Wireless Sensor Network

Volume 4, Issue 1 (January 2012)

ISSN Print: 1945-3078   ISSN Online: 1945-3086

Google-based Impact Factor: 1  Citations  

Multiple Parameter Based Clustering (MPC): Prospective Analysis for Effective Clustering in Wireless Sensor Network (WSN) Using K-Means Algorithm

HTML  Download Download as PDF (Size: 215KB)  PP. 18-24  
DOI: 10.4236/wsn.2012.41003    6,530 Downloads   12,354 Views  Citations

Affiliation(s)

.

ABSTRACT

In wireless sensor network cluster architecture is useful because of its inherent suitability for data fusion. In this paper we represent a new approach called Multiple Parameter based Clustering (MPC) embedded with the traditional k-means algorithm which takes different parameters (Node energy level, Euclidian distance from the base station, RSSI, Latency of data to reach base station) into consideration to form clusters. Then the effectiveness of the clusters is evaluated based on the uniformity of the node distribution, Node range per cluster, Intra and Inter cluster distance and required energy level of each centroid. Our result shows that by varying multiple parameters we can create clusters with more uniformly distributed nodes, minimize intra and maximize inter cluster distance and elect less power consuming centroid.

Share and Cite:

M. Khan, I. Tamim, E. Ahmed and M. Awal, "Multiple Parameter Based Clustering (MPC): Prospective Analysis for Effective Clustering in Wireless Sensor Network (WSN) Using K-Means Algorithm," Wireless Sensor Network, Vol. 4 No. 1, 2012, pp. 18-24. doi: 10.4236/wsn.2012.41003.

Cited by

[1] An Improved Energy-Aware Secure Clustering Technique for Wireless Sensor Network
2021
[2] Slitting K-means clusters to X-means clusters for prolonging wireless sensor networks lifetime
2020
[3] X-means Clustering for Wireless Sensor Networks
2020
[4] Implementation of the X-means Clustering Algorithm for Wireless Sensor Networks
2020
[5] Multi-objective Hybrid Fuzzified PSO and Fuzzy C-Means Algorithm for Clustering CDR Data
2019
[6] Unequal Energy Aware Secure Clustering Technique for Wireless Sensor Network
2019
[7] EEC-FM: Energy Efficient Clustering based on Firefly and Midpoint Algorithms in Wireless Sensor Network.
2018
[8] A light weight clustering mechanism for WSAN
International Journal of Applied Engineering Research [IJAER], 2018
[9] EEC-FM: Energy Efficient Clustering based on Firefly and Midpoint Algorithms in Wireless Sensor Network
2018
[10] A Dynamic Clustering Approach for Maximizing Scalability in Wireless Sensor Networ
2017
[11] CBA
Ad Hoc Networks, 2016
[12] A key storage and path key efficient diagonal-based grouping for wireless sensor network
2016
[13] Energy efficient clustering protocol based on K-means (EECPK-means)-midpoint algorithm for enhanced network lifetime in wireless sensor network
IET Wireless Sensor Systems, 2016
[14] Evolving clustering algorithms for wireless sensor networks with various radiation patterns to reduce energy consumption
Science and Information Conference (SAI), 2015, 2015
[15] Extending Lifetime and Optimizing Energy of Wireless Sensor Network using Hybrid Clustering Algorithms
2015
[16] Image Segmentation Using Modified K-Means Algorithm and JSEG Method
International Journal Of Engineering And Computer Science, 2014
[17] A Review: An Improved K-means Clustering Technique in WSN
2014
[18] Wireless sensor network routing protocols for data aggregation
2014
[19] Optimization Algorithm for Wireless Sensor Networks using K-means and Evolutionary Algorithm
2013
[20] Data Aggregation Using Genetic Algorithm in Wireless Sensor Network
INTERNATIONAL JOURNAL OF ENGINEERING SCIENCES & RESEARCH (IJESRT), 2013
[21] An Energy-Balanced Cluster-Based Protocol for Wireless Sensor Networks
International Journal of Information Technology and Web Engineering (IJITWE), 2013

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.