The present invention generally relates to the field of filters and the filtering of signals. More particularly, the present invention relates to a filter and a method for suppressing effects of Adjacent-Channel Interference of a received signal.
In digital time-division multiple-access/frequency-division multiple-access (TDMA/FDMA) communication systems, such as Global System for Mobile Communications (GSM), Enhanced Data for Global Evolution (EDGE), Personal Communications Services (PCS) and Digital Advanced Mobile Phone Services (DAMPS) etc., the performance of radio receivers is normally interference limited. Most interference comes from other users in the same system. The interferences may be Co-Channel Interference (CCI) from other users and/or base stations using the identical carrier frequency as the current user, Adjacent-Channel Interference (ACI) from other users and/or base stations using carrier frequencies adjacent to the current user, etc.
There are different ways of filtering a received signal in digital baseband in order to suppress potential ACI effects of a received signal. Two major approaches for ACI suppression have been suggested. According to a first approach, a symmetrical, narrow band receiver filter is applied to the baseband signal in order to suppress possible ACIs from either an upper or a lower channel, simultaneously. In this regard it is to be noted that due to the sparse nature of ACI, a single side ACI normally dominates the ACI scenario. Thus, a symmetrical narrow band filter, which cuts off frequency components on both the upper frequency band and the lower frequency band side normally damages the desired signal also on the side where ACI is not present or negligible. Consequently, this approach might degrade the receiver performance when no ACI is present or when ACI is negligible. In accordance with a second approach, noise estimation is first made prior to the filtering of the signal for suppressing potential ACI effects. The noise estimation is normally made via channel estimation by utilizing a transmitted signal sequence known as a Training Sequence Code (TSC). Based on the noise estimation, a low order filter can be adaptively obtained, which is then applied to the received signal in order to filter the signal in case there are strong ACIs present. By using this approach it is possible to adaptively suppress ACI, when strong ACI is present. Thereby, the desired signal is normally less damaged as compared to the first approach. However, accurate channel estimation according to the second approach is normally difficult to accomplish. This is especially true in presence of strong interferences or background noise. Inaccurate channel estimation might lead to a difficult adaptive decision whether ACI is present or not. This in turn might lead to degraded receiver performance.
Normally, digital filters, such as Finite Impulse Response (FIR) filters or Infinite Impulse Response (IIR) filters, designed for ACI suppression are computationally complex. A communication device, such as a mobile telephone, having such ACI filter thus normally requires considerable processing power. Consequently, a need remains for an ACI filter which utilizes processing power more efficiently and without damaging the desired signal.
An object of the present invention is to provide a method and a filter with a reduced processing power requirement.
According to a first aspect, an interference filter for suppressing effects of Adjacent-Channel Interference of a received signal in a Frequency-Division-Multiple-Access system is provided. The interference filter is adapted to filter a baseband signal of the received signal. Furthermore, the interference filter is a complex digital Single-Input-Multiple-Output (SIMO) filter that is adapted to simultaneously generate a first signal (x) filtered at an upper-frequency-band and a second signal (y) filtered at a lower-frequency-band, wherein the first signal (x) is separate from the second signal (y).
The complex digital SIMO filter may have individual frequency responses for the first and second signals. Each individual frequency response may be asymmetrical with regard to the center frequency of the received signal.
The interference filter may be configured with two pairs of interrelated zeros in the complex frequency domain, wherein normalized frequencies of each pair of the interrelated zeros is constrained by a mutually dependent constraint.
The interference filter may have a frequency characteristic according to
f(z)=(1−ejαz−1)(1−ejβz−1)
g(z)=(1−e−jαz−1)(1−ejβz−1),
wherein f(z) is the transfer function configured for the filtering in the upper frequency band, and g(z) is the transfer function configured for the filtering in the lower frequency band, and wherein α,β and −α,−β are the normalized frequencies of the two pairs of interrelated zeros.
