This application relates to wireless communication techniques in general, and specifically to improving user equipment connectivity by increasing the accuracy of channel estimation and reducing overhead on the system through use of reduced complexity channel estimation.
An IP-based mobile system includes at least one mobile node on a wireless communication system. A “mobile node” is sometimes referred to as user equipment, mobile unit, mobile terminal, mobile device, or similar names depending on the nomenclature adopted by particular system providers. The various components on the system may be called different names depending on the nomenclature used on any particular network configuration or communication system.
For instance, “mobile node” or “user equipment” encompasses PC's having cabled (e.g., telephone line (“twisted pair”), Ethernet cable, optical cable, and so on) connectivity to the wireless network, as well as wireless connectivity directly to the cellular network, as can be experienced by various makes and models of mobile terminals (“cell phones”) having various features and functionality, such as Internet access, e-mail, messaging services, and the like. The term “mobile node” also includes a mobile communication unit (e.g., mobile terminal, “smart phones,” nomadic devices such as laptop PCs with wireless connectivity).
User equipment or mobile nodes are receivers of signals in an uplink direction of signals transmitted from an access point, which is called a transmitter in that configuration. Terms, such as transmitter or receiver, are not meant to be restrictively defined, but could include various mobile communication units or transmission devices located on the network. Further, the words “receiver” and “transmitter” may be referred to as “access point” (AP), “basestation,” or “user equipment” depending on which direction the communication is being transmitted and received. For example, an access point AP or a basestation (eNodeB or eNB) is the transmitter and user equipment is the receiver for downlink environments, whereas an access point AP or a basestation (eNodeB or eNB) is the receiver and user equipment is the transmitter for uplink environments.
Accurate channel estimation is integral to maintaining connectivity, achieving good capacity and throughput performance on the uplink communication link supporting transmission from a mobile node (or user equipment) to a base station (or access point) on an LTE wireless system. When the mobile node or user equipment is traveling at high velocities relative to the access point (transmitter), the known channel estimation methods have two major deficiencies that can have a negative impact on system performance. First, the known channel estimation methods (for example, a minimum mean squared error (MMSE) based estimation) prove to be inaccurate as the user equipment (or mobile node) travel at high velocities. Second, the known channel estimation equations are computationally intensive, which unnecessarily consumes system resources, increases system overhead, and increases the time needed to complete the channel estimation. Thus, to realize good capacity/throughput performance at high mobility and/or high channel frequencies, the issues of performance degradation due to channel estimation inaccuracy need to be addressed, as well as the need to reduce the complexity of the channel estimation algorithms.
The minimum mean squared error (MMSE) based channel estimator utilizes the second-order statistics of the channel conditions to minimize the mean-square error of the channel estimates. An underlying assumption is that the time domain channel vector is Gaussian and uncorrelated with the channel noise. Linear MMSE channel estimate is given as follows:
Ĥ
LMMSE
=R
HH(RHH+σN2(XX*)−1)−1ĤLS (1)
where
The MMSE estimator yields much better performance than LS channel estimators by themselves, especially under the low SNR scenarios such as low velocity of the user equipment. A major drawback of the MMSE estimator, however, is its high computational complexity because of the increased consumption of system resources and increased system overhead from performing the full MMSE equation.
In equation (1), X denotes the known reference signal (RS) sequence transmitted by the UE. It should be noted that in the LTE standard, sequence hopping and group hopping are allowed for the uplink RS sequence. If sequence/group hopping is enabled, then the above MMSE equation will require that two matrix inverses be performed every slot (0.5 msec). With one RB allocation to any user, the matrix size is 12×12 whereas with all 48 RBs allocation to one user, the matrix size is 576×576. Such real-time matrix inversions are computationally intensive for practical implementation, and this MMSE equation proves to be inaccurate as the user equipment (or mobile node) travel at higher velocities.
It should also be noted that signal-to-noise ratio (SNR) estimation is an essential processing step in the eNodeB receiver in some circumstances, and if there is an under-estimation of the SNR, system performance is degraded. As such, there is a need to accurately estimate the SNR for use in certain channel estimation procedures to enhance system performance and minimize degradation of system parameters.
