmith, “Sum Power Iterative Water-filling for Multi-Antenna Gaussian Broadcast Channels”, IEEE Transactions on Information Theory, pp. 1570-1580, April 2005 [6] derives a very useful result referred to as the MAC/BC (multiple access channel/broadcast channel) duality; and Wei Yu, DIMACS Series in Discrete Mathematics and Theoretical Computer Science, Vol. 66, “Advances in Network Information Theory,” pp. 159-171 [7] develops the concept of least favorable noise.
The entire disclosures of the above references are incorporated herein by reference.
Exemplary embodiments of the invention provide a technique to realize a GDFE precoder for multi-user (MU) MIMO systems, which significantly reduces the computational cost while resulting in no capacity loss. The technique is suitable for improving the performance of various MU-MIMO wireless systems including presently planned future “4G” cellular networks. The computation of GDFE filter requires knowledge of Input Covariance Matrix for the Uplink (UL) channel as well as the Downlink (DL) channel. This invention focuses on the algorithm for determining a suitable Input Covariance Matrix, D, for the UL channel to facilitate GDFE implementation presented in U.S. patent application Ser. No. 12/401,711.
In Ser. No. 12/401,711, the implementation of a GDFE precoder relaxes the requirement for knowledge of the covariance matrix (Szz) corresponding to “Least Favorable Noise.” This is the key component in conventional design of a GDFE precoder and requires extensive computational cost. It also provides a uniform framework for realizing a GDFE precoder. Unlike a conventional GDFE precoder design, the proposed method does not require channel reduction when the Input Covariance Matrix (Sxx) for the DL channel is rank deficient.
The present invention reduces the algorithm complexity for determining the Input Covariance Matrix D for the equivalent UL channel assuming no coordination among different user terminals (UTs). This in turn allows for an efficient computation of the Input Covariance Matrix Sxx for the DL channel. The efficient computation of these two matrices, D and helps to realize GDFE precoder with significantly reduced complexity and significant improvement in computational cost. Also, unlike conventional algorithms for computing D, the proposed algorithm ensures that the rank of matrix D does not exceed the total number of transmit antennas at the Base Station (BS).
An aspect of the present invention is directed to a method for processing user symbols with a generalized decision feedback equalizer (GDFE) based precoder in a base station (BS) of a multi-user multiple-input multiple-output (MU-MIMO) wireless system having K user terminals (UTs) which communicate with the base station via an uplink (UL) channel and a corresponding downlink (DL) channel, the base station having Nt antennas and Pt as available transmit power, the DL channel being represented by a DL channel matrix HDL. The method comprises computing an effective UL channel matrix HUL using one of two methods (i) HUL=HDLH, or (ii) HUL=[(Pt/Nt)HDLHHDL+I]−1/2HDLH; extracting Hk, k=1, 2, . . . , K, from the UL channel matrix HUL=[H1H, H2H, . . . , HKH], where HkH corresponds to an equivalent UL channel for the kth UT, and I is an identity matrix; computing a singular value decomposition (SVD) of the DL channel between the BS and kth UT, Hk, for all K UTs, Hk=UkSkVkH where Uk denotes left singular vectors, Sk is a diagonal matrix with singular values making up the diagonal, and Vk denotes right singular vectors; extracting all singular values as s=[diag(S1), . . . , diag(SK)]; extracting a vector ŝ from s by choosing first utmost Nt largest non-zero singular values of s; sorting elements in ŝ in decreasing order; performing water-filling to allocate power and obtain a diagonal matrix Γk representing power allocations corresponding to the singular values of the kth UT; computing an UL covariance matrix for each UT as Φk=UkΓkUkH; obtaining an overall input covariance matrix D for the equivalent UL channel as
where BlockDiag(.) function generates a block diagonal matrix by placing input matrix arguments at diagonals; computing a filter matrix C based on the UL covariance matrix D; computing a feedforward filter matrix F based on the filter matrix C; computing an interference pre-cancellation matrix G, based on the feedforward filter matrix F and the filter matrix C, used in a transmitter at an interference pre-cancellation stage of the GDFE precoder; and processing user symbols by a decision feedback equalizing stage of the GDFE precoder to produce filtered vector symbols.
