Algoritmo para la optimización del proceso de secuenciación de reportes

Fecha

2018-03-23

Autores

Coto Palacio, Jessica
Méndez Hernández, Beatriz María
Martínez Jiménez, Yailen
Nowé, Ann
Rodríguez Bazan, Erick D.

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Resumen

La secuenciación de trabajos es un área muy amplia en la cual muchos investigadores se han enfocado en los últimos años. En las empresas generalmente esta planificación se realiza de forma manual o semiautomática. Este trabajo propone un algoritmo para la secuenciación de trabajos en máquinas paralelas no relacionadas. El algoritmo utiliza dos variantes de solución: una heurística simple basada en una generación pseudoaleatoria y una regla de despacho basada en la máquina que más tiempo de procesamiento tiene pendiente. Para analizar el desempeño de las mismas se utiliza un caso de estudio donde los resultados obtenidos demuestran que la regla de despacho proporciona mejores resultados, conclusión que fue validada mediante pruebas estadísticas.
Scheduling is a wide research area in which many researchers have focused in recent years. In companies, this planning is usually done manually or semi-automatically. This work proposes an algorithm for the job sequencing in parallel unrelated machines. The algorithm uses two solution alter natives: a simple heuristic based on a pseudo-random generation and a dispatching rule based on the machine with most work remaining. To analyze the performance of the alternatives a study case is used, where the results obtained show that the dispatching rule provides better results, a conclusion that was validated using statistical tests.

Descripción

Palabras clave

Secuenciación de Reportes, Máquinas Paralelas no Relacionadas, Heurísticas, Reglas de Despacho, Report Scheduling, Unrelated Parallel Machines, Heuristics, Dispatching Rules

Citación

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