Wireless voice and data communication products and services have experienced tremendous growth in popularity in recent years, leading to spectral congestion and interference. Interference may be caused by multiple communication signals on a single channel, generally referred to as co-channel interference, or by communication signals on adjacent channels or networks. Such spectral congestion and interference have typically resulted in temporary short-term service problems or outages. However, as competition for services increases and customer satisfaction becomes more critical, such service outages, even if temporary, will no longer be tolerated and technical solutions to increase network capacity and improve robustness to interference are therefore desirable.
Another concern for existing communication networks is the need to offer increased data rates. For many existing networks, one solution is the implementation of a Quality-of-Service (QoS) facility, whereby users can be assigned multiple data channels according to communication resource requirements, dependent upon a software application currently being used on a wireless mobile communication device (“mobile device”), for example. For mobile devices, processing multiple data channels is difficult to implement using known designs without significantly increasing hardware complexity, power dissipation and size.
These problems were identified as early as the 1980's, and significant research has since been conducted. These efforts have focused primarily on modifying known radio receivers by adding a spatial filter or beamformer (See for example R. T. Compton Jr., Adaptive Antennas: Concepts and Performance, Prentice Hall, Englewood Cliffs, N.J., 1988, and R. Monzingo and T. Miller, Introduction to Adaptive Arrays, Wiley and Sons, New York, 1980). More recently, methods based on the statistical independence of source signals have been developed. In both cases, spatial information obtained using an array antenna is exploited. However, array antenna size and associated receiver complexity and high power consumption prevent widespread implementation of such techniques.
A system and method for receiving communication signals is provided. According to the method, a plurality of communication signals is received, each communication signal comprising one or more source signals. The plurality of communication signals are multiplexed into a multiplexed signal, which is then converted into a baseband signal. The baseband signal is sampled to produce a digital multiplexed signal comprising a plurality of samples. The samples are interpolated to generate respective interpolated digital signals, which are then subject to a blind signal separation operation to separate each of the source signals.
The server 2 may be any component or system connected within or to the communication system 10. For example, the server 2 may be a service provider system which provides wireless communication services to the mobile devices 14, 16, 18, and stores data required for routing a communication signal to the mobile devices 20. The server 2 may also be a gateway to other networks, including but in no way limited to a telephone network, a local area network, or a wide area network such as the Internet. Although only a single server 2 is shown in
A network controller 4 normally handles routing of communication signals to a destination mobile device. In the context of a packet switched communication network, the network controller 4 determines a location or address of a destination mobile device and routes packets for the mobile device through one or more routers or switches (not shown) and eventually to a base station 8 serving a network coverage area in which the destination mobile device is currently located.
A base station 8 and its associated controller 6 and antenna or tower 12 provide wireless network coverage for a particular coverage area commonly referred to as a “cell”. The base station 8 transmits communication signals to and receives communication signals from mobile devices 14, 16, 18 within its cell via the antenna 12. A base station 8 normally performs such functions as modulation and possibly encoding and/or encryption of signals to be transmitted to a mobile device 14, 16, 18 in accordance with particular, usually predetermined, communication protocols and parameters, under the control of the base station controller 6. The base station 8 similarly demodulates and possibly decodes and decrypts if necessary any communication signals received from mobile devices 14, 16, 18 within its cell. Communication protocols and parameters may vary between different networks. For example, one network may employ a different modulation scheme and operate at different frequencies than other networks.
Actual wireless communication systems, such as the Mobitex™ network or DataTAC™ network for example, may include hundreds of cells, each served by a distinct base station controller 6, base station 8 and transceiver 12, depending upon the desired overall expanse of network coverage. The base station controllers 6 and base stations 8 may be connected by multiple switches and routers (not shown), controlled by multiple network controllers 4, only one of which is shown in
Although the following description focuses primarily on signals received at a base station such as 8, similar signal detection and processing techniques may also be employed at each of the mobile devices 14, 16, 18.
