1. Field of the Invention
This disclosure relates generally to wireless communication receivers, and more specifically, to a system and method for reducing dynamic range using fast predictive automatic gain control.
2. Description of the Related Art
Automatic gain control (AGC) circuits are typically designed to compensate for the slow fading or log-normal shadowing of a received signal. Due to fast fading, such as Rayleigh fading and the like, the accuracy of the analog to digital converter (ADC) in the conventional receiver had to be relatively high to compensate for increased dynamic range. As an example, up to 5 additional bits of precision were needed to compensate for up to 30 decibels (dB) of dynamic range. Each additional bit of the ADC, however, increased power consumption of the conventional radio by a factor of approximately four. It is desired to reduce power consumption of wireless communication devices.
The present invention is illustrated by way of example and is not limited by the accompanying figures, in which like references indicate similar elements. Elements in the figures are illustrated for simplicity and clarity and have not necessarily been drawn to scale.
The following description is presented to enable one of ordinary skill in the art to make and use the present invention as provided within the context of a particular application and its requirements. Various modifications to the preferred embodiment will, however, be apparent to one skilled in the art, and the general principles defined herein may be applied to other embodiments. Therefore, the present invention is not intended to be limited to the particular embodiments shown and described herein, but is to be accorded the widest scope consistent with the principles and novel features herein disclosed.
A gain-controlled baseband received signal y(t) at the output of the AGC circuit 115 is provided to the input of the ADC 103. It is appreciated that additional components may be provided in the receive path between the RX modulator 113 and the ADC 103, such as, for example, an anti-aliasing low-pass filter or the like. The ADC 103 samples and converts the analog received signal y(t) to a digital or discrete-time received signal y[n], which is provided to respective inputs of a dynamic range determination circuit 119 and a channel estimation and gain prediction circuit 121 within the baseband processor 105. The baseband processor 105 includes other circuitry (not shown) for converting the y[n] signal to information symbols and to convert the symbols into a bit-stream containing the transmitted information as understood by those of ordinary skill in the art. In the illustrated embodiment, the ADC 103 has a variable resolution control input receiving a resolution control (RC) signal for controlling the number of resolution bits used to convert y(t) to y[n]. The dynamic range determination circuit 119 monitors the y[n] signal and provides the RC signal to control the resolution of the ADC 103. In one embodiment, the dynamic range determination circuit 119 sets the initial resolution of the ADC 103 to a relatively high resolution (e.g., highest resolution) to ensure detection of low power signals transmitted in the channel. The channel estimation and gain prediction circuit 121 adjusts the g(t) signal to adjust the power level of the y(t) signal towards a target power level. In response, the dynamic range determination circuit 119 adjusts the RC signal to reduce the resolution of the ADC 103 to reduce power consumption. The channel estimation and gain prediction circuit 121 receives the y[n] signal and provides a discrete-time gain signal g[n]. The gain signal g[n] comprises a series of gain values, each for a corresponding signal sample of the received signal y[n]. The g[n] signal is provided to the input of a digital to analog converter (DAC) 123, which converts the g[n] signal to the g(t) signal to set the gain level of the AGC circuit 115.
The received signal r(t) is a continuous-time analog signal according to the following equation (1):
r(t)=h(t)s(t)+v(t) (1)
where h(t) is the time-varying complex-valued narrowband wireless fading process representing the “gain” of the wireless channel, s(t) is the complex-valued transmitted signal, and v(t) is a complex Additive White Gaussian Noise (AWGN) process with mean zero and noise variance σv2. The channel estimation and gain prediction circuit 121 determines the appropriate value of g(t) which is applied to the received signal r(t) in order to minimize the dynamic range of the received signal y(t). The discrete-time received signal y[n], assuming ideal Nyquist sampling, is according to the following equation (2):
y[n]=g[n](h[n]s[n]+v[n]) (2)
where n is an index value (i.e., n=0, 1, 2, . . . ) such that the square brackets and index n signify the respective equivalent discrete-time sampled signal values.
In one embodiment, it is assumed that the pilots are sent at unit energy so that the error term
remains AWGN with variance σv2.
