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Sort articles by: Volume | Date | Most Rates | Most Views | Reviews | Alphabet
1.

Mathematical modelling and optimization of surface quality and productivity in turning process of AISI 12L14 free-cutting Steel Pages 557-576 Right click to download the paper Download PDF

Authors: B. Ben Fathallah, R. Saidi, C. Dakhli, S. Belhadi, M. A. Yallese

DOI: 10.5267/j.ijiec.2019.3.001

Keywords: AISI 12L14, Surface roughness, Cutting force, Optimization, Modeling, RSM

Abstract:
In this study, several series of experiments on turning process of AISI 12L14 free cutting steel characterized by its self-lubrication and the high percentage of lead in its composition were performed to rate the influence of cutting conditions (Vc, f and ap) on the machining performance such as surface roughness, cutting force, cutting power and material removal rate. A computer generated optimal design of experiment based on the I-optimality criteria along with analysis of variance was created to study the characterizations in turning of this steel, and desirability function was utilized for the optimization. The global optimization, combined high surface quality and productivity with low cutting power consumption, gave 12 optimal setting points provided high desirability values. The obtained correlation for surface roughness, cutting force, material removal rate and cutting power were 99.4%, 95.5%, 99.7% and 94.3%, respectively.
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Journal: IJIEC | Year: 2019 | Volume: 10 | Issue: 4 | Views: 3057 | Reviews: 0

 
2.

Modeling and multi-objective optimization of surface roughness and productivity in dry turning of AISI 52100 steel using (TiCN-TiN) coating cermet tools Pages 71-84 Right click to download the paper Download PDF

Authors: Ouahid Keblouti, Lakhdar Boulanouar, Mohamed Walid Azizi, Mohamed Athmane Mohamed Athmane

DOI: 10.5267/j.ijiec.2016.7.002

Keywords: Machining processes, Surface roughness, Cutting force, Modeling, Coating tools, ANOVA, RSM

Abstract:
The present work concerns an experimental study of turning with coated cermet tools with TiCN-TiN coating layer of AISI 52100 bearing steel. The main objectives are firstly focused on the effect of cutting parameters and coating material on the performances of cutting tools. Secondly, to perform a Multi-objective optimization for minimizing surface roughness (Ra) and maximizing material removal rate by desirability approach. A mathematical model was developed based on the Response Surface Methodology (RSM). ANOVA method was used to quantify the cutting parameters effects on the machining surface quality and the material removal rate. The results analysis shows that the feed rate has the most effect on the surface quality. The effect of coating layers on the surface quality is also studied. It is observed that a lower surface roughness is obtained when using PVD (TiCN-TiN) coated insert when compared with uncoated tool. The values of root mean square deviation and coefficient of correlation between the theoretical and experimental data are also given in this work where the maximum calculated error is 2.65 %.
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Journal: IJIEC | Year: 2017 | Volume: 8 | Issue: 1 | Views: 2744 | Reviews: 0

 
3.

Optimization of multiple performance characteristics in turning using Taguchi’s quality loss function: An experimental investigation Pages 325-336 Right click to download the paper Download PDF

Authors: Ashok Kumar Sahoo, Tanmaya Mohanty

DOI: 10.5267/j.ijiec.2013.04.002

Keywords: Chip reduction coefficient, Cutting force, Orthogonal array, Taguchi’s loss function

Abstract:
Cutting force and chip reduction coefficient is the important index of machinability as it determines the power consumption and amount of energy invested in machining actions. It is primarily influenced by process parameters like cutting speed, feed and depth of cut. This paper presents the application of Taguchi’s parameter design to optimize the parameters for individual responses. For multi-response optimization, Taguchi’s quality loss function approach is proposed. In the present investigation, optimal values of cutting speed, feed and depth of cut are determined to minimize cutting force and chip reduction coefficient during orthogonal turning. The effectiveness of the proposed methodology is illustrated through an experimental investigation in turning mild steel workpiece using high speed steel tool.
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Journal: IJIEC | Year: 2013 | Volume: 4 | Issue: 3 | Views: 4194 | Reviews: 0

 
4.

