The present invention relates generally to wireless communication and, in particular, to vector quantization for limited feedback from receiver to transmitter.
Multiple-input multiple-output (MIMO) systems can provide increased reliability in wireless communication links by exploiting the spatial diversity due to the increased number of transmit-receive paths. A simple technique to obtain the highest possible diversity order is to employ transmit beamforming and receive combining, which also improves the array gain. This technique requires that the transmitter has channel state information in the form of a transmit beamforming vector. It is often impractical to have a full reciprocal channel from receiver to transmitter to enable the transmitter to estimate the forward channel state information. Instead, the receiver estimates the channel state information, computes the corresponding beamforming vector, and encodes the beamforming vector in a small number of bits. These bits are sent via a feedback path to enable the transmitter to generate the beamforming vector. Such systems are known as limited feedback systems.
The most straightforward approach to designing a limited feedback system is to employ scalar quantization, where each component of the beamforming vector is quantized and encoded separately. In more advanced limited feedback systems, the transmitter and receiver share a codebook of possible beamforming vectors indexed by a number of bits. The receiver chooses a beamforming vector from the codebook on the basis of maximizing the effective signal-to-noise ratio (SNR) after combining, and sends the corresponding bits to the transmitter.
Beamforming vector codebooks are conventionally designed using the minimum number of feedback bits possible for a given effective SNR after combining, i.e. neglecting the search and storage requirements for the codebook. Codebook design strategies generally use numerical optimization techniques, or for larger systems, the codebooks can be randomly generated (i.e. random vector quantization, or RVQ). Such random codebooks have been shown to be asymptotically optimal as the number of bits and transmit antennas increase.
Unfortunately, the codebook size increases exponentially with the number of transmit antennas to maintain a given effective SNR or capacity loss with respect to the optimal unquantized system. Since RVQ codebooks have no structure, an exhaustive search is usually required to find the bits encoding a given beamforming vector, or vice versa. For time-varying channels, the resulting delay due to the excessive search time reduces the effectiveness of the beamforming vector when employed at the transmitter. The computation required for such an exhaustive search also consumes power, which is undesirable for low-power mobile wireless devices. Non-exhaustive methods for searching unstructured codebooks at the expense of increased memory requirements have been documented. One of these methods is a tree-search, where storage of the tree and codebook is required. An additional consequence of the exponential growth in codebook size with antenna number is that storage of the codebook may be infeasible for large numbers of antennas.
The problem of codebook search time and storage requirements is of particular importance to multiuser systems, where quantization errors increase the interference between users.
Disclosed are arrangements which seek to ameliorate the disadvantages of existing methods by using Reflected Simplex codebooks in beamforming vector quantization for limited feedback MIMO systems. The disclosed Reflected Simplex codebooks adhere to a geometric construction, consisting of integer coordinates that lie within the original and reflected images about the axes of a (2NT−1)-dimensional simplex, where NT is the number of transmit antennas. Also disclosed is a method of indexing the Reflected Simplex codebook with low time and storage requirements. Also disclosed is an efficient method of searching through the codebook for the optimal quantized beamforming vector.
According to a first aspect of the present invention, there is provided a method of communicating a complex vector, using one or more index bits, the method comprising: quantizing the complex vector using a codebook, the codebook comprising a plurality of complex vectors mapped from real vectors that lie on a reflected simplex where the simplex is of dimension one less than twice the length of the complex vector; indexing the quantized vector to form the one or more index bits; and transmitting the index bits to the transmitter, thereby communicating the complex vector.
According to a second aspect of the present invention, there is provided a method of wireless communication between a transmitter comprising a plurality of transmit antennas and a receiver over a channel, the method comprising: estimating channel state information for the channel; computing an optimal beamforming vector for the plurality of transmit antennas from the channel state information; quantizing the optimal beamforming vector using a codebook, the codebook comprising a plurality of complex vectors mapped from real vectors that lie on a reflected simplex where the simplex is of dimension one less than twice the length of the optimal beamforming vector; indexing the quantized vector to form one or more index bits; and transmitting the index bits to the transmitter.
