The invention relates to a transmission system for transmitting a multicarrier signal from a transmitter to a receiver.
The invention further relates to a receiver for receiving a multicarrier signal from a transmitter.
Multicarrier modulation methods, such as OFDM and MC-CDMA, have been around for some time now. OFDM or Orthogonal Frequency Division Multiplexing is a modulation method designed in the 1970's in which multiple user symbols are transmitted in parallel using different subcarriers. These subcarriers have overlapping (sinc-shaped) spectra, nonetheless the signal waveforms are orthogonal. Compared to modulation methods such as BPSK, QPSK or MSK, OFDM transmits symbols which have a relatively long time duration, but a narrow bandwidth. Mostly, OFDM systems are designed such that each subcarrier is small enough in bandwidth to experience frequency-flat fading. This also ensures that the subcarriers remain orthogonal when received over a (moderately) frequency selective but time-invariant channel. If the OFDM signal is received over a such channel, each subcarrier experiences a different attenuation, but no dispersion.
The above mentioned properties of OFDM avoid the need for a tapped delay line equalizer and have been a prime motivation to use OFDM modulation methods in several standards, such as Digital Audio Broadcasting (DAB), the Digital Terrestrial Television Broadcast (DTTB) which is part of the Digital Video Broadcasting standard (DVB), and more recently the wireless local area network standard HIPERLAN/2. Particularly in the DAB and DTTB applications, mobile reception under disadvantageous channel conditions are foreseen, with both frequency and time dispersion. Mobile reception of television has not been regarded as a major market up to now. Nonetheless, the DVB system promises to become a high-speed delivery mechanism for mobile multimedia and internet services. At the IFA '99 Consumer Electronics trade show, a consortium of Nokia, Deutsche Telecom and ZDF demonstrated mobile web browsing, email access and television viewing over an OFDM DVB link, with a GSM return channel. With 8 k OFDM subcarriers, over the air DVB reception functioned properly for vehicle speeds upto 50 mph. Mobile reception, i.e. reception over channels with Doppler spreads and the corresponding time dispersion remains one of the problems associated with OFDM systems in particular and multicarrier transmission systems in general. Whereas its robustness against frequency selectivity is seen as an advantage of OFDM, the time-varying character of the channel is known to pose limits to the system performance. Time variations are known to corrupt the orthogonality of the OFDM subcarrier waveforms. In such a case, Intercarrier Interference (ICI, also referred to as FFT leakage) occurs because signal components from one subcarrier cause interference to other, mostly neighboring, subcarriers.
In the document “Equalization of FFT-leakage in mobile DVB-T”, Master Thesis in Radiocommunication from the Royal Institute of Technology, Stockholm, by Guillaume Geslin, April 1998, a multicarrier transmission system is disclosed. In this known transmission system ICI is cancelled (i.e. detected and removed from the received multicarrier signal) in the receiver by means of an equalizer. This equalizer derives a vector of estimated symbols from a vector of received symbols. The operation of the equalizer is based upon a channel model in which the amplitudes of the subcarriers and die time derivatives thereof are indicative of the ICI. The receiver comprises a channel estimator which generates estimates of these amplitudes and derivatives and supplies these estimates to the equalizer. The equalizer then cancels the ICI in dependence on the estimates of the amplitudes and derivatives. The receiver in the known transmission system is relatively complex, i.e. a relatively large number of computations is needed to implement the channel estimator and the equalizer.