Another aspect of the invention is directed to a generalized decision feedback equalizer (GDFE) based precoder in a base station (BS) of a multi-user multiple-input multiple-output (MU-MIMO) wireless system having K user terminals (UTs) which communicate with the base station via an uplink (UL) channel and a corresponding downlink (DL) channel, the base station having Nt antennas and Pt as available transmit power, the DL channel being represented by a DL channel matrix HDL. The GDFE precoder comprises a feedforward path; a feedback path; and an interference pre-cancellation block denoted by I-G disposed in the feedback path, I being an identity matrix, G being an interference pre-cancellation matrix. The interference pre-cancellation matrix G is computed based on a feedforward filter matrix F and a filter matrix C, the feedforward filter matrix F is computed based on the filter matrix C, and the filter matrix C is computed based on an uplink (UL) covariance matrix D. The UL covariance matrix D is computed by computing an effective UL channel matrix HUL using one of two methods (i) HDL=HDLH, or (ii) HUL=[(Pt/Nt)HDLHHDL+I]−1/2HDLH; extracting Hk, k=1, 2, . . . , K, from the UL channel matrix HUL=[H1H, H2H, . . . , HKH] where HkH corresponds to an equivalent UL channel for the kth UT, and I is an identity matrix; computing a singular value decomposition (SVD) of the DL channel between the BS and kth UT, Hk, for all K UTs, Hk=UkSkVkH, where Uk denotes left singular vectors, Sk is a diagonal matrix with singular values making up the diagonal, and Vk denotes right singular vectors; extracting all singular values as s=[diag(S1), . . . , diag(SK)]; extracting a vector ŝ from by choosing first utmost Nt largest non-zero singular values of s; sorting elements in ŝ in decreasing order; performing water-filling to allocate power and obtain a diagonal matrix Γk representing power allocations corresponding to the singular values of the kth UT; computing an UL covariance matrix for each UT as Φk=UkΓkUkH; and obtaining an overall input covariance matrix D for the equivalent UL channel as
where BlockDiag(.) function generates a block diagonal matrix by placing input matrix arguments at diagonals.
Another aspect of this invention is directed to a generalized decision feedback equalizer (GDFE) based precoder in a base station (BS) of a multi-user multiple-input multiple-output (MU-MIMO) wireless system having K user terminals (UTs) which communicate with the base station via an uplink (UL) channel and a corresponding downlink (DL) channel, the base station having Nt antennas and Pt as available transmit power, the DL channel being represented by a DL channel matrix HDL. The GDFE precoder comprises a decision feedback equalizing stage for processing user symbols to produce filtered vector symbols, the decision feedback equalizing stage including an interference pre-cancellation stage having an interference pre-cancellation matrix G used in a transmitter at the interference pre-cancellation stage; and a transmit filter represented by a transmit filter matrix B for processing the filtered vector symbols after the decision feedback equalizing stage to produce an output of transmitted signals to be directed to the DL channel represented by the DL channel matrix HDL through which communications occur in the wireless system with the user terminals. The interference pre-cancellation matrix G is computed based on a feedforward filter matrix F and a filter matrix C, the feedforward filter matrix F is computed based on the filter matrix C, and the filter matrix C is computed based on an uplink (UL) covariance matrix D. The UL covariance matrix D is computed by computing an effective UL channel matrix HUL using one of two methods (i) HUL=HDLH, or (ii) HUL=[(Pt/Nt)HDLHHDL+I]1/2HDLH; extracting Hk, k=1, 2, . . . , K, from the UL channel matrix HUL=[H1H, H2H, . . . , HKH], where HkH corresponds to an equivalent UL channel for the kth UT, and I is an identity matrix; computing a singular value decomposition (SVD) of the DL channel between the BS and kth UT, Hk, for all K UTs, Hk=UkSkVkH, where Uk denotes left singular vectors, Sk is a diagonal matrix with singular values making up the diagonal, and Vk denotes right singular vectors; extracting all singular values as s=[diag(S1), . . . , diag(SK)]; extracting a vector ŝ from s by choosing first utmost Nt largest non-zero singular values of s; sorting elements in ŝ in decreasing order; performing water-filling to allocate power and obtain a diagonal matrix Γk representing power allocations corresponding to the singular values of the kth UT; computing an UL covariance matrix for each UT as Φk=UkΓkUkH; and obtaining an overall input covariance matrix D for the equivalent UL channel as
where BlockDiag(.) function generates a block diagonal matrix by placing input matrix arguments at diagonals.
