The present invention relates generally to communication systems including wireless communication systems, and more particularly, to a method and apparatus for providing partial interference cancellation in a wireless communication system.
Wireless communication systems including those based on direct sequence spread spectrum (DSSS) code division multiple access (CDMA) technology offer many benefits for cellular radio communications. In conventional CDMA receivers, known as single-user detectors (SUD), each user's data is estimated without consideration of the other users that are communicating simultaneously. The other users appear as background noise. These conventional receivers typically utilize simple correlation receivers that correlate the received signal with a synchronized copy of the desired user's spreading signal. An alternate approach is to employ a multi-user detector (MUD) that simultaneously demodulates all users within a CDMA bandwidth.
Consideration of the other users in detecting a particular user's signal can significantly improve the receiver's performance metrics. The improvement in performance of the MUD over the SUD is manifested either as a reduction in the required energy per bit (Eb) for a specified quality of service (QoS) for a fixed number of users, or as an increase in the number of users supported at the specified QoS of the same Eb. While the former offers the potential benefit of extending the lifetime of subscriber unit (mobile station) batteries and of reducing the overall interference in a CDMA cellular system, the latter represents a potential increase in the capacity of the system.
There are several design approaches for a MUD receiver. One approach is to remove from the received signal the estimated contribution of the other users, or what is referred to as the multiple-access interference (MAI). The estimated MAI may be entirely removed in a “brute-force” interference cancellation (IC) approach or only partially removed in so-called partial interference cancellation (PIC). The user's transmitted information is then estimated from the “cleaned” signal. Receivers that incorporate MAI reduction, or IC, are known as subtractive MUD. The performance of these receivers depends on the quality of the MAI estimates. The performance of these receivers also depends on the partial interference coefficients used to estimate the received signal. If the estimates are poor, the job of suppressing MAI may turn out to be ineffective. It is typical that hard estimates and fixed brute-force coefficients are used, which in some cases, may cause the MUD to perform worse than a conventional SUD.
Thus, there is a need for a method and apparatus for partial interference cancellation in a communication system, and particularly, for method and apparatus for enhancing the quality of the data estimates and cancellation coefficients utilized in providing partial interference cancellation.
In a method according to a preferred embodiment of the invention, despread data is utilized to generate soft estimates of multi-user data on a power control group (PCG) by power control group basis. The soft data estimates are made based upon a signal-to-noise ratio estimate and an applied functional approximation. The soft data estimates are then used in a multi-access interference cancellation approach to improve the estimation of the coded information sequence, d, for a particular user.
In a method according to an alternate preferred embodiment of the invention, despread data is utilized to determine partial interference cancellation coefficients that are utilized in a partial interference cancellation approach to improve the estimation of the coded information sequence, d, for a particular user.
In one preferred embodiment of the invention, the applied functional approximation is a piece-wise linear approximation of the hyperbolic tangent function (tanh). In another preferred embodiment of the invention, the applied functional approximation is a piece-wise linear approximation of a probability error function.
Referring to
For any end-user, i.e., mobile station 20, the ith chip of an IS-2000 3G spread digital signal S can be modeled as:
Si=(Ppi+jDdiwi)ci
and consists of a pilot component, Ppi; and a data-bearing component, Ddiwi, where P and D are the corresponding amplitudes; p is the pilot sequence; d is the interleaved and possibly-repeated coded information sequence; w is the Walsh-code sequence corresponding to the data-bearing component; and c denotes the product of the short and long pseudo-random noise (PN) sequences.
The signal S goes through a pulse-shaping filter for transmission over the air and is received by a receiver, e.g., the signal S is transmitted by mobile station 20 and is received by base station 14. The data from each receiver antenna at base station 14 is then match filtered and sampled; at the chip rate, the result for a particular finger is:
ri:=sihi+ISIi+TNi+MAIi
where h is the complex-valued channel coefficient; ISI is inter-symbol interference; TN is the receiver thermal noise; and MAI is multi-access interference.
The ultimate goal of the receiver is the recovery of the coded information sequence, d. In a MUD receiver incorporating IC, the MAI is subtracted from the received signal to form a “cleaned” signal from which d may be recovered. Actually, it is an estimate of the MAI that is subtracted. Estimating MAI, i.e., estimating r, requires estimating both S and d. Previously “hard” estimates. +1, −1, have been used for d. In accordance with a preferred embodiment of the invention, a soft estimate of d is provided.
To estimate r, h(0) and d(0) denote the despread pilot component and the despread data component, respectively. An estimate h(1) of Ph is obtained by passing h(0) through a channel estimation filter f, i.e., hi(1):=(f* h(0))i, where * denotes discrete convolution.
