Research on Sensor Network Spectrum Detection Technology based on Cognitive Radio Network

Wenzhun Huang, Xinxin Xie, Yuting Zhang, Shanwen Zhang

Abstract


With the bursting development of computer science and the hardware technology, Internet of Things and wireless sensor networks has been popularly studied in the community of engineering. Under the environment of Internet of Things, we carry out theoretical analysis and numerical simulation on the sensor network spectrum detection technology based on cognitive radio network. As a means of information and intelligence, information service system is an important research hotspot in the field of Internet of things. Wireless sensor network is composed of a large number of micro sensor nodes, which have the function of information collection, data processing, and wireless communication, characterized by the integration of wireless self-organization. However, most of the methodologies proposed by the other institutes are suffering form the high complexity while with the high time-consuming when processing information. Therefore, this study is to assess the economic feasibility of using the optimized multipath protocol availability and the increased bandwidth and several mobile operators through the use of cost-benefit analysis, single path selection model is to develop more path agreement to achieve better performance. To test the robustness, we compare our method with the other state-of-the-art approach in the simulation section and proves the effectiveness of our methodology. The experimental result reflected that our approach could achieve higher accuracy with low time-consuming when dealing with complex sources of information.


Keywords


Sensor Network; Cognitive Radio Network; Collaboration for Distributed Detection; Spectrum Detection Technology; Topology Optimization

Full Text:

PDF

References


T. Ali, P. Siddiqua and M. A. Matin. Performance evaluation of different modulation schemes for ultra wide band systems. Journal of Electrical Engineering. 2014; 65(3): pp.184-188.

H. Wang and J. Wang. An effective image representation method using kernel classification. The 26th International Conference on Tools with Artificial Intelligence, Limassol(CY). 2014; pp.853-858.

A. Massouri, L. Cardoso, B. Guillon, et al. CorteXlab: An open FPGA-based facility for testing SDR & cognitive radio networks in a reproducible environment. 2014 IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS), Toronto, Canada. 2014; pp.103-104.

D. Zhang, Q. Liu, W. Xu. Access Convergence of Mechanical Equipments to Heterogeneous Networking Environment in Internet of Things for Manufacturing. Journal of Convergence Information Technology. 2013.

K. E. Alexander. Barriers and enablers to delivery of the healthy kids check: an analysis informed by the theoretical domains framework and com-b model. Implementation Science. 2014; 9:60(6): 396-415.

Z. Guo, X. Wang, J. Tang, X. Liu, Z. Xu, M. Wu and Z. Zhang. R2: An application-level kernel for record and replay. The 8th USENIX conference on Operating systems design and implementation San Diego,CA(US). 2008; pp.193-208.

H. Skinnemoen. Introduction special issue on dvb-rcs2. International Journal of Satellite Communications & Networking. 2013; 31(5):199–200.

A. M. Shah, S. Zhang and C. Mapl. Cognitive radio networks for Internet of Things: Applications, challenges and future. The 19th International Conference on Automation and Computing (ICAC), London(GB). 2013; pp.1-6.

M. Gechev, S. Kasabova, A. D. Mihovska, et al. Node discovery and interpretation in unstructured resource-constrained environments. The 4th International Conf. on Wireless Commun., Vehicular Technology, Information Theory and Aerospace & Electronic Systems (VITAE), Aalborg(DK). 2014; pp.1-5.

F. António, L. Miguel, O. Rodolfo, et al. Channel Availability Assessment for Cognitive Radios. Technological Innovation for the Internet of Things, Springer Berlin Heidelberg. 2013.

F. António, L. Miguel, O. Rodolfo, D. Rui and B. Luis. Channel Availability Assessment for Cognitive Radios. Technological Innovation for the Internet of Things. Springer Berlin Heidelberg. 2013.

A. Aijaz, M. Tshangini, M. Nakhai, et al. Energy-Efficient Uplink Resource Allocation in LTE Networks With M2M/H2H Co-Existence Under Statistical QoS Guarantees. Communications IEEE Transactions on. 2014; 62(7): pp.2353- 2365.

J. Leithon, J. L. Teng and S. Sun. Energy exchange among base stations in a Cellular Network through the Smart Grid. 2014 IEEE International Conf. on Commun. (ICC), Sydney(AU). 2014; pp.4036-4041.

A. M. Alberti. A conceptual-driven survey on future internet requirements, technologies, and challenges. Journal of the Brazilian Computer Society. 2013; 19(3): pp.291-311.

M. Usman and I. Koo. Secure cooperative spectrum sensing for the cognitive radio network using non-uniform reliability. Scientific World Journal. 2014.

C. Wan, X. Feng, I. N. Center and Z. T. College. Accurate detection of dos attacking signal based on spectrum aliasing pre-distortion effect. Bulletin of Science & Technology. 2014.

H. P. Corporation. A new intrusion detection system based on classification algorithm in wireless sensor network. Journal of Electrical & Computer Engineering. 2014.

J. H. Martin, L. S. Dooley and K. C. P. Wong. A New Cross-Layer Dynamic Spectrum Access Architecture for TV White Space Cognitive Radio Applications. Intelligent Signal Processing Conf., London(GB). 2013; pp.1-6.

Zhang, Huiying, Hongzuo Li, Xiao Dongya, and Cai Chao. Performance Analysis of Different Modulation Techniques for Free-Space Optical Communication System. TELKOMNIKA (Telecommunication Computing Electronics and Control) 13, no. 3 (2015).

Indrawati, Indrawati, Irmeilyana Irmeilyana, Fitri Maya Puspita, and Oky Sanjaya. Internet Pricing on Bandwidth Function Diminished With Increasing Bandwidth Utility Function. TELKOMNIKA (Telecommunication Computing Electronics and Control) 13, no. 1 (2015): pp.299-304.




DOI: http://doi.org/10.12928/telkomnika.v14i1.2442

Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.

TELKOMNIKA Telecommunication, Computing, Electronics and Control
ISSN: 1693-6930, e-ISSN: 2302-9293
Universitas Ahmad Dahlan, 4th Campus
Jl. Ringroad Selatan, Kragilan, Tamanan, Banguntapan, Bantul, Yogyakarta, Indonesia 55191
Phone: +62 (274) 563515, 511830, 379418, 371120
Fax: +62 274 564604

View TELKOMNIKA Stats