The disclosure relates to wireless communication systems, and more particularly, to detecting and suppressing narrow band interference (NBI) in Ultra-Wideband (UWB) systems.
The Ultra-Wideband (UWB) technology can be used in many systems including high data-rate, short-range wireless personal network (WPAN) as well as highly accurate localization systems. There are three basic technologies: Multi-band orthogonal frequency division multiplexing (MB-OFDM) based, impulse radio based and direct spread spectrum sequence (DSSS). There are published international standards for communication systems based on UWB technologies which include ECMA-368, IEEE 802.15.4a etc.
A UWB system occupies a large bandwidth (>500 MHz) and therefore the probability of the existence of an in-band narrow-band interference is high. In addition, the signal power of the NBI is typically much higher than the UWB signal power. Therefore NBI causes significant performance degradation of the UWB system.
Conversely, a UWB system also becomes the interference source to narrow band systems. In many countries and regions, regulations require that UWB systems must be able to detect the existence of narrow band systems and avoid transmission on the frequencies occupied by the narrow band systems.
To guarantee the performance of UWB systems under NBI, it is important for a UWB transceiver to remove or reduce the power level of the NBI. To be able to detect the presence of NBI and estimate its frequency accurately is important in order to design a UWB transceiver with NBI cancellation/rejection capability.
As a majority of the UWB systems are projected to be used in applications where nodes are mobile, low cost and battery powered, it is essential that NBI detection/cancellation can be implemented in low complexity, low power hardware.
Exemplary methods and program products are disclosed to accurately estimate the center frequency of a narrow-band interference (NBI). Such exemplary methods and program products use a multi-stage autocorrelation-function (ACF) to estimate an NBI frequency. The exemplary method allows an accurate estimation of the center frequency of NBI in a UWB system. A narrow band interference (NBI) estimator based on such a method allows a low complexity hardware implementation.
An exemplary multi-stage narrow band interference frequency detector estimates the frequency in multiple stages. Each stage performs ACF operation on the received signals. The first stage gives an initial estimation and the following stages refine the estimation. The results of all stages are combined to produce the final estimation.
Various exemplary methods, receivers and apparatus are disclosed to improve the accuracy by combining various exemplary receivers and adaptive filters with the aforementioned exemplary narrow-band interference (NBI) estimator.
At the presence of narrow-band interference (NBI), the discrete received signal R(n) 401 is the sum of the UWB signal S(n) and the interference signal I(n). R(n)=S(n)+I(n).
The 1st stage (including a first ACF unit 210) produces an initial frequency estimate. Each following stage estimates the residue frequency with respect to the previous estimate. The output is a weighted combining of the estimation of all stages. The mathematical expression of the estimator output is
where S is the total number of stages, {circumflex over (f)}i,g is the gth stage estimate and βg is a combining weight of the gth stage. β1 is always set to 1, βg are values in [0,1] for g>1 and generally βg=1.
The estimated frequency of the first stage (e.g., the output 235 represented by {circumflex over (f)}i,1 based on an angular-function 233) is given as
and the frequency estimate of the gth stage (e.g., the output 236 represented by {circumflex over (f)}i,g based on an angular function 234) where g>1 is given as;
where
is the angular function that returns the angle of a complex number; ACF(m;M,K) is the autocorrelation function (ACF) defined as
where R(m+l) is the discrete received signal R at time instant m+l, m being the index of the first sample in the first segment, and l being an offset index; ( )* denotes the conjugation operator; K is referred as “lag”; and M is the “summation window size” of the ACF. Likewise, ACF(m;M,Kg) is an autocorrelation function based on parameters m, M and Kg (the “lag” of stage g).
In an exemplary embodiment, a baseband signal can be sampled at, e.g., Nyquist frequency (which is generally true for a UWB transceiver), therefore the sampling interval of the ADC of the UWB receiver is T=1/Bu. An in-band NBI center frequency can be any value in the range [−Bu/2, Bu/2]. In order to detect NBI of any frequency in [−Bu/2, Bu/2], the first stage ACF lag must be 1 sample. The lag KS of the final stage (Kg, where g=S) shall satisfy max(Bi)<1/KST. max(Bi) indicates the maximum bandwidth of the detectable NBI. Also the lag Kg of stage g needs to increase with g.
A detailed description of an exemplary embodiment of a 2-stage NBI frequency detector will be provided with reference to the detector 200 illustrated in
The 2nd ACF unit 220 performs a recursive implementation of ACF(m;M,K2).
