This invention relates to a method of predicting the power of a received wireless signal. It is particularly suited, but by no means limited, to predicting the power of a wireless signal received by a mobile device.
Upcoming third generation wireless systems are intended to have the ability to transmit high speed data, video and multimedia traffic, as well as voice signals to mobile users. Careful choices of modulation, coding, power control and detection methods need to be made in order to make good use of the available channels.
The power of a wireless signal received by a terminal device (e.g. mobile phone) is susceptible to constructive and destructive interference occurring as the device moves relative to signal scattering objects such as buildings. Fluctuations in the signal strength occur due to Doppler effects as the mobile device moves. Devices which themselves are not moving may still be susceptible to constructive and destructive interference occurring as other objects in the environment around them move their relative positions.
The power of the received wireless signal is given by the squared modulus of the complex phasor corresponding to the amplitude and phase of the received signal. Adaptive modulation may be used to provide a modulation technique appropriate to the instantaneous power level of the received signal. If the received signal is strong (i.e. is of high power), then Quadrature Amplitude Modulation (QAM) can be used, which maximises the data transmission rate. Alternatively, if the received signal is weak (i.e. is of lower power), then Quadrature Phase Shift Keying (QPSK) is more appropriate.
The mobile device is able to measure the power of the received signal at any given time. However, there is an inherent delay (e.g. 2 to 10 ms) in transmitting this information from the mobile device back to the transmitter and then processing the information. There is insufficient time to enable the transmitter to receive and process this information before making the decision as to which modulation technique to employ. This is because the power of the received signal fluctuates because of the Doppler effects, and so, within an increment of time, any measured signal strength will no longer be current. Thus, in order to be able to select the most appropriate modulation technique, it is necessary to be able to predict what the received signal power will be at an increment of time in the future.
Some prior approaches to the problem of Modulation and Coding Scheme Prediction (MCSP) are reviewed by A. Duel-Hallen, S. Hu and H. Hallen in “Long-Range Prediction of Fading Signals—Enabling Adapting Transmission for Mobile Radio Channels” (IEEE Signal Processing Magazine, May 2000).
These prior approaches are based on the concept of predicting future values of the complex channel, rather than future values of the real channel power (i.e. magnitude squared of the complex channel value). These alternative techniques use, as their input, noisy measured historical complex channel values, rather than measured real channel power values. Such techniques described by Duel-Hallen et al., and elsewhere, include Linear Prediction techniques (e.g. the Wiener filter) and Non-Linear techniques. Typical examples of Non-Linear Prediction techniques are the Fourier Predictor and Capon's Predictor. The Non-Linear complex channel prediction techniques attempt to model the channel as a set of discrete sources with given Doppler frequency, phase and complex amplitude, and use this information to predict future complex channel values. Whilst such Linear and Non-Linear techniques may in some cases offer acceptable performance, they have the following disadvantages:
According to a first aspect of the invention there is provided a method of predicting the power of a received wireless signal, the method comprising the steps of: sampling the power of the received wireless signal over an observation interval to obtain a series of values representative of the power of the received wireless signal over the observation interval; and extrapolating the series of values beyond the observation interval to predict the future power of the received wireless signal.
According to a second aspect of the invention there is provided a method of predicting the power of a received wireless signal, the method comprising the steps of: sampling the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; performing a smoothing operation on the first series of values to give a series of smoothed samples over the observation interval, wherein the number of smoothed samples is less than the number of values in the first series of values; and extrapolating the smoothed samples beyond the observation interval to predict the future power of the received wireless signal.
Preferably the step of extrapolating comprises: performing least mean squares curve fitting on the smoothed samples; and then extrapolation of the fitted curve beyond the observation interval.
Particularly preferably the step of performing least mean squares curve fitting comprises fitting a polynomial curve to the smoothed samples. In a preferred embodiment of the invention the polynomial curve is a second order polynomial.
Preferably the step of performing the smoothing operation comprises performing an additive white gaussian noise smoothing procedure. Particularly preferably this step is followed by a further step of removing the bias due to the influence of the additive white gaussian noise.
Preferably the method further comprises the step of excluding any predictions of negative power.
The method may be performed by signal processing apparatus in the mobile device, or by signal processing apparatus at a base station.