It is an object of the invention to provide a transmission system according to the preamble in which the computational burden is substantially reduced. This object is achieved in the transmission system according to the invention, said transmission system being arranged for transmitting a multicarrier signal from a transmitter to a receiver, the multicarrier signal comprising a plurality of subcarriers, the receiver comprising a channel estimator for estimating amplitudes of the subcarriers and for estimating time derivatives of the amplitudes, the receiver further comprising an equalizer for canceling intercarrier interference included in the received multicarrier signal in dependence on the estimated amplitudes and derivatives, wherein the channel estimator and/or the equalizer are arranged for exploiting an amplitude correlation between the amplitudes of different subcarriers and/or for exploiting a derivative correlation between the derivatives of different subcarriers. The invention is based upon the recognition that the complexity of the channel estimator and/or the equalizer can be substantially reduced without seriously affecting the ICI cancellation procedure by using correlation properties of the subcarriers. Although the channel model is characterized by 2N parameters (with N being the number of subcarriers), the number of independent degrees of freedom is substantially smaller in practice. This property comes from the fact that the propagation delay spread is often much smaller than the word duration. This property also means that the entries in a vector of estimated amplitudes are strongly correlated, so that the covariance matrix Ca of the amplitudes may be accurately approximated by a low-rank matrix. Similarly, the entries in a vector of derivatives are strongly correlated and the covariance matrix Cd of the derivatives may also be accurately approximated by a low-rank matrix. Using these low-rank matrices in the channel estimator and/or equalizer results in a substantial reduction of the complexity.
In an embodiment of the transmission system according to the invention the receiver is a linear receiver and wherein the channel estimator comprises a reduced complexity filter for deriving vectors of the estimated amplitudes and derivatives from vectors of received symbols and vectors of estimated symbols. The inventive concept may be advantageously applied in linear receivers in which the estimated symbols are regarded as being a linear (data independent) combination of the received symbols and wherein the estimated symbols are derived from the received symbols by multiplying the received symbols with an inverse matrix which depends on the estimated amplitudes and derivatives. In such a linear receiver the channel estimator may be implemented more efficiently by means of a reduced complexity filter which exploits the correlation between the amplitudes and/or the derivatives.
In a further embodiment of the transmission system according to the invention the receiver is a decision feedback receiver and wherein the channel estimator comprises a smoothing filter for smoothing the estimated amplitudes and/or derivatives. Application of such a smoothing filter has the advantage that it exploits the correlation among derivatives. That is, since an estimate of a derivative on a particular subcarrier is inaccurate because of noise or other effects, it is useful take also into account the values of the derivative at neighboring subcarriers. In practice this typically means that one smoothes the values of subcarriers of the various subcarriers.
In a further embodiment of the transmission system according to the invention the receiver comprises a multiplication by N×N leakage matrix , and wherein the multiplication is implemented as a sequence of an N-point IFFT, N pointwise multiplications and an N-point FFT. An additional complexity reduction is caused by the fact that the leakage matrix is diagonalized by a Fourier basis, i.e. that =FΔFH, where F is the N-point FFT matrix with normalized columns and Δ is a positive diagonal matrix. Hence, a multiplication by the N×N matrix may be implemented as a sequence of an N-point IFFT, N pointwise multiplications and an N-point FFT, thereby substantially reducing complexity.
In a further embodiment of the transmission system according to the invention the decision feedback receiver comprises a decision feedback loop, and wherein the decision feedback loop comprises an error correction decoder. By placing the error correction decoder within the decision feedback loop the operation of the decision feedback receiver is improved. The ICI is cancelled on the basis of the estimated symbols 27. By applying error correction decoding to these estimated symbols 27 the ICI is cancelled on the basis of more reliable estimated symbols 27 rendering an improved ICI cancellation.
The above object and features of the present invention will be more apparent from the following description of the preferred embodiments with reference to the drawings, wherein:
In the Figures, identical parts are provided with the same reference numbers.
The invention is based upon the development of a simple and reliable channel representation In order to do so, we will consider a multicarrier transmission system, e.g. an OFDM or MC-CDMA transmission system, with N subcarriers spaced by fs. Each subcarrier has a rectangular envelope of a finite length that, including the cyclic extension, exceeds (1/fs). Let s=[s1 , . . . ,sN]T be a vector of N transmitted symbols, then the transmitted continuous time baseband signal may be written as follows:
In the case of a frequency selective time-varying additive white Gaussian noise (AWGN) channel, the received continuous time signal may be written as follows:
wherein the coefficient Hk(t) represents the time-varying frequency response at the k-th subcarrier, for 1≦k≦N, and wherein n(t) is AGWN within the signal bandwidth. We assume that the channel slowly varies so that only a first order variation may be taken into account within a single data block duration. In other words, we assume that every Hk(t) is accurately approximated by
Hk(t)≈Hk(tr)+Hk′(tr)(t−tr), (3)
wherein Hk′(t) is the first order derivative of Hk(t) and wherein tr is a reference time within the received data block. Note that the time varying channel Hk(t) may also take into account a residual frequency offset, after the coarse frequency synchronization.
