Big data analytics for empowering milk yield pbkp_rediction in dairy supply chains


Abstract:

Accurate pbkp_rediction of daily milk production is a crucial aspect of the dairy industry. During the past decades, although many models using various data analytic techniques have been proposed in literature to address the milk pbkp_rediction problem, these models have yet to be widely applied in daily operations. Dairy producers need to pbkp_redict milk yield at individual cow and group level. Given the increasing amount of milk production information collected every year, difficulty also arises from analyzing big data. To address challenges in dairy supply chains and help dairy producers, especially small-scale producers, make use of data analytics in milk supply decision-making, a targeted effort to develop a feasible and cost-effective tool, Milk Yield Pbkp_rediction and Analysis Tool (PAT), is launched. This tool allows dairy producers to use various pbkp_rediction models to discover insight into milk production and forecast future milk yield at both the individual cow and the group level. This paper provides a detailed discussion on the design of this tool and demonstrates how big data analytics can be applied in a cost-effective manner.

Año de publicación:

2015

Keywords:

  • Big Data Analytics
  • What-if Aanalysis
  • Milk Yield Pbkp_rediction

Fuente:

scopusscopus

Tipo de documento:

Conference Object

Estado:

Acceso restringido

Áreas de conocimiento:

  • Análisis de datos
  • Agricultura

Áreas temáticas:

  • Ciencias de la computación
  • Procesos, formas y temas de la escultura
  • Huertos, frutas, silvicultura