Low Energy Consumption Compressed Spectrum Sensing Based on Channel Energy Reconstruction in Cognitive Radio Network
Open Access
- 25 February 2020
- Vol. 20 (5), 1264
- https://doi.org/10.3390/s20051264
Abstract
For wireless communication networks, cognitive radio (CR) can be used to obtain the available spectrum, and wideband compressed sensing plays a vital role in cognitive radio networks (CRNs). Using compressed sensing (CS), sampling and compression of the spectrum signal can be simultaneously achieved, and the original signal can be accurately recovered from the sampling data under sub-Nyquist rate. Using a set of wideband random filters to measure the channel energy, only the recovery of the channel energy is necessary, rather than that of all the original channel signals. Based on the semi-tensor product, this paper proposes a new model to achieve the energy compression and reconstruction of spectral signals, called semi-tensor product compressed spectrum sensing (STP-CSS), which is a generalization of traditional spectrum sensing. The experimental results show that STP-CSS can flexibly generate a low-dimensional sensing matrix for energy compression and parallel reconstruction of the signal. Compared with the existing methods, STP-CSS is proved to effectively reduce the calculation complexity of sensor nodes. Hence, the proposed model markedly improves the spectrum sensing speed of network nodes and saves storage space and energy consumption.Keywords
Funding Information
- National Natural Science Foundation of China (61771071, 61972051)
This publication has 33 references indexed in Scilit:
- Spectrum Handoff based on Imperfect Channel State Prediction Probabilities with Collision Reduction in Cognitive Radio Ad Hoc NetworksSensors, 2019
- A Comprehensive Survey on Spectrum Sensing in Cognitive Radio Networks: Recent Advances, New Challenges, and Future Research DirectionsSensors, 2019
- Compressed Wideband Spectrum Sensing: Concept, Challenges, and EnablersIEEE Communications Magazine, 2018
- Multiband Spectrum Sensing and Resource Allocation for IoT in Cognitive 5G NetworksIEEE Internet of Things Journal, 2017
- Extracting and Exploiting Inherent Sparsity for Efficient IoT Support in 5G: Challenges and Potential SolutionsIEEE Wireless Communications, 2017
- Software-Defined Networking for Internet of Things: A SurveyIEEE Internet of Things Journal, 2017
- Smart Channel Sounder for 5G IoT: From Wireless Big Data to Active CommunicationIEEE Access, 2016
- Enabling the IoT Machine Age With 5G: Machine-Type Multicast Services for Innovative Real-Time ApplicationsIEEE Access, 2016
- Using Cognitive Radio for Interference-Resistant Industrial Wireless Sensor Networks: An OverviewIEEE Transactions on Industrial Informatics, 2015
- Cognitive radio: making software radios more personalIEEE Wireless Communications, 1999