It should be noted further that channel estimation methods also use interpolation, and the several approaches for interpolation (e.g. linear, bilinear, or quadratic etc.) do not provide a satisfactory result in certain circumstances. These approaches to interpolation are static and the same approach is generally used for all UE mobilities, and as such does not provide the optimum SNR vs. SER performance for certain situations.
The present invention proposes an LTE eNodeB receiver channel estimation technique that is referred to as reduced complexity minimum mean squared error (MMSE) technique for channel estimation. This technique provides channel estimation/demodulation performance comparable to that of MMSE channel estimation, at a much reduced implementation complexity (hardware/computational complexity).
The reduced complexity MMSE equation is derived by making several key assumptions based on known system performance attributes and system performance parameters as follows: (1) replace the term (XX*)−1 with its expectation E{(XX*)−1}, (2) the signal constellation is the same on all subcarriers in the RS symbol and has equal probability on all constellation points, E{(XX*)−1}=E{|1/Xk|2}*I where I is identity matrix, (3) define the average SNR=E{|Xk|2}/σN2, the term β=E{|Xk|2}/E{|1/Xk|2}, and the term σN2(XX*)−1=(β/SNR)I, where β is a constant depending only on the signal constellation, (4) for a QPSK constellation β=1, for a 16 QAM constellation β=0.5294, and for a 64-QAM transmission β=0.3724, (5) for the LTE uplink transmission, the RHH matrix is dependent only on the subcarrier spacing and the r.m.s delay spread of the channel, (6) the same matrix can be used for several subframes until a different SNR estimate is received (even if sequence and group hopping are enabled), (7) utilizing the simplicity in the generation of the channel autocorrelation for the LTE uplink RS pattern, (8) assuming an exponentially decaying power delay profile (which is a widely accepted industry standard for channel power profile), (9) assuming Jakes spectrum for the Doppler spread, (10) for the LTE Uplink RS pattern, the time correlation function among the RS pattern is 1, which is due to the fact that all the reference symbols are in the same OFDM symbol, (11) assume a value of 2 usec for r.m.s delay spread in generation of RHH. This is based on simulation results indicating that the accuracy of the channel estimates are not too sensitive to the r.m.s delay spread value, (12) In every slot (0.5 msec duration), estimate ĤLS=X−1y where y is the received vector of RS symbols and X is a vector of known transmitted CAZAC sequence in the UL RS symbol, (13) obtain SNR estimates from previous slots or subframes if user equipment is continuously transmitting, or in case of discontinuous transmission, estimate the SNR using the channel estimates ĤLS; (14) use known values for β (1 for QPSK, 0.5294 for 16-QAM, 0.3724 for 64-QAM), SNR estimates, and RHH.
From these assumptions, estimations and modified calculations, the present invention generates precise channel estimates of RS using the reduced complexity MMSE matrix and previously computed LS channel estimates ĤLS as follows:
From the MMSE estimates of RS, data channel estimates can be generated using linear interpolation. This invention addresses the issue of SNR degradation due to inaccurate channel estimates in the LTE SC-FDMA uplink under all types of fading scenarios. Furthermore, this invention provides a solution to the channel estimation issues related to the LTE uplink receiver. With this channel estimation method, good demodulation performance is maintained under all types of fading channel scenarios. Moreover, the complexity of this method is considerably lower than the MMSE technique and therefore it can be easily implemented in basestation (eNodeB) hardware for the LTE software release.
As a second aspect of the present invention, it is noted that signal-to-noise ratio (SNR) estimation is an essential processing step in the eNodeB receiver for use with the reduced complexity minimum mean squared error (RC-MMSE) channel estimation. The performance of the present invention (reduced complexity MMSE channel estimation) technique has some sensitivity to the estimated SNR. The demodulation SER vs. actual SNR has been determined for SNR estimation errors within +/−3 dB. It is to be noted that an over-estimation of the SNR results in slightly better performance whereas under-estimation of SNR results in worse performance. In order to limit the performance degradation, it is desired that the SNR be estimated within −3 dB of the actual channel SNR. As a third aspect of the invention, an adaptive method of data channel interpolation based on the RS signal is being proposed in this invention.
