Development of an ANN model for prediction of tool wear in turning EN9 and EN24 steel alloy

Author:

Baig Rahmath Ulla1,Javed Syed1ORCID,Khaisar Mohammed2,Shakoor Mwafak3,Raja Purushothaman4

Affiliation:

1. College of Engineering, King Khalid University, Abha, Asir, Saudi Arabia

2. Maharaja Institute of Technology, Mandya, Karnataka, India

3. American University of Madaba, Amman, Jordan

4. School of Mechanical Engineering, SASTRA University, Thanjavur, Tamil Nadu, India

Abstract

An imperative requirement of a modern machining system is to detect tool wear while machining to maintain the surface quality of the product. Vibration signatures emanating during machining with a single point cutting tool have proven to be good indicators for the tool’s health. The current research undertaken utilizes vibration signatures while turning EN9 and EN24 steel alloy to predict tool life using Artificial Neural Network (ANN). During initial meager experimentation, tool acceleration during machining was recorded, and the width of the flank wear at the end of each run was measured using Tool Makers Microscope. The recorded experimental data is utilized to develop the neural network with the variation of operating parameters and corresponding tool vibration with measured tool flank wear. The endeavor undertaken for the development of ANN flank wear prediction model was effective with a regression coefficient of 0.9964. The proposed methodology of indirect measurement of tool wear is efficient, economical for the machining industry to predict tool life, which in turn avoids catastrophic tool failure.

Funder

King Khalid University

Publisher

SAGE Publications

Subject

Mechanical Engineering

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2. Generating synthetic data for data-driven solutions via a digital twin for condition monitoring in machine tools;Synthetic Data for Artificial Intelligence and Machine Learning: Tools, Techniques, and Applications II;2024-06-07

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