According to a third aspect of the invention there is provided a method of predicting the power of a received wireless signal, the method comprising the steps of: sampling the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; performing an additive white gaussian noise smoothing operation on the first series of values to give a series of smoothed samples over the observation interval, and removing the bias due to the influence of the additive white gaussian noise; performing least mean squares curve fitting on the smoothed samples; fitting a second order polynomial curve to the smoothed samples; and extrapolating the fitted curve beyond the observation interval to predict the future power of the received wireless signal.
According to a fourth aspect of the invention there is provided a wireless device having signal processing apparatus, the signal processing apparatus being operable to predict the power of a wireless signal received by the wireless device, the signal processing apparatus being arranged to: sample the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; perform a smoothing operation on the first series of values to give a series of smoothed samples over the observation interval; and extrapolate the smoothed samples beyond the observation interval to predict the future power of the received wireless signal.
According to a fifth aspect of the invention there is provided a wireless device having signal processing apparatus, the signal processing apparatus being operable to predict the power of a wireless signal received by the wireless device, the signal processing apparatus being arranged to: sample the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; perform an additive white gaussian noise smoothing operation on the first series of values to give a series of smoothed samples over the observation interval, and remove the bias due to the influence of the additive white gaussian noise; perform least mean squares curve fitting on the smoothed samples; fit a second order polynomial curve to the smoothed samples; and extrapolate the fitted curve beyond the observation interval to predict the future power of the received wireless signal.
According to a sixth aspect of the invention there is provided a wireless communications network including a plurality of wireless devices, each wireless device having signal processing apparatus, the signal processing apparatus being operable to predict the power of a wireless signal received by the wireless device, the signal processing apparatus being arranged to: sample the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; perform a smoothing operation on the first series of values to give a series of smoothed samples over the observation interval; and extrapolate the smoothed samples beyond the observation interval to predict the future power of the received wireless signal.
According to a seventh aspect of the invention there is provided signal processing apparatus arranged to perform a method of predicting the power of a received wireless signal, the method comprising the steps of: sampling the power of the received wireless signal over an observation interval to obtain a first series of values representative of the power of the received wireless signal over the observation interval; performing a smoothing operation on the first series of values to give a series of smoothed samples over the observation interval; and extrapolating the smoothed samples beyond the observation interval to predict the future power of the received wireless signal.
According to further aspects of the invention there is provided a computer program executable to cause signal processing apparatus to perform a method of predicting the power of a received wireless signal, a computer program stored on a data carrier, and a computer program executing on signal processing apparatus.
It is important to note that the features which relate to the second aspect of the invention, which are described above as being preferable, may also be applied to the other aspects of the invention, either singularly or in combination.
Other aspects and features of the present invention will become apparent to those ordinarily skilled in the art upon review of the following description of specific embodiments of the invention in conjunction with the accompanying figures.
Embodiments of the invention will now be described, by way of example, and with reference to the drawings in which:
A preferred embodiment of the invention is referred to herein as the Polynomial Power Predictor (PPP) method. The PPP method may be performed on signal processing apparatus, which may be in the mobile device or at the transmitting base station. The signal processing apparatus may be, for example, a digital signal processor (DSP), an application-specific integrated circuit (ASIC), a standard non-specialist signal processor, or a circuit made of discrete electronic components. Other suitable signal processing apparatus may be known to those skilled in the art.
The purpose of the PPP method is to predict what the power of a received wireless signal will be at some point in the future, after a period of time termed the ‘Prediction Interval’ (PI). This prediction of signal power is based on knowledge of a set of recent noisy measured samples of signal power, collected over what is termed the ‘Observation Interval’ (OI). The actual value of the signal power at points in the future is not known a-priori, since it is a function of the random amplitude fluctuations of the wireless channel. These fluctuations are known as ‘Small-Scale Fading’ (SSF)— often modelled using a Rayleigh distribution. The rate of fluctuation is a function of the Doppler spread of the channel, itself a function of the User Equipment (UE) speed.
1. Overview of Method
The first step in the method is the ‘AWGN smoothing procedure’, as discussed in detail below. (In fact this is a smoothing of errors due to noise (AWGN), and interference, and randomness in the transmitted data values, if the transmitted signals are non-constant-modulus.) A large number of noisy measured channel power samples are averaged (over the ‘Averaging Interval’, AI) to give a single ‘smoothed sample’. The number of samples, K, which can be used in the smoothing is proportional to the ratio of the signal bandwidth (e.g. 5 MHz) to the channel Doppler spread (e.g. 50 Hz). Typical values for K are 500, or 5000. The smoothed channel samples will have a lower noise variance than the raw measurements (by the factor K). On the other hand, the smoothed samples will contain a ‘dynamic error’, particularly if the value of K chosen is too large. So in choosing K we aim to minimise the noise variance, whilst also constraining the dynamic error to a low value. The smoothed samples also contain a fixed bias due to the measurement noise. In the second stage of the method this bias is removed.