Embodiments of the present application will now be described, by way of example only, with reference to the accompanying drawing figures, wherein:
Exemplary components of a system using the present invention include base station 1000 and mobile station 1002 as depicted in
Similarly, the mobile station 1002 includes software 1016 executable on one or more CPUs 1018 connected to a memory 1020. The software 1016 is executable to perform tasks of the mobile station 1002. Instructions of such software (1008 and 1016) can be loaded for execution onto the CPUs or other types of processors. The processor can include a microprocessor, microcontroller, processor module or subsystem (including one or more microprocessors or microcontrollers), or other control or computing devices. A “processor” can refer to a single component or to plural components.
Data and instructions (of the software) are stored in respective storage devices, which are implemented as one or more computer-readable or computer-usable storage media. The storage media include different forms of memory including semiconductor memory devices such as dynamic or static random access memories (DRAMs or SRAMs), erasable and programmable read-only memories (EPROMs), electrically erasable and programmable read-only memories (ERPROMs) and flash memories; magnetic disks such as fixed, floppy and removable disks; other magnetic media including tape; and optical media such as compact disks (CDs) or digital video disks (DVDs).
The channel is estimated based on an indicator signal that is periodically broadcast on the forward or uplink in the frame signaling structure. In this embodiment, the mobile station 1002 would receive the indicator channel signaling as received from a transmission. The mobile station 1002 can also be referred to as an access terminal. The mobile station 1002 may perform the channel estimation calculations or provide feedback to the basestation 1000 based on the channel estimation protocols performed, where the basestation will perform the channel estimation calculation.
From the channel estimations, the basestation 1000 or the mobile station 1002 will determine how the mobile station 1002 is being served and the basestation 1000 may make determinations about whether the mobile station 1002 will need to monitor the communications channel. The basestation 1000 may also schedule communications to be transmitted from the basestation 1002 based on the channel estimation calculation. The basestation 1000 may also schedule users to avoid interference and overlapping beam situations.
The minimum mean squared error (MMSE) based channel estimator utilizes the second-order statistics of the channel conditions to minimize the mean-square error of the channel estimates. An underlying assumption is that the time domain channel vector is Gaussian and uncorrelated with the channel noise. The linear MMSE channel estimate is given as follows:
Ĥ
LMMSE
=R
HH(RHH+σN2(XX*)−1)−1ĤLS (1)
where
The MMSE estimator yields much better performance than LS channel estimators by themselves, especially under the low SNR scenarios. A major drawback of the MMSE estimator, however, is its high computational complexity because of the increased consumption of system resources and increased system overhead from evaluating the full MMSE equation.
In the MMSE equation, X denotes the known reference signal (RS) sequence transmitted by UE. It should be noted that in LTE standard systems, sequence hopping and group hopping are allowed for uplink RS sequence, and if sequence/group hopping is enabled, the above MMSE equation will require that two matrix inversions be performed every slot (0.5 msec). With one RB allocation to any user, the matrix size is 12×12 and whereas with all 48 RBs allocation to one user, the matrix size is 576×576. Such real-time matrix inversions are computationally intensive for practical implementations. A second point to note is that this MMSE equation proves to be inaccurate as the user equipment (or mobile node) travel at higher velocities.
Some reduction in the complexity of the MMSE technique described above can be achieved by the proposed method as follows: (1) replace the term (XX*)−1 with its expectation E{(XX*)−1}, (2) as the signal constellation is same on all subcarriers in the RS symbol and has equal probability on all constellation points, E{(XX*)−1}=E{|1/Xk|2}I where I is identity matrix, (3) define the average SNR=E{|Xk|2}/σN2, the term β=E{|Xk|2}/E{|1/Xk|2}, and the term σN2(XX*)−1=(β/SNR)I, where β is a constant depending only on the signal constellation, (4) for QPSK constellation, β=1, for 16 QAM constellation, β=0.5294, and for 64-QAM transmission, β=0.3724, and (5) for the LTE uplink, the RHH matrix is dependent only on the subcarrier spacing and the r.m.s delay spread of the channel.
From these assumptions and the MMSE channel estimation equation can be reduced to the following:
The advantage with the implementation as in Eqn. (2) is that there is only one inverse to be computed and that matrix contains constant values. The same matrix can be used for several subframes until a different SNR estimate is received (even if sequence and group hopping are enabled).
