MCFL: an energy efficient multi-clustering algorithm using fuzzy logic in wireless sensor network

In this study, a multi-clustering algorithm based on fuzzy logic (MCFL) with an entirely different approach is presented to carry out node clustering in wsn. This approach minimizes energy dissipation and, consequently, prolongs network lifetime. In the past, numerous algorithms were tasked with clustering nodes in wireless sensors networks. The common denominator of all these approaches is the constancy of the algorithm in all the rounds of network lifetime that causes the selection of cluster heads in each round. Selecting cluster heads in each round indicates that throughout the process the most eligible nodes are not selected. By comparing the chance of each node to be selected as a cluster head using a random number, the majority of these clustering approaches, both fuzzy and non-fuzzy, destroy the chance of selecting the most eligible node as cluster head. As a result, all these approaches require the selection of cluster heads in each round. Performing selections in each round increases the rate of sent and received messages. By increasing the number of messages, the total number of sent messages in the network increases too. Therefore, in a network with a high number of nodes, any increase in the number of packets will augment network traffic and increase the collision probability. On the other hand, since nodes lose a certain amount of energy for each sent message, by increasing the number of messages, nodes’ energy will correspondingly decrease which results in their premature death. However, by selecting the most eligible nodes as cluster heads and trusting them for at least a few rounds, the amount of sent and received messages is reduced. In this article, In addition to clustering nodes in different rounds using different clustering algorithms, MCFL avoids selecting new cluster heads by trusting previous cluster heads leading to a reduction in the number of messages and saving energy. MCFL is compared with other approaches in three different scenarios using indices such as total remaining energy, the number of dead nodes, first node dies, half of nodes die, and last node dies. Results reveal that MCFL has as advantage over other approaches.

[1]  Moustafa Ghanem,et al.  Distributed Clustering-Based Aggregation Algorithm for Spatial Correlated Sensor Networks , 2011, IEEE Sensors Journal.

[2]  Imran Memon,et al.  Dynamic path privacy protection framework for continuous query service over road networks , 2016, World Wide Web.

[3]  Adnan Yazici,et al.  An energy aware fuzzy approach to unequal clustering in wireless sensor networks , 2013, Appl. Soft Comput..

[4]  Padmalaya Nayak,et al.  A Fuzzy Logic-Based Clustering Algorithm for WSN to Extend the Network Lifetime , 2016, IEEE Sensors Journal.

[5]  Iksoo Kim,et al.  Energy Aware Routing Protocol in Wireless Sensor Networks , 2006 .

[6]  Sachin Gajjar,et al.  Cluster Head Selection Protocol using Fuzzy Logic for Wireless Sensor Networks , 2014 .

[7]  Ali Newaz Bahar,et al.  Fuzzy Based Energy Efficient Multiple Cluster Head Selection Routing Protocol for Wireless Sensor Networks , 2015 .

[8]  Shekhar Verma,et al.  An Energy Efficient Approach for Clustering in WSN using Fuzzy Logic , 2012 .

[9]  Zhongliang Deng,et al.  Clustering Based Energy Efficient and Communication Protocol for Multiple Mix-Zones Over Road Networks , 2016, Wireless Personal Communications.

[10]  Arputharaj Kannan,et al.  Fuzzy logic based unequal clustering for wireless sensor networks , 2016, Wirel. Networks.

[11]  Ameer Ahmed Abbasi,et al.  A survey on clustering algorithms for wireless sensor networks , 2007, Comput. Commun..

[12]  Xiaohu You,et al.  Enhancing the performance of LEACH protocol in wireless sensor networks , 2011, 2011 IEEE Conference on Computer Communications Workshops (INFOCOM WKSHPS).

[13]  Mukhtiar Ali Unar,et al.  Privacy Preserving Dynamic Pseudonym-Based Multiple Mix-Zones Authentication Protocol over Road Networks , 2017, Wirel. Pers. Commun..

[14]  Song Mao,et al.  An Improved Fuzzy Unequal Clustering Algorithm for Wireless Sensor Network , 2011, 2011 6th International ICST Conference on Communications and Networking in China (CHINACOM).

[15]  Yong Wang,et al.  Preserving users' privacy for continuous query services in road networks , 2013, 2013 6th International Conference on Information Management, Innovation Management and Industrial Engineering.

[16]  Imran Memon,et al.  Implementation of secure AODV in MANET , 2013, International Conference on Graphic and Image Processing.

[17]  Bilal Muhammad Khan,et al.  Use of wireless system in healthcare for developing countries , 2016, Digit. Commun. Networks.

[18]  Tripti Sharma,et al.  PMOS based 1-Bit Full Adder Cell , 2012 .

[19]  Aysegul Alaybeyoglu,et al.  A distributed fuzzy logic-based root selection algorithm for wireless sensor networks , 2015, Comput. Electr. Eng..

[20]  Lin Zhao,et al.  Dynamic Cluster-based Routing for Wireless Sensor Networks , 2014, J. Networks.

[21]  Imran Memon,et al.  Enhanced Privacy and Authentication: An Efficient and Secure Anonymous Communication for Location Based Service Using Asymmetric Cryptography Scheme , 2015, Wirel. Pers. Commun..

[22]  Dirk Timmermann,et al.  Low energy adaptive clustering hierarchy with deterministic cluster-head selection , 2002, 4th International Workshop on Mobile and Wireless Communications Network.

[23]  Rohit Verma,et al.  JAVA based Power Trading Simulator in Electricity Market , 2012 .

[24]  B. Baranidharan,et al.  DUCF: Distributed load balancing Unequal Clustering in wireless sensor networks using Fuzzy approach , 2016 .

[25]  M. Mehdi Afsar,et al.  Clustering in sensor networks: A literature survey , 2014, J. Netw. Comput. Appl..

[26]  Imran Memon,et al.  Travel Recommendation Using Geo-tagged Photos in Social Media for Tourist , 2015, Wirel. Pers. Commun..

[27]  Adnan Yazici,et al.  MOFCA: Multi-objective fuzzy clustering algorithm for wireless sensor networks , 2015, Appl. Soft Comput..

[28]  Jin-Shyan Lee,et al.  Fuzzy-Logic-Based Clustering Approach for Wireless Sensor Networks Using Energy Predication , 2012, IEEE Sensors Journal.

[29]  Shigeng Zhang,et al.  Energy-balanced clustering protocol for data gathering in wireless sensor networks with unbalanced traffic load , 2012 .

[30]  Mubashir Husain Rehmani,et al.  Applications of wireless sensor networks for urban areas: A survey , 2016, J. Netw. Comput. Appl..

[31]  SanjeevPuri Intelligent Wireless Sensor Network System to shrink Suspected Terror from Militantsy , 2012 .

[32]  Seon-Ho Park,et al.  CHEF: Cluster Head Election mechanism using Fuzzy logic in Wireless Sensor Networks , 2008, 2008 10th International Conference on Advanced Communication Technology.

[33]  Imran Memon,et al.  A Secure and Efficient Communication Scheme with Authenticated Key Establishment Protocol for Road Networks , 2015, Wirel. Pers. Commun..

[34]  Qianbin Chen,et al.  An adaptive coordinated MAC protocol based on dynamic power management for wireless sensor networks , 2006, IWCMC '06.

[35]  Imran Memon,et al.  DPMM: dynamic pseudonym-based multiple mix-zones generation for mobile traveler , 2017, Multimedia Tools and Applications.

[36]  Noritaka Shigei,et al.  Energy Efficient Clustering Communication Based on Number of Neighbors for Wireless Sensor Networks , 2010 .