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Smart Diagnostic Expert System for Defect in Forging Process by Using Machine Learning Process

Shivlal Mewada, Anil Saroliya, Nishanth Adithya Chandramouli, T. Rajasanthosh Kumar, M. Lakshmi, S. Suma Christal Mary, Mani Jayakumar

2022Journal of Nanomaterials148 citationsDOIOpen Access PDF

Abstract

Integrating machine learning into one of the manufacturing processes, i.e., forging, is mainly concerned with making the system more intelligent by incorporating them to exhibit global understanding. Sometimes the engineer/operator can find the defects during or after the forging operation. So, the system will need some input to identify the different types of categorized defects. And also, according to that, we will develop the intelligent fault diagnosis process. We should calculate the statistical probability theory. Now, we implement the system which is the structure of the fault analysis system for the forging process. In the structure, we demonstrate the defect of the forged part, use the given imported probability to find the possible causes, and provide some remainders to reduce the fault. For enhancement of feature needs, this work includes more integration of AI with forging.

Topics & Concepts

ForgingProcess (computing)Fault (geology)Feature (linguistics)Expert systemComputer scienceManufacturing engineeringWork (physics)Artificial intelligenceMechanical engineeringEngineeringSeismologyLinguisticsPhilosophyGeologyOperating systemMineral Processing and GrindingFault Detection and Control SystemsIndustrial Vision Systems and Defect Detection
Smart Diagnostic Expert System for Defect in Forging Process by Using Machine Learning Process | Litcius