This application claims priority of European Application No. 02256711.9 filed on Sep. 26, 2002.
The present invention relates to a receiver of digital data bursts comprising an antenna array. The present invention also relates to a method of receiving digital data bursts using a receiver comprising an antenna array.
Adaptive or smart antennas for base stations have recently become recognized as a powerful tool for capacity and data-rates enhancement, mainly because of their co-channel interference (CCI) rejection capability. Usually, timeslot synchronization is assumed between the desired signal and interference. Known antenna array processing techniques can be applied in that case, see for example, Z. Zvonar, P. Jung, L. Kammerlander, (Editors), “GSM evolution towards 3rd generation systems”, Kluwer Academic Publishers, Boston/Dordreht/London, 1999. This assumption of time slot synchronisation between the desired signal and interference is valid if the neighboring base stations are synchronized and the cells are small. If unsynchronized base stations or large cells are employed, timeslot synchronization between signals is challenging.
It has been pointed out in M. C. Wells, “Increasing the capacity of GSM cellular radio using adaptive antennas”, IEE Proc. Communications, 1996, vol. 143, no. 5, pp. 304-310, that a stationary Space-Time Filter (STF) can be used to equalize the desired signal and reject the asynchronous co-channel interference (CCI) if the dimension of the space time filter (STF) is large enough; where stationary in this context means weight coefficients are fixed over a burst received under stationary propagation channels. The problem is that the known training based weight estimation algorithms, e.g. a Least Squares (LS) estimator, may not be effective because of the burst structure when the training sequence is concentrated in one part of the burst, e.g. the midambles of bursts in systems in accordance with Global System for Mobiles (GSM) or EDGE telecommunications standards, or preambles of bursts in systems in accordance with HIPERLAN/2 telecommunications standard. The GSM midamble case is shown in
One possible solution, which is proposed in the Wells paper mentioned above, is based on using the semi-blind algorithm with projections to the finite alphabet (FA), in other words selection of which of the finite number of symbols (e.g. 2 in a binary modulation scheme, 4 in a Quadrature Phase Shift Keying (QPSK) modulation scheme) was intended. Finite alphabet (FA) projection involves the whole timeslot of the desired signal and can be used for adjusting coefficients of a space time filter (STF) in the asynchronous case. Other semi-blind techniques e.g. based on the Constant Modulus property of the desired signal can also be exploited as described in , A. M. Kuzminskiy, P. Strauch, “Space-time filtering with suppression of asynchronous co-channel interference”, in Proc. Symposium 2000: Adaptive Syst. for Signal Proc., Commun., and Control, Lake Louise, October. 2000, and European Patent Publication EP-A-1100211.
A is a receive antenna of K elements,
LST(which denotes Least Squares estimation over Training data) is the least squares (LS) estimator of the initial space time filter (STF) weight vector over the training interval of the burst, and
STF-LSP(I0) is the space time filter (STF) adjusted by means of the least squares (LS) algorithm with projections (LSP) to the finite alphabet (FA), where I0 is the number of iterations.
The estimator 10 in
ŴLST={circumflex over (R)}X
where {circumflex over (R)}X
Ŝj=Q{XŴj−1}, (Equation 2)
Ŵj={circumflex over (R)}XX−1{circumflex over (P)}Ŝ
where Q is a projector to the finite alphabet (FA) (slicer), I0 is the number of iterations and Ŵ0=ŴLST, i.e. the output of the LST estimator block 16 is used for the initialization of STF-LSP(I0) as shown in
The disadvantage of such LST initialization is that it may suffer from insufficient amount of training data overlapping with the asynchronous co-channel interference (CCI) leading to the performance degradation of the iterative receiver in
It has been noted, for example in the Zvonar and Villier papers referred to above, that the training data is not required for estimation of the correlation matrix in Equation 1. Thus the correlation matrix can be calculated over the whole burst of the received signal leading to the modified burst-based estimator (mentioned in the Zvonar paper referred to above)as follows:
ŴLSB={circumflex over (R)}XX−1{circumflex over (P)}S
This initialisation according to Equation 4 is included in a further known iterative receiver 10′ which is shown in
In the asynchronous scenario illustrated in
The present invention provides a receiver of digital data bursts comprising an antenna array, a first space time filter having filter coefficients initialised by estimation over just training data in a received burst and providing symbol estimates and a second space time filter having filter coefficients initialised by estimation over the received burst and providing symbol estimates, in use at least one pass to determine a symbol estimate in the received burst being undertaken by each space time filter and a selector operates to determine which of the first and second filters provides the symbol estimate closer to an expected value.
Preferably the filter giving the symbol estimate closer to the expected value is selected by the selector to continue with at least one further pass to provide an updated symbol estimate to a projector to the finite alphabet so as to enable a decision as to the identity of that symbol to be made.
Preferably for each new received burst, both filters perform at least one pass to determine a respective symbol estimate in the received burst, and the selector operates to determine which of the first and second filters provides the symbol estimate closer to an expected value.
Preferably the estimation by the first filter and the second filter is least squares estimation.
The present invention also provides a terminal for mobile telecommunications comprising the preferred receiver. Preferably the terminal is a base station or a mobile user terminal. Preferably the terminal is operative to receive data bursts sent using Orthogonal Frequency Division Multiplexing (OFDM).
Alternatively preferably the terminal is operative to receive data bursts sent using Time Division Multiple Access (TDMA).
