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http://dx.doi.org/10.9723/jksiis.2021.26.2.021

Development of inspection system for classification of magnetic switch case products  

Ryu, Joeng Tak (대구대학교 전자공학전공)
Publication Information
Journal of Korea Society of Industrial Information Systems / v.26, no.2, 2021 , pp. 21-26 More about this Journal
Abstract
In this study, a JIG and a system were designed to solve the classification error problem of two types of magnetic switch case products for starter motors of the same size and shape. The structure of the jig is designed for accurate inspection of the product. The difference between the two products is divided into products with protrusions and products without. For classification of the two products, an inspection system was designed using a dial gauge and an inductive proximity sensor. An optimal method was proposed through performance evaluation by two sensors. As a result, both methods greatly reduced the defect rate of classification errors occurring in the process.
Keywords
Magnetic switch for starter motor; product classification automation; classification defect rate; dial gauge; inductive proximity sensor;
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