According to a third aspect of the present invention, there is provided a receiver for implementing the method according to the second aspect.
According to a fourth aspect of the present invention, there is provided a system for wireless communication over a channel, the system comprising: a transmitter comprising a plurality of transmit antennas; and a receiver adapted to: estimate channel state information for the channel; compute an optimal beamforming vector for the plurality of transmit antennas from the channel state information; quantize the optimal beamforming vector using a codebook, the codebook comprising a plurality of complex vectors mapped from real vectors that lie on a reflected simplex where the simplex is of dimension one less than twice the length of the optimal beamforming vector; index the quantized vector to form one or more index bits; and transmit the index bits to the transmitter.
Other aspects of the invention are also disclosed.
Embodiments of the present invention are described hereinafter with reference to the drawings, in which:
Where reference is made in any one or more of the accompanying drawings to steps and/or features, which have the same reference numerals, those steps and/or features have for the purposes of this description the same function(s) or operation(s), unless the contrary intention appears.
Since the channel 125 is narrow-band, a complex transmitted symbol x is transformed to a complex received symbol y as follows:
y=zTHwx+zTn, (1)
where w is the unit magnitude complex beamforming vector (of length NT) applied at the transmitter 110, H is a NR-by-NT complex-valued matrix representing the effect of the channel 125, z is the unit magnitude complex combining vector (of length NR) applied at the receiver 130, and n is the complex noise vector (of length NR) at the receiver 130. Assuming the noise is independent, identically distributed (i.i.d), circularly symmetric complex Gaussian with variance N0, the signal-to-noise ratio (SNR) ρ at the receiver 130 is given by:
where Ex is the average transmitted symbol power and
Γ(H)=|zTHw|2 (3)
is the effective channel gain.
Given w and H, the (unit magnitude) combining vector z that maximises the received SNR is given by the Maximum Ratio Combining (MRC) formula:
From equation (3), the resulting effective channel gain (the MRC gain) is:
The optimal infinite-precision (unquantized) beamforming vector wopt that maximises the MRC gain is given by the right-singular unit vector of H corresponding to the largest singular value of H. The beamforming scheme utilising wopt is known as maximum ratio transmission (MRT). The effective channel gain when using MRT and MRC is denoted ΓMRT,MRC(H) and is given by the square of the largest singular value of H.
In the limited feedback system 100 of
The denominator is present in equation (6) to ensure the average transmitted signal power Ex is constant.
Because in general ŵopt≠wopt, the effective channel gain using ŵopt (computable using equation (5)) is less than the MRC-MRT gain ΓMRT,MRC(H), by an amount depending on the granularity or quantization step size of the codebook C. The design of the codebook C is therefore critical for the performance of the system 100.
The channel 125 could be one of the subchannels in a wideband (e.g. Orthogonal Frequency Division Multiplexing, or OFDM) system, such as 3G LTE and 802.11a/g WLAN. In such a case, the method 300 could be performed independently for each subchannel of the OFDM channel, or could be performed for only a subset of the OFDM subchannels, and the resulting beamforming and combining vectors could be used to transmit and receive symbols in the respective neighbouring OFDM subchannels.
Design of the Reflected Simplex Codebook
One known codebook uses square lattice angular quantization (SLAQ) to reduce both the search and storage complexity of limited feedback MIMO systems. In SLAQ, the components of codebook vectors are complex integers and can be considered as points of a Quadrature Amplitude Modulation (QAM) constellation. As in QAM, SLAQ codebooks have simple bit-to-symbol indexing algorithms, so codebook storage is not required at either the transmitter or receiver. The problem of searching SLAQ codebooks to estimate the optimal quantized beamforming vector is similar to the problem of noncoherent sequence detection, and fast noncoherent sequence detection algorithms can be utilized to achieve reduction in search complexity orders of magnitude smaller than an exhaustive search. Significantly, the SNR performance of SLAQ codebooks is similar to that of conventional (RVQ) codebooks for the same number of feedback bits, but with much lower computational complexity.