These and other features and advantages of the present invention will become apparent to those of ordinary skill in the art in view of the following detailed description of the specific embodiments.
In the following detailed description of the invention, reference is made to the accompanying drawings which form a part of the disclosure, and in which are shown by way of illustration, and not of limitation, exemplary embodiments by which the invention may be practiced. In the drawings, like numerals describe substantially similar components throughout the several views. Further, it should be noted that while the detailed description provides various exemplary embodiments, as described below and as illustrated in the drawings, the present invention is not limited to the embodiments described and illustrated herein, but can extend to other embodiments, as would be known or as would become known to those skilled in the art. Reference in the specification to “one embodiment”, “this embodiment”, or “these embodiments” means that a particular feature, structure, or characteristic described in connection with the embodiment is included in at least one embodiment of the invention, and the appearances of these phrases in various places in the specification are not necessarily all referring to the same embodiment. Additionally, in the following detailed description, numerous specific details are set forth in order to provide a thorough understanding of the present invention. However, it will be apparent to one of ordinary skill in the art that these specific details may not all be needed to practice the present invention. In other circumstances, well-known structures, materials, circuits, processes and interfaces have not been described in detail, and/or may be illustrated in block diagram form, so as to not unnecessarily obscure the present invention.
Furthermore, some portions of the detailed description that follow are presented in terms of algorithms and symbolic representations of operations within a computer. These algorithmic descriptions and symbolic representations are the means used by those skilled in the data processing arts to most effectively convey the essence of their innovations to others skilled in the art. An algorithm is a series of defined steps leading to a desired end state or result. In the present invention, the steps carried out require physical manipulations of tangible quantities for achieving a tangible result. Usually, though not necessarily, these quantities take the form of electrical or magnetic signals or instructions capable of being stored, transferred, combined, compared, and otherwise manipulated. It has proven convenient at times, principally for reasons of common usage, to refer to these signals as bits, values, elements, symbols, characters, terms, numbers, instructions, or the like. It should be borne in mind, however, that all of these and similar terms are to be associated with the appropriate physical quantities and are merely convenient labels applied to these quantities. Unless specifically stated otherwise, as apparent from the following discussion, it is appreciated that throughout the description, discussions utilizing terms such as “processing”, “computing”, “calculating”, “determining”, “displaying”, or the like, can include the actions and processes of a computer system or other information processing device that manipulates and transforms data represented as physical (electronic) quantities within the computer system's registers and memories into other data similarly represented as physical quantities within the computer system's memories or registers or other information storage, transmission or display devices.
The present invention also relates to an apparatus for performing the operations herein. This apparatus may be specially constructed for the required purposes, or it may include one or more general-purpose computers selectively activated or reconfigured by one or more computer programs. Such computer programs may be stored in a computer-readable storage medium, such as, but not limited to optical disks, magnetic disks, read-only memories, random access memories, solid state devices and drives, or any other types of media suitable for storing electronic information. The algorithms and displays presented herein are not inherently related to any particular computer or other apparatus. Various general-purpose systems may be used with programs and modules in accordance with the teachings herein, or it may prove convenient to construct a more specialized apparatus to perform desired method steps. In addition, the present invention is not described with reference to any particular programming language. It will be appreciated that a variety of programming languages may be used to implement the teachings of the invention as described herein. The instructions of the programming language(s) may be executed by one or more processing devices, e.g., central processing units (CPUs), processors, or controllers.
Exemplary embodiments of the invention, as will be described in greater detail below, provide apparatuses, methods and computer programs for GDFE precoder configuration in MIMO systems and input covariance matrix calculation.