In the illustrated embodiment, the gain level of the channel one symbol ahead of the current symbol, or ĥp[n+1], is predicted using LMMSE by performing a linear combination of the available current and previous L least-squares estimates of the channel according to the following equation (4):
where m=└n/P┘ (in which the brackets “└ ┘” denote the floor operation, e.g., contents rounded down to nearest integer), Δ=n+1−mP, wΔ[l] defines the filter coefficients according to a weighting function, and L is a positive integer determining the filter length, i.e., the number of filter coefficients. The parameter “Δ” represents an index to the intermediate symbols between the pilot symbols. The LMMSE predictor coefficients are determined according to the following equation (5):
w
Δ=(R+σv2I)−1rΔ (5)
in which wΔ is an L-length prediction coefficients vector, R is an L×L temporal autocorrelation matrix as further described below, I is the L×L identity matrix as known to those skilled in the art (in which main diagonal values of matrix are unity values and remaining matrix values are zero), the power notation “−1” denotes matrix inversion, and rΔ is an L-length temporal cross-correlation vector as further described below. The prediction coefficients vector wΔ may be written according to the following equation (6):
w
Δ
=[w
Δ[0], . . . , wΔ[L−1]]T (6)
in which the power notation “T” denotes the transpose function as understood by those skilled in the art. The temporal autocorrelation matrix R may be written according to the following equation (7):
in which the asterisk “*” denotes the conjugate function. The temporal cross-correlation vector rΔ may be written according to the following equation (8):
r
Δ
=[r[Δ],r[P+Δ], . . . , r[(L−1)P+Δ]]T (8)
The temporal correlation function r[δ] is defined according to the following equation (9):
r[δ]≡E[h[n]h*[n+δ]] (9)
in which “E” denotes the expectation function. In the illustrated embodiment, the temporal correlation function r[δ] is estimated using a block of N least-squares channel estimates to determine temporal correlation estimated values at the pilot location spacing P, or r[0], r[P], r[2P], . . . , r[LP] according to the following equation (10):
where m=0, . . . , L. The estimates for r[Δ], r[P+Δ], . . . , r[(L−1)P+Δ] can then be determined by interpolating between the {circumflex over (r)}[mP] values such as by low pass interpolation or the like. Other methods of correlation function estimation and interpolation are known and contemplated. The predicted error variance values are determined according to the following equation (11):
σp2[n+1]=r[0]−rΔH(R+σvI)−1rΔ (11)
where the power notation “H” is the Hermitian transpose as known to those skilled in the art. In the illustrated embodiment, the channel statistics estimator 511 determines and provides the estimated values or r[0], r[P], r[2P], . . . , r[LP] and corresponding conjugate values or r*[P], r*[2P], . . . , r*[LP] (collectively represented as matrix R in
The predictive AGC circuit 303 uses the predicted channel gain values ĥp[n+1] and the predicted error variance values σp2[n+1] to provide the predicted gain values g[n+1]. The predicted gain values g[n+1] are provided through the memory device 305 to provide the g[n] gain values, which are converted to the g(t) signal used to minimize the dynamic gain range of the ADC 103. In one embodiment, the variance of the received signal power is minimized with respect to a target power level for the wireless communication system 100, denoted as γ, according to the following equation (12):
in which the index “n+1” is dropped for brevity, the variable g is changed according to α g2, and “min” denotes the minimum function, and
is the conditional expected value of the argument given the predicted channel value ĥp. Hence, equation (12) seeks to find the optimal value for α such that the conditional variance of the received signal power α|hs+v|2 given the predicted channel value ĥp is minimized. The square value within the expectation function E is expanded, the derivative is taken with respect to α, and the result is set to zero to determine an optimal value for α, denoted αOPT, according to the following equation (13):
If it is assumed that the transmitted symbols have normalized transmit energy (E[s2]=1), and that the random variables of the channel gain h, the transmitted symbols s, and the noise v are independent of each other, equation (13) is simplified according to the following equation (14):
If it is further assumed that each realization of the channel gain h is modeled as the predicted value ĥp perturbed by a zero-mean complex Gaussian prediction error term with vp with variance given by the prediction error σp2 according to the following equation (15):
h=ĥ
p
+v
p (15)
then equation (14) may further be simplified such that the random variable h|ĥp is complex Gaussian with non-zero mean given by the predicted channel value ĥp and variance σp2. These assumptions make h2 given ĥp a non-central Chi-squared random variable with two degrees of freedom and non-centrality parameter ĥp2 whose first two raw moments are given according to the following equations (16) and (17):
The results of equations (16) and (17) are substituted into corresponding parameters of equation (14) to obtain a simplified expression for ΔOPT according to the following equation (18):
In a practical system, a maximum allowable gain value gMAX is imposed on the fast predictive AGC circuit 115 due to amplifier limitations, so that the g[n+1] values are determined according to the following equation (19):
The predictive AGC circuit 303 operates according to equation (19) to generate the g[n+1] gain values. The g[n+1] values are delayed or temporarily stored for a symbol time to provide the g[n] values, which are then provided to the DAC 123 to generate the g(t) signal used to amplify the r(t) signal via the fast predictive AGC circuit 203.