Like SLAQ codebooks, Reflected Simplex codebooks adhere to a geometrically regular construction. Reflected Simplex codebook construction is based on a codebook known as Pyramid Vector Quantization (PVQ) that has been used in the context of audio quantization, as part of a very low-delay high-quality speech and audio codec. A Reflected Simplex codebook consists of complex integer vectors mapped from real integer vectors that lie on the original and reflected images about the axes of a (2NT−1)-dimensional simplex. Reflected Simplex codebooks can be indexed with low time and storage requirements and efficiently searched to estimate the optimal quantized beamforming vector, as described below.
A PVQ codebook D(N,K) consists of real integer vectors of length N, where K is a parameter that determines the granularity or coarseness of the quantization. The PVQ codebook D(N,K) is constructed from a base set of all real integer vectors that lie on a segment of the hyperplane {Ke1; . . . ; KeN} that is bounded by the convex hull of the vectors Kei (the vectors e1 are the columns of the N by N identity matrix IN). The hyperplane segment is an (N−1)-simplex. The parameter K is the height of the simplex, and the length of its edges is K√{square root over (2)}. Note that a 1-simplex is a line segment, a 2-simplex is an equilateral triangle, and a 3-simplex is a regular tetrahedron.
More precisely, the base set is defined by:
In addition, the codebook D(N,K) contains all of the 2N−1 images obtained by reflecting the set (7) about the N axes of RN. The codebook D(N,K) is therefore defined by
The number of codewords (vectors) in the codebook D(N,K) is denoted as V(N,K). It can be shown that:
where 2F1 is Gauss' hypergeometric function. V(N,K) can also be computed using the following recurrence relation:
V(N,K)=V(N,K−1)+V(K,N−1)+V(N−1,K−1) (10)
with V(1,K)=2 for all K and V(N,1)=2N. The recurrence relation of equation (10) provides a O(NK) method for computationally efficient calculation of V(N,K) by storing the intermediate values in matrix form, avoiding the multiplications or the complexity of evaluating the hypergeometric function in equation (9). The total number of bits required to transmit a vector in the PVQ codebook is given by ceil(log2(V(N,K)).
For the case of low-rate quantization, i.e. N>>K, it can be shown that
log2 V(N,K)→K log2(2N)−log2 K!, (11)
while for the case of high-rate quantization, i.e. K>>N,
log2 V(N,K)→(N−1)log2(2(K−1))+1−log2(N−1)!. (12)
More generally,
log2 V(N,K)≈(N−1)log2(2(K−1))−log2(N−1)!. (13)
In what follows, the underline notation denotes a bidirectional mapping between a complex vector u of length NT and a real-valued vector u of length N=2 NT defined as follows:
u2t-1={ut},u2t=ℑ{ut},t=1, . . . , NT (14)
The PVQ codebook is modified to form the Reflected Simplex codebook as follows. First, construct a modified PVQ codebook CR(NT, K) of real integer vectors from the PVQ codebook D(N,K) as follows:
CR(NT,K)={vεD(N,K),ν2r-1>0,ν2r≧0}, (15)
where r=ceil(l/2), and l is the index of the first nonzero component of v.
A Reflected Simplex codebook C(NT, K) is constructed as complex vectors of length NT, derived from the real vectors in CR(NT, K) using the mapping in equation (14):
C(NTK)={v:vεCR(NT,K)}. (16)
The effect of the condition ν2r-1>0,ν2r≧0 in the definition of CR(NT, K) (equation (15)) is to remove from C(NT, K) complex vectors that are phase ambiguous. For example, the effect of the condition on CR(1, 2) is to leave only the first quadrant vectors in D(2,2), namely (2,0) and (1,1) (see
If the condition ν2r-1>0,ν2r≧0 were not applied to modify the PVQ codebook, for every v in the Reflected Simplex codebook, there would also be three phase ambiguous vectors −v, jv and −jv. On removing these redundant vectors, the size of the Reflected Simplex codebook becomes V(N, K)/4, and thus the number of bits required to encode the Reflected Simplex codebook is ceil(log2(V(N,K))−2. This saving of 2 feedback bits is a significant amount for small codebooks suited to limited feedback beamforming.