One feature of this invention focuses on the method to compute the Input Covariance Matrix in general and its application to the GDFE precoder of U.S. patent application Ser. No. 12/401,711. The GDFE precoder configuration of Ser. No. 12/401,711 is summarized herein below. There are known methods for computing the input covariance matrix D for the equivalent Uplink (UL) or MAC channel in a Multiuser MIMO system. The user terminals (UTs) are supposed not to share their data and thus no cooperation among them is assumed. The above-referenced Jindal et al. reference [6] presents a computationally efficient algorithm to compute individual input covariance matrices Φk for all UTs for the UL channel. These individual matrices can be arranged to obtain the overall input covariance matrix D. However, that algorithm is not very suitable with regards to its application to the GDFE precoder outlined in Ser. No. 12/410,711 as it does not guarantee rank(D)≦Nt where Nt denotes total transmit antennas at the BS. This becomes critical to the design of GDFE precoder in Ser. No. 12/401,711 especially when the total number of antennas at the UTs exceeds those at the BS. The present invention overcomes the above stated problem and in the process provides computationally efficient algorithms for determining Input Covariance Matrices (for UL and DL channels). Additionally, the present invention leads to insignificant loss in capacity.
First, the system model and notations used herein are set forth. Let the base station (BS) have Nt antennas and let there be K user terminals (UTs) with Lk antennas each. The sum of antennas at all UTs is denoted as L=Σk=1KLk. Let Hk denote the channel gain matrix of dimensions {Lk×Nk} between the BS and the kth UT. The combined channel gain matrix between the BS and the K UTs is of dimension {L×Nt} and is given by H=[H1T H2T . . . HKT]T, where the superscript T denotes the matrix transpose.
Let uk denote the input symbol vector destined for the kth UT, so that the stacked input vector can be represented as u=[u1T u2T . . . uKT]T. The length of u is assumed not to exceed the number of antennas at the BS. Also, assume the additional constraint that Suu=E[uuH]=I, where E[.] indicates the time average of its argument, the superscript H denotes the conjugate transpose and I denotes the identity matrix.
Referring to
Other aspects/parameters related to this system model are described below:
1). Interference Pre-Cancellation Matrix (G): This matrix is used at the transmitter at Interference Pre-cancellation Stage of the GDFE precoder as shown in
2). Input Covariance Matrix for Downlink Channel (Sxx): It is defined as Sxx=E[xxH] and satisfies the transmit power constraint, i.e., trace(Sxx)≦Pt, where Pt denotes the total available transmit power and trace(.) indicates the sum of diagonal elements of the matrix argument. The input covariance matrix for the downlink channel represents dependencies of symbols transmitted from different ones of said Nt transmit antennas; a sum of diagonal matrix elements represents an intended total transmit power from the Nt transmit antennas. In the following text, Sxx will be represented using its Eigen Value Decomposition (EVD) as:
Sxx=VΣVH (1)
where V is a unitary matrix and Σ is a diagonal matrix with non-negative entries.
3). Transmit Filter (B): This matrix is used to process the symbol vector x obtained after the DFE stage of the GDFE precoder as shown in
B=VΣ1/2M (2)
where M is a unitary matrix and the matrices {V, Σ} are same as defined in (1).
4). Least Favorable Noise Covariance Matrix (S2): This may be regarded as the noise covariance matrix that results in the minimum system capacity when full coordination among all UTs is assumed. This is a positive definite Hermitian Matrix whose block diagonal sub-matrices are identity matrices of size ak. This is defined in a similar fashion to that shown in Eq. (67) of the Yu and Cioffi reference [4].
5). Input Covariance Matrix for Equivalent Uplink Channel (D): It is defined similar to the Equation (3.6) of reference [7] as the correlation among the symbols of the input vector for the equivalent Uplink/Medium Access Channel (MAC) with channel matrix HH. The structure of matrix D is that of a block diagonal matrix and satisfies the transmit power constraint, i.e., trace(D)≦Pt, where Pt denotes the total available transmit power. Each block diagonal sub-matrix of D represents the input covariance matrix for a particular UT in the uplink channel. A capacity optimal D can be computed using the methodology presented in reference [6].
