WO1997003510A1 - Carrier recovery for digitally phase modulated signals, using a known sequence - Google Patents

Carrier recovery for digitally phase modulated signals, using a known sequence Download PDF

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Publication number
WO1997003510A1
WO1997003510A1 PCT/CA1996/000427 CA9600427W WO9703510A1 WO 1997003510 A1 WO1997003510 A1 WO 1997003510A1 CA 9600427 W CA9600427 W CA 9600427W WO 9703510 A1 WO9703510 A1 WO 9703510A1
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WIPO (PCT)
Prior art keywords
carrier phase
factor
fading factor
unit
complex fading
Prior art date
Application number
PCT/CA1996/000427
Other languages
French (fr)
Inventor
Yong Li
Adnan Abu-Dayya
Hong Zhao
Rui Wang
Iouri Trofimov
Alexandre Chloma
Mikhail Bakouline
Vitali Kreindeline
Original Assignee
Northern Telecom Limited
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Northern Telecom Limited filed Critical Northern Telecom Limited
Priority to JP50537597A priority Critical patent/JP3148834B2/en
Priority to CA002224992A priority patent/CA2224992C/en
Priority to EP96918568A priority patent/EP0838111B1/en
Priority to DE69618200T priority patent/DE69618200T2/en
Publication of WO1997003510A1 publication Critical patent/WO1997003510A1/en

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    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L27/00Modulated-carrier systems
    • H04L27/18Phase-modulated carrier systems, i.e. using phase-shift keying
    • H04L27/22Demodulator circuits; Receiver circuits
    • H04L27/233Demodulator circuits; Receiver circuits using non-coherent demodulation
    • H04L27/2332Demodulator circuits; Receiver circuits using non-coherent demodulation using a non-coherent carrier
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L27/00Modulated-carrier systems
    • H04L27/0014Carrier regulation
    • H04L2027/0024Carrier regulation at the receiver end
    • H04L2027/0026Correction of carrier offset
    • H04L2027/003Correction of carrier offset at baseband only
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L27/00Modulated-carrier systems
    • H04L27/0014Carrier regulation
    • H04L2027/0044Control loops for carrier regulation
    • H04L2027/0046Open loops
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L7/00Arrangements for synchronising receiver with transmitter
    • H04L7/04Speed or phase control by synchronisation signals
    • H04L7/041Speed or phase control by synchronisation signals using special codes as synchronising signal
    • H04L7/042Detectors therefor, e.g. correlators, state machines

