Visión sistémica del análisis de la flexibilidad en cadenas de suministro de productos perecederos

Autores

  • Andrés Mauricio Paredes Rodríguez Universidad del Valle, Buga
  • Andrés Felipe Salazar Ramos Universidad del Valle, Buga

DOI:

https://doi.org/10.18046/syt.v12i30.1858

Palavras-chave:

Capacidad, cadena de suministro, flexibilidad de volumen, productos perecederos

Resumo

La flexibilidad de las cadenas de suministro está determinada por la capacidad de respuesta en términos de volumen y variedad ante cambios en los comportamientos de los consumidores. En el presente estudio se evalúa para una cadena de suministro, una política de flexibilidad de volumen y su relación con un factor de desperdicio inherente en la distribución de un producto perecedero. Mediante Dinámica de Sistemas, se analiza la distorsión en la información de demanda dada por el tipo de producto  y se evalúan las implicaciones de la decisión de flexibilidad sobre el nivel de servicio brindado al cliente final.

Biografia do Autor

  • Andrés Mauricio Paredes Rodríguez, Universidad del Valle, Buga

    Estudiante de Ingeniería Industrial, participa en el semillero de investigación en Logística y Producción de la Universidad del Valle sede Buga, Colombia.

  • Andrés Felipe Salazar Ramos, Universidad del Valle, Buga
    Ingeniero Industrial, Estudiante de maestría en Ingeniería con énfasis en Ingeniería Industrial. Docente tiempo completo del programa de Ingeniería Industrial y coordinador del semillero de investigación en Logística y Producción de la Universidad del Valle sede Buga, Colombia.

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Publicado

2014-09-30

Edição

Seção

Original Research