At the base station 8, the antenna 12 receives signal components from each mobile device 14, 16, 18. In the general case of K signal sources, the baseband signal for the kth source can be expressed in complex-envelope form as
{tilde over (s)}k(t)=ak(t)ejα
where
In regard to notation used herein, a tilde “{tilde over ( )}” over a symbol indicates the complex envelope version of the quantity, whereas a hat “^” over a symbol indicates an estimate. The presence of both symbols indicates the estimate of the complex envelope.
For each source, a baseband signal is modulated to occupy an assigned frequency channel with center frequency fk. Thus, the RF signal transmitted by each source is given by
sk(t)=R{{tilde over (s)}k(t)ej2πf
where
At a receiver, if an M-element antenna is used to detect signals and negligible additive noise is assumed, then the output of an mth antenna element is
where δmk is the relative transmission delay from the kth source to the mth antenna element, and all delays are arbitrarily determined with respect to the first element (antenna) of the receiver array.
For the linear array in
where
Since the bandwidth of the sources sk(t) can be assumed to be much less than 1/δmk for all values of m and k, then ak(t) and αk(t) are approximately constant across the array and it follows from (3) above that
In practical scenarios, it may be assumed that fbase>>Δfk, and a wavelength
may be defined. Then, φk in (5) is given as
If the antenna elements 22 are synchronously sampled at time instants t=nT, then the resulting snapshot from the antenna elements 22 can be expressed in matrix notation as
Expression (7) is the well-known narrowband direction-of-arrival model.
It will be apparent from (7) that r(nT) is a linear combination of the modulated source signals s(nT). In particular, the received signal vector r(nT) of length M is a linear combination or mixture of the K source signals received at the M antenna elements 22, where the K-source by M-output mixing system is described by the matrix Θ.
Blind signal separation (BSS) techniques exist that can recover estimates of the original signal sources, using only the received data. BSS methods depend only on the sources being statistically independent. A BSS algorithm is typically applied after received signals have been demodulated and discretized. In order to find an estimate {tilde over (ŝ)}(n) of {tilde over (s)}(n), a K by M separation matrix is first identified. The separation matrix B satisfies the condition
BΘ=P, (8)
where P is a permutation of a K by K diagonal matrix. Therefore,
{tilde over (ŝ)}(n)=B{tilde over (r)}(n)=P{tilde over (s)}(n), (9)
where {tilde over (s)}(n)=[{tilde over (s)}1(n), . . . {tilde over (s)}K(n)]T is a K-length vector of samples of the complex envelope of the source signals at the nth time instant, and {tilde over (r)}(n)=[{tilde over (r)}1(n), . . . {tilde over (r)}M(n)]T is an M-length vector of samples of the complex envelope of the received signals at the nth time instant from all elements of the array.
Thus, multiplication by B recovers or unmixes the source signals {tilde over (s)}(n) from the received mixture {tilde over (r)}(n). Equation (9) is a mathematical expression of the concept that source signals can only be recovered to within a permutation of the source indexing and to within an unknown gain. Note that the source signals are recovered blindly, without any knowledge of the source signals or the mixing matrix θ.
Other known received signal processing schemes use so-called beamforming techniques to isolate a source of interest from a mixture of received signals using an antenna array. Contrary to BSS techniques, beamforming methods are not blind. They require some knowledge of a desired signal, usually in the form of the direction of arrival of the desired signal. In the narrowband case, the beamformer output {tilde over (ŝ)}b(k,n) for the kth source is formed by
{tilde over (ŝ)}b(k,n)=wkHr(n), (10)
where the M-length vector wk contains a set of complex-valued weights chosen to isolate the kth source and superscript H denotes the Hermitian transpose. Several beamforming methods exist which yield a vector wk so that the recovered source signal is a close replica of the desired source signal {tilde over (s)}k(n).
Beamforming algorithms, which yield a suitable vector wk in (10), have been widely applied and recently, so-called “smart antennas” employing such algorithms have been introduced into wireless communications systems. Although these general beamforming solutions have shown success in some mobile environments, severe degradation has been observed when the environment contains large multipath components.