The received baseband signal is sampled with a sampling offset to and a rate Nfs and a block of its N subsequent samples [y(to), y(to+T), . . . , y(to+(N−1)T)] (with
) is subject to a fast fourier transform (FFT) of size N. Let y=[y1, . . . , yN]T be the vector of N FFT samples so that
After substituting (2) into (4) and using the approximation (3), we obtain
a
l=exp(i2πfslt0)(Hl(tr)+Hl′(tr)(t0−tr)), (6)
dl=exp(i2πfslt0)THl′(tr), (7)
wherein nk for 1≦k≦N, are the samples of AWGN having a certain variance a σ2. It is convenient to rewrite the result (5) in a close matrix form. To this end, we define diagonal matrices A=diag {al, . . . , aN}, D=diag {dl, . . . , dN} and an N×N matrix
With this notation, the expression (5) is equivalent to
y=As+Ds+n, (9)
wherein n=[nl, . . . , nN]T is an N×1 vector of AWGN. In the channel model (9), the effect of the channel is represented by two sets of N parameters a=[al, . . . , aN]T and d=[dl, . . . , dN]T. Check that Hl(tr)+Hl′(tr)(to−tr)≈Hl(to), hence the coefficients ak, for 1≦k≦N, are equal to the complex amplitudes of the channel frequency response rotated by the sampling phase exp(i2πfslt0). Similarly, the coefficients dk, for 1≦k≦N are equal to the time-domain derivatives of the complex amplitudes of the channel frequency response scaled by the sampling period T and rotated by the same sampling phase exp(i2πfslt0).
Note that an inter-carrier interference occurs when the channel response varies in time (i.e. d≠0). This interference is defined by the vector d as well as the fixed N×N matrix . It can be is easily seen that according to (8) the latter matrix is a Toeplitz Hermitian matrix and that
Later in this document, we will call a the (vector of) amplitudes, d the (vector of) derivatives and the leakage matrix. In the above expression, the values on the diagonal of depend on the (arbitrary) choice of the reference time instant t0, and can therefor vary depending on the embodiment of receiver. Typical choices for t0 are time beginning, the end or middle of a frame window. For t0 chosen near the middle of the frame, the diagonal terms tend to become approximately zero.
For the implementation of a receiver based on the principles discussed here, multiplication by may be prohibitively complicated particularly for large N (many subcarriers). One can of course only use the terms near the diagonal and exploit the Toeplitz character of by implementing it as a delay-line filter. But there are more efficient implementations of . We note that the first-order ICI terms result from amplitudes linearly increasing with time. That is, one can implement as the cascade of
To process the received signal, the set of channel parameters a and d should be estimated. The estimation accuracy of these 2N scalar parameters may be enhanced if the statistical properties of the channel are used. First of all, we assume that channel variations are slow enough so that Hk′(t) do not change substantially within the duration of a symbol. In this case, we may rewrite (6) and (7) as follows:
al≈exp(i2πfslto)Hl(to),
dl≈exp(i2πfslto)THl′(to), 1≦l≦N. (10)
Let us analyze the relationship between the quantities a, d and physical parameters of the propagation channel, namely the set of its K propagation delays {τ0, . . . , τk}, the corresponding Doppler shifts {f0, . . . , fK}, and complex amplitudes {h0, . . . , hK}. Note that the statistical properties of the channel frequency response depend on the relative delays and Doppler shifts whereas the group delay and/or Doppler shift result in rotations of hk, for 1≦k≦K, where the rotations are taken care of by time and carrier synchronization/tracking. Hence, we may assume without loss of generality that τ0=0 and f0=0. Now, the channel frequency response Hl and its derivative Hl′ may be written as follows:
The relationships (10) and (11) may be readily used to deduce the statistical properties of the amplitudes a and derivatives d. Whenever the number of propagation paths is big enough (ideally K>>N ), the set of coefficients {Hl(t), Hl′(t)}1≦l≦N may be considered jointly Gaussian distributed. Moreover, one can show that the sets {Hl(t)}1≦l≦N and {Hl40 (t)}1≦l≦N are mutually uncorrelated when {hk}1≦k≦K are uncorrelated and the Doppler spectrum has a symmetric shape. In this case, the vectors a and d may be assumed statistically independent multivariate Gaussian with zero mean and covariance matrices
E{aaH}=Ca,E{ddH}=Cd (12)
where E{.} stands for the mathematical expectation operator and Ca, Cd are N×N Hermitian non-negative definite matrices.