Definitions

  • This invention relates to carrier recovery in communications systems.
  • This invention is applicable to communications systems generally, and is
  • TDMA time division multiple access
  • IS-54 Standard
  • data is communicated in time slots each comprising a sync (synchronization) word of 14 symbols followed by an information sequence.
  • the sync word is used among other things to facilitate carrier recovery.
  • the manner in which carrier recovery is implemented has a direct impact on the performance of the system.
  • An object of this invention is to provide an improved method of and apparatus for use in carrier recovery using a known sync word in a received communications signal.
  • the invention provides a method of carrier recovery using a known sync
  • the step of estimating the complex fading factor conveniently comprises
  • the step of estimating carrier phase can comprise providing a recursive average or a moving average of the complex fading factor, or it can comprise Kalman filtering the complex fading factor. In the latter case an amplitude factor and a frequency shift of the complex fading factor may also be estimated, and Kalman filter gain may be recursively determined from the estimated carrier phase, amplitude factor, and frequency shift.
  • the invention also provides apparatus for use in carrier recovery from a received communications signal including a known sync (synchronization) word, the apparatus comprising: a linear transform unit responsive to samples of the received signal and to a sampling delay signal for estimating from sampled symbols of the sync word a complex fading factor, embodying information of carrier phase, using a least square criterion; an averaging unit for producing an average of the complex fading factor; and a unit for producing an argument of the average to constitute an estimated carrier phase for carrier recovery.
  • These units can conveniently be constituted by functions of at least one digital signal processor.
  • Kalman filtering The least square criterion and extended Kalman filtering are known, for example from M. H. A. Davis and R. B. Vinter, "Stochastic Modeling and Control", Chapman and Hall, London, 1985.
  • Fig. 1 schematically illustrates a block diagram of parts of a wireless digital communications receiver
  • FIGs. 2, 3, and 4 schematically illustrate carrier recovery arrangements in accordance with embodiments of this invention.
  • Figs. 5 and 6 are graphs illustrating relative performances of the carrier recovery arrangements.
  • An IS-54 system uses ⁇ /4 -shifted DQPSK (differential quadrature phase shift keyed) signal symbols which can be described by the equations:
  • k is a positive integer identifying the symbol s k
  • y 2k-1 and y 2k are the two complex signal samples in a symbol space k
  • i and m are integers with 2m being the number of symbols contributing to inter-symbol interference (ISI) in the model
  • T is the symbol spacing
  • is a sampling delay (period between optimal and actual sampling times) in the symbol space k and is in the range from -T/2 to T/2
  • U 2k-1 and U 2k are unknown complex fading factors during the symbol space k
  • g(t) is the impulse response of the channel filters (the transmit and receive filters combined) given by
  • is the filter roll-off coefficient
  • ⁇ 2k-1 and ⁇ 2k are complex Gaussian random variables with zero mean and variance 2 ⁇ 2 ⁇ , ⁇ 2 ⁇ being the variance of both the real and imaginary parts of the noise.
  • equations (2) and (3) become:
  • n is an integer and the prime symbol ' indicates the conjugate transpose.
  • the complex fading factor has the form A k e j ⁇ k.
  • [ ] denoting a matrix
  • [ ] T representing the conjugate transpose of the matrix
  • D k is the complex fading factor, which embodies information of the amplitude factor A k and of the carrier phase x k
  • ⁇ k is a noise vector having the following correlation matrix:
  • the sampling delay x is determined or estimated in the process of timing recovery.
  • the two unknown symbols preceding and the two unknown symbols following the sync word are given zero values, so that:
  • an estimate of the carrier phase x k is derived from the estimate of the complex fading factor using an averaging process.
  • the averaging process can provide a recursive average or a moving average, or it can be a dynamic averaging process constituted by Kalman filtering.
  • F k is defined by:
  • h is an averaging memory factor.
  • a desirable value of h can be determined by simulation, with a comprise between averaging over larger numbers of symbols (h tends towards 1) and reducing cumulative effects of estimation noise effects of phase fluctuations among different symbols (h tends towards 0).
  • N 14 of symbols in the sync word in an IS-54 system
  • F k is defined by:
  • weights W0 i , W1 i , and W2 i respectively with the non-zero weighting factors given respectively by:
  • ⁇ k is a Gaussian process with zero mean and variance .
  • ⁇ k is a Gaussian process with zero mean and variance 2 ⁇ 2 ⁇ modeling phase jitter of the received signal.
  • I is the unit matrix and with the initial conditions:
  • the estimated indirect variable provides an estimated amplitude factor , an estimated carrier phase , and an estimated frequency shift from the equations:
  • the implementation of the Kalman filtering process which constitutes a dynamic averaging process, as described above requires a total of about 40 complex additions/ multiplications and one real division per sample, and can conveniently be carried out in a digital signal processing (DSP) integrated circuit.
  • DSP digital signal processing
  • the Kalman filtering process has the advantage of providing estimates of the amplitude factor and frequency shift, as well as of the carrier phase as is required for carrier recovery, but requires considerably more computation than the recursive average and moving average processes, which likewise may be carried out in a DSP integrated circuit.
  • Fig. 1 illustrates in a block diagram parts of a wireless digital communications receiver, in which a wireless digital communications signal is supplied via an RF (radio frequency) circuit 20 of a receiver to a down converter 22 to produce a signal which is sampled at twice the symbol rate, i.e. with a sampling period of T/2, by a sampler 24, the samples being converted into digital form by an A-D (analog-to-digital) converter 26.
  • the digitized samples are interpolated by an interpolator 28 in accordance with a recovered estimated sampling delay to produce samples Y k , at estimated optimal sampling times, for further processing.
  • the estimated sampling delay represents the sampling delay ⁇ for the symbol k.
  • the estimated sampling delay k could be used directly to control the sampling time of the sampler 24.
  • the interpolator 28 forms part of digital circuits 30, conveniently implemented in a DSP integrated circuit, which also include a timing recovery and frame synchronization block 32, a carrier recovery block 34, and a residual phase corrector 36.
  • the samples Y k from the interpolator 28 are supplied as the input signal to the blocks 32, 34, and 36.
  • the timing recovery and frame synchronization block 32 is not described further here but can produce the estimated sampling delay in any convenient manner.
  • Imperfections in the down converter 22, signal reflections, and Doppler effects due to movement of the receiver result in the signal supplied to the carrier recovery block 34 having a residual or error carrier phase component, which is removed by the residual carrier phase corrector 36 in accordance with the estimated carrier phase produced by the carrier recovery block 34 in accordance with one of the averaging processes described above.
