44 research outputs found
A Comparative Study Of Spectrum Sensing Methods For Cognitive Radio Systems
With the increase of portable devices utilization and ever-growing demand for greater data rates in wireless transmission, an increasing demand for spectrum channels was observed since last decade. Conventionally, licensed spectrum channels are assigned for comparatively long time spans to the license holders who may not over time continuously use these channels, which creates an under-utilized spectrum. The inefficient utilization of inadequate wireless spectrum resources has motivated researchers to look for advanced and innovative technologies that enable an efficient use of the spectrum resources in a smart and efficient manner.
The notion of Cognitive Radio technology was proposed to address the problem of spectrum inefficiency by using underutilized frequency bands in an opportunistic method. A cognitive radio system (CRS) is aware of its operational and geographical surroundings and is capable of dynamically and independently adjust its functioning. Thus, CRS functionality has to be addressed with smart sensing and intelligent decision making techniques. Therefore, spectrum sensing is one of the most essential CRS components. The few sensing techniques that have been proposed are complicated and come with the price of false detection under heavy noise and jamming scenarios. Other techniques that ensure better detection performance are very sophisticated and costly in terms of both processing and hardware.
The objective of the thesis is to study and understand the three of the most basic spectrum sensing techniques i.e. energy detection, correlation based sensing, and matched filter sensing. Simulation platforms were developed for each of the three methods using GNU radio and python interpreted language. The simulated performances of the three methods have been analyzed through several test matrices and also were compared to observe and understand the corresponding strengths and weaknesses. These simulation results provide the understanding and base for the hardware implementation of spectrum sensing techniques and work towards a combined sensing approach with improved sensing performance with less complexity
A Low-memory Spectral-correlation Analyzer For Digital Qam-srrc Waveforms
Cyclostationary signal processing (CSP) provides the ability to estimate received waveformsâ statistical features blindly. Quadrature amplitude modulated (QAM) waveforms, when filtered by the square-root-raised cosine (SRRC) pulse shape function, have cyclic features that CSP can exploit to detect waveform parameters such as symbol rate (SR) and center frequency (CF). The estimation of these SR-CF pairs enables a cognitive radio (CR) to perform spectrum sensing techniques such as spectrum sharing and interference mitigation. Here, we investigate a field-programmable gate array (FPGA) application of a blind symbol rate-center frequency estimator. First, this study provides a background on the theory behind the cyclic spectral density function (CSD), spectral correlation analyzers (SCA), and spectrum sensing. Following this is a discussion on the motivation for CubeSat spectrum sensing. An SCA implementation for low-memory devices, such as FPGA-based CubeSat, is then describes. The paper concludes by reporting the performance characteristics of the newly developed streaming-based SCA
Detection of multivariate cyclostationarity
This paper derives an asymptotic generalized likelihood ratio test (GLRT) and an asymptotic locally most powerful invariant test (LMPIT) for two hypothesis testing problems: 1) Is a vector-valued random process cyclostationary (CS) or is it wide-sense stationary (WSS)? 2) Is a vector-valued random process CS or is it nonstationary? Our approach uses the relationship between a scalar-valued CS time series and a vector-valued WSS time series for which the knowledge of the cycle period is required. This relationship allows us to formulate the problem as a test for the covariance structure of the observations. The covariance matrix of the observations has a block-Toeplitz structure for CS and WSS processes. By considering the asymptotic case where the covariance matrix becomes block-circulant we are able to derive its maximum likelihood (ML) estimate and thus an asymptotic GLRT. Moreover, using Wijsman's theorem, we also obtain an asymptotic LMPIT. These detectors may be expressed in terms of the Loe`ve spectrum, the cyclic spectrum, and the power spectral density, establishing how to fuse the information in these spectra for an asymptotic GLRT and LMPIT. This goes beyond the state-of-the-art, where it is common practice to build detectors of cyclostationarity from ad-hoc functions of these spectra.The work of P. Schreier was supported by the Alfried Krupp von Bohlen und Halbach Foundation, under its program âReturn of German scientists from abroadâ. The work of I. SantamarĂa and J. VĂa was supported by the Spanish Government, Ministerio de Ciencia e InnovaciĂłn (MICINN), under project RACHEL (TEC2013-47141-C4-3-R). The work of L. Scharf was supported by the Airforce Office of Scientific Research under contract FA9550-10-1-0241