In the third stage of the method, the future channel value is predicted, based on a historical set of m debiased ‘smoothed’ samples. The way this is done, using the Polynomial Prediction Procedure, is illustrated in
The example in
The algorithm described above has the undesirable property that when the polynomial degree is n>0 the polynomial can have both positive and negative values. However, the true channel power can only be positive. Therefore the prediction algorithm has been modified in such a way that it excludes predictions of negative values of the channel power. As is evident from the description above, when n=0 the predicted channel power can only have positive values, as it is simply the average of the historical samples. Consequently if the polynomial of degree n>0 predicts a negative channel power, this polynomial may be replaced by the polynomial of degree n=0.
Application of the PPP technique can be envisaged in solving the problem of ‘MCS Prediction’ (MCSP), where MCS stands for ‘Modulation and Coding Scheme’. MCSP is expected to play a significant role in successful implementation of the concept of fast Adaptive Modulation and Coding (AMC) in future (3rd and 4th) generation mobile wireless systems. In the downlink of such systems, the UE requests a transmission of data from the Base Station (BS), and specifies the appropriate MCS to be used from the AMC set. The appropriate MCS will depend on the instantaneous channel value. That is, if the received signal is strong then a higher order modulation such as QAM can be used (with high bit loading). Conversely, if the received signal is weak, a lower order modulation such as QPSK will be required, possibly with additional spreading (i.e. symbol repetition) and/or Forward Error Correction (FEC) coding. So if the UE knows the instantaneous channel value, it can select an appropriate MCS. The problem arises in that there will be a lag or ‘feedback delay’ between the UE (or BS) determining the appropriate value of MCS, and the actual transmission of the data burst to the UE. This lag is due to a number of reasons, such as measurement and encoding/decoding delay on the feedback channel, processing and scheduling delays at the BS etc. In order to overcome this lag, we need to be able to predict the channel state at some time in the future—i.e. at the time that the actual transmission will take place. This is a problem which can be solved through application of the Polynomial Power Prediction algorithm.
2 Details of the AWGN Smoothing Procedure
Let h0(t) be a noise-free complex channel and a(t) be a modulation symbol complex amplitude. Then the fading channel power x0(t)=|a(t)h0(t)|2. The measured channel power x(t) is corrupted by AWGN n(t) of a receiver, i.e.
x(t)=|a(t)h0(t)+n(t)|2 (2.1)
Note that n(t) could also represent interference from other transmitters. However, for notational simplicity we consider it to be AWGN only. We'll consider the channel to be normalised so that <|h0(t)|2>=1 and that the AWGN variance is σ02, where < > is a statistical expectation or average. Then
<x(t)>=<|a(t)|2>+σ02 (2.2)
The input (mean) SNR is
If the complex channel is measured and predicted then the measurement and prediction errors are dependent upon the received SNR ρ, i.e. by the ratio of the average received signal power to the AWGN power. Analogously, when the channel power is measured and predicted then the measurement and prediction errors are given by the square of the predicting value divided by the variance Dx of the error of the channel power measurement. The variance Dx is equal to Dx=<x(t)2>−(<x(t)>)2. Thus the exactness of the non-biased channel power measurement is defined by the value
It can be found (see Appendix A) that the variance Dx is given by
Dx=σ04(2ρ+1) (2.5)
Then
This value will quantify the variation in the received signal samples prior to the smoothing procedure.
The AWGN correlation interval is equal to τN=1/F, where F is the input bandwidth of the receiver (i.e. substantially equal to the bandwidth of the transmitted signal). Therefore we can choose the sampling period (SP) to be greater than or equal to τN to achieve the AWGN independence. However, we must choose the SP to be smaller than the fading correlation interval τD in order to be able to predict the fading channel power.