Indexing the Reflected Simplex Codebook
The method 400 begins at decision step 410 where a check is made to determine whether NT=0. If so (Yes), the method 400 at step 420 returns an index of zero. If not (No), the method 400 proceeds to step 430, where the components νt of v are examined in order of ascending t. The value of t is set to the index of the first non-zero component νt. The value of t indexes a disjoint partition It of the codebook C(NT, K) in which v lies. The partition It is in turn made up of K(K+1)/2 disjoint subsets Ir,t, where all the vectors v in Ir,t have the same, unique (non-zero) value of νt, namely νr. The subsets Ir,t of It are ordered according to their common νt values according to the zigzag pattern illustrated in
The size of the subset Ir,t is given by
At step 440 the index c is set to the sum of the sizes of each partition Iq for q=1, . . . t−1, which is given by:
To identify the ordinate l of the subset Il,t of It within which v lies, the method 400 at step 450 sets
Kl=(νt)+ℑ(νt)−1. (19)
The method 400 at step 460 then sets l to:
In step 470, the method 400 increments the index c by the sum of the sizes of each subset Ir,t for r=1 to l−1 using equation (17) for |Ir,t|. In step 480, the method 400 increments the index c. This is done by recursively invoking the method 400 on the new vector v′ that is obtained from v by removing the components νq for q=1 to t, also reducing NT by t and K by Kl, and adding the result to the index c. The method 400 returns the value of c at step 490.
The method for decoding the index bits to a beamforming vector in C(NT, K), carried out by the transmitter 110 in the step 370 of the method 300 is a straightforward inversion of the indexing method 400. The resulting decoding method also has a complexity of O(NK).
Another form of redundancy arises in the Reflected Simplex codebook between a pair of codebook vectors related by v1=γv2 for |γ|≠1, referred to as a divisor ambiguity. Beamforming vectors with divisor ambiguity yield the same effective channel gain (equation (5)) after normalisation to unit magnitude. For example, if N=2NT=4 and K=4, the vectors [2+j0 2+j0] and [1+j1 1+j1] exhibit divisor ambiguity, with γ=1−j. The simplex-based domain of the PVQ codebook allows calculation of the number of redundant vectors in the Reflected Simplex codebook due to divisor ambiguities. First, divisor ambiguities only occur if K is even. Secondly, if K is even, divisor ambiguity only occurs when γ=±1±j, μt=±a±ja; and νt=±2a±j2a for all t=1, . . . N. Finally, the number of redundant vectors due to divisor ambiguity is upper bounded by
This formula may be applied to calculate the number of bits required to index the Reflected Simplex codebook with divisor ambiguities removed. For a large range of N and K, there is no (N, K) pair where removing divisor ambiguities would reduce the integer number of bits. However, for some small K values, a small fraction of a bit is saved, which may provide some efficiencies when a number of vectors are encoded together. A consequence would be more complex index encoding and decoding methods than those described above with reference to
Searching the Reflected Simplex Codebook
The method performed by the receiver 130 in step 710 of the method 700, when invoked at step 330 of the method 300, to locate the optimal quantized beamforming vector in the Reflected Simplex codebook is described hereinafter. A simple exhaustive search over the entire Reflected Simplex codebook can be carried out as in equation (6), but this is prohibitively expensive in terms of computation. Instead, the locating is performed with complexity O(NT log NT) by observing an equivalence with noncoherent sequence detection.
For the case NR≦2, the exhaustive codebook search of equation (6) is equivalent to finding the closest codebook vector in angle to the optimal unquantized beamforming vector wopt:
When NR>2, equation (22) is also a good first-order approximation. Equation (22) is denoted singular vector quantization (SVQ), because equation (22) is equivalent to quantizing wopt (the right-singular unit vector associated with the largest singular value of the channel matrix H) using an angular metric.