An important particular case of Ca, Cd corresponds to a standard model for mobile channels, as described in the book Microwave Mobile Communications by C. Jakes, John Wiley & Sons, Inc., 1974. This model (known as Jakes model) assumes independent contributions of different propagation paths, an exponential delay profile and uniformly distributed angles of incidence for different paths. One can show that in this case,
wherein fΔis the magnitude of the Doppler spread and wherein TΔis the root mean square propagation delay spread. The last two parameters depend on the mobile velocity and propagation environment respectively.
Although the outlined channel model is characterized by 2N parameters, the number of independent degrees of freedom is substantially smaller in practice. This property comes from the fact that the propagation delay spread is often much smaller than the word duration. This property also means that the entries of a are strongly correlated, to the extend that the covariance matrix Ca may be accurately approximated by a low-rank matrix. Similarly, the entries of d are strongly correlated and the covariance matrix Cd may also be accurately approximated by a low-rank matrix. Let us consider the Jakes model and therefore (13). Define the eigendecomposition of C:
C=UΛUH, (14)
wherein U is the N×N unitary matrix of eigenvectors of C and wherein Λ is the N×N positive diagonal matrix of its eigenvalues {Λl, . . . , ΛN}. Assume that the eigenvalues are ordered so that sequence of {Λl, . . . , ΛN} is non-increasing. Under Jakes model, the elements of this sequence have an exponentially decaying profile:
Λk˜exp(−fsTΔk), for 1≦k≦N. (15)
Hence, the sequence of eigenvalues may be accurately approximated with a relatively small number r of non-zero values:
{Λl, . . . , ΛN}≈{Λl, . . . ,Λr,0 . . . 0}. (16)
The aforementioned properties of the channel parameters (i.e. amplitudes and derivatives) can be extensively used to derive reduced complexity procedures for channel equalization with ICI removal. Evidently, in situations where the statistical channel may divert from the idealized theoretical situation, theses models may still inspire the design of practical receiver. The mismatch between the actual channel and the idealized channel model may lead to a (small) performance penalty. However, this does not mean that the receiver principles disclosed in this invention, can not be used successfully.
We now continue with an example embodiment of a receiver based on the developed channel model. If an OFDM receiver is extended such that it can not only reliably estimate amplitudes â (as conventional receivers do), but also (complex valued, e.g. including phase information) derivatives {circumflex over (d)} (which is not common for normal OFDM receivers), then the user data can be recovered as follows:
It is also possible to use a so-called decision feedback receiver. The channel model presented earlier in this document reveals that one can refine and improve this decision feedback receiver in several aspects, among them:
Based on this general scheme another decision feedback receiver can be devised as illustrated in
Although the circuit is depicted as hardware building blocks, a typical implementation may involve iterative software processing. We experimented with an iteration method comprised of the following steps for iteration round i:
The filter 50 attempts to recover an estimate of d s from Z1 by filtering Z2=M1Z1. One mathematical approach is to use the orthogonality principle for an MMSE estimate. In this case, an appropriate choice for M1 follows from the requirement E[(Z2−ds) Z1H]=0N
We define e as the vector of decision errors, with e=as−â^ŝ. This gives
M1={E[ds(ds)H]H+E[dseH]}[E[ds(ds)HH+INσn2+eeH+dseH+(ds)HHe]]−1,
wherein σn is the variance of the noise. Modeling and (pre-)calculating some of the statistical expectation values here can be done, but may not be practical for receiver designers. So next we will search for simplifying approximations.
