Published May 30, 2014



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Francisco Javier Moreno-Arboleda, PhD

Jaime Alberto Guzmán-Luna, PhD

Sebastián Alonso Gómez-Arias, BSc

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Abstract

A diversity of movement patterns may be identified whenstudying a set of moving entities. One of these patterns iscalled V-formation since its shape resembles such letter.Informally, a set of entities shows a V-formation if theyare located in one of its two characteristic lines. In thispaper, we propose a model for identifying V-formationswith outliers in a list of moving entities. An outlier is anentity of the formation that is apart from its characteristiclines. We present the formal rules of our model and analgorithm for detecting outliers. Our model was validatedin NetLogo, a programming and modeling environmentfor simulating natural and social phenomena.

Keywords

Moving objects, movement patterns, V-formation, outliers., V training, atypically, separated valuesObjeto móvil, patrón de movimiento, formación en V, valores atípicamente separados, Valor atípico

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How to Cite
Moreno-Arboleda, F. J., Guzmán-Luna, J. A., & Gómez-Arias, S. A. (2014). Analysis and detection in V-formations with outliers. Ingenieria Y Universidad, 18(1), 43–58. https://doi.org/10.11144/Javeriana.iyu18-1.advw
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