Further reduction in complexity can be achieved by utilizing the simplicity in the generation of the channel autocorrelation of the LTE uplink RS pattern. The channel autocorrelation for a time-frequency OFDM grid may be written as the product of the frequency and time correlation functions.
E{p
k,l
{circumflex over (p)}
k′l′
*}=R
HH
=r
f(k−k′)rl(l−l′) (3)
where rf and rl denote frequency correlation function and time correlation function, k the subcarrier number, and l the symbol time index.
By assuming an exponentially decaying power delay profile (which is the widely accepted industry standard for channel power profile), the frequency correlation functions can be written as:
where 1/T is the subcarrier separation (which is 15 KHz for LTE), and τrms is the r.m.s delay spread of the channel.
By assuming Jakes spectrum for the Doppler spread, the time correlation function can be written as:
r
t(l)=Jo(2πfmaxlTs) (5)
Where J0 is Bessel function of first order and first kind, fmax is the maximum Doppler spread and Ts is the OFDM symbol duration.
For the LTE Uplink RS pattern, the time correlation function among the RS pattern is 1. This is due to the fact that all the reference symbols are in the same OFDM symbol. Therefore, the channel autocorrelation in Eqn. (3) may be written as
E{p
k,l
{circumflex over (p)}
k′l′
*}=R
HH
=r
f(k−k′) (6)
The procedure for reduced complexity MMSE channel estimation for LTE Uplink receiver is as follows: the present invention generates and stores RHH as per equations (6) and (4) for all RB allocations (1, 2, 3, 4, . . . NRB) in memory for channel estimation. It is safe to assume a value of 2 usec for r.m.s delay spread in generation of RHH. Simulations indicate that the accuracy of the channel estimates is not too sensitive to the r.m.s delay spread value. This would imply storage of matrices of size (12×12, 24×24, . . . 576×576). This is a one time event and need not be repeated. If storage is an issue, then it could be generated in real-time although this is not an efficient use of computing resources.
In every slot (0.5 msec duration), estimate ĤLS=X−1y where y is the received vector of RS symbols and X is a vector of known transmitted constant amplitude zero autocorrelation (CAZAC) sequence in the UL RS symbol. If the RS group and sequence hopping are disabled, then the contents of X remain the same for that user. If the RS group and sequence hopping are enabled, then the contents of X can change in every slot or subframe.
The present invention obtains an SNR estimate from the previous slot or subframe if the UE is continuously transmitting, or in the case of discontinuous transmission, an estimate of the SNR is obtained using the channel estimates ĤLS.
Using known values for β (1 for QPSK, 0.5294 for 16-QAM, 0.3724 for 64-QAM), SNR estimates, and RHH, generate the reduced complexity MMSE matrix
The present invention generates precise channel estimates of RS using the reduced complexity MMSE matrix and previously computed LS channel estimates ĤLS as in equation (2) repeated below:
From the MMSE estimates of RS provided in the present invention, data channel estimates can be generated using linear interpolation.
Simulation results are shown in Charts 1-10 below where: (1) channel estimation and demodulation performance was varied for QPSK, 16QAM, 64QAM modulations at UE mobilities of 3 km/hr, 60 km/hr, 120 km/hr and 350 km/h, (2) the receiver is comprised of a single antenna at the eNodeB, (3) uncoded modulation symbol error rate SER vs. SNR is plotted, (4) a carrier frequency of 2 GHz is assumed so that the maximum Doppler spread at 3 km/hr, 60 km/hr, 120 km/hr and 350 km/hr is 5 Hz, 100 Hz, 200 Hz, 600 Hz respectively, (5) with two receiver antennas, turbo code and interleaving, an additional performance gain of approximately 10 dB (depending on code rate and channel) is expected for the BER vs. SNR, (6) the RS channel estimates are directly applied to the data channel for demodulation in the simulation results.
Charts 1-4 provide QPSK demodulation performance comparisons as follows:
Charts 5-7 provide 16 QAM demodulation performance comparisons as follows:
Charts 8-10 provide 64 QAM demodulation performance comparisons as follows:
The reduced complexity MMSE channel estimation method of the present invention provides equivalent accuracy to support QPSK modulations up to 350 km/hr with reduced overhead, reduced calculation times, and increased system performance.