At next block 605, the received signal y(t) is sampled to provide received signal samples y[n]. In the illustrated embodiment, the ADC 103 samples according to Nyquist criterion to convert the analog signal y(t) to the received signal samples y[n] for processing by the baseband processor 105. At next block 606, the RC signal is adjusted based on the signal samples y[n]. It is noted that the dynamic range determination circuit 119 may operate independently with respect to the channel estimation and gain prediction circuit 121. In general, as the g(t) signal converges to the target gain, the RC signal is adjusted to reduce resolution of the ADC 103 thereby reducing power consumption. At next block 607, the channel gain h is estimated using the signal samples y[n]. In the illustrated embodiment, channel estimation and prediction is performed within the channel predictor 301. As shown in
At following blocks 609, 611, 613, 615 and 617, temporal correlation statistics are applied to the estimated channel gain to predict channel gain at a subsequent time instance. In the illustrated embodiment, LMMSE prediction is applied to the estimated channel gain values to perform the prediction. At blocks 609 and 611, a temporal correlation function is estimated using the estimated channel gain values. At block 609, temporal autocorrelation values are estimated first, and at block 611, estimated cross-correlation values are determined by interpolating between the temporal autocorrelation values. In the illustrated embodiment, the channel statistics estimator 511 operates according to equation (10) to determine the estimated temporal autocorrelation values (block 609) and further performs the interpolation to determine the estimated cross-correlation values (block 611). At next block 613, predictor coefficients are determined using the estimated temporal autocorrelation values and the estimated cross-correlation values. At next block 615, the estimated channel gain values are linearly combined with the predictor coefficients to determine the predicted channel gain values. At next block 617, the estimated temporal autocorrelation values and the estimated cross-correlation values are combined to determine the predicted error variance values. In the illustrated embodiment, the channel gain predictor 509 receives the temporal correlation values from the channel statistics estimator 511 and operates according to equations (5)-(8) to determine the predictor coefficients wΔ. The channel gain predictor 509 then operates according to equations (4) and (6) to linearly combine the predictor coefficients with the estimated channel gain values to provide the predicted channel gain values ĥp[n+1]. The channel gain predictor 509 further operates in accordance with equation (11) to determine the predicted error variance values σp2[n+1] by combining the estimated temporal autocorrelation values and the estimated cross-correlation values.
At next block 619, the predicted channel gain values and the predicted error variance values are used to determine the predicted gain values g[n+1]. In the illustrated embodiment, the predictive AGC circuit 303 operates in accordance with equation (19) using the predicted channel gain values ĥp[n+1], the predicted error variance values σp2[n+1], a predetermined target gain value γ and the maximum gain value gMAX to determine predicted gain values g[n+1]. The predicted gain values g[n+1] are calculated to minimize the difference between the estimated power of the received signal (as attenuated through the channel based on channel gain) and the target gain. The target value γ and maximum gain value gMAX are determined based on the particular implementation of the wireless communication system 100 including the implementations of the AGC circuit 115, the ADC 103, and baseband processor 105. At next block 621, the predicted gain values g[n+1] are stored for a signal sample time (used by the ADC 103) to provide the “current” gain values g[n], such as illustrated by the memory device 305. In one embodiment, the memory device 305 is synchronized with the ADC 103 and the DAC 123 to synchronize between the predicted values, the current values, and the applied gain values. At next block 623, the gain values g[n] are converted to the gain signal g(t), such as illustrated by the DAC 123. The determined gain signal g(t) is applied to the received signal r(t) to convert to the received signal y(t) at block 603. At next block 625, it is queried whether the signal r(t) currently being received is completed. If not, operation loops back to block 602 and operation continues to loop between blocks 602-625 while the signal is being received. In general, each loop iteration corresponds to each received signal sample y[n]. When the current signal r(t) is completed as determined at block 625, operation returns to block 601 to prepare for the next signal.
