[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
research-article

Game-theory-based lifetime maximization of multi-channel cooperative spectrum sensing in wireless sensor networks

Published: 01 August 2020 Publication History

Abstract

Accurate and efficient detection of the radio-frequency spectrum is a challenging issue in wireless sensor networks (WSNs), which are used for multi-channel cooperative spectrum sensing (MCSS). Due to the limited battery power of sensors, lifetime maximization of a WSN is an important issue further sensing quality requirements. The issue is more complex if the low-cost sensors cannot sense more than one channel simultaneously, because they do not have high-speed Analogue-to-Digital-Convertors which need high-power batteries. This paper proposes a novel game-theoretic sensor selection algorithm for MCSS that extends the network lifetime assuming the quality of sensing and the limited ability of sensors. To this end, an optimization problem is formulated using the “max–min” method, in which the minimum remaining energy of sensors is maximized to keep energy balancing in the WSN. This paper proposes a coalition game to solve the problem, in which sensors act as game players and decide to make disjoint coalitions for MCSS. Each coalition senses one of the channels. Other nodes, that decide to sense none of the channels, turn off their sensing module to reserve energy. First, a novel utility function for the coalitions is proposed based on the remaining energy and consumption energy of sensors besides their detection quality. Then, an algorithm is designed to reach a Nash-Equilibrium (NE) coalition structure. The existence of at least one NE, converging toward one of the NEs, and the computational complexity of the proposed algorithm are discussed. Finally, simulations are presented to demonstrate the ability of the proposed algorithm, assuming the systems using IEEE802.15.4/Zigbee and IEEE802.11af.