The present invention also provides corresponding methods. The present invention also provides a method of receiving digital data bursts using a receiver comprising an antenna array, a first space time filter having filter coefficients initialised by estimation over just training data in a received burst and providing symbol estimates and a second space time filter having filter coefficients initialised by estimation over the received burst and providing symbol estimates, at least one pass to determine a symbol estimate in the received burst being undertaken by each space time filter, and a selector determining which of the first and second filters provides the symbol estimate closer to an expected value.
Advantages of the present invention in its preferred embodiments include that the capability of a base station or mobile terminal receiver to reject Co-Channel Interference (CCI) is improved, where the base station and user terminal are not synchronized and are equipped with antenna arrays.
Burst-by-burst selection of the appropriate initialization for the space-time filter adjusted by means of the iterative least squares (LS) estimator with projections to the finite alphabet improves the interference rejection capability for base station and/or mobile terminal receivers, which are not synchronized and are equipped with antenna arrays.
In the asynchronous scenario it is particularly beneficial to use a preferred receiver thus adjusted on burst-by-burst basis.
The preferred application areas are Time Division Multiple Access (TDMA) and Orthogonal Frequency Division Multiplexing (OFDM) radio communications systems.
A preferred embodiment of the present invention will now be described by way of example and with reference to the drawings, in which:
A preferred receiver 22 is provided with improved co-channel interference (CCI) rejection capability and is suitable for use in base stations and/or mobile terminal receivers, which are not synchronized and are equipped with antenna arrays A. Basically it can be considered that the receivers in
D is the Distance from the finite alphabet (FA) estimator, which calculates the distances dn for all N estimated symbols at the I1-st iteration:
dn=|ŝnI
where: ŝnI
C is the Comparison block, which indicates the symbol with the lower distance from the finite alphabet (FA) at its inputs at the I1-st iteration.
M is the Multiplexing block, which connects the first input signal to its output for all iterations except the I1-st, when it connects its input signal indicated by the Comparison block.
The algorithm of the Selector block 24 can be expressed as follows:
where in those equations, index 1 corresponds to STF-LSP estimator block 26 (having LST initialisation), and index 2 corresponds to STF-LSP estimator block 28 (having LSB initialisation), as shown in
The complexity of the proposed solution ΘPreferred (I1,I0) is proportional to the total number of iterations I0+I1, while, for comparison, the complexity of the known solutions in
One possible application of the preferred receiver is interference cancellation in Orthogonal Frequency Division Multiplexing (OFDM) systems, such as HIPERLAN/2.
A typical interference limited scenario is an antenna array of four well-separated elements, a time-frequency slot of 14 Orthogonal Frequency Division Multiplexing (OFDM) symbols (including 2 binary preamble symbols) and 64 subcarriers. QPSK signalling and the HIPERLAN/2 propagation channel “A” are used for the desired signal and the interference. The interference is assumed to consist of two independent components, similar to the desired signal. The least squares (LS) estimator blocks 26,28 used in the receiver shown in
Weight Estimation by Frequency Domain Modelling
The following notation is used: X is the matrix of the input signals, St is the vector of the training data, Xt is the matrix of the input signals corresponded to the training data (sub-matrix of X), Θ{•} is a projector the finite alphabet and U is the parameter-mapping matrix defined as
where IK×K is the K×K identity matrix, K is the number of receive antennas, L is the number of subcarriers and G<L is the model order.
For the preferred receiver (shown in
Performing I1 iterations of the first STF-LSP estimator block 26 follows:
{tilde over (S)}1I
{circumflex over (V)}1j=(U*X*XU)−1U*X*Θ{XU{circumflex over (V)}1j−1}, j=1, . . . , I1,
{circumflex over (V)}10=(U*Xt*XtU)−1U*Xt*St,
and performing I1 iterations of the second STF-LSP estimator block 28 follows:
{tilde over (S)}2I
{circumflex over (V)}2j=(U*X*XU)−1U*X*Θ{XU{circumflex over (V)}2j−1}, j=1, . . . , I1,
{circumflex over (V)}20=(Nd/Nt)(U*X*XU)−1U*Xt*St,
where Nd is the total number of symbols in a data slot and Nt is the number of pilot symbols.
The selection rule (equation 7) is applied to form vector Ŝ0 with the following elements:
Performing (I0−I1) further iterations of the first STF-LSP estimator block 26 gives:
{tilde over (S)}j=XU{circumflex over (V)}j, Ŝj=Θ{{tilde over (S)}j},
{circumflex over (V)}j=(U*X*XU)−1U*X*Ŝj−1, j=1, . . . , I0−I1,
{tilde over (S)}=XU{circumflex over (V)}I
For the comparative known receiver shown in
{tilde over (S)}I
{circumflex over (V)}j=(U*X*XU)−1U*X*Θ{XU{circumflex over (V)}j−1}, j=1, . . . , I0,
{circumflex over (V)}0=(U*Xt*XtU)−1U*Xt*St.
For the comparative known receiver shown in
{tilde over (S)}I
{circumflex over (V)}j=(U*X*XU)−1U*X*Θ{XU{circumflex over (V)}j−1}, j=1, . . . , I0,
{circumflex over (V)}0=(Nd/Nt)(U*X*XU)−1U*Xt*St.
Simulation Results
Simulation results for the example application described above (with G=12) are shown in
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