For 16QAM modulations, the channel estimation accuracy can support mobilities up to 120 km/hr. For higher mobilities using 16QAM, the inter-carrier interference (ICI) becomes dominant and techniques such as MMSE that considers noise as AWGN cannot improve channel estimation performance by increasing the SNR. As will be explored in the second embodiment, techniques that perform ICI cancellation combined with channel estimation are likely more effective for such high mobilities.
For 64QAM modulations, the channel estimation accuracy can support mobilities up to 60 km/hr. For 64QAM modulations, the channel estimation accuracy is not robust and therefore the ICI at 120 km/hr cannot provide satisfactory demodulation performance as shown in Chart 10. Techniques that perform joint ICI cancellation and channel estimation are likely more effective for such dense constellations at those higher mobilities using 64QAM modulations.
It should be noted that accurate estimation of the signal-to-noise ratio (SNR) is an essential processing step in the eNodeB receiver for use with the present invention of reduced complexity minimum mean squared error (RC-MMSE) channel estimation. The performance of the present invention (reduced complexity MMSE channel estimation) technique has some sensitivity to the estimated SNR. The demodulation SER vs. actual SNR is plotted for SNR estimation errors within +/−3 dB in Chart 11. It should be noted that an over-estimation of the SNR results in slightly better performance whereas under-estimation of SNR results in worse performance. In order to limit the performance degradation, it is desired that the SNR be estimated within −3 dB of the actual channel SNR.
Even though an over-estimation of SNR may help RC-MMSE channel estimation performance, an overestimated SNR can cause performance degradation to algorithms for scheduling (for resource allocation), modulation and coding control, handoff, power control, and soft decision decoding. Therefore, it is essential to estimate SNR as accurately as possible to minimize overall system performance degradation.
More accurate SNR estimation that is part of a second aspect of the invention is comprised of a two-part estimation: (i) signal power estimation, and (ii) noise plus interference variance estimation. Signal power estimation are relatively straightforward and can be performed from the channel estimates. However, the accurate estimation of the variance of noise or interference is complex.
Conventional algorithms for noise variance estimation assumes that the noise statistics remain constant (white noise) over the allocation bandwidth. In practical LTE deployments, with frequency reuse of N=1, every cell-site in the network will use the same set of physical resource blocks (PRB) in every sector. Even with interference mitigation through co-ordination, there will be significant overlap in PRB allocations from adjacent cells/sectors. Partially or completely overlapped resource blocks from a distant cell introduce co-channel interference (CCI).
There is also adjacent channel interference (ACI) resulting from inadequate filtering of the adjacent channel, and inter-carrier interference (ICI) due to spectral broadening from Doppler spreads at high user equipment (UE) mobilities. These interferences are in general, not white, but colored in nature with uneven spectral density across the bandwidth. In reality, the total noise present in the uplink receiver is often made up of white Gaussian noise along with correlated colored noise.
In the sections below, the method and the procedure are proposed for SNR estimation from the RC-MMSE channel estimator in the eNodeB receiver. The SNR estimated from the user equipment's physical random access channel (PRACH) preamble or the sounding reference signal (SRS) may be used for the physical uplink shared channel (PUSCH) first slot demodulation reference signal (DMRS) channel estimation. The second slot DRS channel estimation may use the updated SNR estimated from the first slot DMRS using the method described below.
As part of the signal interference to noise ratio estimation in an LTE uplink, the received RS signal after the FFT, at nth symbol for kth subcarrier, may be written as
Y
n,k
=S
n,k
H
n,k
+I
n,k
+W
n,k
Y
n,k
=S
n,k
H
n,k
+Z
n,k (7)
where
It is assumed that the impairments due to imperfect synchronization, transceiver non-linearities etc. are folded into Wn,k. It is also assumed that the CFR is not changing within the observation time.
The reference signal (RS) used for the channel estimation in the LTE uplink occur in the same SC-FDMA symbol. This true for all LTE uplink physical channels (SRS, PRACH, PUCCH and PUSCH). As the proposed SINR estimation method makes use of the RS channel estimates and the knowledge of the code symbols in the RS, the mathematical expressions will drop the subscript, n, which stands for the symbol number.
