【摘 要】
:
Spectrum sensing is an essential ability to detect spectral holes in cognitive radio (CR) networks.The critical challenge to spectrum sensing in the wideband frequency range is how to sense quickly and accurately.Compressive sensing(CS) theory can be empl
【机 构】
:
College of Electronic and Information Engineering, Nanjing University of Aeronautics and Astronautic
论文部分内容阅读
Spectrum sensing is an essential ability to detect spectral holes in cognitive radio (CR) networks.The critical challenge to spectrum sensing in the wideband frequency range is how to sense quickly and accurately.Compressive sensing(CS) theory can be employed to detect signals from a small set of non-adaptive,linear measurements without fully recovering the signal.However,the existing compressive detectors can only detect some known deterministic signals and it is not suitable for the time-varying amplitude signal,such as spectrum sensing signals in CR networks.First,a model of signal detect is proposed by utilizing compressive sampling without signal recovery,and then the generalized likelihood ratio test (GLRT) detection algorithm of the time-varying amplitude signal is derived in detail.Finally,the theoretical detection performance bound and the computation complexity are analyzed.The comparison between the theory and simulation results of signal detection performance over Rayleigh and Rician channel demonstrates the validity of the performance bound.Compared with the reconstructed spectrum sensing detection algorithm,the proposed algorithm greatly reduces the data volume and algorithm complexity for the signal with random amplitudes.
其他文献
Wireless ultra-dense network (UDN) is one of the important technologies to solve the burst of throughput demand in the forthcoming fifth generation (5G) cellular networks.Reusing spectrum resource for the backhaul of small base stations (SBSs) is a hotspo
Collaborative filtering (CF) is one of the most widely used Algorithm in recommender systems,which help users obtain the information they may like.We proposed a latent Dirichlet allocation (LDA) model combining time and rating (TR-LDA) for CF.We use mathe
With the intensive deployment of users and the drastic increase of traffic load,a millimeter wave (mmWave) backhaul network was widely investigated.A typical mmWave backhaul network consists of the macro base station (MBS) and the small base stations (SBS
To help the people choose a proper medical treatment organizer,this paper proposes an opposition raiding wolf pack optimization algorithm using random search strategy (ORRSS-WPOA) for an adaptive shrinking region.Firstly,via the oppositional raiding metho
A novel deep reinforcement learning-based steering control method of autonomous vehicles is proposed.A distortionless compressing method of action space is presented.Convolutional neural networks (CNNs) are designed to serve as an action policy.Driver exp
This study proposes a hybrid model of speech recognition parallel algorithm based on hidden Markov model (HMM) and artificial neural network (ANN).First,the algorithm uses HMM for time-series modeling of speech signals and calculates the voice to the HMM
In order to improve the efficiency of tasks processing and reduce the energy consumption of new energy vehicle (NEV),an adaptive dual task offloading decision-making scheme for Internet of vehicles is proposed based on information-assisted service of road
Lattice-based hierarchical identity-based broadcast encryption (H-IBBE) schemes have broad application prospects in the quantum era,because it reduces the burden of private key generator (PKG) and is suitable for oneto-many communication.However,previous
In orthogonal frequency division multiplexing (OFDM)/offset quadrature amplitude modulation (OQAM) systems,the relationship between the input of the synthesis filter bank (SFB) and the output of the analysis filter bank (AFB) is much more complicated than
The prediction of colorectal cancer (CRC) survivability has always been a challenging research issue.Considering the importance of predicting CRC patients\' survival rates,we compared the performance of three data mining methods:decision trees (DTs),art