Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts

Hard metals are victorious in offering greater functional life in various critical applications because of their excellent material characteristics. But due to their high hardness, they pose machining problems. Therefore, the current work is intended to identify suitable cutting conditions for machi...

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Main Authors: Syed Adil, A. Krishnaiah, D. Srinivas Rao
Format: Article
Language:English
Published: Elsevier 2025-03-01
Series:Journal of Alloys and Metallurgical Systems
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Online Access:http://www.sciencedirect.com/science/article/pii/S2949917825000112
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author Syed Adil
A. Krishnaiah
D. Srinivas Rao
author_facet Syed Adil
A. Krishnaiah
D. Srinivas Rao
author_sort Syed Adil
collection DOAJ
description Hard metals are victorious in offering greater functional life in various critical applications because of their excellent material characteristics. But due to their high hardness, they pose machining problems. Therefore, the current work is intended to identify suitable cutting conditions for machining of hard metal components by carrying out turning experiments.MDN 350 steel is considered as the subject hard metal in the present work, as the literature on machining experiments on the aforementioned metal is limited and there is a wide scope of research for improving its machining performance. The current methodology can be implemented for other hard metals as well. Improvement of tool life, enhancement of rate of production, reduction in cost of production and closeness of surface finish to that of grinding are the major goals of the work. The experimental work is divided into two sets wherein in the first set, the cutting inputs are speed and tool feed rate and the experimental output is flank-wear. Cost of production, tool life and rate of production are the machining performance indicators considered for the first set, which are evaluated based on flank-wear data and empirical formulae. In the second set, rake angle, cutting angle and nose radius of the tool insert are varied and roughness of the machined components is measured. The machining performance indicators of the first set are optimized using graphical method of contour plots. Artificial neural networks technique, which is well known for its versatility to model linear as well as non-linear data, is used to express the surface roughness as a function of tool geometrical variables. Genetic Algorithm, which is an advanced optimization technique known for its intricate search for optimal solutions, is used for optimizing surface roughness with optimal combination of the geometrical parameters. The optimum results of the two sets are confirmed through experimental validation and the deviations are found within 10 %.
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spelling doaj-art-ae40eb9d8715486fa785fb6ee148954e2025-02-10T04:35:34ZengElsevierJournal of Alloys and Metallurgical Systems2949-91782025-03-019100161Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide insertsSyed Adil0A. Krishnaiah1D. Srinivas Rao2Department of Mechanical Engineering, Muffakham Jah College of Engineering & Technology, Hyderabad, Telangana 500034, India; Department of Mechanical Engineering, University College of Engineering, Osmania University, Hyderabad, Telangana 500007, India; Corresponding author at: Department of Mechanical Engineering, Muffakham Jah College of Engineering & Technology, Hyderabad, Telangana 500034, India.Department of Mechanical Engineering, University College of Engineering, Osmania University, Hyderabad, Telangana 500007, IndiaDepartment of Mechanical Engineering, Muffakham Jah College of Engineering & Technology, Hyderabad, Telangana 500034, IndiaHard metals are victorious in offering greater functional life in various critical applications because of their excellent material characteristics. But due to their high hardness, they pose machining problems. Therefore, the current work is intended to identify suitable cutting conditions for machining of hard metal components by carrying out turning experiments.MDN 350 steel is considered as the subject hard metal in the present work, as the literature on machining experiments on the aforementioned metal is limited and there is a wide scope of research for improving its machining performance. The current methodology can be implemented for other hard metals as well. Improvement of tool life, enhancement of rate of production, reduction in cost of production and closeness of surface finish to that of grinding are the major goals of the work. The experimental work is divided into two sets wherein in the first set, the cutting inputs are speed and tool feed rate and the experimental output is flank-wear. Cost of production, tool life and rate of production are the machining performance indicators considered for the first set, which are evaluated based on flank-wear data and empirical formulae. In the second set, rake angle, cutting angle and nose radius of the tool insert are varied and roughness of the machined components is measured. The machining performance indicators of the first set are optimized using graphical method of contour plots. Artificial neural networks technique, which is well known for its versatility to model linear as well as non-linear data, is used to express the surface roughness as a function of tool geometrical variables. Genetic Algorithm, which is an advanced optimization technique known for its intricate search for optimal solutions, is used for optimizing surface roughness with optimal combination of the geometrical parameters. The optimum results of the two sets are confirmed through experimental validation and the deviations are found within 10 %.http://www.sciencedirect.com/science/article/pii/S2949917825000112Hard metalsMDN 350 alloy steelTool-lifeProduction costProduction rateSurface roughness
spellingShingle Syed Adil
A. Krishnaiah
D. Srinivas Rao
Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
Journal of Alloys and Metallurgical Systems
Hard metals
MDN 350 alloy steel
Tool-life
Production cost
Production rate
Surface roughness
title Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
title_full Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
title_fullStr Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
title_full_unstemmed Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
title_short Mathematical modelling and optimization of cutting conditions in turning operation on MDN 350 steel with carbide inserts
title_sort mathematical modelling and optimization of cutting conditions in turning operation on mdn 350 steel with carbide inserts
topic Hard metals
MDN 350 alloy steel
Tool-life
Production cost
Production rate
Surface roughness
url http://www.sciencedirect.com/science/article/pii/S2949917825000112
work_keys_str_mv AT syedadil mathematicalmodellingandoptimizationofcuttingconditionsinturningoperationonmdn350steelwithcarbideinserts
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AT dsrinivasrao mathematicalmodellingandoptimizationofcuttingconditionsinturningoperationonmdn350steelwithcarbideinserts