The interference filter may be configured for use in a wireless communication device in a Global System for Mobile Communications (GSM) network. Furthermore, the interference filter may be configured for received signals de-rotated by
The mutually dependent constraint mentioned above may be
The interference filter may be configured for use in a wireless communication device in an Enhanced Data for Global Evolution (EDGE) network. The interference filter may be configured for received signals de-rotated by
Furthermore, the mutually dependent constraint may be
According to a second aspect, a wireless communication device comprising the interference filter according to the first aspect is provided.
According to a third aspect, a filter device comprising the interference filter according to the first aspect is provided. The filter device further comprises a selector adapted to receive the baseband signal, the first signal filtered at the upper frequency band and the second signal filtered at the lower frequency band, and select one of the signals for output based on estimated noise power of each of the signals. The selector may be adapted to estimate noise power levels of the baseband signal, the first signal filtered at the upper frequency band and the second signal filtered at the lower frequency band, compare the respective noise power levels of the signals, and select the signal with the lowest estimated noise power level. Furthermore, the selector may be adapted to estimate the noise power levels by way of a channel estimation utilizing a Training Sequence Code (TSC).
According to a fourth aspect, a wireless communication device comprising the filter device according to the third aspect is provided.
According to a fifth aspect, a method of suppressing effects of Adjacent-Channel Interference of a received signal in a Frequency-Division-Multiple-Access system by filtering a baseband signal of the received signal is provided. The method comprises filtering of the baseband signal at an upper frequency band and a lower frequency band by means of a complex digital Single-Input-Multiple-Output (SIMO) interference filter, and simultaneously generating a first signal filtered at an upper frequency band and a second signal filtered at a lower frequency band, wherein the first signal (x) is separate from the second signal (y).
Each individual frequency response of the upper and lower frequency band filtering may be asymmetrical with regard to the center frequency of the received signal.
The interference filter may be configured with two pairs of interrelated zeros in the complex frequency domain, wherein normalized frequencies of each pair of the interrelated zeros may be constrained by a mutually dependent constraint.
The method may further comprise selecting one of the baseband signal, the first signal filtered at the upper frequency band and the second signal filtered at the lower frequency band. The selecting may comprise estimating noise power levels of the baseband signal, the first signal filtered at the upper band and the second signal filtered at the lower band, comparing the respective noise power levels of said signals, and selecting the signal with the lowest estimated noise power level.
According to a sixth aspect, a computer program product is provided. The computer program product comprises computer program code means for executing the method according to the fifth aspect, when said computer program code means are run by an electronic device having computer capabilities.
Further embodiments of the present invention are defined in the dependent claims.
Embodiments of the invention may allow for a limitation of the required processing power of a filter. The receiver performance of a receiver having a filter according to embodiments of the invention may thus be improved.
It should be emphasized that the term “comprises/comprising” when used herein is taken to specify the presence of stated features, integers, steps or components but does not preclude the presence or addition of one or more other features, integers, steps, components or groups thereof.
Further objects, features and advantages of the present invention will appear from the following detailed description of embodiments of the invention, reference being made to the accompanying drawings, in which:
As is illustrated in
The mobile stations MS 40, 41, and 42 may be any wireless communication device, such as mobile radio terminals, mobile telephones, cellphones, pagers, communicators, smartphones or the like, herein referred to as mobile stations MS.
As can be seen from
The mobile station MS 40 may also comprise a memory device. Data instructions or software for various functions of the mobile station MS may be stored in this memory device. Furthermore, the mobile station MS 40 may comprise a Central Processing Unit (CPU) for controlling the operation and function of the mobile station MS.
In the following example, communications are established via a radio interface. The spectrum of the radio interface may be subdivided into a plurality of adjacent frequency bands f0-f1, f1-f2, and f2-f3 as shown in
With reference to
In this example, a transmitted signal S which is the communication over the radio channel CH2 between the base station BS 20 and the mobile station MS 40 is disturbed by interfering signals IS1 on the adjacent radio channel CH1 of the base station BS 21. As can be seen from
The filter device 403 may be adapted to perform selective and/or adaptive filtering of the baseband signal s1 of the received signal S in order to suppress effects of Adjacent-Channel Interference of the received signal S.
