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An Efficient Variable Distance Measure K-Means [VDMKM] Algorithm for Cluster Head Selection in WSN
Author(s) -
Ashutosh Kumar Dubey
Publication year - 2019
Publication title -
international journal of innovative technology and exploring engineering
Language(s) - English
Resource type - Journals
ISSN - 2278-3075
DOI - 10.35940/ijitee.a3925.119119
Subject(s) - euclidean distance , measure (data warehouse) , pearson product moment correlation coefficient , network packet , computer science , algorithm , selection (genetic algorithm) , cluster (spacecraft) , wireless sensor network , preprocessor , distance correlation , cluster analysis , data mining , mathematics , statistics , artificial intelligence , random variable , computer network
Wireless sensor networks (WSNs) provide an empirical and explorative ways to handle and collection of the data in the centralized way. In this paper an efficient variable distance measure k-means [VDMKM] algorithm for cluster heads (CHs) selection in WSN has been presented and analyzed. This approach is divided into two phases. In the first phase data preprocessing has been performed. In this phase size-based weight and threshold assignment have been done on the scaling factor of 1-10. In the second phase VDMKM approach has been applied. The main benefit of this approach is the capability of smaller distance assignments automatically based on different distance measures. The distance measures used here are Euclidean, Pearson coefficient and Manhattan correlation. The complete cluster correlated delay has been calculated along with the packet delivery time. Our distance measure based automatic distance adjustment approach provides better suited distance-based packet delivery in less time. The results are more prominent in the case of Euclidean and Manhattan.

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