An equivalence relationship exists between SVQ using an angular metric (equation (22)) and the problem of sequence detection over unknown deterministic flat-fading channels. The equivalence can be seen by noting that equation (22) is equivalent to noncoherent detection using the generalized likelihood ratio test (GLRT). Specifically, consider the detection of a complex input vector x, drawn in an i.i.d. manner from a discrete constellation X, given an output vector y:
y=hx+n, (23)
where n is a vector of i.i.d. white Gaussian noise and h is an unknown complex channel parameter assumed constant over the period of the input vector x. The GLRT-optimal estimate {circumflex over (x)}GLRT of the input vector x is obtained from the received data y by solving
which becomes, on setting λ=h−1,
Algorithms are known for computing {circumflex over (x)}GLRT according to equation (25) for any λ over specific constellations X efficiently, i.e. in polynomial time.
To show the equivalence to equation (22), consider the real-valued mapping wopt according to (14) of the optimal beamforming vector wopt. Denote z as the vector in the direction of wopt such that the sum of the absolute values of the components of z is K, i.e.
In other words, z is the projection of wopt onto the reflected simplex that is the domain of CR(NT, K).
Instead of performing the SVQ of equation (22), the following equivalent search is performed:
which in turn is equivalent to the GLRT estimation of equation (25), with
and X=CR(NT, K).
Without loss of generality, all the components of z may be converted to be non-negative. That is, assign
z+=s∘z (28)
where sn=sgn(zn) for all n and o denotes the Hadamard product. In other words, z+ is the reflection of z onto the simplex on which CR(NT, K) is based, i.e. the hyperplane segment defined by
All the codebook vectors in CR(NT, K) with non-negative components exist on this simplex. The non-negative portion of the codebook CR(NT, K) is a subset of a translated AN-1 lattice, which is defined as:
In other words, if vεCR(N,K), then v+−Ke1εAN-1. The codebook search of equation (27) is therefore equivalent to
Equation (29) corresponds to a search for the closest point in Euclidean distance to the vector z+−Ke1 over the lattice AN-1. A method described below with a complexity of O(N log N) for performing the search of equation (29) over the lattice AN-1 is used. The resulting real vector ŵopt is mapped using equation (14) to become the optimal quantized beamforming vector ŵopt.
At the next step 620, the vector z′ is rounded to the integer vector f, and the components of f are summed to form the integer variable Δ. At the following step 630, the method 600 computes the difference vector d between z′ and its rounded version f. A vector t of indices in the range {1, . . . N} is then formed from d such that tn is the index of the n-th most positive component of d.
The method 600 then at step 640 determines whether Δ>0. If so, step 650 decrements by 1 all the components of f indexed by tn, for n=1 to Δ. (These are the indices of the Δ most positive differences between z′ and its integer rounded version f.) If not, step 660 increments by 1 all the components of f indexed by tn, for n=N+Δ+1 to N. (These are the indices of the −Δ most negative differences between z′ and its integer rounded version f.) After both steps 650 and 660, the method 600 returns the complex mapping f of the updated vector f at step 670.
An alternative embodiment of step 710 is to perform the method 600 a number (L) of times for different rotations of the vector wopt. The values of the rotations correspond to phase rotations uniformly spaced between 0 and π/2. This is achieved by performing the method 600 L times, on woptl, for l=0, . . . L−1, where:
The result is L candidate beamforming vectors ŵoptl. The candidate beamforming vector that maximises the metric in equation (6) is then chosen for indexing.
In addition to its application in beamforming for MIMO systems, the encoding method 700 may also be applied to any system where a vector needs to be efficiently encoded in a low number of bits. The method 700, for a general input vector, may include the preliminary step of normalizing the vector to be of unit magnitude. The scaling factor is scalar quantized and encoded separately. If the input vector is complex, the mapping of equation (14) should be applied first.
Particular examples include point-to-point precoding such as unitary, linear, and SVD precoding for MIMO systems, where the rows or columns of the channel matrix or precoding matrix need to be sent to the transmitter. Other example systems include multi-user precoding such as zero forcing beamforming and vector perturbation precoding, where the channel vectors for each user need to be sent to the transmitter.
The transmitter 110 and receiver 130 are preferably implemented in dedicated hardware or modules such as embedded integrated circuits performing the functions or sub functions of
The arrangements described are applicable to the wireless communication industries.
The foregoing describes only some embodiments of the present invention, and modifications and/or changes can be made thereto without departing from the scope and spirit of the invention, the embodiments being illustrative and not restrictive.
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