  • the carrier recovery block 34 is also supplied with the estimated sampling delay from the block 32.
  • the effectiveness of the carrier recovery has a direct impact on the performance of the communications system. Precise carrier recovery is particularly required for communications systems using coherent detection, which provide the advantage of a 3 dB performance
  • Fig. 2 illustrates a DSP arrangement of parts of the carrier recovery block 34 for implementing carrier recovery in accordance with the recursive averaging process described above.
  • the arrangement comprises delay units 40 and 42 each providing a delay of T/2, samplers 44 and 46 each having a sampling period of T, a linear transform unit 48, a recursive averaging unit 50 shown within a broken-line box, and a unit 52 providing an arg() function.
  • the averaging unit 50 comprises a summing function 54, a delay unit 56 providing a delay of one symbol period T, and a multiplication function 58.
  • Each symbol sample Y k is delayed successively in the delay units 40 and 42, the outputs of which are resampled by the samplers 44 and 46 respectively to produce at their outputs the received sync word symbol samples y o,k. and y e,k discussed above with reference to equations (4) and (5).
  • the linear transform unit 48 is supplied with these samples y o,k and y e,k and with the estimated sampling delay , and is arranged to perform a one-step least square estimation to produce the estimate of the complex fading factor in accordance with equation (9) above.
  • the recursive averaging unit 50 is arranged to produce the complex variable F k in accordance with equation (10) above, and the unit 52 is arranged to determine the argument of this complex variable F k and hence to provide the desired estimate of the carrier phase as described above.
  • the unit 52 can for example comprise a calculating unit or a look-up table in memory.
  • the recursive averaging unit 50 in the arrangement of Fig. 2 can be replaced by a moving average unit, for example as illustrated in Fig. 3, to implement carrier recovery using the moving average process in accordance with equation (11) above.
  • the moving average unit of Fig. 3 includes a shift register 60, operating as a serial-to-parallel converter with delay stages each providing a delay of T, providing 2L + 1 parallel output estimates to of the complex fading factor, supplied by the linear transform unit 48 in Fig. 2, within the moving average window.
  • 2L + 1 multiplication functions 62 each of which is arranged to multiply a respective one of these parallel output estimates by the corresponding weighting factor in accordance with the selected weighting scheme as described above, and a summing function 64 arranged to sum the resulting 2L + 1 products to produce the complex variable F k , which is supplied to the unit 52 of Fig. 2. It can be appreciated that, using the equal weighting scheme W0 as described above in which all of the weighting factors are 1, the multiplication functions 62 can be omitted.
  • any other desired averaging (or low-pass filtering or integrating) unit can be used in place of the recursive averaging unit 50.
  • the averaging unit 50 and the unit 52 can be replaced by a Kalman filtering unit 70 as described below with reference to Fig. 4.
  • Kalman filtering is a dynamic averaging process (i.e. the gains of the Kalman filter are changed dynamically in a recursive manner), and it can be appreciated that any other dynamic averaging process could instead be used. Furthermore, it can be appreciated that the Kalman filter could be arranged to have constant gain factors, thereby avoiding the computation of the Kalman filter gains for each symbol as in the unit 70 described below.
  • Fig. 4 shows the Kalman filtering unit 70 which can be used in place of the units 50 and 52 of Fig. 2. Consistent with the notation above for the Kalman filtering process, the output of the linear transform unit 48 in Fig.2 is applied as an input y k to the unit 70.
  • the unit 70 comprises a subtractor 71, multipliers 72 to 74, adders 75 and 76, delay units 77 and 78 each providing a delay of one symbol period T, non-linear transform units 79 and 80, and a Kalman filter gain calculation unit 81.
  • the input y k is supplied to an additive input, and an output of the delay unit 77 is supplied to a subtractive input, of the subtractor 71, the output of which is supplied to the multipliers 72 and 73 to be multiplied by respective Kalman filter gains K k (1) and K k (2) supplied for the current symbol k from the gain calculation unit 81.
  • the output of the multiplier 72 is supplied to one input of the adder 75, another input of which is supplied with the output of the multiplier 74.
  • the output of the adder 75 constitutes an estimated component (in accordance with equation (14) above) of the estimated indirect variable , and is supplied to an input of the non-linear transform unit 79 and to the delay unit 77, the output of which is also supplied to one input of the multiplier 74.
  • the output of the multiplier 73 is supplied to one input of the adder 76, the output of which constitutes an estimated component (in accordance with equation (14) above) of the estimated indirect variable .
  • This output is supplied to an input of the non-linear transform unit 80 and to the delay unit 78, the output of which is supplied to another input of the multiplier 74 and to another input of the adder 76.
  • the unit 70 thus performs extended Kalman filtering on the estimated complex fading factor to produce the estimated indirect variable , comprising the two estimated components and , in accordance with the third line of equations (19) above.
  • the non-linear transform unit 79 produces from the estimate the estimated amplitude factor in accordance with equation (20) above and the estimated carrier phase in accordance with equation (21) above, and the non-linear transform unit 80 produces the estimated frequency shift in accordance with equation (22) above.
  • the non-linear transform units 79 and 80 can comprise calculating units or look-up tables in memory.
  • the Kalman filtering process also produces the estimated amplitude factor and the estimated frequency shift which may also be used for other purposes. Regardless of which averaging process is used, the carrier recovery process can be implemented alone or in combination with timing recovery and/or frame synchronization processes.
  • Figs. 5 and 6 are graphs illustrating simulations of relative performances of the carrier recovery arrangements, for a non-fading channel and a Rayleigh-fading channel respectively, in each case for a SNR of 10 dB.
  • the Rayleigh-fading channel represents an IS-54 system having a carrier frequency of 900 MHz for a mobile travelling at a speed of 120 km. per hour.
  • the phase error variance in rad 2 is shown as a function of the symbol number in the sync word.
  • a line 94 in Fig. 5 and a line 99 in Fig. 6 are for a carrier recovery arrangement using Kalman filtering as described above with reference to Fig. 4.
  • this provides comparable or slightly better performance, relative to the Kalman filtering arrangement, with a computation complexity which is greatly reduced because the recursive averaging unit 50 is very easy to implement.
  • this provides even better relative performance, with a complexity which is greater than that of the recursive averaging arrangement but less than that of the Kalman filtering arrangement.