As shown in
where Gkm denotes the sub-matrix of G required to pre-cancel interference due to the vector symbol xm from xk. These sub-vectors are generated in the reverse order, with xk being the first generated vector and x1 being the last one. An example of the structure of the matrix G for a 3 UT scenario is shown below
In this particular example, x3 is generated first, followed by x2 from which interference due to x3 is pre-subtracted using the sub-matrix G23. Lastly, x1 is generated after pre-subtraction of interference due to x2 and x3. Also, each complex element of vector αk in (3) is chosen from the following set:
A={2√{square root over (S)}(p1+jpQ)|p1,pQε{±1, ±3, . . . , ±(√{square root over (S)}−1)}}, (5)
The elements of ak are chosen such that the elements of the resulting vector xk are bounded by the square region of width 2√{square root over (S)}. This mechanism, while allowing for interference pre-cancellation, also limits the total transmit power.
The vector x is then passed through a transmit filter B to yield a vector y given by the following relationship:
y=Bx (6)
The vector y is transmitted by mapping its element to the respective antenna elements of the Base Station.
Let the feedforward filter employed by kth UT be denoted by Fk, which is a matrix of dimension {ak×Lk} where ak denotes the length of vector uk. Now, the received baseband vector corresponding to the kth UT is given by
rk=FkHBx+Fknk (7)
where x is the symbol vector derived from input symbol vector u after an interference pre-cancellation step as shown in
The filter B indicates the transmit filter, and noise at kth UT is denoted by nk. The stacked received baseband vector corresponding to all K UTs can be represented as
r=FHBx+Fn (8)
where F=diag(F1, F2, . . . FK) is a block diagonal matrix representing the feedforward filter and n represents the stacked noise vector.
F=GMH(HDLVΣ1/2)H[HDLSxxHDLH+Szz]−1 (9)
where the “Least Favorable Noise,” Szz, may be regarded as the noise covariance matrix that results in the minimum system capacity when there is full coordination among all UTs. Szz may be computed using the technique described in reference [4]. The matrices {V, Σ} are same as defined in (1).
where for a given total transmit power Pt, the scalar variable λ denotes the UL/DL duality variable as defined in [7] and can be computed as
λ=trace(I−[HDLHDHDL+I]−1)/Pt (11)
Next, a filter matrix C is defined as (step 803 in
C=(HDLVΣ1/2)H[HDLSxxHDLH+Szz]−1 (12)
Alternative ways of computing the filter matrix C are shown in step 804 and step 805, and described in detail in Ser. No. 12/401,711.
Now, the feedforward filter F can be represented as
F=GMHC (13)
It can be noted that F is Block Diagonal and G is Block Upper Right Triangular with Identity matrices forming its diagonal block. Given that M is unitary matrix; pre-multiplication of MH with C must result in a Block Upper Right Triangular matrix R. Hence, M can be obtained using the QR decomposition (QRD) of C as (step 806):
C=MR (14)
It must be noted that the QRD is performed in such a way that all non-zero columns of C which span the same vector space contribute to only one column vector in matrix M. Computation of matrices B, G and F is then performed as follows:
Compute B=VΣ1/2M (step 807) (15)
Set F=BlockDiagonal(R) (step 808) (16)
The BlockDiagonal(.) function extracts submatrices F1, F2 . . . , FK of size {ak×Lk} from the block diagonals of the matrix R as illustrated in
Compute G=FR† (step 809) (17)
where the superscript † denotes the Moore-Penrose Generalized Inverse.
The input covariance matrix for UL channel (D) has a block diagonal structure where the kth sub-matrix of the block diagonal represents the input covariance matrix for the kth UT. The block diagonal structure of D implies that there is no coordination among the UTs. To be more specific, if u=[u1H u2H . . . uKH]H denotes the joint transmit vector for all UTs, then D can be represented as
where Pt denotes the total available transmit power and trace(.) indicates the sum of diagonal elements of the matrix argument. For a given total transmit, Pt, a capacity optimal D can be found using the algorithm of [6]. However, [6] does not guarantee the condition rank(D)≦Nt. In this invention, we present a modified version of the algorithm in reference [6] which is more efficient and suitable for the design of GDFE precoder as described in Ser. No. 12/401,711 and summarized above.