The filter device 403 may comprise an interference filter 4032 for combined or integrated upper and lower frequency band filtering of the received discrete-time baseband signal s, which is the output from the Rx filter 4031. The interference filter 4032 may be a digital filter. As used herein, digital filters refer to the filtering of sampled-data or discrete-time signals.
The interference filter 4032 may, for example, be a digital finite impulse response (FIR) filter, i.e. a filter with only zeros but no poles in the complex (z) domain, such as a low order digital FIR filter. For simplicity reference will herein be made to a FIR filter. This should not, however, be interpreted restrictively but rather as an example. As used herein, the FIR filter operation may be a computational process carried out either by dedicated hardware or by execution of a sequence of instructions by programmable logic. It may also be a combination of hardware and software, or even a computer program product comprising computer program means for executing the computational process. Thereby, an input sequence of numbers is converted by a transfer function into an output sequence of numbers. Transfer functions refer to the frequency characteristics of the digital FIR filter used. Examples of transfer functions may include low-pass, high-pass, band-pass functions, etc. Digital filter computations include digital addition, digital multiplication of signal values by constants, and the insertion of delay stages.
In order to avoid damaging the desired signal at the frequency spectrum side where no ACI presents, an asymmetrical digital 2nd order FIR filter, whose frequency response is asymmetrical with regard to the zero-frequency of the baseband signal s (or the center-frequency of the received signal S), is designed for suppressing the effects of ACI at the upper frequency band, i.e. ACI effects from the upper channel CH3, see
Where α and β are the normalized frequencies of two respective zeros, a and b are coefficients of the FIR filter and j is the imaginary operator.
The frequency response may require that the normalized frequencies of two respective zeros lie in the range
It has turned out that the zeros of the FIR filter should be exactly on the unit circle to be most effective. Nevertheless, the normalized frequencies α,β of the respective zeros may vary to a certain extent around the frequency boundary between the desired channel CH2 and the upper adjacent channel, CH3. Furthermore, in order to be most efficient the normalized frequencies of the zeros are preferably not identical. One of them may be exactly at the frequency boundary.
According to this embodiment of the invention, a certain constraint is used as a means for improving the computational efficiency of the digital 2nd order FIR filter. This mutually dependent constraint can be described by the following expression:
Where α and β are the normalized frequencies of the respective zeros. Given the frequency response requirement above, n could be set to 3, which yields:
When this constraint is applied to the digital 2nd order FIR filter it may turn into a relatively simple form having only one non-trivial filter coefficients μ.
The following exemplifies the derivation of the filter coefficients when the constraint is applied to the digital 2nd order FIR filter:
Where:
In turn, this yields a transfer function according to the following expression:
f(z)=1+μ(1−j)z−1−jz−2 (4)
Similarly, when the ACI effects comes from the lower adjacent channel CH1, the normalized frequencies of two respective zeros are at the corresponding negative normalized frequencies, i.e. −α and −β. Thus, by producing a conjugate of the digital 2nd order FIR filter expressed in (4), a digital 2nd order FIR filter for suppression of ACI effects at the lower frequency band, i.e. ACI effects from the lower channel CH1, see
g(z)=f*(z)=1+μ(1+j)z−1+jz−2 (5)
The symmetrical nature of the expressions (4) and (5) is such that these two expressions can be advantageously combined or integrated in order to obtain a digital Single-Input-Multiple-Output (SIMO) interference filter 4032. The SIMO interference filter 4032 of this embodiment is capable of simultaneously generating two separate signals, i.e. a first signal x filtered at the upper frequency band and a second signal y filtered at the lower frequency band, wherein the first signal x is separate from the second signal y. Thus, the upper frequency band FIR filter (i.e. expression (4)) and the lower frequency band FIR filter (i.e. expression (5)), can be expressed by:
f(z)=1+μ(1−j)z−1+jz−2
g(z)=1+μ(1+j)z−1+jz−2 (6)
Since
where x(z), y(z) and s(z) are the output signals of the SIMO interference filter 4032 and received baseband signal represented in complex z-domain, respectively, x and y may be expressed in the time domain by the following expression:
x(n)=s(n)+μ(1−j)s(n−1)−js(n−2)
y(n)=s(n)+μ(1+j)s(n−1)+js(n−2) (7)
The relationships between the z-domain and the time domain are described in A. V. Oppenheim and R. W. Shafer, “Discrete-Time Signal Processing”, Prentice Hall, 1989, page 180.