We will introduce the AWGN smoothing procedure before then discussing the channel prediction. Let the SP be greater than or equal to the AWGN correlation interval τN. Then we'll carry out the averaging of the fading channel power over the averaging interval (AI), which we denote τaver. As a result a single ‘smoothed’ sample will be obtained from K measured samples, where K=τaver/τN, as illustrated in
The AWGN smoothing procedure for the arbitrary ith averaging interval can be described as
The smoothed channel (2.7) has a bias due to the influence of the AWGN. In (2.2) the AWGN variance τ02 is known. Therefore we can eliminate this bias, replacing (2.7) by the non-biased smoothed power estimate of the form
{tilde over (y)}i=yi−σ02 (2.8)
Now the exactness of the channel power measurement is defined by the value
where Dy is the variance of the smoothed measured channel power (i.e. after the AWGN smoothing procedure).
For simplicity we'll assume that the dynamic error is absent, i.e. we assume that the channel coefficients aren't changing over the averaging interval τaver. This is true for the cases when the averaging interval τaver is much smaller than the fading correlation interval τD, i.e. τaver<<τD. It is derived in Appendix A that
Dy=K−1σ04(2ρ+1) (2.10)
Then
It follows from (2.11) that the AWGN influence can be decreased by K times as a result of the smoothing procedure. Thus, the AWGN influence is reduced if the averaging time is increased. On the other hand, if the averaging time is increased then the dynamical error is increased (see
We consider one example. Let the input bandwidth be F=5 MHz (i.e. the SP must be τN≧0.2×10−6s) and the averaging interval for the smoothing procedure τaver=1×10−3s. If τN=0.233 10−6s then K=τaver/τN=5000. This means that we get 10.Ig(5000)=37 dB reduction in the variability of the power measurement by averaging the measured power over 5000 samples (Ig represents a logarithm to the base 10). This means that the result obtained for SNR=30 dB (no averaging) will also be valid for SNR˜−7 dB (5000 sample averaging).
3. Details of the Polynomial Prediction Procedure
Suppose that we have m smoothed samples {tilde over (y)}k given by (2.8) on the observation interval (OI) and the averaging interval (AI) is equal to Δ. Note that the channel power estimation on the OI does not require training signals. The task is to predict the channel power over the prediction interval (PI), i.e. several steps ahead. We denote the length of the OI and PI as being equal to T=mΔ and T1=lΔ, accordingly.
Let the function y0(t) be the noise-free fading channel power. We'll propose that the function y0(t) can be presented on the full interval (OI+PI) as a polynomial of degree n, i.e.
y0(τ)=a0+a2τ2+ . . . +anτn (3.1)
where τ is the moment in time. We consider that τ=0 for the right edge of the OI or for the left edge of the PI.
For discrete time tk=(k−0.5)Δ and τj−k=(tj−tk)=(j−k)Δ. Then we have channel power samples on the OI at the time τ0=−0.5Δ, τ−1=−1.5Δ, τ−2=−2.5Δ . . . , τ−m=(−m−0.5)Δ (see
We'll find the polynomial coefficients ak on the basis of the least mean squares (LMS) algorithm taking into account the channel samples on the OI. The sum-squared error on the OI is given by
We aim to minimise this sum-squared error over the OI by choosing suitable values of ak. Therefore the linear equation set for the polynomial coefficient ak definition is
It is necessary for determination of the polynomial coefficients that m≧n, i.e. the number of samples over which we do the curve fit must be greater than the order of the polynomial.
When equation (3.3) is solved, the coefficients ak can be substituted into (3.1).
The above solution can alternatively be presented in matrix form. We introduce the {(m+1)×(n+1)} matrix
We also introduce the (n+1)-element column-vector a=(a0,a1,a2, . . . ,an)T and the (m+1)-element column-vector Y=[{tilde over (y)}(τ0),{tilde over (y)}(τ−1),{tilde over (y)}(τ−2), . . . ,{tilde over (y)}(τ−m)]T, where (.)T is transpose. Then (3.2) can be re-written in the matrix form as
E=(Y−Da)T(Y−Da) (3.5)
From the condition
we obtain that the unknown vector will be
a=(DTD)−1DTY (3.6)
The l-element predicted power vector Y1=[y(τ1), y(τ2), y(τ3), . . . , y(τl)]T is given by
Y1=D1a=D1(DTD)−1DTY (3.7)
where the l×(n+1)- dimensional matrix
It is seen from (3.4) and (3.8) that the elements of the matrices D and D1 depend on the sampling period Δ, the number of samples over the OI m=T/Δ and the number of samples over the PI l=T1/Δ. Therefore the matrix (DTD)−1DT in (3.6) and the matrix D1(DTD)−1DT in (3.8) can be pre-calculated and stored in the memory. This would make real-time implementation simpler.
