MATEC Web of Conferences (Jan 2017)

A Big Data Decision-making Mechanism for Food Supply Chain

  • Ji Guojun,
  • Tan KimHua

DOI
https://doi.org/10.1051/matecconf/201710002048
Journal volume & issue
Vol. 100
p. 02048

Abstract

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Many companies have captured and analyzed huge volumes of data to improve the decision mechanism of supply chain, this paper presents a big data harvest model that uses big data as inputs to make more informed decisions in the food supply chain. By introducing a method of Bayesian network, this paper integrates sample data and finds a cause-and-effect between data to predict market demand. Then the deduction graph model that translates foods demand into processes and divides processes into tasks and assets is presented, and an example of how big data in the food supply chain can be combined with Bayesian network and deduction graph model to guide production decision. Our conclusions indicate that the decision-making mechanism has vast potential by extracting value from big data.

Keywords