Expressions (7) may be expressed in real and imaginary form by:
xr(n)=sr(n)+μsr(n−1)+μsi(n−1)+si(n−2)
xi(n)=si(n)−μsr(n−1)+μsi(n−1)−sr(n−2)
yr(n)=sr(n)+μsr(n−1)−μsi(n−1)−si(n−2)
yi(n)=si(n)+μsr(n−1)+μsi(n−1)+sr(n−2) (8)
Where r marks the real part of the complex signal, and i marks the imaginary part of the complex signal. After re-grouping the operations these may be expressed by:
xr(n)=(sr(n)+si(n−2))+μ(sr(n−1)+si(n−1))
xi(n)=(si(n)−sr(n−2))−μ(sr(n−1)−si(n−1))
yr(n)=(sr(n)−si(n−2))+μ(sr(n−1)−si(n−1)
yi(n)=(si(n)−sr(n−2))−μ(sr(n−1)−si(n−1)) (9)
The expressions (9) can be depicted in a Signal Flow Graph (SFG). The SFG shown in
In connection with this embodiment of the invention, it should be appreciated that the mutually dependent constraint
in expression (3) specifies the relationship between the normalized frequencies of the two respective zeros. By choosing α appropriately it is possible to derive β. Hence, the four interrelated zeros of the transfer function (6) of the SIMO interference filter 4032, i.e. α and β for the normalized frequencies of the two respective zeros designed for upper band filtering and −α and −β for the normalized frequencies of the two respective zeros designed for lower band filtering, can be found by first defining α. However, SIMO interference filters may have different characteristics when α is chosen differently. Consequently, α is not fixed.
Another embodiment of the present invention is schematically shown in
The filter device 403 of
In this case, the asymmetrical digital 2nd order FIR filters for suppressing the effects of ACI at the upper and lower frequency band can be expressed as:
f(z)=(1−ejα′z−1)(1−ejβ′z−1)
g(z)=(1−e−jα′z−1)(1−e−jβ′z−1) (10)
Where, f(z) is the transfer function configured for the filtering at the upper frequency band, and g(z) is the transfer function configured for the filtering at the lower frequency band, and
α′=α−γG,β′=β−γG
−α′=−α−γG,−β−γG
Where, α′,β′ −α′,−β′ are the normalized frequencies of the two pairs of the zeros after de-rotation.
Also in this embodiment, a certain constraint can be used as a means for improving the computational efficiency of the digital 2nd order FIR filters in expressions (10). The mutually dependent constraint is
if n is chosen to be n=1, this yields
Thus the mutually dependent constraint can be expressed by:
When this constraint is applied to the digital 2nd order FIR filters of expressions (10), they also turn into a relatively simple form having only one non-trivial filter coefficient μ.
The following exemplifies the derivation of the filter coefficients when the constraint is applied to the digital 2nd order FIR filters.