According to the first method, HUL=HDLH (step 404). For a given DL channel, the corresponding UL channel can be represented as (step 405):
HUL=[H1H,H2H, . . . , HKH] (21)
where HkH corresponds to the equivalent UL channel for the kth UT.
Let the Singular Value Decomposition (SVD) of the DL channel between the BS and kth UT, Hk, be computed as (step 406):
Hk=UkSkVkH (22)
where Uk denotes left singular vectors, Sk is a diagonal matrix with singular values making up the diagonal, and Vk denotes the right singular vectors.
The SVD operation is performed for the channels corresponding to all K users. Next, we form a vector s comprising all singular values as (step 407)
s=[diag(S), . . . , diag(SK)] (23)
The vector s may consist of non-zero singular values exceeding Nt. We, therefore, extract another vector ŝ from s by choosing first utmost Nt largest non-zero singular values (step 408). Then, we sort the elements of ŝ in decreasing order (step 409) and perform conventional water-filling to allocate power (step 410).
Let the vector p denote the power allocations corresponding to the singular values in ŝ. Next, we form a diagonal matrix Γk representing the power allocations corresponding to the singular values of the kth UT. If the ith singular value in Sk was not included in ŝ, we set the ith diagonal entry of Γk to be 0. On the other hand, if the ith singular value in Sk was included in ŝ, then we set the ith diagonal entry of Γk to be the corresponding power allocation contained in vector p. The resultant input covariance matrix for the kth UT is then obtained as (step 411)
Φk=UkΓkUkH (24)
Thus, the overall input covariance matrix D for the equivalent UL channel can be represented as (step 412)
where BlockDiag(.) function generates a block diagonal matrix by placing the input matrix arguments at the diagonals as shown in (25). Now, we can easily compute the corresponding input covariance matrix Sxx for the DL channel using Equations (10)-(11) (see
The first approach described above for calculating D leads to some capacity loss if the sum of antennas at all UTs exceeds those at the BS. In that case, it is advantageous to “whiten” the equivalent UL channels after initial water-filling. According to the approach of reference [6], kth UT's equivalent UL channel after whitening is represented as:
The above equation is computationally involved and needs to be computed for all UTs. In the following, we provide a heuristic approximation of this equation. We start with the following approximation:
which can be simplified as,
Thus, the whitened UL channel for each UT can be represented as
It is proposed that the approximation of whitening process in (29) leads to a similar effect as the original expression in (26). According to the second method, the overall whitened UL channel can be obtained as (step 403)
The above expression can either be evaluated directly or an SVD based method can be used as follows. Let the SVD decomposition of the DL channel be as follows:
HDL=USVH (31)
Then, simplifying expression (30) using (31), the whitened UL channel can be represented as
Now, to obtain input covariance matrix for UL and DL channels, we follow the same steps 405-412 employing equations (21)-(25) above while using HUL as given in (30) or (32).
The following numerical example illustrates the computation of the Uplink Input Covariance (D) and Downlink Input Covariance (Sxx) matrices involved in the design of a GDFE precoder of the present invention. Consider a BS with 2 antennas and 2 users with 2 antennas each, so that the channel matrices associated with both of the users are of dimension 2×2. The transmit power is assumed to be 10. For the sake of simplicity, we consider a real channel as follows:
We first compute the SVD decomposition of H1 and H2 as follows
Now, the vector s comprising all the singular values corresponding to channels H1 and H2 can be formed as
s=[diag(S1),diag(S2)]=[0.6650,0.5798,1.1683,0.3820] (37)
Next, we extract vector from s by choosing at most Nt=2, with the largest singular values arranged in decreasing order as
ŝ=[1.1683,0.6650] (38)
Now, the standard water-filling solution can be obtained using the flowchart shown in
p=[5.7643,4.2357] (39)
Next, we form a diagonal matrix Γk representing the power allocations corresponding to the singular values of the kth UT as
The resultant input covariance matrices are then obtained as
Thus, the overall input covariance matrix D for the equivalent UL channel can be represented as
Next, we first determine the UL/DL duality variable and then use it to compute the downlink input covariance matrix
The proposed whitened channel matrix for the UL channel can be obtained as
It is not difficult to realize that individual effective channel matrices can be computed as
Now following the steps similar to Equations (35)-(43), we can arrive at the solution for UL and DL input covariance matrices as
The downlink channel between a base station (BS) and several user terminals (UEs) is normally represented as a matrix H whose number of rows equals to the sum of antennas at the UEs and number of columns is the same as the number of transmit antennas at the BS. The (i,j)th entry represents the complex channel gain hij between the ith transmit antenna and jth receive antenna as shown in
In a Frequency Division Duplex (FDD) system such as OFDMA, the complex channel gain hij is usually estimated at the UE end. The channel estimation process is as follows. First, at the BS, antenna #1 transmits a reference signal. All the UEs estimate the received signal at each receiver antenna. As the reference signal is known to all UEs, the channel gain corresponding to the 1st transmit antenna can be determined (assuming noise level is sufficiently below the reference signal power). This procedure is then repeated for transmit antennas number 2 to Nt.