The signal power estimation of the proposed method is straightforward. It makes use of the channel estimates to obtain the useful signal power levels. The reduced complexity minimum mean squared error (RC-MMSE) channel estimation [1] provides estimates of the channel, Ĥn,k with mean squared error (MSE) of the estimates as low as −30 dB as shown in Chart 12. The channel estimates can therefore be used to generate the average received signal power as
S=avg(|Ĥk|2) (8)
The present invention proposes use of a signal regeneration (SR) estimator to estimate the level of interference plus noise. This approach for noise power estimation is based on finding the difference between the noisy received sample in the frequency domain and the best hypothesis of the noiseless received sample. The code symbol values, Sk, in the RS are known at the eNodeB receiver. Therefore, making use of the channel estimates, Ĥk, the noise plus interference sample, {circumflex over (Z)}k, may be written as
{circumflex over (Z)}
k
=Y
k
−S
k
Ĥ
k (9)
Accurate estimation of the interference plus noise variance is complex due to the different sources of noise and interference present in {circumflex over (Z)}k, as well as their different spectral characteristics and mutual correlations. As mentioned previously, the interference component of the received signal consists of CCI, ACI, and ICI. For this discussion, the white Gaussian noise is modeled as Wk=N(0, σ02) and the interference term as Ik=N(0, σk2), where σk is the local standard deviation.
The method of the present invention proposes a noise variance estimation that makes use of the signal regeneration from channel estimates; therefore, an additional component to the noise due to channel estimation error is also present. The channel estimation error may be modeled as a zero mean complex white Gaussian process of variance Ek=N(0,σg2).
Assuming that the interference and white noise terms are uncorrelated, the overall noise term, {circumflex over (Z)}k, can be modeled as {circumflex over (Z)}k=N(0, σ′k2) where σ′k2=σk2+σ0,g2. The component σ0,g2 contains the variance of the white Gaussian noise part that includes the channel estimation error variance and σk2 contains the variance of the colored interference noise. The goal is to estimate σk2 which can be used to find the SNR. Note that if σ0,g2>>σk2 the overall noise can be assumed to be white and it is colored otherwise.
The method and procedure described herein assumes that σ0,g2>>σk2, and therefore the total noise in the received samples follows a Gaussian distribution function.
The present invention produces an SNR estimate using the signal power obtained through Eqn. (8) and calculates the noise variance of the noise sample as defined by Eqn. (9) as follows:
The performance of the SNR estimator in the present invention obtained from Eqn. (10) is shown in Chart 13.
In this chart, the SNR estimation error as a function of the actual SNR is shown. The SNR estimation error=Actual SNR−Estimated SNR. As seen from Chart 13, the SNR is overestimated (which means that the noise variance is underestimated) at lower values of actual SNR, and SNR is underestimated (which means the noise variance is overestimated) at higher values of actual SNR.
The overestimation of noise variance at high values of SNR is partly due to the channel estimation error. At high values of SNR, the channel estimation error variance is comparable to the noise/interference variance that is being measured, therefore higher than actual noise/interference is being reported.
To compensate for the SNR estimation error, it is straightforward to assume that there is a direct relationship between the level of interference plus noise and the channel estimation error. In order to take into account the effect of channel estimation error variance on the overall noise variance estimation, and therefore to compensate for the total noise overestimation, it is proposed to introduce a compensation factor, ρ. The factor ρ is defined as the ratio between the variance of the channel estimation errors and the variance of the interference plus noise.
Using this ratio ρ, a more accurate estimate of the level of the SNR can be obtained from Eqn. (11)
The ratio ρ in Eqn. (11) compensates for the overestimation caused by channel estimation errors in Eqn. (10). The value of ρ can be optimized between 0 and 1. The factor ρ mainly depends on the performance of channel estimator. The performance of the channel estimator may be derived from the mean square channel estimation error (MSE) simulations of the channel estimator. In the ideal case of perfect channel estimation, ρ is equal to 0.
The SNR estimation error after compensation as a function of the actual SNR is shown in Chart 14 for various values of ρ.