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  • Engineering & Computer Science (AREA)
  • Computer Networks & Wireless Communication (AREA)
  • Signal Processing (AREA)
  • Digital Transmission Methods That Use Modulated Carrier Waves (AREA)
  • Synchronisation In Digital Transmission Systems (AREA)

Abstract

A method of carrier recovery in a wireless communications system using a known synchronization word, for example an IS-54 TDMA system, operates in two stages to produce an estimate of carrier phase. In the first stage, a complex fading factor, embodying carrier phase information, is estimated from the synchronization word in the received signal using at least square criterion. In the second stage, the carrier phase is estimated from this complex fading factor by averaging. The averaging can provide a recursive average or a moving average, or can be implemented using Kalman filtering which also provides an estimated amplitude factor and frequency shift. The method and apparatus provide a substantial improvement over phase locked loop carrier recovery.

Description

CARRIER RECOVERY FOR DIGITALLY PHASE MODULATED SIGNALS , USING A KNOWN SEQUENCE
This invention relates to carrier recovery in communications systems.
Background of the Invention
This invention is applicable to communications systems generally, and is
especially applicable to, and is described below in the context of, TDMA (time division multiple access) cellular communications systems compatible with EIA/TIA document IS-54-B: Cellular System Dual-Mode Mobile Station-Base Station Compatibility
Standard (Rev. B). For convenience and brevity, such a system is referred to below simply as an IS-54 system. In such a system, data is communicated in time slots each comprising a sync (synchronization) word of 14 symbols followed by an information sequence. The sync word is used among other things to facilitate carrier recovery. The manner in which carrier recovery is implemented has a direct impact on the performance of the system.
In cellular communications systems, carrier recovery is made difficult by fading and interference or noise. Although conventional PLL (phase locked loop) carrier
recovery systems are well understood and widely used in wireless communications systems, they do not perform satisfactorily in noisy (or low SNR (signal-to-noise ratio)) and fading channel environments, such as can occur in cellular communications systems.
An object of this invention is to provide an improved method of and apparatus for use in carrier recovery using a known sync word in a received communications signal.
Summary of the Invention
The invention provides a method of carrier recovery using a known sync
(synchronization) word in a received communications signal, comprising the steps of:
estimating from symbols of the sync word a complex fading factor, embodying
information of carrier phase, using a least square criterion; and estimating carrier phase from the complex fading factor using an averaging process.
The step of estimating the complex fading factor conveniently comprises
performing a one-step optimal estimate using known symbols of the sync word and zero values for unknown symbols adjacent to the sync word.
The step of estimating carrier phase can comprise providing a recursive average or a moving average of the complex fading factor, or it can comprise Kalman filtering the complex fading factor. In the latter case an amplitude factor and a frequency shift of the complex fading factor may also be estimated, and Kalman filter gain may be recursively determined from the estimated carrier phase, amplitude factor, and frequency shift.
The invention also provides apparatus for use in carrier recovery from a received communications signal including a known sync (synchronization) word, the apparatus comprising: a linear transform unit responsive to samples of the received signal and to a sampling delay signal for estimating from sampled symbols of the sync word a complex fading factor, embodying information of carrier phase, using a least square criterion; an averaging unit for producing an average of the complex fading factor; and a unit for producing an argument of the average to constitute an estimated carrier phase for carrier recovery. These units can conveniently be constituted by functions of at least one digital signal processor.
The least square criterion and extended Kalman filtering are known, for example from M. H. A. Davis and R. B. Vinter, "Stochastic Modeling and Control", Chapman and Hall, London, 1985.
Brief Description of the Drawings
The invention will be further understood from the following description with reference to the accompanying drawings, in which:
Fig. 1 schematically illustrates a block diagram of parts of a wireless digital communications receiver;
Figs. 2, 3, and 4 schematically illustrate carrier recovery arrangements in accordance with embodiments of this invention; and
Figs. 5 and 6 are graphs illustrating relative performances of the carrier recovery arrangements.
Detailed Description
The following description first presents a model for an IS-54 system, and then describes methods of carrier recovery in accordance with embodiments of the invention. Physical implementations of carrier recovery arrangements for carrying out these methods, and their relative performance, are then described with reference to the drawings. Although this detailed description relates specifically to an IS-54 system, it is emphasized that this is by way of example and that the invention is applicable to other communications systems.
Signal and Observation Models
An IS-54 system uses π/4 -shifted DQPSK (differential quadrature phase shift keyed) signal symbols which can be described by the equations:
Sk = sk- 1.wk, wk = (θk +jϑlk)/√2, k = 1, 2, 3, ... (1) where k is a positive integer identifying the symbol sk, wk is a complex value, representing binary information, with real and imaginary parts θk and ϑk respectively, θkk∈ {-1,1 } (i.e. each of θk and ϑk is one of the set of values -1 and 1, i.e. is either -1 or 1); and I sk I = 1 f or any k (i.e. the amplitude of sk is 1).
With sampling as is usual at twice the symbol rate, a discrete observation model of the received signal samples has the form:
Figure imgf000004_0001
Figure imgf000005_0001
where y2k-1 and y2k are the two complex signal samples in a symbol space k, i and m are integers with 2m being the number of symbols contributing to inter-symbol interference (ISI) in the model, T is the symbol spacing, τ is a sampling delay (period between optimal and actual sampling times) in the symbol space k and is in the range from -T/2 to T/2, U2k-1 and U2k are unknown complex fading factors during the symbol space k, g(t) is the impulse response of the channel filters (the transmit and receive filters combined) given by
Figure imgf000005_0002
where α is the filter roll-off coefficient, and η2k-1 and η2k are complex Gaussian random variables with zero mean and variance 2σ2 η, σ2 η being the variance of both the real and imaginary parts of the noise.
These expressions describe the signal and observation models which are used to derive the carrier recovery algorithm as described below.
Carrier Recovery Method
It is assumed for convenience that m = 2 and that the complex fading factors U2k-1 and U2k are the same during the symbol space, each being represented by the product of an amplitude factor Ak and a carrier phase shift ejxk. Using the suffixes o,k and e,k (for odd and even samples in the symbol space k) in place of
2k - 1 and 2k respectively, equations (2) and (3) become:
Figure imgf000005_0003
with ηo,k and ηe,k being complex Gaussian random variables with zero mean and correlation characteristics given by:
Figure imgf000005_0004
where n is an integer and the prime symbol ' indicates the conjugate transpose.
The objective of the carrier recovery method is to estimate the phase xk from the received signal samples yo,k and ye,k during the sync word, i.e. for values of k from 1 to N = 14 (the number of symbols in the sync word). This is done in two stages as described below, the first stage comprising an estimation of the complex fading factor and the second stage comprising an averaging process. Estimation of Complex Fading Factor
As described above, the complex fading factor has the form Akek. With square brackets [ ] denoting a matrix and [ ]T representing the conjugate transpose of the matrix, and putting:
then
Figure imgf000006_0006
where Dk is the complex fading factor, which embodies information of the amplitude factor Ak and of the carrier phase xk, and λk is a noise vector having the following correlation matrix:
Figure imgf000006_0003
where again the prime symbol ' indicates the conjugate transpose.
Assuming that Tk is known, i.e. that x and Sk are known, then a one-step optimal estimate