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Implementation of spectrum sensing techniques for cognitive radio systems
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.This work presents a method for real-time detection of secondary users at the cognitive wireless technologies base stations. Cognitive radios may hide themselves in between the primary users to avoid being charged for spectrum usage. To deal with such scenarios, a cyclostationary Fast Fourier Transform accumulation method (FAM) has been used to develop a new strategy for recognising channel users under perfect and different noise environment conditions. Channel users are tracked according to the changes in their signal parameters, such as modulation techniques. MATLABÂź Simulation tool was used to run various modulation signals on channels, and the obtained spectral correlation density function shows successful recognition between secondary and primary signals. We are unaware of previous efforts to use the FAM characteristics or other detection methods to make a distinction between channel users as presented in this thesis. A novel combination of both cognitive radio technology and ultra wideband technology is interdicted in this thesis, looking for an efficient and reliable spectrum sensing method to detect the presence of primary transmitters, and a number of spectrum-sensing techniques implemented in ultra wideband and cognitive radio component (UWB-CR) under different AWGN and fading settings environments. The sensing performance of different detectors is compared in conditions of probability of detection and miss detection curves. Simulation results show that the selection of detectors rely on the different fading scenarios, detector requirements and on a priori knowledge. Furthermore, result showed that the matched filter detection method is suitable for detecting signals through UWB-CR system under various fading channels. A general observation is that the matched filter detector outperforms the other detectors in all scenarios by an average of SNR=-20 dB in the level of probability of detection (Pd) , and the energy detector slightly outperforms the cyclostationary detector, in the level Pd at SNR=-20 dB. Furthermore, the thesis adapts novel detection models of cooperative and cluster cooperative wideband spectrum sensing in cognitive radio networks. In the proposed schemes, wavelet-based multi-resolution spectrum sensing and a proposed approach scheme are utilized for improving sensing performance of both models. On the other hand, cluster based cooperative spectrum sensing with soft combination Equal Gain Combination (EGC) scheme is proposed. The proposed detection models could achieve improvement of transmitter signal detection in terms of higher probability of detection and lower probability of false alarm. In the cooperative wideband spectrum sensing model, using traditional fusion rule, existing worst performance of false alarms by measurement is 78% of the sensing bands at an average SNR=5 dB; this compares with the proposed model, which is by measurement 19% false alarms of scanning spectrum at the same SNR for cluster cooperative wideband spectrum sensing. The proposed combining methods shows improvements of results with a high probability of detection (Pd) and low probability of false alarm (Pf) at an average SNR=-16 dB compared with other traditional fusion methods; this is illustrated through numerical results
A Real Time Radio Spectrum Scanning Technique Based On The Bayesian Model And Its Comparison With The Frequentist Technique
The proliferation of mobile devices led to an exponential demand for wireless radio spectrum resources. The current fixed spectrum assignment has caused some portions of the radio spectrum to be heavily used whereas others to be scarcely used. This has resulted in underutilization of spectrum resources, and, hence has demanded the need for solutions to address the spectrum scarcity problem. Cognitive radio was proposed as one of the solutions. One of the techniques involved in cognitive radio is the dynamic spectrum access technique. This technique requires the identification of free channels in order to allow secondary users to exploit the spectrum resources. The process of identification of free channels is known as radio spectrum scanning, which is performed by sensing a particular channel in the radio spectrum to determine the presence or absence of a signal. In most of existing studies, the frequentist technique using energy detection with fixed threshold was used to scan the radio spectrum. However, this method comes with a major drawbacks. First, energy detection is unable to distinguish between signals and noise and suffer for high false detection rates. Second, energy detection has high false alarm probability. Finally, frequentist techniques are subject to uncertainty and do not provide real time monitoring/sensing. Therefore, the goal of this thesis is to develop a more efficient scanning technique that deals with uncertainty and scans the radio spectrum in real time and determines its occupancy levels.