The SNR estimation error for various values of the compensation factor, ρ are also provided in Table 1.
As can be seen from Chart 4 and Table 1, the SNR estimation error compensation through ρ causes an overall smoothening of the SNR estimation error values. There is still some overestimation at low SNR, however, the underestimation is minimized at high values of SNR. The SNR estimation error is broadly within −6 dB/+4 dB range with a compensation factor of ρ=0.9. As a benchmark, it should be noted that this estimation performance is better than the power measurement accuracy requirement of +/−9 dB stipulated in the CDMA air interface standards.
In order to obtain accurate RS channel estimates from equation (2), it is also necessary to make use of the frequency correlation among the subcarriers in the RS symbol. At low user equipment mobilities, these RS channel estimates may be applied directly for the data channel equalization. This is due to the fact that there is high correlation in the time domain between the RS channel estimates and data channel estimates.
However, at higher user equipment mobilities (typically >60 km/hr), correlation in time domain decreases between the RS channel estimates and data channel estimates. Therefore, applying the RS channel estimates directly to equalize the data channel will result in a slightly degraded SNR vs. SER performance. At higher user equipment mobilities, the data channel estimates need to be interpolated from the RS channel estimates. There are several approaches for interpolation, including linear, bilinear, and quadratic approaches. These approaches to interpolation are static and the same approach is used for all UE mobilities, and therefore does not provide the optimum SNR vs. SER performance.
An adaptive method of data channel interpolation from RS channel is being proposed in this invention. In this approach, the time correlation function between the data channel and RS channel is utilized for the interpolation. The symbol-to-symbol channel time correlation in a given subframe is advantageously used for data channel interpolation from the RS channel estimates. As the time correlation function is dependent on the Doppler spread, this approach first estimates the Doppler spread due to the UE mobility.
Two approaches are proposed for Doppler estimation.
With knowledge of the estimated Doppler spread, the time correlation between the data channels and the RS channels can be derived and used for interpolation of data channel estimates from the RS channel estimates.
With reference to
This third aspect of the present invention has three primary steps: (1) generate user equipment Doppler spread estimation from the RS channel estimates, (2) use Doppler estimates from Step 1 to generate the time correlation matrix of data symbols in relation to the RS symbols, (3) interpolate the data channel estimates from RS channel estimates using the time correlation matrix from Step 2.
For step one, the user equipment Doppler spread estimation is generated using the cross correlation between the two RS symbols in the Slot 0 and Slot 1 of the uplink subframe. From Equation (5) we have
r
t(l)=Jo(2πfmaxlTs)
where
As part of Step one of the method in this aspect of the invention, the Doppler estimation is generated using the RS channel estimates from Slot 0 and Slot 1 obtained through RC-MMSE technique, which is used to generate a cross-correlation, Cs0
where RSs0 and RSs1 are slot 0 and slot 1 reference signals, NRB
The value obtained from step 1 is subtracted from the correlation values corresponding to a finite number of fmax values (50, 100, 150, 200, 250, 300, 350, 400, 450, 500, 550, 600 Hz) computed as per Eqn. (5) and stored in the DSP memory. The fmax corresponding to the least error from step (2) is considered as the best approximation for the Doppler spread estimate for the UE.
This third approach in the present invention is based on piecewise linear approximation to the phase of the RS channel estimates. As shown in Chart 16 below, the phase of the estimated RS channel has a piece-wise linear relationship with the RS channel estimates samples.
With φ defined as the phase of the RS channel estimates, the differentiation of φ w.r.t time provides an estimate of the maximum Doppler spread. The differentiation can equivalently be implemented by taking the slope of the RS channel estimates phase vs. the sample relationship shown in Chart 16.
The procedure for obtaining the Doppler spread may be summarized as follows: first, perform RS channel estimation using the present invention RC-MMSE method described above, second, calculate the phase of the lowest subcarrier and the highest subcarrier channel estimates (this can be calculated by tan−1 (Y/X) where Y is the imaginary part of the channel estimates, and X is the real part of the channel estimates), and third, take the difference between the phase is divided by the equivalent sample time to obtain 2πfmax.
