Clustering analysis of railway driving missions with niching
Author(s) -
Amine Jaafar,
Bruno Sareni,
Xavier Roboam
Publication year - 2012
Publication title -
compel the international journal for computation and mathematics in electrical and electronic engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.255
H-Index - 31
eISSN - 2054-5606
pISSN - 0332-1649
DOI - 10.1108/03321641211209807
Subject(s) - cluster analysis , silhouette , data mining , computer science , context (archaeology) , hierarchical clustering , set (abstract data type) , cluster (spacecraft) , a priori and a posteriori , engineering , machine learning , geography , archaeology , programming language , philosophy , epistemology
International audienceA wide number of applications requires classifying or grouping data into a set of categories or clusters. Most popular clustering techniques to achieve this objective are K-means clustering and hierarchical clustering. However, both of these methods necessitate the a priori setting of the cluster number. In this paper, a clustering method based on the use of a niching genetic algorithm is presented, with the aim of finding the best compromise between the inter-cluster distance maximization and the intra-cluster distance minimization. This method is applied to three clustering benchmarks and to the classification of driving missions for railway applications
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