Recently, beamforming methods tailored to multipath environments have been developed. A review of some of these methods appears for example in Foschini, G., “Layered Space-time Architecture of Wireless Communication in a Fading Environment when Using Multiple Antennas”, Bell Labs Technical Journal, vol. 1, No. 2, pp. 41-59, Autumn 1994; Golden, G., G. Foschini, P. Wolniansky, and R. Valenzuela, “V-BLAST: A High Capacity Space-time Architecture for the Rich-Scattering Wireless Channel”, Fifth Workshop on Smart Antennas in Wireless Mobile Communications, Stanford Univ., July 1998 and Wolniansky, P., G. Foschini, G. Golden, and R. Valenzuela, “V-BLAST: An architecture for Realizing Very High Data Rates Over the Rich-Scattering Wireless Channel”, invited paper to Proc. ISSSE-98, Pisa, Italy, September 1998. In general, these methods exploit knowledge of a source's modulation or message format to compute a spatial equalizer. These equalization methods are equivalent to known time equalization methods summarized in Haykin, S., Array Signal Processing, New Jersey: Prentice-Hall, 1985, and Haykin, S., Adaptive Filter Theory, New Jersey: Prentice-Hall, 1996.
Although beamforming has a long history in military applications, typical commercial radio implementations require expensive array antennas that are commercially impractical. Further, these beamformer procedures are generally based on parametric models for the antenna response, and their performance can be severely degraded by additive noise and antenna nonuniformities such as calibration errors. Thus, the challenge of making an affordable array antenna and identifying a robust signal-processing algorithm has prevented these approaches from becoming commercially accepted.
An alternative approach to beamforming, as described herein, is based on BSS. In principle, BSS techniques have the potential to overcome many of the problems with the non-blind beamforming algorithms cited above. Although the overall hardware configuration for the blind case is similar to that for traditional (non-blind) beamformers, the method of identifying the separating matrix B in (8) is significantly different from the method of identifying the beamforming vector wk in (10). Blind processing techniques lead to methods that are very robust to errors in calibration and array models.
A principal difficulty with blind signal approaches is to find efficient methods of evaluating the statistical independence between sources or data sequences. Since the joint probability density function (pdf) of r(n) may contain an infinite number of moments and independence requires all cross-moments to be zero, it is impractical to use a direct test for independence. Consequently, alternative contrast functions are used, which typically involve a nonlinear transformation of a received signal to a lower dimensionality where validating the cross-moments is easier to perform.
In Cardoso, J-F and A. Souloumiac, “Blind Beamforming for Non Gaussian Signals”. IEE Proc. F, Vol. 140, No. 6, pp. 362-370, December 1993, a different approach is proposed. Under this approach, the matrix B is partitioned into
B=BrBw, (11)
where
Bw can be identified from an estimate of R(n). Thus, Bw corresponds, for example, to the inverse of the Cholesky decomposition of {circumflex over (R)}(n) and procedures are known to identify it. A popular sequential update expression for Bw is given in Cardoso and Souloumiac as
Bw(n+1)=Bw(n)−λs[Bw(n)r(n)r(n)HBw(n)H−I]Bw(n), (12)
where λs is an adaptation rate or learning rate parameter. The quantities above are denoted as being functions of the time-step index n, since these quantities are updated at every value of this index.
The remaining challenge is to adaptively update Br. One known method, proposed by Cardoso and Souloumiac, leads to the expression
Br(n+1)=Br(n)−λs[ν(s(n))s(n)−s(n)ν(s(n))]Br(n), (13)
where ν(s(n)) is a skew-symmetric function applied element-wise to its vector argument.
By combining expressions (12) and (13), a first-order approximation of B(n) is given as
B(n+1)=B(n)−λs[s(n)s(n)H−I+ν(s(n))s(n)−s(n)ν(s(n))H]B(n). (14)
A second known method of estimating Br is described in Bell, A. and T. Sejnowski, “Blind Separation and Blind Deconvolution: An Information-Theoretic Approach”, Proc. ICASSP, (Detroit), 1995, and uses the estimation
Br(n+1)=Br(n)+λs[I−2 tan(s(n))s(n)H] (15).