Figure imgf000006_0002
(estimated values are denoted below by a circumflex symbol ^) of the complex fading factor Dk based on the least square criterion can be obtained as:
Figure imgf000006_0001
The sampling delay x is determined or estimated in the process of timing recovery. Sk, and hence the vector Tk, is fully known only for values of k from 3 to N - 2 = 12, because the sync word symbols are known but symbols adjacent the sync word are unknown. For the estimation in equation (9), the two unknown symbols preceding and the two unknown symbols following the sync word are given zero values, so that:
Figure imgf000006_0007
Averaging Process
For carrier recovery, an estimate
Figure imgf000006_0005
of the carrier phase xk is derived from the estimate
Figure imgf000006_0004
of the complex fading factor using an averaging process. In different embodiments of the invention as described below the averaging process can provide a recursive average or a moving average, or it can be a dynamic averaging process constituted by Kalman filtering. Recursive and Moving Averages
Denoting a complex variable for the symbol k as Fk, this variable being derived from the estimate
Figure imgf000007_0001
, then the carrier phase estimate
Figure imgf000007_0003
is given by
Figure imgf000007_0002
.
For providing a recursive average, Fk is defined by:
Figure imgf000007_0004
where 0≤ h≤ 1 and h is an averaging memory factor. A desirable value of h can be determined by simulation, with a comprise between averaging over larger numbers of symbols (h tends towards 1) and reducing cumulative effects of estimation noise effects of phase fluctuations among different symbols (h tends towards 0). With the relatively small number N = 14 of symbols in the sync word in an IS-54 system, the former factor appears to be dominant and a value of h = 1 appears to be optimal, but smaller values (e.g. h = 0.75 or h = 0.5) can alternatively be used and especially may be preferred in systems with longer sync words or high SNR.
For a moving average, the averaging is performed on the symbol k as well as on an integer number L of symbols on each side of (i.e. before and after) the symbol k, and hence on a moving window of 2L + 1 symbols centered on the symbol k, with the individual symbols in the window being given desired weighting factors. Thus in this case Fk is defined by:
Figure imgf000007_0005
where wi is the weighting factor for the estimate
Figure imgf000007_0007
, with wi = 0 and
Figure imgf000007_0006
for i < 1 and for i > N. Various window sizes and weighting schemes can be used. For example, the window size can be determined by L = 5, with a weighting scheme in which the weights are equal throughout the window, decrease linearly with distance from the center of the window, or have a second order decrease with distance from the center of the window. These weighting schemes are denoted by weights W0i, W1i, and W2i respectively with the non-zero weighting factors given respectively by:
Figure imgf000007_0008
In each of these cases the symbol k at the center of the window has a weight of 1. An optimum weighting scheme (other schemes than these can instead be used) can be determined by simulation. For the sync word in an IS-54 system, with L = 5 the best results appear to be produced with the scheme having equal weights W0i = 1.
Kalman Filtering
A one-step estimate
Figure imgf000007_0009
is given by the equation:
Figure imgf000007_0010
where μk is a Gaussian process with zero mean and variance
Figure imgf000008_0009
.
Rewriting
Figure imgf000008_0008
as a new observation variable yk, and assuming that the amplitude factor Ak and frequency shift Δxk are constant during the observation, then a new observation model is defined by the equations:
Figure imgf000008_0010
where ξk is a Gaussian process with zero mean and variance 2σ2 ξ modeling phase jitter of the received signal.
Using the following substitutions:
Figure imgf000008_0007
the new observation model of equations (13) becomes: )
Figure imgf000008_0006
and can be rewritten in the following concise form:
where
Figure imgf000008_0005
Expanding the function f(Φk, ξk) in first order Taylor series form (on variables Φk-1 and ξk-1 at the point
Figure imgf000008_0004
gives:
Figure imgf000008_0001
and the Jacobi matrix can be expressed in the form:
Figure imgf000008_0002
.
Consequently, a linearized indirect model can be expressed as:
Figure imgf000008_0003
where: ξ
Figure imgf000009_0004
Applying Kalman filtering theory to the model of equation (18) gives a recursive estimation algorithm for the indirect variable Φk:
Figure imgf000009_0005
where I is the unit matrix and with the initial conditions:
.
Figure imgf000009_0006
From equations (14), it can be seen that the estimated indirect variable
Figure imgf000009_0008
provides an estimated amplitude factor
Figure imgf000009_0001
, an estimated carrier phase
Figure imgf000009_0002
, and an estimated frequency shift
Figure imgf000009_0003
from the equations:
Figure imgf000009_0007
The implementation of the Kalman filtering process, which constitutes a dynamic averaging process, as described above requires a total of about 40 complex additions/ multiplications and one real division per sample, and can conveniently be carried out in a digital signal processing (DSP) integrated circuit. The Kalman filtering process has the advantage of providing estimates of the amplitude factor and frequency shift, as well as of the carrier phase as is required for carrier recovery, but requires considerably more computation than the recursive average and moving average processes, which likewise may be carried out in a DSP integrated circuit.
Physical Implementation
Referring now to the drawings, Fig. 1 illustrates in a block diagram parts of a wireless digital communications receiver, in which a wireless digital communications signal is supplied via an RF (radio frequency) circuit 20 of a receiver to a down converter 22 to produce a signal which is sampled at twice the symbol rate, i.e. with a sampling period of T/2, by a sampler 24, the samples being converted into digital form by an A-D (analog-to-digital) converter 26. The digitized samples are interpolated by an interpolator 28 in accordance with a recovered estimated sampling delay
Figure imgf000010_0005
to produce samples Yk, at estimated optimal sampling times, for further processing. The estimated sampling delay represents the sampling delay τ for the symbol k. As an alternative to the provision of the interpolator 28, the estimated sampling delay
Figure imgf000010_0004
k could be used directly to control the sampling time of the sampler 24. The interpolator 28 forms part of digital circuits 30, conveniently implemented in a DSP integrated circuit, which also include a timing recovery and frame synchronization block 32, a carrier recovery block 34, and a residual phase corrector 36. The samples Yk from the interpolator 28 are supplied as the input signal to the blocks 32, 34, and 36. The timing recovery and frame synchronization block 32 is not described further here but can produce the estimated sampling delay
Figure imgf000010_0003
in any convenient manner.
Imperfections in the down converter 22, signal reflections, and Doppler effects due to movement of the receiver result in the signal supplied to the carrier recovery block 34 having a residual or error carrier phase component, which is removed by the residual carrier phase corrector 36 in accordance with the estimated carrier phase
Figure imgf000010_0002
produced by the carrier recovery block 34 in accordance with one of the averaging processes described above. To this end the carrier recovery block 34 is also supplied with the estimated sampling delay
Figure imgf000010_0001
from the block 32. As indicated in the introduction, the effectiveness of the carrier recovery has a direct impact on the performance of the communications system. Precise carrier recovery is particularly required for communications systems using coherent detection, which provide the advantage of a 3 dB performance
improvement over incoherent detection, but the invention facilitates carrier recovery in either case.
Fig. 2 illustrates a DSP arrangement of parts of the carrier recovery block 34 for implementing carrier recovery in accordance with the recursive averaging process described above. The arrangement comprises delay units 40 and 42 each providing a delay of T/2, samplers 44 and 46 each having a sampling period of T, a linear transform unit 48, a recursive averaging unit 50 shown within a broken-line box, and a unit 52 providing an arg() function. The averaging unit 50 comprises a summing function 54, a delay unit 56 providing a delay of one symbol period T, and a multiplication function 58.