The expressions (10) can be expressed as:
f(z)=1+az−1+bz−2
g(z)=1+āz−1+
Where,
And where,
Thus, a combined or integrated upper and lower frequency band SIMO interference filter 6032 for use in a receiver of the mobile station in the GSM system can be expressed by:
f(z)=1−μ(1+j)z−1+jz−2
g(z)=1+μ(1−j)z−1−jz−2 (13)
Similarly, since
it is possible to express the complex output signals x and y, respectively, in the time domain by the following expressions:
x(n)=s(n)−μ(1+j)s(n−1)+js(n−2)
y(n)=s(n)+μ(1−j)s(n−1)−js(n−2) (14)
In real and imaginary form these may be expressed by:
xr(n)=sr(n)−μsr(n−1)+μsi(n−1)−si(n−2)
xi(n)=si(n)−μsr(n−1)−μsi(n−1)+sr(n−2)
yr(n)=sr(n)+μsr(n−1)+μsi(n−1)+si(n−2)
yi(n)=si(n)−μsr(n−1)+μsi(n−1)−sr(n−2) (15)
Where r marks the real part of the complex signal, and i marks the imaginary part of the complex signal. After re-grouping the operations these may be expressed by:
xr(n)=(sr(n)−si(n−2))−μ(sr(n−1)−si(n−1))
xi(n)=(si(n)+sr(n−2))−μ(sr(n−1)+si(n−1))
yr(n)=(sr(n)+si(n−2))+μ(sr(n−1)+si(n−1))
yi(n)=(si(n)−sr(n−2))−μ(sr(n−1)−si(n−1)) (16)
The expressions (16) may alternatively be depicted in an SFG. The SFG shown in
In the GSM system, the bandwidth BW of the desired signal is normally 271 kHz while the channel spacing CS between two adjacent channels is normally about 200 kHz, see
The normalized frequencies of the zeros, i.e. α and β, should be close to the normalized frequency boundary of
The mutually dependent constraint
specifies the relationship between the normalized frequencies of the two respective zeros. By choosing α appropriately it is also possible to derive β. Thus, the four interrelated normalized frequencies of the zeros of the SIMO interference filter 6032, i.e. α and β for upper frequency band and −α and −β for the lower frequency band, can be found by first defining α. For examples, one can choose
However, α does not need to be fixed and could preferably be tested and evaluated thoroughly in each specific case.
With reference to
In this embodiment, the filter device 403 differs from the filter device previously described with reference to
by means of a de-rotator 9034. Thus, the de-rotator 9034 in this embodiment may be adapted to de-rotate the received base band signal s2 by
when the mobile station MS 40 is intended to demodulate an 8-PSK modulated signal as used in EDGE system.
Once again in this embodiment, a certain constraint can be used as a means for improving the computational efficiency of the digital 2nd order FIR filters in expression (10). Due to the de-rotation of
let
where α′=α−γE, β′=β−γE. If n=2, this yields α′+β′=π. Thus the mutually dependent constraint can be expressed by:
When this constraint is applied to the digital 2nd order FIR filters, they each turn into a relatively simple form having only one non-trivial filter coefficient η and ρη, respectively.
The following exemplifies the derivation of the filter coefficients when the constraint is applied to the digital 2nd order FIR filters:
Thus, a SIMO combined/integrated upper and lower frequency band interference filter 9032 for use in a receiver in the EDGE system can be expressed by:
f(z)=1−jηz−1−z−2
g(z)=1+ηρ(1−j)z−1−jz−2 (19)
Since
it is possible to express the complex output signals x and y, respectively, in the time domain by the following expression:
x(n)=s(n)−jηs(n−1)−s(n−2)
y(n)=s(n)+ηρ(1−j)s(n−1)−js(n−2) (20)
In real and imaginary form these may be expressed by:
xr(n)=sr(n)+ηsi(n−1)−sr(n−2)
xi(n)=si(n)−ηsr(n−1)−si(n−2)
yr(n)=sr(n)+ρ(ηsr(n−1)+ηsi(n−1))+si(n−2)
yi(n)=si(n)−ρ(ηsr(n−1)−ηsi(n−1))−sr(n−2) (21)
Where r marks the real part of the complex signal, and i marks the imaginary part of the complex signal. After re-grouping the operations these may be expressed by:
xr(n)=(sr(n)−sr(n−2))+ηsr(n−1)
xi(n)=(si(n)−si(n−2))−ηsi(n−1)
yr(n)=(sr(n)+si(n−2))+ρ(ηsi(n−1)+ηsr(n−1))
yi(n)=(si(n)−sr(n−2))+ρ(ηsi(n−1)−ηsr(n−1)) (22)
The expressions (22) can be depicted in a SFG. The SFG shown in
Again, the mutually dependent constraint
specifies the relationship between the normalized frequencies of the two respective zeros. When the SIMO interference filter 9032 is intended for use in a receiver in the EDGE system it may be advantageous to choose, for example,
As is mentioned above for all embodiments of the invention, the significant operational sharing of the SIMO interference filter 4032, 6032 and 9032 is an advantage, because it requires few digital multiplications and additions per complex sample. Thus, it makes it possible to suppress potential ACI effects from adjacent channels CH1 and CH3 without excessive computational complexity and associated power consumption. In conclusion, it is possible to provide a SIMO interference filter for suppressing ACI effects that is computationally efficient and at the same time not damaging the desired signal.