As seen in equation (9), the original source signals are recovered by multiplying the received signal vector, which is a mixture of the sources, by the separating matrix B. If, for example, one of the sources is a desired signal while another represents undesired interference, the BSS procedure can then separate the desired source signal from the interfering source. Since the desired source is extracted, a BSS algorithm can thereby suppress interference, through the use of an antenna array. If the received signal consists of a mixture of two desired sources, each from a different mobile device for example, and one interfering source, the BSS scheme not only suppresses interference, but also can separate the two desired signals from each other as well. Thus, the same channel can be used to support multiple mobile devices, provided that the number of antenna elements (M) is equal to or greater than the number of sources (K).
The addition of a beamforming antenna to a conventional radio receiver has the potential to improve the performance of the receiver in the presence of strong interference, since joint space-frequency filtering provides better interference rejection than simple channel or frequency-selective filtering alone. An array antenna also supports co-channel subscribers in the same cell. In addition, blind techniques have advantages over their non-blind counterparts, including the fact that the blind methods are robust to antenna non-uniformities and array modeling errors.
However, an array antenna requires that each output channel be passed through a down conversion stage. This stage is expensive and significantly increases the size and power consumption of the device.
The cost, complexity and power consumption of previous antenna array implementations have limited their application in wireless communications. To overcome these limitations and provide a solution that is practical for not only basestations, but also mobile devices with more limited size, power consumption and processing resources, a time-multiplexed array antenna may be used.
The array antenna 31 includes antenna elements 32 and a commutator or multiplexer 34. The output of each antenna element 32 is time-multiplexed onto a single RF to baseband signal path as a single multiplexed signal and then digitally reconstructed. In known M-element antenna arrays, M down conversions to baseband are required. Therefore, the receiver 30 eliminates M−1 down conversion blocks as compared to known receivers.
In order to create a composite antenna output, the output rm(t) from each sensor element or antenna is multiplied by a series of time synchronized gating pulses gm(t) and the output added to a common signal. Thus, the composite antenna output rcomp(t) at the commutator/multiplexer 34 output is:
The composite signal rcomp(t) is then input to coarse down converter 36 and subjected to a coarse down conversion process by a frequency of fbase, to give the baseband equivalent signal whose complex envelope is represented by {tilde over (r)}base(t). It will be apparent to those skilled in the art that down conversion by a frequency fbase translates all sources in the received signal close to baseband:
{tilde over (r)}base(t)={tilde over (r)}comp(t)ej2πf
This signal is then converted into digital samples by the ADC 42. This may be accomplished for example by sampling {tilde over (r)}base(t) at a rate of
to give the discrete time signal {tilde over (r)}base(n,m), at times
n=0, 1, . . . , and m=0, . . . , M−1, where m indicates the corresponding antenna channel and n is the sample (time) index. The commutator/multiplexer 34 is preferably synchronized with respect to the sampling period Ts so that all baseband equivalent signals {tilde over (r)}m(t), m=0, . . . M−1 are each sampled uniformly within the Ts interval.
Subsequent to the analog down conversion and analog-digital conversion, the M multiplexed signals contained in {tilde over (r)}base(n,m) may be de-multiplexed and resynchronized to a common time instant. The signals {tilde over ({circumflex over (r)}(n,m), which represent estimates of the complex envelope of the baseband equivalent outputs from all M antennas at synchronous integer sampling instants nTs, are reconstructed from the samples
which are obtained at the non-integer sampling instants
This reconstruction operation involves interpolating the samples of
at a fixed m and varying n, to give estimates {tilde over ({circumflex over (r)}(n,m) of the complex envelope corresponding to the desired synchronously-sampled baseband versions of the signals rm(t) in (5), at integer sampling instants.
