Abstract

Cutting tool wear reduces the quality of the product in production processes. The optimization of both the machining parameters and tool life reliability is an increasing research trend to save manufacturing resources. In the present work, we introduced a computational approach in estimating the tool wear in the turning process using artificial intelligence. Support vector machines (SVM) for regression with Bayesian optimization is used to determine the tool wear based on various machining parameters. A coated insert carbide tool 2025 was utilized in turning tests of 709M40 alloy steel. Experimental data were collected for three machining parameters like feed rate, depth of cut, and cutting speed, while the parameter of tool wear was calculated with a scanning electron microscope (SEM). The SVM model was trained on 162 experimental data points and the trained model was then used to estimate the experimental testing data points to determine the model performance. The proposed SVM model with Bayesian optimization achieved a superior accuracy in estimation of the tool wear with a mean absolute percentage error (MAPE) of 6.13% and root mean square error (RMSE) of 2.29%. The results suggest the feasibility of adopting artificial intelligence methods in estimating the machining parameters to reduce the time and costs of manufacturing processes and contribute toward greater sustainability.

Highlights

  • Accepted: 2 July 2021Tool life is one of the main parameters in machining

  • Rapid tool wear increased the lead time spent in the replacement of tools, thereby reducing the production rate [2]

  • The trials were performed in a single-path double-pass pass system

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Summary

Introduction

Tool life is one of the main parameters in machining. Tools that wear or fail a comparably lengthy duration life service can lead to a decreased production rate and surface finish capacity [1]. Tool wear is an important parameter in machining as its increase increases cutting forces and cutting temperatures and produces poor finished and inaccurately machined surfaces. Rapid tool wear increased the lead time spent in the replacement of tools, thereby reducing the production rate [2]. Worn tools reduce the quality of the production and might harm the machine as well as the workpiece. The cutting force might increase, which elevates the temperature and intensifies the tool wear. Breakdown of the tool may result in more significant repercussions like scraping as well as scratching and might cause the workpieces and tool holder to be catastrophic

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