The ACF stages shown in
The angle of the 1st stage ACF output 219 is {circumflex over (f)}i,1 235. The 2nd stage ACF output 229 is rotated by −j2πT{circumflex over (f)}i,1, (See, e.g., a complex exponential 232 driving a complex multiplier 250.) The angle of the rotated output is the estimated residual phase rotation and the residual frequency estimate is {circumflex over (f)}i,2 236 as expressed in Equation (3).
The estimated frequency {circumflex over (f)}i 202 is the weighed combining of both stages {circumflex over (f)}i={circumflex over (f)}i,1+β2·{circumflex over (f)}i,2. For an exemplary two-stage embodiment shown in
A Systems Analysis of an Exemplary Two-Stage NBI Detector in WiMedia MB-OFDM UWB System
Referring to the exemplary embodiment of an NBI frequency detector 200 as shown in
As used here, a “computer readable medium” can be any readable medium for use by or in connection with the instruction execution system, apparatus, or device. The computer readable medium can be based on a system, apparatus, device, or a removable storage device; and can include an electrical connection having one or more wires, a portable computer diskette, a random access memory (RAM), a read only memory (ROM), an erasable programmable read only memory (EPROM or Flash memory), an optical fiber, and a portable compact disc read only memory (CDROM).
As shown in
The autocorrelation (e.g., an output 219 based on a first ACF unit 210) of the 1st stage, amenable to computational logic for signal processing, can be expressed as
the composite noise term. Since the coherent time of NB signal Ti>>T, b*[m]b[m+1]≈|b[m]|2. The NBI frequency estimation (e.g., the output 235 represented by {circumflex over (f)}i,1 based on an angular function 233) at the first stage is thus given by
In the 2nd stage, let K2=10 for example. Taking an example of 1/T=528 MHz, we have Bi,max=52.8 MHz, which holds for most existing narrowband systems. The 2nd stage ACF output (e.g., an output 229 based on a 2nd ACF unit 220), amenable to computational logic for signal processing, can be expressed as
Again, vi,k2 is the composite noise term and the NB signal is still coherent with lag of K2 and therefore b*[m]b[m+K2]≈|b[m]|2.
Rotating (e.g., a complex exponential 232 driving a complex multiplier 250) the 2nd stage ACF output by exp(−j2πK2T{circumflex over (f)}i,1), the phase of the rotated vector is 2πK2T(fi−{circumflex over (f)}i,1). The corresponding estimation (e.g., the output 236 represented by {circumflex over (f)}i,g based on an angular function 234) on the residue {circumflex over (f)}i,2=fi−{circumflex over (f)}i,1 is thus given by
The frequency estimate 202 of the two-stage NBI detector is given as {circumflex over (f)}i={circumflex over (f)}i,1+β2·{circumflex over (f)}i,2. If we let β2=1 (as represented by β2 231), the estimated frequency 202 becomes {circumflex over (f)}i={circumflex over (f)}i,1+{circumflex over (f)}i,2.
Systems Embodiments, Results and Effects of Frequency Estimation for a WiMedia's MB-OFDM UWB System
Table 1 and
The exemplary NBI detection method can also be used to facilitate the implementation of Detect And Avoid (DAA) in a UWB system. In a DAA enabled systems, UWB nodes need to detect the presence of the narrow band signals and must avoid transmitting in the same frequency as the narrow band signals. For example, in an MB-OFDM UWB system with NBI detection capability, once a node detects the NBI and its frequency, it makes sure the corresponding tones are nullified in its own transmitted signal. It can also send this NBI frequency information to other UWB devices in the system so other nodes also nullify the tones. Such a further exemplary NBI detection method is also encompassed by the present disclosure.
The various exemplary methods can reliably estimate the frequency of narrow band interference accurately with high confidence, especially at high interference to noise ratio.
The various exemplary methods can operate in the time domain and therefore can respond faster to NBI than known methods that require operations in the frequency domain.
The various exemplary methods can reduce the effect of narrow-band interference on the performance of a UWB system.
The various exemplary methods can facilitate the detection and avoidance (DAA) implementation in UWB systems.
The various exemplary methods can be implemented in hardware with low complexity, resulting in low energy consumption.
Although the disclosure has been described by way of examples of exemplary embodiments, it is to be understood that various other adaptations and modifications can be made within the spirit and scope of the invention. Therefore, it is the object of the appended claims to cover all such variations and modifications as come within the true spirit and scope of the invention.
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