Recursive validation and clustering for distributed spectrum sensing in CR-MANET

In cognitive radio networks, secondary users need to accurately identify primary user spectrum occupancy in order to use it. Accurate spectrum sensing is hindered by signal fading, hidden terminal problems, byzantine failures, etc. Centralized cooperative spectrum sensing works well if the secondary user network is infrastructure based and there is a centralized basestation making network wide decisions. When the secondary users network is a cognitive radio mobile ad-hoc network (CR-MANET), then decisions need to be made in a distributed manner and cooperative spectrum sensing introduces additional problems due to the presence of malicious users. These malicious secondary users encourage other secondary users to make a wrong spectrum occupancy decision by feeding inaccurate measurements. We study this problem and present a solution to improve primary user spectrum occupancy identification accuracy in the presence of malicious users. A virtual neighbor cluster is created in which the mobile device forms an evolving cluster of past neighbor devices that aids in validating the input gathered from the current neighboring devices. Next, a recursive partitioning around medoids based clustering is performed to identify a tightly bound set of valid inputs. The validated inputs from both the methods form a decision cluster and the data is fused to get the decision on primary user occupancy. Two data fusion strategies are presented and their use depends on the amount of dynamism in the CR-MANET. The analysis and results show the accuracy of primary user occupancy detection even in the presence of large number of malicious users and signal measurement errors.

[1]  Yiwei Thomas Hou,et al.  Toward secure distributed spectrum sensing in cognitive radio networks , 2008, IEEE Communications Magazine.

[2]  Danijela Cabric,et al.  Reputation-based cooperative spectrum sensing with trusted nodes assistance , 2010, IEEE Communications Letters.

[3]  Kaigui Bian,et al.  Robust Distributed Spectrum Sensing in Cognitive Radio Networks , 2008, IEEE INFOCOM 2008 - The 27th Conference on Computer Communications.

[4]  Kang G. Shin,et al.  Secure Cooperative Sensing in IEEE 802.22 WRANs Using Shadow Fading Correlation , 2011, IEEE Transactions on Mobile Computing.

[5]  Majid Khabbazian,et al.  Secure Cooperative Sensing Techniques for Cognitive Radio Systems , 2008, 2008 IEEE International Conference on Communications.

[6]  Zhu Han,et al.  Securing Collaborative Spectrum Sensing against Untrustworthy Secondary Users in Cognitive Radio Networks , 2010, EURASIP J. Adv. Signal Process..

[7]  Ian F. Akyildiz,et al.  CRAHNs: Cognitive radio ad hoc networks , 2009, Ad Hoc Networks.

[8]  Zhu Han,et al.  CatchIt: Detect Malicious Nodes in Collaborative Spectrum Sensing , 2009, GLOBECOM 2009 - 2009 IEEE Global Telecommunications Conference.

[9]  Lara Dolecek,et al.  Joint Spectrum Sensing and Detection of Malicious Nodes via Belief Propagation , 2011, 2011 IEEE Global Telecommunications Conference - GLOBECOM 2011.

[10]  Li Xiao,et al.  Defense against Spectrum Sensing Data Falsification Attacks in Cognitive Radio Networks , 2011, SecureComm.

[11]  Zhu Han,et al.  Attack-proof collaborative spectrum sensing in cognitive radio networks , 2009, 2009 43rd Annual Conference on Information Sciences and Systems.