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Predicting Surface Roughness and Grinding Forces in UNS S34700 Steel Grinding: A Machine Learning and Genetic Algorithm Approach to Coolant Effects

Mohsen Dehghanpour AbyanehDepartment of Mechanical and Aerospace Engineering (DIMEAS), Politechnico Di Torino, 10129 Torino, ItalyParviz NarimaniSchool of Mechanical Engineering, College of Engineering, University of Tehran, Tehran P.O. Box 14155-6619, IranM. JavadiDepartment of Mechanical Engineering, Amirkabir University of Technology, 424, Hafez Ave., Tehran P.O. Box, 15875-4413, IranMarzieh GolabchiDepartment of Energy (DENERG), Politechnico Di Torino, 10129 Torino, ItalySamareh AttarsharghiDepartment of Electrical and Computer Engineering, Faculty of Engineering and Applied Sciences, Memorial University, St. John’s, NL A1C 5S7, CanadaMohammadjafar HadadSchool of Mechanical Engineering, College of Engineering, University of Tehran, Tehran P.O. Box 14155-6619, Iran
2024en
ABI

Аннотация

In today’s tech world of digitalization, engineers are leveraging tools such as artificial intelligence for analyzing data in order to enhance their capability in evaluating product quality effectively. This research study adds value by applying algorithms and various machine learning techniques—such as support vector regression, Gaussian process regression, and artificial neural networks—on a dataset related to the grinding process of UNS S34700 steel. What sets this study apart is its consideration of factors like three types of grinding wheels, four distinct cooling solutions, and seven varied depths of cut. These parameters are assessed for their impact on surface roughness and grinding forces, resulting in the conversion of information into insights. A relational equation with 25 coefficients is developed, using optimized algorithms to predict surface roughness with an 85 percent accuracy and grinding forces with a 90 percent accuracy rate. Learning from machine models like the Gaussian process regression exhibited stability, with an R2 value of 0.98 and a mean accuracy of 93 percent. Artificial neural networks achieved an R2 value of 0.96, and an accuracy rate of 90 percent. These findings suggest that machine learning techniques are versatile and precise when dealing with datasets. They align well with digitalization and predictive trends. In conclusion; machine learning provides flexibility and superior accuracy for predicting data trends compared to the formulaic approach, which is contained to existing datasets only. The versatility of machine learning highlights its significance in engineering practices for making data-informed decisions.

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