Each symbol sample Yk is delayed successively in the delay units 40 and 42, the outputs of which are resampled by the samplers 44 and 46 respectively to produce at their outputs the received sync word symbol samples yo,k. and ye,k discussed above with reference to equations (4) and (5). The linear transform unit 48 is supplied with these samples yo,k and ye,k and with the estimated sampling delay
Figure imgf000011_0004
, and is arranged to perform a one-step least square estimation to produce the estimate
Figure imgf000011_0003
of the complex fading factor in accordance with equation (9) above. The recursive averaging unit 50 is arranged to produce the complex variable Fk in accordance with equation (10) above, and the unit 52 is arranged to determine the argument of this complex variable Fk and hence to provide the desired estimate
Figure imgf000011_0005
of the carrier phase as described above. The unit 52 can for example comprise a calculating unit or a look-up table in memory.
In the recursive averaging unit 50, inputs of the summing function 54 are supplied with the current estimate
Figure imgf000011_0006
of the complex fading factor and the previous output, Fk- 1, of the function 54, delayed by T in the delay unit 56, multiplied in the multiplication function 58 by the factor h, to produce the current output Fk in accordance with equation (10). It can be appreciated that, in the case of h = 1, the multiplication function 58 can be omitted.
The recursive averaging unit 50 in the arrangement of Fig. 2 can be replaced by a moving average unit, for example as illustrated in Fig. 3, to implement carrier recovery using the moving average process in accordance with equation (11) above. The moving average unit of Fig. 3 includes a shift register 60, operating as a serial-to-parallel converter with delay stages each providing a delay of T, providing 2L + 1 parallel output estimates
Figure imgf000011_0001
to
Figure imgf000011_0002
of the complex fading factor, supplied by the linear transform unit 48 in Fig. 2, within the moving average window. The moving average unit of Fig. 3 further includes 2L + 1 multiplication functions 62, each of which is arranged to multiply a respective one of these parallel output estimates by the corresponding weighting factor in accordance with the selected weighting scheme as described above, and a summing function 64 arranged to sum the resulting 2L + 1 products to produce the complex variable Fk, which is supplied to the unit 52 of Fig. 2. It can be appreciated that, using the equal weighting scheme W0 as described above in which all of the weighting factors are 1, the multiplication functions 62 can be omitted.
It can be appreciated that, apart from the moving average unit of Fig. 3, any other desired averaging (or low-pass filtering or integrating) unit can be used in place of the recursive averaging unit 50. In particular, the averaging unit 50 and the unit 52 can be replaced by a Kalman filtering unit 70 as described below with reference to Fig. 4.
Kalman filtering is a dynamic averaging process (i.e. the gains of the Kalman filter are changed dynamically in a recursive manner), and it can be appreciated that any other dynamic averaging process could instead be used. Furthermore, it can be appreciated that the Kalman filter could be arranged to have constant gain factors, thereby avoiding the computation of the Kalman filter gains for each symbol as in the unit 70 described below.
Fig. 4 shows the Kalman filtering unit 70 which can be used in place of the units 50 and 52 of Fig. 2. Consistent with the notation above for the Kalman filtering process, the output
Figure imgf000012_0001
of the linear transform unit 48 in Fig.2 is applied as an input yk to the unit 70. The unit 70 comprises a subtractor 71, multipliers 72 to 74, adders 75 and 76, delay units 77 and 78 each providing a delay of one symbol period T, non-linear transform units 79 and 80, and a Kalman filter gain calculation unit 81.
The input yk is supplied to an additive input, and an output of the delay unit 77 is supplied to a subtractive input, of the subtractor 71, the output of which is supplied to the multipliers 72 and 73 to be multiplied by respective Kalman filter gains Kk(1) and Kk(2) supplied for the current symbol k from the gain calculation unit 81. The output of the multiplier 72 is supplied to one input of the adder 75, another input of which is supplied with the output of the multiplier 74. The output of the adder 75 constitutes an estimated component
Figure imgf000012_0002
(in accordance with equation (14) above) of the estimated indirect variable
Figure imgf000012_0003
, and is supplied to an input of the non-linear transform unit 79 and to the delay unit 77, the output of which is also supplied to one input of the multiplier 74. The output of the multiplier 73 is supplied to one input of the adder 76, the output of which constitutes an estimated component
Figure imgf000012_0009
(in accordance with equation (14) above) of the estimated indirect variable
Figure imgf000012_0004
. This output is supplied to an input of the non-linear transform unit 80 and to the delay unit 78, the output of which is supplied to another input of the multiplier 74 and to another input of the adder 76.
The unit 70 thus performs extended Kalman filtering on the estimated complex fading factor to produce the estimated indirect variable
Figure imgf000012_0008
, comprising the two estimated components
Figure imgf000012_0005
and
Figure imgf000012_0006
, in accordance with the third line of equations (19) above. The non-linear transform unit 79 produces from the estimate
Figure imgf000012_0014
the estimated amplitude factor
Figure imgf000012_0007
in accordance with equation (20) above and the estimated carrier phase in accordance with equation (21) above, and the non-linear transform unit 80 produces the estimated frequency shift
Figure imgf000012_0010
in accordance with equation (22) above.
These estimates are supplied to the gain calculation unit 81 to compute the Kalman filter gains Kk+1(1) and Kk+1(2) for use recursively for the next symbol k+1 in accordance with the second line of equations (19) above. Like the unit 52 in Fig. 2, the non-linear transform units 79 and 80 can comprise calculating units or look-up tables in memory.
Although only the estimated carrier phase
Figure imgf000012_0012
is required for carrier recovery, as can be seen from the above description the Kalman filtering process also produces the estimated amplitude factor
Figure imgf000012_0011
and the estimated frequency shift
Figure imgf000012_0013
which may also be used for other purposes. Regardless of which averaging process is used, the carrier recovery process can be implemented alone or in combination with timing recovery and/or frame synchronization processes.
Figs. 5 and 6 are graphs illustrating simulations of relative performances of the carrier recovery arrangements, for a non-fading channel and a Rayleigh-fading channel respectively, in each case for a SNR of 10 dB. The Rayleigh-fading channel represents an IS-54 system having a carrier frequency of 900 MHz for a mobile travelling at a speed of 120 km. per hour. In each figure the phase error variance in rad2 is shown as a function of the symbol number in the sync word.
A line 94 in Fig. 5 and a line 99 in Fig. 6 are for a carrier recovery arrangement using Kalman filtering as described above with reference to Fig. 4. A line 92 in Fig. 5 and a line 97 in Fig. 6 are for a carrier recovery arrangement using recursive averaging as described above with reference to Fig. 2, with h = 1. As can be appreciated, this provides comparable or slightly better performance, relative to the Kalman filtering arrangement, with a computation complexity which is greatly reduced because the recursive averaging unit 50 is very easy to implement. A line 93 in Fig. 5 and a line 98 in Fig. 6 are for a carrier recovery arrangement using a moving average as described above with reference to Fig. 3, with L = 5 and equal weights W0. As can be appreciated, this provides even better relative performance, with a complexity which is greater than that of the recursive averaging arrangement but less than that of the Kalman filtering arrangement.
Simulation results have shown that carrier recovery arrangements in accordance with the invention enable carrier recovery to be achieved with low mean phase and frequency error for relatively low SNR, and that this is accomplished well within the 14 symbols of the sync word sequence of an IS-54 system. These results provide an improvement of more than 10 dB over phase locked loop techniques traditionally used for carrier recovery.
Although particular embodiments of the invention have been described in detail, it should be appreciated that numerous modifications, variations, and adaptations may be made without departing from the scope of the invention as defined in the claims.

