The present invention relates generally to estimating a time-of-arrival (TOA) of a radio signal, and more particularly to selecting an energy threshold for TOA estimation of an ultra-wideband (UWB) signal.
Impulse radio ultra-wideband (IR-UWB) enables precise ranging and location estimation due to extremely fast and short duration pulses, e.g., billions of sub-nanosecond pulses per second. Accurate time-of-arrival (TOA) estimation of the received signal is a key aspect for precise ranging. However, received UWB signals can include hundreds of multipath components, which increase the difficulty of TOA estimation.
If a coarse timing estimate is available, then an energy of the received samples can be compared with an energy threshold. The first sample that exceeds the threshold can be used as an estimate of the TOA.
However, it is a problem to select an appropriate threshold. The threshold can be based on received signal statistics, i.e., the signal-to-noise ratio (SNR) or a channel realization. If the selected threshold is based solely on noise variance, then the variance of the noise needs to be determined, Scholtz et al., “Problems in modeling UWB channels,” Proc. IEEE Asilomar Conf. Signals, Syst. Computers, vol. 1, pp. 706-711, November 2002.
One method uses a normalized threshold technique that assigns a threshold between minimum and maximum values of energy samples, see U.S. patent application Ser. No. 11/______ entitled “UWB Ranging” and filed by Molisch et al. on Jul. 18, 2005. However, there are two practical limitations to that method. It is difficult to estimate the SNR, and using only the SNR of the received signal does not account for individual channel realizations. This results in a suboptimal threshold selection.
The invention provides a method for estimation a time-of-arrival of a radio signal. Particularly, the signal is an ultra-wideband (UWB) signal. The method uses kurtosis of the received signal to estimate an energy threshold.
System Structure
The UWB signal is received at an antenna 120. The signal is preprocessed 105. During the preprocessing, the signal is low noise amplified (LNA) 130, band pass filtered (BPF) 140, squared (.)2 150, and integrated ∫ 160. The resulting signal energy is sampled periodically 170 at time intervals ts to produce samples z[n] 171.
Kurtosis analysis 180 is performed on the samples. Kurtosis measures a degree of peakedness of a distribution of the real-valued random variables z[n] that are the signal samples. The kurtosis can be defined as a ratio of the second and fourth moments of the distribution of the energy in the signal samples. A distribution of normal random variables has a kurtosis of 3. A higher kurtosis means more of the variance is due to infrequent extreme deviations, as opposed to frequent modestly-sized deviations. The kurtosis is used to select 190 the energy threshold ξ 101.
System Model
The received multipath ultra-wideband (UWB) signal 102 can be expressed as
where j is a frame index, Tf is a frame duration, Tc is the chip duration, and τtoa is the estimated time-of-arrival (TOA) of the received signal.
An effective pulse after the channel impulse response can be expressed by
where ω(t) is the received UWB pulse with unit energy, Eb is the symbol energy, Ns represents the number of pulses per symbol, and α1 and τ1 are the fading coefficients and delays of multipath components, respectively.
Additive white Gaussian noise (AWGN) with zero-mean, double-sided power spectral density N0/2, and variance σ2 is denoted by n(t).
To provide processing gain, time-hopping codes cjε{0, 1, . . . , Nh−1}, and random polarity codes djε{±1} are used during transmission, where Nh is the possible number of chip positions per frame, given by Nh=Tf/Tc. We assume that a coarse acquisition, on the order of frame-length, is acquired, such that the estimated TOA is τtoa ˜u(0, Tf), where U (.) denotes a uniform distribution.
For a search region, the signal within time frame Tf and half of the next frame is considered to include interframe leakage due to multipath interference.
The signal, after LNA 130 and BPF 140, is input to the square-law device 150 followed by integration 160 with an integration interval of Tb. The integration interval determines the time-wise width of the blocks. The number of samples is denoted by Nb= 3/2(Tf/Tb), i.e., a function of frame duration and block size. The sample index is denoted by nε{1, 2, . . . , Nb}, with respect to a starting point of an uncertainty region.
With a sampling interval of ts, which is equal to the block length Tb, the sample values 171 are given by
where the means and variances of noise-only and energy bearing blocks are given by μ0=M02, σ02=2Mσ4, μe=Mσ2+En, σe2=2Mσ4+4σ2En, respectively. The degree of freedom M is given by M=2BTb+1, En is the signal energy within the nth block, and B is the signal bandwidth. The energy of the received symbol is given by
where neb is the number of blocks that sweeps the signal samples.
The received samples 171 are compared to the energy threshold 101 during the TOA estimation 110. The time index of the first sample that exceeds the energy threshold can be identified as the TOA estimate 111, i.e.,
{circumflex over (t)}TC=[min{n|z[n]>ξ}−0.5]Tb, (3)
where {circumflex over (t)}TC is the threshold crossing time, and ξ is the energy threshold 101 which is based on statistics of the received signal. Given samples with minimum and maximum energy, the following normalized threshold can be used
The norm that minimizes the mean absolute error (MAE) is defined by E[|{circumflex over (t)}TC−τtoa|] for a particular Eb/N0 value, where E[.] denotes an expectation operation.
However, estimation of Eb/N0 for a UWB signal is not trivial. Moreover, the optimal normalized threshold can vary for different channel realizations with the same Eb/N0.
Therefore, it is desired to improve the way that the threshold 101 is selected 190.
Threshold Selection Based on Kurtosis
In the prior art, the kurtosis has been used to estimate the SNR for conventional narrow band radio signals, Matzner et al., “SNR estimation and blind equalization (deconvolution) using the kurtosis,” Proc. IEEE-IMS Workshop on Information Theory and Stats., p. 68, October 1994.
Kurtosis has not been used to estimate an energy threshold of an ultra-wideband UWB signal with hundreds of multipath components. The problem is partially shown in
According to an embodiment of the invention, the kurtosis of the energy of the received signal samples z[n] 171 is determined using second and fourth order moments, and is expressed as a ratio of the fourth moment to the square of the second moment of the energy of the samples:
where ε(.) denotes an expectation operation.
The kurtosis relative to a Gaussian distribution can be defined as
K(z[n])=K(z[n])−3,
which is zero for the Gaussian distribution.
In the absence of a received signal or for a low SNR, and for sufficiently large M, the samples z[n] 171 are Gaussian distributed, yielding K=0. As the SNR increases, the kurtosis tends to increase, and can take different values for the same SNR value.
The system parameters are Tf=200 ns, Tc=1 ns, B=4 GHz, and Ns=1. The relationship shown in
Equations 6 and 7 can be used to select the appropriate energy thresholds.
The model coefficients are obtained from the above described relationships for both CM1 and CM2 simulated data, i.e., the same coefficients are used to characterize both channel models.
It should be noted that the above technique can be used to model signals having other block sizes.
In addition, the kurtosis based energy level can also be used as a TOA application using narrow band radio signals.
It should also be noted, that the energy threshold can be used to remove noise. With reference to
With the kurtosis-based threshold selection as described above, the estimation error can be significantly decreased compared to prior art fixed threshold and SNR based techniques.
The threshold selection method can be implemented by calibrating the system for particular block size and frame duration. The method is independent of the channel model.
Although the invention has been described by the way of examples of preferred embodiments, it is to be understood that various other adaptations and modifications may be made within the spirit and scope of the invention. Therefore, it is the object of the appended claims to cover all such variations and modifications as come within the true spirit and scope of the invention.