If Ts satisfies
where fmax is the relevant band edge of {tilde over (r)}base(t), then the reconstructed signal generated by interpolator 44 including the interpolated components is given by
{tilde over ({circumflex over (r)}(n−p,m)=tm{tilde over (r)}base(n,m)+wm(n), (19)
where
i=n−2p, . . . , n;
By selecting the proper model order p and suitable window function, the interpolation error wm(n) can be made very small and substituting the real component of the quantity {tilde over ({circumflex over (r)}(n−p,m) from (19) for r(n) in expression (7) leads to an acceptable solution. The accuracy of the interpolation procedure can also be improved through the use of such windowing functions as those described in Alan V. Openheim, Ronald W. Schafer with John R. Buck, “Discrete-time Signal Processing”, 2nd. Ed, 1999, Prentice Hall, Upper Saddle River, N.J., USA, 07458.
These modifications lead to the multi-channel radio receiver 30, which includes a single down conversion signal path and several control paths, as described in further detail below.
The down conversion signal path begins at the multiplexed array antenna 31 and ends with the output of the desired data channels at the output of the baseband signal demultiplexer 48. A single multiplexed signal is down converted to a common baseband at 36, converted to a digital signal at 42 and digitally reconstructed into a vector of signals by interpolator 44, as discussed above. Interpolator 44 would normally be implemented as an interpolation filter, as will be apparent to those skilled in the art. The reconstructed signal is then separated into multiple data signals using a blind separation algorithm embodied in the BSS unit 45, and then the desired channels are selected from those available at the demultiplexer 48.
The single multiplexed signal output from the multiplexed array antenna 31 is, as described above, given by expression (17). Conventional down conversion using a common baseband frequency of fbase, followed by analog-to-digital conversion produces an output vector of time samples {tilde over (r)}base(n,m) of length 2p+1 from the ADC 42, that in complex envelope form is given by
{tilde over (r)}base(n,m)=[{tilde over (r)}base(n−2p,m) . . . {tilde over (r)}base(n,m)], m=0, . . . , M−1, (20)
where {tilde over (r)}base(n,m) is defined in expression (17).
The signal vector component {tilde over (r)}base(n) is applied as an input to the mth interpolation filter indicated in expression (19), and a time-aligned output is generated as
{tilde over ({circumflex over (r)}m(n−p)=tm{tilde over (r)}base(n)+wm(n). (21)
The interpolated signals [{tilde over ({circumflex over (r)}0(n−p) . . . {tilde over ({circumflex over (r)}M-1(n−p)]T are assembled into a vector {tilde over ({circumflex over (r)}(n) representing a single snapshot of synchronous samples. The elements of {tilde over ({circumflex over (r)}(n) are samples represented here in complex envelope form from all M antenna outputs, at simultaneous time instants.
A BSS algorithm may then be applied to the signal {tilde over ({circumflex over (r)}(n). This is done by computing the matrices Bw and Br in a manner similar to that indicated in expressions (12) and (13):
Bw(n+1)=F(n)Bw(n)−λ(n)F(n)[Bw(n){tilde over ({circumflex over (r)}(n){tilde over ({circumflex over (r)}(n)HBw(n)H−I]Bw(n), and (22)
Br(n+1)=Br(n)−λ(n)[ν({tilde over (ŝ)}(n)){tilde over (ŝ)}(n)H−{tilde over (ŝ)}(n)ν({tilde over (ŝ)}(n))H]Br(n), (23)
where:
Since the coarse down conversion operation performed by down converter 36 by the frequency fbase does not bring the recovered signals exactly to baseband, it may be desirable to perform a second (fine) down conversion or demodulation operation. As will be apparent, without this fine demodulation step, the recovered sources {tilde over (ŝ)}e(n) would be given by the expression
If F(n) is defined as
then the fine demodulation process may be incorporated into the signal separation by the inclusion of F(n) in equation (22). The matrix B becomes a time-varying quantity which inherently performs the desired fine demodulation of the recovered signals to baseband. The frequencies Δf1 . . . ΔfN in F(n) will normally be supplied by control logic (not shown) associated with the receiver 30 in which the signal separation arrangement of
In the system shown in
The SIR estimate from estimator 56 is used to determine the adaptation rate parameter λ(n) for the separation algorithm in (22) and (23) and the appropriate interpolation filter length p, and to provide a confidence measure for the baseband detector 58. To estimate the relative signal strengths of each separated source signal, the signal outputs from the signal separation network 40 may be scaled to unity power. Consequently, the reciprocal of the squared 2-norm of the kth row bk(n) of the converged separation matrix B(n) from the separation matrix identifier 52 is an estimate of the power of the kth source.
