Cloud Manufacturing with Fuzzy Inference System: A Supply Chain Approach to Post COVID-19 Economy

Authors

  • Sam Kolahgar University of Prince Edward Island
  • Mohammad Nateghi Independent Researcher
  • Azadeh Babaghaderi University of Windsor

DOI:

https://doi.org/10.5296/ber.v12i4.19971

Abstract

The COVID-19 pandemic shocked the managerial team with unprecedented fluctuations in supply, demand, and transportation of goods and services. The lessons learned from the COVID-19 pandemic proved the urgent need for agility and flexibility in response to similar future crises. This paper proposes a cloud manufacturing model as a clustered supply chain approach that incorporates fuzzy inference systems to provide a platform for the post-COVID-19-economy. Cloud manufacturing is a way to standardize and increase the system’s reliability, and a fuzzy inference system is suited to deal with highly uncertain circumstances. A fuzzy inference system is integrated into a cloud manufacturing model to incorporate uncertainties related to TimeQualityCostReliability, and Availability in finding the optimum supply chain of manufacturers and service centers. The model is illustrated via a simulation in the manufacturing context. The proposed approach provides a tool to address the uncertainties and disruptions resulting from wide-scale crises such as the COVID-19 pandemic.

Downloads

Published

2022-12-01

How to Cite

Kolahgar, S., Nateghi, M., & Babaghaderi, A. (2022). Cloud Manufacturing with Fuzzy Inference System: A Supply Chain Approach to Post COVID-19 Economy. Business and Economic Research, 12(4), 1–32. https://doi.org/10.5296/ber.v12i4.19971

Issue

Section

Articles