An enhanced spectrum scanning approach is developed using an efficient spectrum sensing technique: an uncertainty handling Bayesian model along with a Bayesian inferential approach. Two Bayesian models are developed: 1) a simplified model, and 2)
an improved model to incorporate the Bayesian inferential approach to estimate the
spectrum occupancy level.
The performance evaluation of the proposed technique has been done using simulations as well as real experiments. For this purpose, two metrics were used:
probability of detection and probability of false alarm. Furthermore, the efficiency of the
proposed technique was compared to the efficiency of the frequentist technique, which uses only a spectrum sensing technique to identify the occupancy of the spectrum channels. As expected significant improvements in the spectrum occupancy measurements have been observed with the proposed Bayesian inference method
Enhanced Spectrum Sensing for Cognitive Cellular Systems
This dissertation aims at improving spectrum sensing algorithms in order to effectively apply
them to cellular systems. In wireless communications, cellular systems occupy a significant
part of the spectrum. The spectrum usage for cellular systems are rapidly expanding due to the
increasing demand for wireless services in our society. This results in radio frequency spectrum
scarcity. Cellular systems can effectively handle this issue through cognitive mechanisms for
spectrum utilization. Spectrum sensing plays the first stage of cognitive cycles for the adaptation
to radio environments.
This dissertation focuses on maximizing the reliability of spectrum sensing to satisfy
regulation requirements with respect to high spectrum sensing performance and an acceptable
error rate. To overcome these challenges, characteristics of noise and manmade signals are
exploited for spectrum sensing. Moreover, this dissertation considers system constraints, the
compatibility with the current and the trends of future generations. Newly proposed and existing
algorithms were evaluated in simulations in the context of cellular systems. Based on a prototype
of cognitive cellular systems (CCSs), the proposed algorithms were assessed in realistic scenarios.
These algorithms can be applied to CCSs for the awareness of desired signals in licensed and
unlicensed bands.
For orthogonal frequency-division multiplexing (OFDM) signals, this dissertation exploits
the characteristics of pilot patterns and preambles for new algorithms. The new algorithms
outperform the existing ones, which also utilize pilot patterns. Additionally, the new algorithms
can work with short observation durations, which is not possible with the existing algorithms. The
Digital Video Broadcasting - Terrestrial (DVB-T) standard is taken as an example application for
the algorithms. The algorithms can also be developed for filter bank multicarrier (FBMC) signals,
which are a potential candidate for multiplexing techniques in the next cellular generations. The
experimental results give insights for the reliability of the algorithms, taking system constraints
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into account. Another new sensing algorithm, based on a preamble, is proposed for the DVBT2
standard, which is the second generation of of DVB system. DVB-T2 systems have been
deployed in worldwide regions. This algorithm can detect DVB-T2 signals in a very short
observation interval, which is helpful for the in-band sensing mode, to protect primary users (in
nearly real-time) from the secondary transmission.
An enhanced spectrum sensing algorithm based on cyclostationary signatures is proposed
to detect desired signals in very low signal-to-noise ratios (SNRs). This algorithm can be
developed to detect the single-carrier frequency division multiple access (SC-FDMA) signal,
which is adopted for the uplink of long-term evolution (LTE) systems. This detector substantially
outperforms the existing detection algorithms with the marginal complexity of some scalar
multiplications. The test statistics are explicitly formulated in mathematical formulas, which
were not presented in the previous work. The formulas and simulation results provide a useful
strategy for cyclostationarity-based detection with different modulation types.
For multiband spectrum sensing, an effective scheme is proposed not only to detect but
also to classify LTE signals in multiple channels in a wide frequency range. To the best of our
knowledge, no scheme had previously been described to perform the sensing tasks. The scheme is
reliable and flexible for implementation, and there is almost no performance degradation caused
by the scheme compared to single-channel spectrum sensing. The multiband sensing scheme was experimentally assessed in scenarios where the existing infrastructures are interrupted to
provide mobile communications.
The proposed algorithms and scheme facilitate cognitive capabilities to be applied to real
cellular communications. This enables the significantly improved spectrum utilization of CCSs