xinghuanlai Associate Professor

Supervisor of Doctorate Candidates

Supervisor of Master's Candidates

  

  • Education Level: PhD graduate

  • Professional Title: Associate Professor

  • Alma Mater: 英国诺丁汉大学

  • Supervisor of Doctorate Candidates

  • Supervisor of Master's Candidates

  • School/Department: 计算机与人工智能学院

  • Discipline:Communications and Information Systems
    Computer Science and Technology
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    Recommended Ph.D.Supervisor Recommended MA Supervisor
    Language: 中文

    Paper Publications

    Spectrum Sensing in Cognitive Radio: A Deep Learning Based Model

    Impact Factor:3.31

    DOI number:10.1002/ett.4388

    Journal:Transactions on Emerging Telecommunications Technologies

    Funded by:China Postdoctoral Science Foundation, China Scholarship Council, National Natural Science Foundatio

    Abstract:Spectrum sensing is an efficient technology for addressing the shortage of spectrum resources. Widely used methods usually employ model-based features as the test statistics, such as energies and eigenvalues, ignoring the temporal correlation aspect. Deep learning based methods have the potential to focus on various aspects, including temporal correlation. However, the existing ones are not good at capturing the temporal correlation features from spectrum data as traditional convolutional neural network (CNN) and long short-term memory network (LSTM) are used for feature extraction. Traditional CNNs were not designed to capture the global temporal correlations from time series data. Standard LSTM captures the temporal correlations based on the data collected from previous time slots only and cannot emphasize some important parts of a time series. This article proposes a data-driven deep learning based model to classify the received raw signals automatically, where the received signal data is considered time-series data. The proposed deep neural network (DNN) model is mainly featured with 1-dimensional convolutional neural network (1D CNN), bidirectional long short-term memory network (BiLSTM), and self-attention (SA). The 1D CNN and BiLSTM are responsible for extracting the local features and global correlations from the time series data, and BiLSTM could extract sufficient features in opposite directions. The SA layer enables the classifier network to emphasize those important features obtained by BiLSTM. The simulation results demonstrate that our model performs better than a number of existing DNN models in terms of the probabilities of missed detection and false alarm, especially when the signal to noise ratio is low. Moreover, the impacts of the modulation scheme and sample length on the detection performance are studied.

    Co-author:Huanlai Xing*,Haoxiang Qin,Shouxi Luo,Penglin Dai,Lexi Xu,Xinzhou Cheng

    Document Code:10.1002/ett.4388

    Volume:33

    Issue:1

    ISSN No.:2161-3915

    Translation or Not:no

    Date of Publication:2021-11-02

    Included Journals:SCI

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