The channel estimation and gain prediction circuit 121 has been described according to a single carrier communication system. The concepts described herein may be applied in similar manner to a multi-carrier communication system. In an orthogonal frequency-division multiplexing (OFDM) system operating in a frequency selective multi-path fading channel, the received signal within the kth OFDM symbol may be modeled according to the following equation (20):
in which Nsymbk n Nsymb(k+1) and where h[l,k], l=1, . . . , L are the complex channel taps that are assumed statistically independent across taps l and constant across the kth OFDM symbol, g[k] is the gain value also assumed constant across the symbol, Nl is the discretized time delay for the lth tap, and Nsymb is the OFDM symbol length. The Nsymb samples are collected into a vector y[k] according to the following equation (21):
y[k]=[y[N
symb
k], . . . , y[N
symb(k+1)−1]]T (21)
and the received signal power for an OFDM symbol is given as the squared norm of the vector y[k], i.e., y[k]]2. The channel predictor 301 is modified to predict each of the L taps that characterize the channel one OFDM symbol ahead using pilot signals in both frequency and time dimensions, giving a predicted channel value per tap l ĥp[l,k+1] with the corresponding predicted error variances per tap {circumflex over (σ)}p2[l,k+1], which are collected into vectors according to the following equations (22) and (23):
ĥ
p
[k+1]=[ĥp1,k+1], . . . , ĥp[L,k+1]]T (22)
{circumflex over (σ)}p[k+1]={circumflex over (σ)}p2[1,k+1], . . . , {circumflex over (σ)}p2[L,k+1]]T (23)
The equations (12)-(19) are modified by replacing the signal power terms y2 with the squared norm terms y2, and similarly the channel power terms h2 and ĥp2 with the squared norm counterparts h2 and ∥ĥp∥2, respectively.
A method of fast predictive automatic gain control according to one embodiment includes estimating channel gain applied to a received signal, predicting channel gain at a subsequent time by applying temporal correlation statistics to the estimated channel gain, determining a predicted receiver gain which reduces variance between the predicted channel gain and a predetermined target power level, and applying the predicted receiver gain to the received signal. In one embodiment, predicting channel gain may include applying linear minimum mean-squared error (LMMSE) prediction to the estimated channel gain. In another embodiment, the method may include predicting error variance at the subsequent time by applying the temporal correlation statistics to the estimated channel gain and combining the predicted channel gain and the predicted error variance.
The method may include estimating channel gain of pilot symbols within the received signal, estimating a temporal correlation function using the estimated channel gain of the pilot symbols, and determining predicted channel gain using the estimated channel gain of the pilot symbols and the estimated temporal correlation function. In one embodiment, the method may further include using estimated channel gain values of the pilot symbols to determine temporal autocorrelation values, interpolating between the temporal autocorrelation values to determine temporal cross-correlation values, determining predictor coefficients using the temporal autocorrelation values and the temporal cross-correlation values, and linearly combining the estimated channel gain values of the pilot symbols and the predictor coefficients to determine predicted channel gain values.
The method may further include combining the temporal autocorrelation values and the temporal cross-correlation values to determine corresponding predicted error variance values, and combining the predicted channel gain values and the predicted error variance values to determine corresponding predicted receiver gain values. The method may further include sampling the received signal to provide signal samples, down sampling the signal samples at pilot locations to provide pilot symbol samples, storing the predicted receiver gain values to provide current gain values, down sampling the current gain values at the pilot locations to provide pilot gain values, and combining the pilot symbol samples, the pilot gain values, and known pilot symbols. The method may further include converting the current gain values to a gain signal, and amplifying the received signal by the gain signal.
A channel estimation and gain prediction system for a receiver for fast predictive automatic gain control according to one embodiment includes a channel gain estimator, a channel gain predictor, a predictive gain controller, and a gain circuit. The channel gain estimator estimates channel gain applied to a received signal and determines an estimated channel gain. The channel gain predictor predicts channel gain at a subsequent time by applying temporal autocorrelation statistics to the estimated channel gain to provide a predicted channel gain. The predictive gain controller uses the predicted channel gain to determine a predicted receiver gain to reduce variance between the predicted channel gain and a target power level. The gain circuit applies the predicted receiver gain to the received signal.
In one embodiment, the channel gain predictor determines a predicted error variance, where the predictive gain controller uses the predicted channel gain and the predicted error variance to determine the predicted receiver gain. In another embodiment, the channel gain estimator determines a least-squares estimate of the channel gain of known pilot symbols within the received signal. In another embodiment, the channel gain predictor applies linear minimum mean-squared error (LMMSE) prediction to the estimated channel gain to determine the predicted channel gain.
The channel estimation and gain prediction system may further include a variable range analog to digital converter (ADC) and a dynamic range determination circuit. The variable resolution ADC has a first input receiving the received signal, a second input receiving a resolution control signal, and an output providing received signal samples. The dynamic range determination circuit has an input receiving the received signal samples and an output providing the resolution control signal. The dynamic range determination circuit controls the resolution control signal to reduce resolution of the variable resolution ADC based on dynamic range of the received signal samples.