In the simplest case n=0 the polynomial is constant and we have from (3.3) that
i.e. the predicted channel power is constant for all the temporal samples and equals the arithmetical mean of channel power on the observation interval:
y(τ1)=y(τ2)= . . . =y(τ1)=a0 (3.10)
Now we'll illustrate the curves of the LMS fitting process. We choose the OI length 4 ms, the PI length 1 ms.
We introduce the power prediction error (PPE) on the PI as
δ(dB)=101g(y)−101g(y0) (3.11)
where y0 is the exact channel power on the PI and y is the predicted channel power on the PI.
The described algorithm has a peculiar property that should be taken into account in use. When the polynomial degree is n>0 the polynomial (3.1) can have both positive and negative values. However, the channel power can be only positive. Therefore the prediction algorithm should be modified so as to exclude predictions of negative values of the channel power.
We consider one possible approach to modify the above algorithm to exclude predictions of negative power. As it is shown above, when n=0 the predicted channel power is given by formula (3.9) and has only positive values, as it is simply the average of the historical samples. Consequently if the polynomial of degree n>0 predicts a sample with negative channel power, this polynomial may be replaced by the polynomial of degree n=0 for this particular sample.
4. Simulation Results
Simulation results for the PPP method are now presented. In order to obtain statistically reliable results the cumulative distribution functions (CDFs) for the power prediction error (PPE) have been obtained. The PPE (3.11) depends on the channel parameters (maximum Doppler frequency, number of sinusoids, SNR) and on the PPP parameters (polynomial degree, OI length and PI length, sampling period, averaging interval). The CDF of the PPE gives the most complete information about the distribution of this error. The CDF curves for the PPE δ(dB) were obtained on the basis of Monte Carlo simulation. The simulation procedure consisted of 1000 experiments.
4.1 Channel Parameters
In order to carry out Monte Carlo simulations of the PPP algorithm we need to devise a suitable model for the Small Scale Fading of the channel against which to test this algorithm. The following is a description of the SSF model used.
The kth sample of the fading channel coefficient h(t) was simulated as
where (for lth scatterer) al is the amplitude, φl is the phase, fl=fd cos(φl) is the Doppler frequency, φl is the incident angle with respect to the mobile motion, fd is the maximum Doppler frequency, L is the number of sinusoids, j=√{square root over (−1)}, knorm is the normalising factor, defined by SNR.
The channel model (4.1) proposes that the number of sinusoids L, the amplitude al, phase φl and the incident angle φl (for lth sinusoid) are random values. The number of sinusoids L is uniformly distributed on the interval [1 . . . (2N0−1)], the power |al|2 is uniformly distributed on the interval [0 . . . 2], the incident angle φl is uniformly distributed on the interval [0 . . . π], and phase φl is uniformly distributed on the interval [0 . . . 2π]. When the number of sinusoids L is increased then this channel model (4.1) tends to the well-known Jakes channel model. However, the model (4.1) is more general in that all of its parameters are random values. The mean number of sinusoids N0 and the maximum Doppler frequency fd only must be specified prior to the simulation.
The channel model parameters are chosen as follows:
We consider two values of the prediction length: namely prediction ahead by 1 ms (1st variant) and by 2 ms (2nd variant). The other parameters are the same for both variants and are as follows:
For the quadratic polynomial we can use three or more samples on OI, i.e. m≧2 (see
and the main formula (3.7) takes a form
y(τ1)=3{tilde over (y)}(τ−1)+{tilde over (y)}(τ−2) (4.3)
y(τ2)=6{tilde over (y)}(τ0)−8{tilde over (y)}(τ−1)+3{tilde over (y)}(τ−2) (4.4)
where τ0=−0.5Δ, τ−1=−1.5Δ, τ−2=−2.5Δ, τ1=0.5Δ, τ2=1.5Δ (see
It is interesting to note that the matrix D1(DTD)−1DT does not depend on the averaging interval length.
4.3 Simulation Results
We also consider a ‘reference’ or ‘baseline’ case when the predicted channel power is simply equal to the measured and smoothed power. In this case the observation interval consists of one averaging interval and there is one smoothed sample (see
5. Conclusions
The polynomial power predictor (PPP) for a fading channel with very low SNR has been considered in detail above. The PPP does not require a training sequence (i.e. use of known modulation symbols) for estimation of the channel power. This estimation can be carried out on the basis of the data sequence with the given symbol rate. PPP differs from the linear, Fourier and non-linear predictors by the simplicity of the calculations involved. Within the PPP, two main steps are carried out for the channel prediction. The first step is the AWGN smoothing procedure and the second one is the channel prediction.