Claims

WHAT IS CLAIMED IS:
1. A method of carrier recovery using a known sync (synchronization) word in a received communications signal, comprising the steps of:
estimating from symbols of the sync word a complex fading factor, embodying information of carrier phase, using a least square criterion; and
estimating carrier phase from the complex fading factor using an averaging process.
2. A method as claimed in claim 1 wherein the step of estimating the complex fading factor comprises performing a one-step optimal estimate using known symbols of the sync word and zero values for unknown symbols adjacent to the sync word.
3. A method as claimed in claim 1 or 2 wherein the step of estimating carrier phase comprises providing a recursive average of the complex fading factor.
4. A method as claimed in claim 1 or 2 wherein the step of estimating carrier phase comprises providing a moving average of the complex fading factor.
5. A method as claimed in claim 1 or 2 wherein the step of estimating carrier phase comprises Kalman filtering the complex fading factor.
6. A method as claimed in claim 5 and further comprising the step of estimating an amplitude factor and a frequency shift of the complex fading factor.
7. A method as claimed in claim 6 and further comprising the step of recursively determining Kalman filter gain from the estimated carrier phase, amplitude factor, and frequency shift.
8. A method as claimed in any of claims 1 to 7 wherein the step of estimating carrier phase comprises forming an argument of an average of the complex fading factor.
9. Apparatus for use in carrier recovery from a received communications signal including a known sync (synchronization) word, the apparatus comprising:
a linear transform unit responsive to samples of the received signal and to a sampling delay signal for estimating from sampled symbols of the sync word a complex fading factor, embodying information of carrier phase, using a least square criterion; an averaging unit for producing an average of the complex fading factor; and a unit for producing an argument of the average to constitute an estimated carrier phase for carrier recovery.
10. Apparatus as claimed in claim 9 wherein the averaging unit comprises a recursive averaging unit.
11. Apparatus as claimed in claim 9 wherein the averaging unit comprises a moving average unit.
12. Apparatus as claimed in claim 9 wherein the averaging unit comprises a Kalman filter.
13. Apparatus as claimed in claim 12 and further comprising functions responsive to the averaged complex fading factor for producing estimates of an amplitude factor and a frequency shift of the complex fading factor.
14. Apparatus as claimed in claim 13 and further comprising a gain calculation unit responsive to the estimated carrier phase, amplitude factor, and frequency shift for recursively determining gain of the Kalman filter.
15. Apparatus as claimed in any of claims 9 to 14 wherein the linear transform unit, averaging unit, and unit for producing an argument are constituted by functions of at least one digital signal processor.
PCT/CA1996/000427 1995-07-07 1996-06-26 Carrier recovery for digitally phase modulated signals, using a known sequence WO1997003510A1 (en)

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CA002224992A CA2224992C (en) 1995-07-07 1996-06-26 Carrier recovery for digitally phase modulated signals, using a known sequence
EP96918568A EP0838111B1 (en) 1995-07-07 1996-06-26 Carrier recovery for digitally phase modulated signals, using a known sequence
DE69618200T DE69618200T2 (en) 1995-07-07 1996-06-26 CARRIER RECOVERY FOR DIGITAL PHASE-MODULATED SIGNALS BY MEANS OF A PHASE-MODULATED KNOWN SEQUENCE