In this way, the channel matrix Hk corresponding to the kth UE can be estimated. Afterwards, all the UEs report back their respective channels to the BS using a dedicated feedback channel. The BS can then coalesce individual channel matrices to obtain the overall channel matrix H.
In Time Division Duplex (TDD) systems, the channel matrix can be estimated at the BS exploiting channel reciprocity property (i.e., UL and DL channels are related by some mathematical expression). For such systems, at a given time, one of the UEs will transmit a reference signal using a given antenna. This signal is captured by all the antennas at the BS and thus the corresponding channel gains are known. This process is repeated by all the UEs for all the available antennas, resulting in the estimate of complete Uplink channel matrix. The BS can then use some mathematical transformation (such as complex conjugation) to obtain equivalent downlink channel.
The computers and storage systems implementing the invention can also have known I/O devices (e.g., CD and DVD drives, floppy disk drives, hard drives, etc.) which can store and read the modules, programs and data structures used to implement the above-described invention. These modules, programs and data structures can be encoded on such computer-readable media. For example, the data structures of the invention can be stored on computer-readable media independently of one or more computer-readable media on which reside the programs used in the invention. The components of the system can be interconnected by any form or medium of digital data communication, e.g., a communication network. Examples of communication networks include local area networks, wide area networks, e.g., the Internet, wireless networks, storage area networks, and the like.
In the description, numerous details are set forth for purposes of explanation in order to provide a thorough understanding of the present invention. However, it will be apparent to one skilled in the art that not all of these specific details are required in order to practice the present invention. It is also noted that the invention may be described as a process, which is usually depicted as a flowchart, a flow diagram, a structure diagram, or a block diagram. Although a flowchart may describe the operations as a sequential process, many of the operations can be performed in parallel or concurrently. In addition, the order of the operations may be re-arranged.
As is known in the art, the operations described above can be performed by hardware, software, or some combination of software and hardware. Various aspects of embodiments of the invention may be implemented using circuits and logic devices (hardware), while other aspects may be implemented using instructions stored on a machine-readable medium (software), which if executed by a processor, would cause the processor to perform a method to carry out embodiments of the invention. Furthermore, some embodiments of the invention may be performed solely in hardware, whereas other embodiments may be performed solely in software. Moreover, the various functions described can be performed in a single unit, or can be spread across a number of components in any number of ways. When performed by software, the methods may be executed by a processor, such as a general purpose computer, based on instructions stored on a computer-readable medium. If desired, the instructions can be stored on the medium in a compressed and/or encrypted format.
From the foregoing, it will be apparent that the invention provides methods, apparatuses and programs stored on computer readable media for GDFE precoder configuration in MIMO system and input covariance matrix calculation. Additionally, while specific embodiments have been illustrated and described in this specification, those of ordinary skill in the art appreciate that any arrangement that is calculated to achieve the same purpose may be substituted for the specific embodiments disclosed. This disclosure is intended to cover any and all adaptations or variations of the present invention, and it is to be understood that the terms used in the following claims should not be construed to limit the invention to the specific embodiments disclosed in the specification. Rather, the scope of the invention is to be determined entirely by the following claims, which are to be construed in accordance with the established doctrines of claim interpretation, along with the full range of equivalents to which such claims are entitled.
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Number | Date | Country | |
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20110058598 A1 | Mar 2011 | US |