In order to detect convergence of the separation matrix B(n), a time-varying quantity v(n), which indicates how fast the matrices Bw and Br from (22) and (23) respectively are changing during adaptation, is preferably used. This quantity is given by
where
During the initial phase of adaptation, the matrix B(n) is changing quickly; thus v(n) in (27) has a high value. After convergence is nearly attained, B(n) is almost constant, with the result that v(n) has a low value.
Performance of the signal separation techniques described herein is dependent on the convergence properties of the BSS algorithm. Since the separation algorithm uses a sequential update procedure, the associated adaptation rate parameter λ(n) plays a key role. This parameter is preferably adjusted according to the following:
where λmin, λrange, λscale are scalar parameters whose values are determined in an empirical manner through experimentation.
The performance is also dependent on the estimation accuracy of the interpolation filter 44. For low signal-to-noise ratio (SNR) conditions, it is important to maximize improvement, so a longer filter (larger p) is used. To support this dynamic operation, the following estimator for p is preferably employed:
where pmin, prange, pscale are experimentally predetermined scalar parameters.
The quantity e(n) in (29) is a second form of estimated SNR value, defined as
After convergence, if the number of antenna elements M is greater than the number of sources K, the numerator of (30) is an indication of the power of the strongest source, whereas the denominator is an indication of the background noise power. Since the quantity e(n) is only meaningful after the separation algorithm is nearly converged, the following convergence measure c(n), which is represented as a Boolean variable, is preferably used to test for near-convergence and qualify the use of the measure e(n):
c(n)=v(n)<μ, (31)
where
As described above, v(n) is an indicator of the convergence of the separation matrix. Therefore, the scalar threshold μ may be determined based on a level of convergence at or above which signal separation performance is or is expected to be acceptable.
Parameter p is preferably varied on a block by block basis and evaluated when the condition on c(n) specified in (31) is true. Otherwise, the largest value of p=pmin+prange may be used. The ability to adaptively change the parameter p results in improved performance at low values of SNR or in the early phases of adaptation, while at the same time reduces the computational overhead of the algorithm under more favourable operating conditions.
When using BSS algorithms, it is not possible to determine at which output a desired signal appears; i.e., the ordering of recovered signals is subject to an unknown permutation. The baseband detector 58 is used to determine at which output the desired signal appears, based on the knowledge of the channel frequency of the desired signal. The output ordering is resolved in the baseband signal demultiplexer 48, the output of which is the desired signal vector ŝb(n).
In the demultiplexer 48, each sequence contained in ŝb(n) is passed through a low pass filter and a short-term average of the output signal power is computed. By choosing fbase to be close to the known frequency of the desired channel, the output of the low-pass filter will have a significant signal level only when the filter input corresponds to the desired channel. All other undesired channels will not be centered around baseband, so the filter output in these cases will have a low signal level. The following Boolean variable may be used to test this condition:
zk=level(lp(n){circle around (×)}[ŝb(n)]k)>μbb, (32)
where
For each desired signal, an expected or minimum received signal level will normally be known, from which an expected signal level at the output of the BSS unit may be calculated. The threshold μbb may therefore be determined as a signal level expected at the output of the BSS unit 45 when the expected or minimum signal level is received by the receiver 30.
If the condition in (32) is true, then [ŝb(n)]k is the desired output. Otherwise, then diagonal sequences fii(n) of the matrix F(n) can be interchanged with fkk(n) until the condition is true. An alternative strategy is to interchange rows of the separation matrix B until the condition on zk in Expression (32) is true.
To evaluate the performance of the techniques and system described above, a series of simulations were performed over a wide range of conditions. The simulations were performed using Mathworks Matlab™ environment and each block of the diagram in
The basic simulation parameters are listed blow in Table 1. These settings correspond to the case of two users operating about a common basestation in the Mobitex™ mobile communication network. The transmissions could apply to either the base station on an uplink channel or to a mobile device on a downlink channel.