The soft data estimates di(1) are obtained as follows. First, the di(0), generated by despreading the data component are phase compensated using the hi(1),
where A is the number of receiver antennas; Ma is the number of fingers assigned to resolved rays or multi-path components for antenna a; and x* denotes the complex conjugate of x. Second, applying a simplifying assumption that ISIi, TNi, MAIi, and the estimation errors in hi(1) are all uncorrelated and Guassian, then
{circumflex over (d)}i=jμdi+εi
where μ>0 and εi denotes a complex-valued, Gaussian random variable whose independent components have mean zero and variance σ2. Under this assumption, the conditional expectation of di given {circumflex over (d)}i is E[di|{circumflex over (d)}i]=tan h(μIm{{circumflex over (d)}i}/σ2). Third, μ and σ2 are estimated on a PCG-by-PCG basis as:
{circumflex over (μ)}:=|x−{circumflex over (σ)}2|½
where i1<=i<=i2 includes the indices of all coded bits within a specific PCG.
Although the tan h function may be used, in a preferred implementation of the invention, the tanh function is approximated by an applied function t; hence the soft data estimate of di is:
di(1):=t({circumflex over (μ)}Im{{circumflex over (d)}i}/σ2)
A preferred choice of the applied function t is a piece-wise linear function: for z ε [0,2.4], this t is obtained by linear interpolation using the (z, t(z))-pairs (0,0), (0.625,0.5721), (1.25,0.8658), and (2.4, 1); for z>2.4, t(z):=1; finally, for z<0, t(z) :=−t(−z). The function t is illustrated in
As will be appreciated from the foregoing discussion, the estimation {circumflex over (d)}i includes an imaginary component and a real component, where the imaginary component is both signal and noise and the real part is only noise. The estimate {circumflex over (σ)}2 is an estimate of the average noise power while the estimate x is an average of the signal and noise power. Thus, the estimate μ, the difference of x and {circumflex over (σ)}2, is the signal. It will be further appreciated that the estimation {circumflex over (d)}i is obtained at the chip level, and hence, IC is accomplished at the chip level. A re-spreading operation is performed to generate the “cleaned” signal for the final estimation of the coded information sequence d.
Referring now to
For partial interference cancellation, the estimate of ri(1) of sihi may be written as:
ri(1):=(αppi′+jαdηdi(1)wi)cihn(i)(1)
where αp and αd and ad are the partial cancellation coefficients pi′=1 over the first ¾ of each PCG (i.e over the known portion of p) and pi=0 otherwise; η:=D/P; and di(1) is an estimate of di. Since the data bits d1 have a higher rate than the output samples of the filter ƒ, the mapping n(.) is needed to match them appropriately: if the sampling rate of ƒ is νi Hz and the di have a rate of ν2 bits/s, then n(i):=└iν1/ν2┘ (hence, each channel estimated is used for the phase compensation of ν2/ν1 bits).
In accordance with a further preferred embodiment of the invention, the partial interference cancellation coefficients αp and αd may also be estimated on a PCG-by-PCG basis. For the purpose of this embodiment, a hard estimate of di(1) is used and is
d(1)i:=sgn(Im{{circumflex over (d)}1})
by recalling that the imaginary part of the {circumflex over (d)}i represents only signal, taking the sign of {circumflex over (d)}i is typically used as an estimate. The estimation error of the signal is (r1−ri(1)), and taking the partial derivative of the estimation error for each of αp and αd, respectively, and solving for αp and αd provides the following:
and
where β:=P[di=di(1)], i.e., the probability that the data estimate is correct and ρ2 is the variance of the error in estimating the product Ph(.), and wherein Tc is the duration of the chip.
In accordance with the preferred embodiments of the invention, β is determined in real time. Using the simplified statistical model for {circumflex over (d)}i from above, the conditional probability density function of di(1) given di is Guassian with mean μdi and variance σ2. Then, assuming that P[di=1]=P[di=−1]=½, it follows that
where
The unknown parameters μ and σ are estimated on a PCG-by-PCG basis as set forth above. Then an estimate of β is:
where the approximation e(x)≈erfc(x)/2 is introduced for practical implementation. A simple choice for the function e is a piece-wise linear function, for x ε [0,1.8], e is obtained by linear interpolation using the (x,e(x))-pairs(0,0.5), (0.8, 0.1), and (1.8, 0); for x>1.8, e(x):=0, as shown in
From the above equations for αp and αd, the choice of (αp, αd) in accordance with the preferred embodiment of the invention is
where γ is
where ∥ƒ∥ denotes the l2-norm of the channel estimation filter ƒ; Ta, the received power at antenna α averaged over the PCG corresponding to {circumflex over (β)} and N, the number of pilot chips used at a time for dispreading the pilot component to obtain h(0).
Referring now to
One of skill in the art will appreciate that partial interference cancellation may employ the data estimates and/or the partial interference coefficients determined on a PCG-by-PCG basis in accordance with the preferred embodiments of the invention. In this manner, characteristics of the channel itself, e.g., fading conditions or interference, are accounted for and optimized in the data estimates and coefficients. Systems utilizing hard data estimates and/or fixed coefficients do not account for actual channel conditions. The present invention provides optimal values in real time to improve the performance of a receiver utilizing either interference cancellation (IC) or partial interference cancellation (PIC).
For example,
While
The present application claims priority from provisional application, Ser. No. 60/217,441, entitled “METHOD AND APPARATUS FOR PARTIAL INTERFERENCE CANCELLATION IN A COMMUNICATION SYSTEM,” filed Jul. 10, 2000, which is commonly owned and incorporated herein by reference in its entirety.
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