Embodiments described herein reside in the field of cognitive radio.
In some cognitive radio systems the secondary users need to sense the availability of the spectrum before it can access the spectrum. In such a case, the accuracy of the results of spectrum sensing is critical for both primary and secondary systems. Multi-antenna techniques have been discussed in the literature to enhance the performance (accuracy) of spectrum sensing. However, in many arrangements already set forth in the field, all antennas at the secondary receiver are used for spectrum sensing purposes, indicating that all RF chains at the secondary receiver have to be used.
According to one embodiment, antenna selection is employed, due to its low implementation complexity. In a particular example, a spectrum sensing scheme is used, where one or a subset of antennas are used to sense the spectrum for a period of time, followed by another spectrum sensing performed by another one or subset of antennas over a subsequent period of time.
According to one embodiment, a method is provided by which sensing is carried out for a period of time, whereby this time period is divided into smaller periods, during each of which sensing is performed using an antenna or subset of antennas, which may vary over the course of the total sensing period.
The said one or a subset of antennas may be different in different time slots.
A weighting factor may be used to post process the received samples from different antennas.
The one or a subset of antennas can be selected through an antenna selection algorithm.
Variable weighting factors for each sub-slot may be used.
The sensing sub-slots may be of different length.
Cognitive radio (CR) facilitates efficient use of the radio spectrum. In cognitive radio systems, unlicensed users (secondary users) can use spectrum that has been pre-allocated to a licensed user (primary user) when such spectrum is not used by the primary user. The reader will appreciate that more than one primary user can be licensed, each to a different portion of the useable radio spectrum.
In some cognitive radio systems, when a secondary user attempts to access spectrum resources which have been pre-assigned to a primary users, the secondary user needs first to sense the spectrum and then to access the spectrum according to the sensing results. Ideally, to guarantee the priority of transmission by the primary user, as well as to maintain the transmission of the secondary link, the secondary user needs to have an accurate and reliable sensing capability in a limited sensing period in order to ensure safe and efficient operation. In particular, a higher detection probability is desired for a higher protection level to a primary system while a lower false alarm probability offers a better opportunistic access to secondary users.
Most approaches to multiple-antenna spectrum sensing have focused on parallel sensing which requires simultaneous use of multiple RF chains. This mandates high complexity and energy consumption.
An embodiment as set forth herein uses antenna selection to improve the performance of spectrum sensing. In particular, by dividing the total sensing period into several sub-slots, and by using a subset of antennas (a subset containing one or more antennas) to perform spectrum sensing within each slot sequentially, a substantial sensing gain can be obtained compared to using a single antenna for spectrum sensing throughput the sensing period. Meanwhile hardware complexity/cost and corresponding energy consumption is reduced, compared to parallel multiple-antenna sensing which utilize multiple RF chains simultaneously.
Certain implementations of this scheme provide enhanced sensing accuracy, while at the same time keeping a low implementation complexity as only one or a subset of RF chains are used in a given time period.
A suitable communications device 10 is illustrated in
The controller 70 is illustrated in further detail in
Performance of the controller 70, under the instruction of the communications controller 128 application, will now be described.
As shown in
Considering the availability of one RF chain, it is only possible for one antenna to be active and to perform spectrum sensing in each sub-slot. However, sensing performance gain is still expected through exploiting the spatial diversity of these antennas with different channel gains.
Energy detection is used by a secondary user in each sensing sub-slot. The test statistic for energy detection in the ith sub-slot is given as:
where the number of samples in each sub-slot is Ni=τifs and f′s is the sampling frequency.
For the ith sub-slot, the observations sensed by a secondary user can be associated with one of two hypotheses. Hypothesis H1 is that the primary user is active and Hypothesis H0 is that the primary user is inactive. Thus:
H1:yi(n)=hisi(n)+ui(n) (2)
H0:yi(n)=ui(n) (3)
where:
si(n) is the primary user's signal with power level
and
hi is the channel gain of the ith sub-slot.
hi is assumed to be constant during the ith sensing sub-slot. However, it could be different from sub-slot to sub-slot, taking account of the different antennas which may be applied. The noise ui(n) is assumed to be a complex Gaussian Independent and Identically Distributed (IID) random signal with zero mean and variance σu2.
si(n) and ui(n) are assumed to be independent, and both σs2 and σu2 can be assumed to be a priori information in some cases.
The received signal to noise ratio (SNR) of the PL) measured at the SU during the ith sub-slot is denoted as
Corresponding detection and false alarm probabilities Pd(i) and Pfa(i) respectively are given by:
P↓fa↑((i))=P(T↓i(y)>ε↓i|H↓0)=Q((ε↓i/σ75 u↑2)−1)√{square root over ((Nii))}) (4)
P↓d↑((i))=P(T↓i(y)>ε↓i|H↓1)=Q((ε↓i/σ75 u↑2)−γ↓i−1)√{square root over ((N↓i/(2γ↓i+1)))}) (5)
where εi is the detection threshold for the ith sub-slot.
is Gaussian tail probability.
The sensing decision is made by the method of data fusion where the observations from all sub-slots are processed jointly. The test statistics are given as:
where gi is the weighting factor of the ith sub-slot. For example, when the channel gain hi is unknown,
is chosen for a balanced/same weighting. When sensing slot are divided evenly
the sensing performance is presented as:
The detection threshold ε of a target detection probability Pd
with sample numbers of N=NiM
The primary system is claimed to be detected when T(y)>ε in the case of Hi. However it can be a false alarm if T(y)>ε in H0.
In the case of known channel gain hi, the weighting factor gi can be optimised in the low SNR regime as follows:
Thus, the corresponding sensing performance in this case is given as:
Considering the application of antenna selection in each sensing slot, each sub-slot τi may experience a different channel gain (i.e. different γi), and therefore different average channel gains occur in different sensing slots τ. This can lead to change of the detection threshold from one sensing slot to another for a target sensing performance.
In the case when different weighting factors are applied in the test statistics T(y), these thresholds can be calculated from the statistic distribution of T(y) using the Central Limit Theorem and the inverse cumulative distribution function.
As shown in
In addition, the performance gain will saturate when a certain number of antennas is reached. As expected, when correlated antennas are introduced, the performance will degrade as shown in
In a For loop, defined by the number of sensing slots, steps are carried of for each sensing slot. In step S1-4, a sensing operation is carried out. Then, in steps S1-6 and S1-8 respectively, probabilities are determined as to whether the primary user is active, and the uncertainty of the first probability determination, i.e. whether the activity report represented by the first probability is wrong.
These measures, for each sensing slot, are then taken forward to a combining phase, in a first step of which, step S1-10, the controller determines weights to be applied to each of the sensing measurements. The sensing measurements are then combined, in accordance with the weights, in step S1-12, in accordance with the principle of data fusion. On the basis of the fused data, antenna selection can then be carried out for data detection.
While certain embodiments have been described, these embodiments have been presented by way of example only, and are not intended to limit the scope of the inventions. Indeed, the novel methods and systems described herein may be embodied in a variety of other forms; furthermore, various omissions, substitutions and changes in the form of the methods and systems described herein may be made without departing from the spirit of the inventions. The accompanying claims and their equivalents are intended to cover such forms or modifications as would fall within the scope and spirit of the inventions.
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/GB2011/001578 | 11/9/2011 | WO | 00 | 8/13/2014 |
Publishing Document | Publishing Date | Country | Kind |
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WO2013/068705 | 5/16/2013 | WO | A |
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