One can simplify the resulting M1 as M1=H[H+G]−1, wherein G is empirically determined as G=clIN with a constant cl which may be adapted to specific propagation environments, for instance the average BER, the average SNR or the speed of the mobile receiver.
Z3 approximates {circumflex over (d)}, however it contains error contributions due to AWGN and estimation error in {circumflex over (d)} and ŝ. Here we can exploit statistical knowledge that we have developed about the channel behavior, e.g. on correlation of derivatives. The circuit from Z2, multiplication 52 by 1/ŝfrom 44 to form Z3, filter M2 54 to form Z4, to multiplier 56 to form Z5 is intended to perform this task. The multiplications aim at removing and reinserting the data modulated onto the signal. A smoothing operation M2 occurs in between. An MMSE filter to estimate Z4 as closely approximating {circumflex over (d)} follows from the orthogonality principle E(Z4−{circumflex over (d)}) Z3H=0N, thus M2=E{circumflex over (d)}Z3H[EZ3Z3H]−1. In practice one may find it acceptable to crudely approximate M2=E{circumflex over (d)} {circumflex over (d)}H[E{circumflex over (d)} {circumflex over (d)}H+R3]−1. Experiments revealed that R3=c2 IN with a constant c2 is a workable solution.
One can take the filters 72 and 76 non-adaptive and identical to M6=M1 and M7=M2 of
It appears that several implementations refines are possible as are shown in
Many further improvements are foreseen: Use of amplitude and derivatives of previous frames to better estimate the amplitude and derivative. This can be done either as indicated as ‘optional step’ in the algorithms, or taking the initial condition of the iteration as an extrapolation of results from the previous OFDM frame, with â(0) for the new frame equals â(final ) plus T {circumflex over (d)}(0), the latter corrected from the duration of any cyclic prefix or guard interval.
The filters in the receiver, in particular M1, M2, M6, M7 may in a practical receiver be fixed or be chosen from a library of precomputed values. For instance, the receiver control system may upon its knowledge of the propagation environment choose between optimized settings for stationary reception (in which most of the ICI cancellation is switched of), slow mobile reception (some ICI cancellation), or fast mobile reception (aggressive ICI cancellation).
Furthermore, adaptive filters could be used. These can use reliability information about estimates. This can be achieved by adaptive matrices or identification of erasures in the estimates.
MC-CDMA is an extension of the basic OFDM principle. In 1993, this form of Orthogonal Multi-Carrier CDMA was proposed. Basically, it applies OFDM-type of transmission to a multi-user synchronous DS-CDMA signal. So it is vulnerable to Doppler. As illustrated in
If the receiver architectures proposed in the previous sections are used for MC-CDMA, basically, the FEC is replaced by the (inverse) code matrix C. The receiver depicted in
It can be shown that in an MMSE setting, W only has non-zero components on the diagonal, with
wherein the constant depends on the noise floor. Details of the circuitry to estimate amplitudes are not shown in
For MC-CDMA, the slicer bases its symbol decisions on energy received from all subcarriers, thus the reliability of estimates ŝ is much more accurate in subcarriers that are in a fade.
The principles of the receivers described above can also be combined with an FFT which handles more samples than the usual size FFT. One example is the use of a fractionally spaced FFT, another one is the double sized FFT. Moreover, one can even design a system that separates components received via amplitudes from those received over derivatives.
Although in the above mainly an OFDM transmission system is described, the invention is also and equally well applicable to other multicarrier transmission systems such as MC-CDMA transmission systems. Large part of the receivers may be implemented by means of digital hardware or by means of software which is executed by a digital signal processor or by a general purpose microprocessor.
The scope of the invention is not limited to the embodiments explicitly disclosed. The invention is embodied in each new characteristic and each combination of characteristics. Any reference signs do not limit the scope of the claims. The word “comprising” does not exclude the presence of other elements or steps than those listed in a claim. Use of the word “a” or “an” preceding an element does not exclude the presence of a plurality of such elements.
Number | Date | Country | Kind |
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00200596 | Feb 2000 | EP | regional |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/EP01/02173 | 2/22/2001 | WO | 00 | 10/15/2001 |
Publishing Document | Publishing Date | Country | Kind |
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WO01/63870 | 8/30/2001 | WO | A |
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