The filter device 403 may further comprise a selector 4033. In the embodiment with reference to
In short, when there is no ACI present the selector 4033 may select the received complex baseband signal s without unnecessarily damaging the received baseband signal. When the received baseband signal is disturbed by the upper channel CH3, the upper band filtered complex signal x is subsequently selected by the selector 4033. However, when the received baseband signal is disturbed by the lower channel CH1, the lower band filtered complex signal y is selected by the selector to be input to the equalizer. In other words, the selector 4033 may select any of the signals s, x, or y, wherein s has not been suppressed, x and y have been suppressed, as an output from the filter device 403.
Since the selection by the selector 4033 is not only based on the received complex base band signal s but also on the filtering results x, y from the combined/integrated asymmetrical upper and lower frequency band filtering in the SIMO interference filter 4032, 6032 or 9032, it is possible to avoid unnecessarily damaging or impairing the desired baseband signal on the frequency side where no ACI is present or where ACI is negligible. Since the accuracy of the noise estimation relies on the accuracy of the channel estimation, the channel estimation according to embodiments of the invention is made after the ACI suppression, the impact of ACI is minimized. Compared to the second ACI suppressing approach described in the Description of Related Art, wherein the channel/noise estimation is made before the ACI suppression, the accuracy of channel/noise estimation in the embodiments of the invention is improved. This in turn leads to an easier adaptive decision for the filter device 403 in selecting the signal for further processing. Thus, the receiver performance in both sensitivity channel and ACI interference channel may be improved.
The method shown in
The present invention may be embedded in a computer program product, which enables implementation of the method and functions described above. The invention may be carried out when the computer program product is loaded and run in an apparatus having computer capabilities, such as a processor. Computer program, software program, program product, or software, in the present context mean any expression, in any programming language, code or notation, of a set of instructions intended to cause a system having a processing capability to perform a particular function directly or after conversion to another language, code or notation. Furthermore, the computer program product may be stored on a computer readable medium.
It is an advantage with the present invention that it provides an efficient utilization of the required processing power of a filter. Furthermore, it is an advantage with the present invention that it may provide efficient ACI suppression without excessive computational complexity and damaging the desired signals. Hence, it is an advantage that embodiments of the invention enable improvement of the operation performance of a mobile station, such as e.g. a mobile telephone. Furthermore, due to improved accuracy of the noise estimation according to embodiments of the invention, it has been shown in simulations that these embodiments of the invention may provide improved operation performance of a mobile station for radio channel profiles of typical urban and hilly terrain.
Although the present invention has been described with reference to specific embodiments, it is not intended to be limited to the specific form set forth herein. Other embodiments than the above described are equally possible within the scope of the invention.
Number | Date | Country | Kind |
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05024626 | Nov 2005 | EP | regional |
This application claims priority under 35 U.S.C. §119 to European Patent Application No. 05024626.3 filed Nov. 11, 2005, which is hereby incorporated herein by reference in its entirety. This application also claims the benefit of U.S. Provisional Application No. 60/737,408, filed Nov. 17, 2005, which is hereby incorporated herein by reference in its entirety.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/EP2006/068295 | 11/9/2006 | WO | 00 | 10/1/2008 |
Publishing Document | Publishing Date | Country | Kind |
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WO2007/054538 | 5/18/2007 | WO | A |
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