The estimated Doppler spread is used to generate the time correlations that are needed for data channel interpolation. Two time correlation matrices need to be generated. The first is Rpp, the pilot autocorrelation matrix, and the second is R{circumflex over (p)}
For the LTE uplink resource block shown in
Similarly, R{circumflex over (p)}
Based on MMSE estimation theory, the time domain interpolated data channel estimate from RS channel estimates may be written as
Ĥ
interp
data
=R
{circumflex over (p)}
d(Rpp+σN2(XpXp*)−1)−1{circumflex over (p)} (14)
where
By using similar simplifications used in deriving the RC-MMSE channel estimation, the Eqn. (14) may be written as
where β is dependent on the RS constellation (1 for QPSK, 0.5294 for 16-QAM, 0.3724 for 64-QAM), and the SNR is the signal to noise ratio per RS tone.
The procedure for data channel interpolation in the present invention from the RS channel estimates includes the following steps. First, generate RS channel estimates for Slot 0 and Slot 1 using the RC-MMSE procedure described through the use of equation (2) reproduced below. This generates RS channel estimates of the user for its allocated PRBs P (12*PRBalloc
Second, the present invention will estimate the user equipment Doppler spread, fmax by using the method described above.
Third, use the pre-calculated matrices Rpp and R{circumflex over (p)}
Fourth, with the knowledge of RC-MMSE estimates of RS, SNR estimates, and the RS constellation, the data channel estimates can be obtained using a linear interpolation as per Eqn. (15)
The linear interpolation mentioned above generates a vector 14×1 which includes 12 data channel estimates. The interpolation is repeated 12*PRBalloc
The interpolation involves the multiplication of three matrices, (14×2)* (2×2)* (2×1). This interpolation provides a 14×1 vector which includes 12 data channel estimates (and the two RS estimates) for 1 subcarrier across all symbols. This is equivalent to 84 complex multiplications per subcarrier.
For a 10 MHz system, this multiplication needs to be performed for 48×12=576 subcarriers in every one millisecond. Therefore, the number of complex multiplications is equal to 48.384 e06 per second. This is relatively insignificant compared to the 0.6900992e+009 complex multiplications needed for RC-MMSE RS channel estimation.
It is not practical to store all time correlation values in the memory corresponding to all possible Doppler spread. As can be seen from
The performance degradation due to such a quantized approximation of Doppler spread is insignificant. Rpp and R{circumflex over (p)}
Simulation results are shown in Charts 17-19 below subject to the following assumptions: (1) channel estimation and data demodulation performance with and without interpolation for QPSK/16-QAM/64-QAM at higher mobilities is employed, (2) the receiver is assumed to have a single antenna at the eNodeB (3) uncoded modulation symbol error rate SER vs. SNR plotted, (4) a carrier frequency of 2 GHz is assumed so that the maximum Doppler spread is 600 Hz for 360 km/hr. Note that with two receiver antennas, turbo code and interleaving, an additional approximately 10 dB (depending on code rate and channel) performance gain is expected for the BER vs. SNR.
Charts 17-19 provide demodulation performance comparisons as follows:
The above-described embodiments of the present application are intended to be examples only. Those of skill in the art may effect alterations, modifications and variations to the particular embodiments without departing from the scope of the application. In the foregoing description, numerous details are set forth to provide an understanding of the present invention. However, it will be understood by those skilled in the art that the present invention may be practiced without these details. While the invention has been disclosed with respect to a limited number of embodiments, those skilled in the art will appreciate numerous modifications and variations therefrom. It is intended that the appended claims cover such modifications and variations as fall within the true spirit and scope of the invention.
This application is related to Provisional Patent Application Ser. Nos. 61/114,346 filed on Nov. 13, 2008, 61/122,553 filed on Dec. 15, 2008, and 61/151,644 filed on Feb. 11, 2009, and priority is claimed for this earlier filing under 35 U.S.C. §119(e). The Provisional patent application is also incorporated by reference into this utility patent application.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/IB2009/007687 | 11/13/2009 | WO | 00 | 5/12/2011 |
Number | Date | Country | |
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61122553 | Dec 2008 | US | |
61151644 | Feb 2009 | US | |
61114346 | Nov 2008 | US |