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Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0933902A2 (en) * 1998-02-02 1999-08-04 Mitsubishi Denki Kabushiki Kaisha Demodulation with fading compensation
US6855245B1 (en) 1998-07-22 2005-02-15 Engelhard Corporation Hydrogenation process

Families Citing this family (11)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6421399B1 (en) * 1998-03-05 2002-07-16 Agere Systems Guardian Corporation Frequency and phase estimation for MPSK signals
US6330289B1 (en) * 1998-10-16 2001-12-11 Nortel Networks Limited System for improving base station amplifier performance
JP3930180B2 (en) * 1999-01-21 2007-06-13 富士通株式会社 Digital signal demodulating circuit and method
US6577685B1 (en) * 1999-08-02 2003-06-10 Mitsubishi Electric Research Laboratories, Inc. Programmable digital signal processor for demodulating digital television signals
US6993095B2 (en) * 2001-03-15 2006-01-31 Texas Instruments Incorporated Phase-locked loop initialization via curve-fitting
US7239682B2 (en) * 2002-11-12 2007-07-03 Carnegie Mellon University Timing recovery system and method
US20040268208A1 (en) * 2003-06-27 2004-12-30 Seagate Technology Llc Computation of branch metric values in a data detector
US6980893B2 (en) * 2003-11-21 2005-12-27 The Boeing Company Phase recovery filtering techniques for SCP throughput shortage
US7551694B2 (en) 2005-01-20 2009-06-23 Marvell World Trade Ltd. Limiter based analog demodulator
CN108426942B (en) * 2018-02-05 2020-09-15 北京交通大学 Method and device for realizing filter of digital phase-locked demodulation
JP2020010206A (en) 2018-07-10 2020-01-16 セイコーエプソン株式会社 Circuit device, oscillator, clock signal generation device, electronic apparatus, and mobile body

Citations (5)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0349064A1 (en) * 1988-06-28 1990-01-03 Telecommunications Radioelectriques Et Telephoniques T.R.T. Method of coherently demodulating a continuous phase, digitally modulated signal with a constant envelope
EP0498704A1 (en) * 1991-01-31 1992-08-12 Alcatel Telspace Method for the coherent demodulation of PSK and apparatus for the implementation of the method
EP0551081A2 (en) * 1992-01-10 1993-07-14 Mitsubishi Denki Kabushiki Kaisha Adaptive equalizer and receiver
EP0608717A2 (en) * 1993-01-14 1994-08-03 Nec Corporation Phase error canceller for QPSK signals using unique word detectors
EP0639913A1 (en) * 1993-08-18 1995-02-22 Roke Manor Research Limited Apparatus for resolving phase ambiguities in a DPSK radio link

Family Cites Families (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5165051A (en) * 1990-05-15 1992-11-17 The United States Of America As Represented By The Administrator Of The National Aeronautics And Space Administration Modified fast frequency acquisition via adaptive least squares algorithm
US5233632A (en) * 1991-05-10 1993-08-03 Motorola, Inc. Communication system receiver apparatus and method for fast carrier acquisition
US5249205A (en) * 1991-09-03 1993-09-28 General Electric Company Order recursive lattice decision feedback equalization for digital cellular radio
US5432816A (en) * 1992-04-10 1995-07-11 International Business Machines Corporation System and method of robust sequence estimation in the presence of channel mismatch conditions
US5432821A (en) * 1992-12-02 1995-07-11 University Of Southern California System and method for estimating data sequences in digital transmissions
JP3153869B2 (en) * 1993-05-11 2001-04-09 株式会社日立国際電気 Fading distortion compensation system and its circuit
US5619503A (en) * 1994-01-11 1997-04-08 Ericsson Inc. Cellular/satellite communications system with improved frequency re-use

Patent Citations (5)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0349064A1 (en) * 1988-06-28 1990-01-03 Telecommunications Radioelectriques Et Telephoniques T.R.T. Method of coherently demodulating a continuous phase, digitally modulated signal with a constant envelope
EP0498704A1 (en) * 1991-01-31 1992-08-12 Alcatel Telspace Method for the coherent demodulation of PSK and apparatus for the implementation of the method
EP0551081A2 (en) * 1992-01-10 1993-07-14 Mitsubishi Denki Kabushiki Kaisha Adaptive equalizer and receiver
EP0608717A2 (en) * 1993-01-14 1994-08-03 Nec Corporation Phase error canceller for QPSK signals using unique word detectors
EP0639913A1 (en) * 1993-08-18 1995-02-22 Roke Manor Research Limited Apparatus for resolving phase ambiguities in a DPSK radio link

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
HO & KIM: "On pilot symbol assisted detection of MSK and GTFM in fast fading channels", PROCEEDINGS OF THE GLOBAL TELECOMMUNICATIONS CONFERENCE (GLOBECOM), SAN FRANCISCO, NOV. 28 - DEC. 2, 1994, vol. 2, 28 November 1994 (1994-11-28) - 2 December 1994 (1994-12-02), NEW YORK, US, pages 967 - 972, XP000488681 *

Cited By (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP0933902A2 (en) * 1998-02-02 1999-08-04 Mitsubishi Denki Kabushiki Kaisha Demodulation with fading compensation
US6452983B1 (en) 1998-02-02 2002-09-17 Mitsubishi Denki Kabushiki Kaisha Demodulator for improving reception performance in satellite and Mobile communications
EP0933902A3 (en) * 1998-02-02 2002-09-18 Mitsubishi Denki Kabushiki Kaisha Demodulation with fading compensation
US6855245B1 (en) 1998-07-22 2005-02-15 Engelhard Corporation Hydrogenation process

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