The smoothing procedure is based on the increase of the channel estimation accuracy by means of the AWGN averaging. This is possible because the input bandwidth of the receiver is considerably larger than the Doppler spectrum width. If the averaging interval consists of K samples then the AWGN influence is decreased by K times. This can be interpreted as an SNR increase at the PPP input. The influence of the AWGN decreases significantly with large K There is an optimal length of the averaging interval. This is because as the averaging time is increased the influence of the AWGN is decreased. On the other hand, if the averaging time is increased too much then the channel estimation is corrupted by the dynamical error.
The channel prediction, which takes place during the second step, models the change of the channel power on the observation and prediction intervals in the form of the polynomial function. It has been found that the quadratic polynomial is close to optimal, as it gives the smallest power prediction error (PPE). The value of this power prediction error depends on the length of the observation interval (OI) and the prediction interval (PI). These intervals must be less than the fading correlation interval. It is necessary to take into account that the approximating polynomial can have negative values, which cannot correspond to the real channel because the channel power must be a positive value. To solve this problem, for those instances where negative power values are predicted, it is proposed to replace the approximating polynomial by a polynomial of zero-degree. By adding this simple modification we can ensure that the PPP gives predictions with only positive channel power.
Monte Carlo simulation results have been presented for the channel model in which all parameters are random values. The mean number of sinusoids N0 and the maximum Doppler frequency fd only are specified in the simulation. As a result of the simulation the cumulative distribution function (CDF) for the power prediction error (PPE) is obtained. The results show that the use of the smoothing procedure gives the possibility to predict the fading channel with very low SNR (from −5 dB up to 15 dB) with a good accuracy.
For example, consider the case where the maximum Doppler frequency fd=50 Hz, the input bandwidth F=5 MHz, the AI=1 ms and the number of the averaged samples K=5000. Then the PPE with the probability 80% will not exceed the interval ±(0.5 . . . 0.6)dB for SNR=5 and 15 dB and for the prediction 1 ms ahead. This error will not exceed the interval ±1.8 dB when SNR=−5 dB. These prediction errors were compared with errors when the predicted channel power was equal to the measured and smoothed power (i.e. as a ‘reference’ or ‘baseline’ scenario). In this reference scenario the observation interval consists of one averaging interval and there is one smoothed sample and the predicted channel power is equal to this smoothed sample power. The corresponding results show that the PPP with n=2 has smaller error than the baseline scenario. This improvement is due to the enhanced channel tracking. For example, the PPE with the probability 80% will not exceed the interval ±2.2 dB for SNR=−5, 5 and 15 dB and for the prediction 1 ms ahead.
Simulation results have been given for the maximum Doppler frequency equal to 50 Hz. However, these results are more general, being also valid for different Doppler frequencies if we change other parameters proportionally. For example, if the Doppler frequency decreases by Q times then we'll obtain the same accuracy for a prediction Q times further into the future.
Thus the polynomial power predictor has the following main advantages:
As explained above, the PPP technique in accordance with an embodiment of the invention involves the following elements and steps:
The PPP technique works well over the short range of future time, and is computationally relatively cheap. Indeed, the technique leads to a significant reduction in processing required in order to carry out MCS prediction, which is a necessary step in implementing fast Adaptive Modulation and Coding in future 3rd and 4th generation mobile wireless systems.
Appendix A—Derivation of some Formulae
The variance Dy is equal to
Dy=<yi2>−(<yi>)2 (A1)
First we calculate the value <yi2> equal to
Omitting index i and taking into account the channel normalisation (<|h0(t)|2>=1) we can obtain on the basis of numerous consecutive and cumbersome transformations that
Now we must calculate the value
As a result of further numerous transformations we can obtain that
Substituting (A6) into (A5) we obtain that
Now we can obtain from (A3) and (A7) that
Substituting (A8) and (2.2) into (A1) we'll have
where SNR ρ is defined in (2.3).
Thus if K=1 then y(t)=x(t) and we have (2.5) from (A9). If K>1 we have (2.10) from (A9).
Number | Name | Date | Kind |
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20030026363 | Stoter et al. | Feb 2003 | A1 |