The channel estimation and gain prediction system may further include a memory device and a digital to analog converter (DAC). The predictive gain controller has an output providing predicted receiver gain values. The memory device has an input receiving the predicted receiver gain values and an output providing current receiver gain values. The DAC has an input receiving the current receiver gain values and an output providing a gain signal. In this case, the gain circuit has a first input receiving the received signal, a second input receiving the gain signal, and an output providing a gain-controlled received signal.
The received signal may include known periodic symbols. In one embodiment the channel estimation and gain prediction system may further include an ADC having an input receiving the received signal and an output providing received signal samples, and a memory device having an input receiving the predicted receiver gain and an output providing current receiver gain values. In this case the channel gain estimator has a first input receiving the received signal samples, a second input receiving the current receiver gain values, and an output providing estimated channel gain values based on the known periodic symbols, the received signal samples at periodic symbol locations, and the current receiver gain values corresponding to the periodic symbol locations.
The channel estimation and gain prediction system may further include a channel statistics estimator having an input receiving the estimated channel gain and an output providing temporal correlation values. In this case the channel gain predictor has a first input receiving the estimated channel gain, a second input receiving the temporal correlation values, and a first output providing predicted channel gain values based on the estimated channel gain and the temporal correlation values. The channel gain predictor may further have a second output providing predicted error variance values. The predictive gain controller may have a first input receiving the predicted channel gain values, a second input receiving the predicted error variance values, and an output providing predicted receiver gain values.
A receiver according to another embodiment includes a radio, an ADC, a channel estimation and gain prediction circuit, and a DAC. The radio receives and converts a transmitted signal into a received signal and amplifies the received signal by a predictive gain signal to provide a gain-controlled received signal. The ADC has an input receiving the gain-controlled received signal and an output providing received signal samples. The channel estimation and gain prediction circuit includes a channel predictor, a predictive gain controller, and a memory device. The channel predictor has a first input receiving the received signal samples, a second input receiving current gain values, a first output providing predictive channel gain values and a second output providing predictive error variance values. The predictive channel gain values and the predictive error variance values are determined using a temporal correlation function. The predictive gain controller has a first input receiving the predictive channel gain values, a second input receiving the predictive error variance values, and an output providing predictive gain values. The memory device has an input receiving the predictive gain values and an output providing the current gain values. The DAC has an input receiving the current gain values and an output providing the predictive gain signal.
The ADC of the radio may be a variable resolution ADC having a resolution adjust input. In this case, the receiver may further include a dynamic range determination circuit having an input receiving the received signal samples and an output providing a resolution control signal to the adjust input of the variable resolution ADC. The dynamic range determination circuit controls the resolution control signal to reduce resolution of the variable resolution ADC based on dynamic range of the received signal samples.
The channel predictor of the receiver may include a channel gain estimator, a channel statistics estimator, and a channel gain predictor. The channel gain estimator has a first input receiving the received signal samples, a second input receiving the current gain values, a third input receiving known pilot symbols, and an output providing channel gain estimate values. The channel statistics estimator has an input receiving the channel gain estimate values and an output providing temporal correlation values. The channel gain predictor has a first input receiving the channel gain estimate values, a second input receiving the temporal correlation values, a first output providing the predictive channel gain values and a second output providing the predictive error variance values.
Although the invention is described herein with reference to specific embodiments, various modifications and changes can be made without departing from the scope of the present invention as set forth in the claims below. For example, the illustrated embodiment shows prediction one symbol ahead where it is understood that prediction may be performed for other future times, such as up to any number of future symbol times. The present invention is illustrated for a single carrier system but applies to multiple carrier systems. Although the illustrated embodiment shows a variable resolution ADC, embodiments employing a fixed resolution ADC are contemplated as well. It should be understood that all circuitry or logic or functional blocks described herein may be implemented either in silicon or another semiconductor material or alternatively by software code representation of silicon or another semiconductor material. Accordingly, the specification and figures are to be regarded in an illustrative rather than a restrictive sense, and all such modifications are intended to be included within the scope of the present invention. Any benefits, advantages, or solutions to problems that are described herein with regard to specific embodiments are not intended to be construed as a critical, required, or essential feature or element of any or all the claims.
Unless stated otherwise, terms such as “first” and “second” are used to arbitrarily distinguish between the elements such terms describe. Thus, these terms are not necessarily intended to indicate temporal or other prioritization of such elements.