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Apr. 2024
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  Journal Paper


Paper Title :
An inteligent System for Detecting Defects in Products

Author :Alexandru Stanciu, Mihai Butolo, Ramona Cristina Popa, Nicolae Goga, Teodorescu Iulia-Elena, Anton Hadar, Cornelia Alexandru, Ioana Petre, George Suciu

Article Citation :Alexandru Stanciu ,Mihai Butolo ,Ramona Cristina Popa ,Nicolae Goga ,Teodorescu Iulia-Elena ,Anton Hadar ,Cornelia Alexandru ,Ioana Petre ,George Suciu , (2023 ) " An inteligent System for Detecting Defects in Products " , International Journal of Advance Computational Engineering and Networking (IJACEN) , pp. 21-27, Volume-11,Issue-7

Abstract : In this article, we conducted an investigation into the intelligent identification of defects occurring in the injection molding process. The implementation of an intelligent system for defect detection in products brings significant benefits and advancements to quality control and manufacturing procedures. We outlined the various types of defects targeted for detection and the input variables employed in the intelligent algorithms. Subsequently, we presented the construction of our intelligent system. Additionally, we performed a comparison among multiple intelligent algorithms to determine the most accurate classifier. "K-Nearest Neighbors" emerged as the top performer, achieving an accuracy of over 96% for all defect types, closely followed by "Decision Tree" with an accuracy exceeding 95%. Keywords - Burr; Not Complete; Dark Spot; Defect Detection; Defect Type; AI; IoT

Type : Research paper

Published : Volume-11,Issue-7


DOIONLINE NO - IJACEN-IRAJ-DOIONLINE-19980   View Here

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