Unprejudiced Strategic Suppliers Selection and Inspection: An Automated Industrial Approach
DOI:
https://doi.org/10.56225/ijgoia.v3i2.272Keywords:
Quality control, Inspection accuracy, Entropy method, Cross check, Decision, MCDMAbstract
The world is changing rapidly to global automated marketplaces. As a result, the environment forces companies to make accurate decisions and considerations simultaneously. The relationship between the supplier and the company has been developed for a long time, so selecting the supplier is a significant task. This study highlighted one of the major concerns in the field of industrial engineering and quality management in the automated selection and inspection domain. This study also determines the unprejudiced selection accuracy and defect rate for present & future inspection, respectively, in supplier evaluation of the industry. Analyze the decision about future inspection 100% or not, on the basis of inspection cost during the examination and decision-making activity. After the supplier selection process, the next step is to check the supplier's efficiency, so inspection is implemented. Two models are dealt with in this paper: automated selection and the implementation of inspection.
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