For each test condition, a number of trials were performed and statistics were accumulated. The key variable for comparison was the degree of improvement due to the signal separation algorithm and system according to the invention. The improvement is defined as the difference between oSIR, the SIR at the output of the signal separation network 40, and iSIR, the SIR at the input to the signal separation network 40. The quantity iSIR may be defined as:
where the powers are measured at the input to the signal separation network 40, and averaged over all inputs. The quantity oSIR is defined in a similar way, except the powers are measured at the output of the signal separation network 40.
The first series of simulations performed investigated the importance of the filter length employed in the interpolator 44. A series of simulations were performed for a range of filter lengths and iSIR levels. For each combination, a total of 75 trials were conducted and statistics accumulated on the oSIR level achieved at the end of each trial.
Next, the interpolation filter length p was fixed at 48 taps and the iSIR level and the angular separation between the two signal sources was varied. For this test, the angular separation varied over the range 2 to 70 degrees. Again at each setting, 75 trials were performed and statistics accumulated.
As shown in
The effect of p for the case where the sources are very close together was also tested.
In addition to accumulating statistics on the overall SIR improvement, antenna response was evaluated for each trial.
The systems and methods described herein may be employed in a mobile communication system such as shown in
Regardless of the implementation, the systems and methods described above permit simultaneous down conversion of multiple radio channels with arbitrary modulation characteristics. If adjacent channel interference and co-channel interference are viewed as independent signal sources, then application of the transformation described above can separate each desired baseband signal into an individual, low cross-talk signal path for further processing by conventional wireless communication signal receiving circuits. The antenna array and associated BSS system could therefore replace the front-end of virtually any conventional receiver and operate effectively in conjunction therewith. In addition, the ability to simultaneously process multiple channels would also provide for implementation of these systems and methods in communication systems which operate in accordance with emerging standards that employ blocks of blocks of frequency division multiplexed (fdm) channels to support dynamic QoS requirements, such as third generation Global System for Mobile Communications (3G GSM™) systems, wideband code-division multiple access (w-CDMA) systems and reFlex™.
Although described above in the context of a particular example of a BSS algorithm, other types of BSS algorithm may instead be used in conjunction with the receiver and techniques described above.
The antenna array which receives the multiple input signals for the BSS algorithm will be implemented in hardware, whereas the frequency down conversion and signal separation algorithm may be implemented at least partially in software, or in a digital signal processor (DSP) for example.
It will be appreciated that the above description relates to illustrative embodiments by way of example only. Many variations thereof will be obvious to those knowledgeable in the field, and such obvious variations are within the scope of the invention as described and claimed, whether or not expressly described herein.
This application is a continuation of U.S. Ser. No. 10/163,912, filed on Jun. 6, 2002 now U.S. Pat No. 7,047,043.
Number | Name | Date | Kind |
---|---|---|---|
4639914 | Winters | Jan 1987 | A |
5268695 | Dentinger et al. | Dec 1993 | A |
5383164 | Sejnowski et al. | Jan 1995 | A |
5592490 | Barratt et al. | Jan 1997 | A |
5621730 | Kelley | Apr 1997 | A |
5917448 | Mickelson | Jun 1999 | A |
5959966 | Torkkola | Sep 1999 | A |
6069583 | Silvestrin et al. | May 2000 | A |
6185309 | Attias | Feb 2001 | B1 |
6236862 | Erten et al. | May 2001 | B1 |
6240098 | Thibault et al. | May 2001 | B1 |
6625587 | Erten et al. | Sep 2003 | B1 |
6845164 | Gustafsson | Jan 2005 | B2 |
7047043 | Reilly et al. | May 2006 | B2 |
7113129 | Goldberg | Sep 2006 | B2 |
20020154687 | Bierly et al. | Oct 2002 | A1 |
Number | Date | Country | |
---|---|---|---|
20060052138 A1 | Mar 2006 | US |
Number | Date | Country | |
---|---|---|---|
Parent | 10163912 | Jun 2002 | US |
Child | 11264081 | US |