References

[1]
Ali A and Hamouda W Advances on spectrum sensing for cognitive radio networks: Theory and applications IEEE Communications Surveys & Tutorials 2016 19 2 1277-1304
[2]
Kobo H, Abu-Mahfouz A, and Hancke G A survey on software-defined wireless sensor networks: Challenges and design requirements IEEE Access 2017 5 1872-1899
[3]
Cichoń K, Kliks A, and Bogucka H Energy-efficient cooperative spectrum sensing: A survey IEEE Communications Surveys & Tutorials 2016 18 3 1861-1886
[4]
Deng R, Chen J, Yuen C, Cheng P, and Sun Y Energy-efficient cooperative spectrum sensing by optimal scheduling in sensor-aided cognitive radio networks IEEE Transactions on Vehicular Technology 2012 61 2 716-726
[5]
Maleki S, Chepuri S, and Leus G Optimization of hard fusion based spectrum sensing for energy-constrained cognitive radio networks Physical Communication 2013 9 193-198
[6]
Vien Q-T, Nguyen HX, and Nallanathan A Cooperative spectrum sensing with secondary user selection for cognitive radio networks over Nakagami-m fading channels IET Communications 2015 10 1 91-97
[7]
Najimi M, Ebrahimzadeh A, Andargoli SMH, and Fallahi A Lifetime maximization in cognitive sensor networks based on the node selection IEEE sensors Journal 2014 14 7 2376-2383
[8]
Hattab, G. & Ibnkahla, M. (2014). Multiband spectrum sensing: Challenges and limitations. In Proc. WiSense workshop, Ottawa.
[9]
Quan Z, Cui S, Sayed AH, and Poor HVOptimal multiband joint detection for spectrum sensing in cognitive radio networkIEEE Transactions on Signal Processing20095731128-114030277921391.94547
[10]
Wu Y and Cardei M Multi-channel and cognitive radio approaches for wireless sensor networks Computer Communications 2016 94 30-45
[11]
Zheng M, Chen L, Liang W, Yu H, and Wu J Energy-efficiency maximization for cooperative spectrum sensing in cognitive sensor networks IEEE Transactions on Green Communications and Networking 2017 1 1 29-39
[12]
Ozger M, Alagoz F, and Akan O Clustering in multi-channel cognitive radio ad hoc and sensor networks IEEE Communications Magazine 2018 56 4 156-162
[13]
Kaligineedi P and Bhargava V Sensor allocation and quantization schemes for multi-band cognitive radio cooperative sensing system IEEE Transaction on Wireless Communications 2011 10 1 284-293
[14]
Bagheri A, Ebrahimzadeh A, and Najimi M Sensor selection for extending lifetime of multi-channel cooperative sensing in cognitive sensor networks Physical Communication 2017
[15]
Asheralieva A, Quek T, and Niyato D An asymmetric evolutionary bayesian coalition formation game for distributed resource sharing in a multi-cell device-to-device enabled cellular network IEEE Transactions on Wireless Communications 2018 17 6 3752-3767
[16]
Song L, Li Y, Ding Z, and Poor H Resource management in non-orthogonal multiple access networks for 5G and beyond IEEE Network 2017 31 4 8-14
[17]
Kim S Game theory applications in network design 2014 Hershey IGI Global
[18]
Dai Z, Wang Z, and Wong VWS An overlapping coalitional game for cooperative spectrum sensing and access in cognitive radio networks IEEE Transactions on Vehicular Technology 2016 65 10 8400-8413
[19]
Umar R and Mesbah W Coordinated coalition formation in throughput-efficient cognitive radio networks Wireless Communications and Mobile Computing 2016 16 912-928
[20]
Olawole A, Takawira F, and Oyerinde O Fusion rule and cluster head selection scheme in cooperative spectrum sensing IET Communications 2019 13 6 758-765
[21]
Sasabe M, Nishida T, and Kasahara S Collaborative spectrum sensing mechanism based on user incentive in cognitive radio networks Computer Communications 2019 147 1-13
[22]
Rajendran M and Duraisamy M Distributed coalition formation game for enhancing cooperative spectrum sensing in cognitive radio ad hoc networks IET Networks 2019 9 1 12-22
[23]
Hao, X., Cheung, M., Wong, V., & Leung, V. (2011). A coalition formation game for energy-efficient cooperative spectrum sensing in cognitive radio networks with multiple channels. In GLOBECOM.
[24]
Belghiti I, Berrada I, and El Kamili M A scalable framework for green large cognitive radio networks Cognitive Computation and Systems 2019 1 3 79-84
[25]
Moualeu, J. M., Ngatched, T. M. N., Hamouda, W., & Takawira, F. (2014). Energy-efficient cooperative spectrum sensing and transmission in multi-channel cognitive radio networks. In IEEE international conference on communications (ICC), Sydney.
[26]
Arora N and Mahajan R Cooperative spectrum sensing using hard decision fusion scheme International Journal of Engineering Research and General Science 2014 2 4 36-43
[27]
Noori M and Ardakani M Lifetime analysis of random event-driven clustered wireless sensor networks IEEE Transactions on Mobile Computing 2011 10 10 1448-1458
[28]
Li P, Gua S, and Cheng Z Max-min lifetime optimization for cooperative communications in cognitive radio networks IEEE Transactions on Parallel and Distributed Systems 2014 25 6 1533-1542
[29]
Shapely LS Roth AE A value for n-person games The shapely value 1988 Cambridge University of Cambridge Press 31-40
[30]
Xu Y, Wang J, Wu Q, Anpalagan A, and Yao Y Opportunistic spectrum access in unknown dynamic environment: a game-theoretic stochastic learning solution IEEE Transaction on Wireless Communications 2012 11 4 1380-1390
[31]
Lã QD, Chew YH, and Soong B-H Potential game theory: applications in radio resource allocation 2016 Berlin Springer
[32]
Mardan J, Arslan G, and Shamma JS Cooperative control and potential games IEEE Transactions on Systems, Man and Cybernetics 2009 39 6 1393-1407
[33]
Monderer D and Shapely LSPotential gamesGames and Economic Behavior199614124-14313935990862.90137
[34]
Han D and Lim JH Smart home energy management system IEEE Transactions on Consumer Electronics 2010 56 3 1403-1410
[35]
Ismail N and Othman M Low power phase locked loop frequency synthesizer for 2.4 GHz band Zigbee American Journal of Engineering and Applied Sciences 2009 2 2 337-343
[36]
Flores A, Guerra R, Knightly E, Ecclesine P, and Pandey S IEEE 802.11 af: A standard for TV white space spectrum sharing IEEE Communications Magazine 2013 51 10 92-100
[37]
Banerji S. (2013). Upcoming standards in wireless local area networks. Wireless & Mobile Technologies. arXiv preprint arXiv:1307.7633.
[38]
Chiaravalloti S, Idzikowski F, and Budzisz Ł Power consumption of WLAN network elements 2011 Berlin Technische Universität Berlin

Cited By

View all
  • (2023)MCENComputer Networks: The International Journal of Computer and Telecommunications Networking10.1016/j.comnet.2022.109506221:COnline publication date: 1-Feb-2023
  • (2021)Fusion Rules Effects on Lifetime Maximization of Multi-channel Cooperative Spectrum SensingWireless Personal Communications: An International Journal10.1007/s11277-021-08326-1119:3(2197-2225)Online publication date: 1-Aug-2021

Recommendations

Comments

Please enable JavaScript to view thecomments powered by Disqus.

Information & Contributors

Information

Published In

cover image Wireless Networks
Wireless Networks  Volume 26, Issue 6
Aug 2020
807 pages

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 01 August 2020

Author Tags

  1. Coalition formation game
  2. Game theory
  3. Multi-channel spectrum sensing
  4. Wireless sensor network

Qualifiers

  • Research-article

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 20 Jan 2025

Other Metrics

Citations

Cited By

View all
  • (2023)MCENComputer Networks: The International Journal of Computer and Telecommunications Networking10.1016/j.comnet.2022.109506221:COnline publication date: 1-Feb-2023
  • (2021)Fusion Rules Effects on Lifetime Maximization of Multi-channel Cooperative Spectrum SensingWireless Personal Communications: An International Journal10.1007/s11277-021-08326-1119:3(2197-2225)Online publication date: 1-Aug-2021

View Options

View options

Media

Figures

Other

Tables

Share

Share

Share this Publication link

Share on social media