Some studies on cutting force and temperature in machining Ti-6Al-4V alloy using regression analysis and ANOVA Pages 427-436 Right click to download the paper Download PDF

Authors: Ramanuj Kumar, Ashok Kumar Sahoo, K. Satyanarayana, G. Venkateswara Rao

DOI: 10.5267/j.ijiec.2013.03.002

Keywords: ANOVA, Cutting force, Cutting temperature, Regression

Abstract:
The present work deals with the cutting forces and cutting temperature produced during turning of titanium alloy Ti-6Al-4V with PVD TiN coated tungsten carbide inserts under dry environment. The 1st order mathematical models are developed using multiple regression analysis and optimized the process parameters using contour plots. The model presented high determination coefficient (R2 = 0.964 and 0.989 explaining 96.4 % and 98.9 % of the variability in the cutting force and cutting temperature, which indicates the goodness of fit for the model and high significance of the model. The developed mathematical model correlates the relationship of the cutting force and temperature with the process parameters with good degree of approximation. From the contour plots, the optimal parametric combination for lowest cutting force is v 3 (75 m/min) – f 1 (0.25 mm/rev). Similarly, the optimal parametric combination for minimum temperature is v 1 (45 m/min) – f 1 (0.25 mm/rev). Cutting speed is found to be the most significance parameter on cutting forces followed by feed. Similarly, for cutting temperature, feed is found to be the most influencing parameter followed by cutting speed.
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Journal: IJIEC | Year: 2013 | Volume: 4 | Issue: 3 | Views: 4402 | Reviews: 0

 
5.

An experimental investigation of tool nose radius and machining parameters on TI-6AL-4V (ELI) using grey relational analysis, regression and ANN models Pages 291-304 Right click to download the paper Download PDF

Authors: Darshit R. Shah, Sanket N. Bhavsar

DOI: 10.5267/j.ijdns.2019.1.004

Keywords: Titanium Alloys, Grey Relational Analysis, Regression, Artificial Neural Network, ANOVA, Machining, Turning, Cutting force, Cutting temperature, Tool nose radius

Abstract:
Ti-6Al-4V Extra Low Interstitial (ELI) exhibits superior properties because of controlled interstitial element of iron and oxygen. The effects of four cutting parameters namely cutting speed, feed, depth of cut and tool nose radius on responses like cutting force, average cutting temperature and surface roughness have been investigated for turning of Ti-6Al-4V (ELI). Total 81 experiments have been performed in dry environment. Grey Relational Analysis has been used for multi-objective optimization. Analysis of Variance test has been carried out to investigate contribution of input parameters. The model was found fit with R-Square value of 88.74%. Regression and ANN models are developed for prediction and compared. From the Grey relational analysis, it is clear that optimum parameters to minimize cutting force, cutting temperature and surface roughness while turning Ti-6Al-4V (ELI), are cutting speed as 140 rpm, Nose radius 1.2mm, Feed 0.051mm/rev and depth of cut is 0.5mm. In comparison of regression model, the ANN model is found to be more accurate with average error of 3.57%.
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Journal: IJDS | Year: 2019 | Volume: 3 | Issue: 3 | Views: 1658 | Reviews: 0

 
6.

Neural network based model for estimating cutting force during machining of Ti6Al4V alloy Pages 23-32 Right click to download the paper Download PDF

Authors: R. R. Malagi, Rolvin Barreto, S. R. Chougula

DOI: 10.5267/j.jfs.2022.8.004

Keywords: ANN, Cutting Force, Levenberg-Marquardt, MQL Machining, Number of Neurons, Titanium Alloy

Abstract:
The evolving technology has pushed machine learning techniques to replace human smartness. A machine learning model is capable of learning and replicating like our brain. This approach of data-driven model is implemented to predict the cutting force in machining of Ti6Al4V. Titanium alloys are commonly used in high strength applications due to their excellent properties. These same properties make the machining of the titanium alloy complicated. An attempt has been made for finding the cutting force under minimum quantity lubrication (MQL). MQL is a sustainable manufacturing-based lubrication system. Taguchi’s approach was used to attain a full factorial design for combination of different parameters. Accordingly, a neural network (NN) model was developed which was capable of predicting cutting forces based on the trained model. The proposed model could be implemented to find optimal parameters in shortest duration, thereby eliminating the need for experimental computations.
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Journal: JFS | Year: 2022 | Volume: 2 | Issue: 1 | Views: 1089 | Reviews: 0

 
7.

Statistical modeling of main cutting force produced by wet turning using soluble oil-water mixture lubricant Pages 167-180 Right click to download the paper Download PDF

Authors: L B Abhang, M Hameedullah

DOI: 10.5267/j.msl.2010.03.002

Keywords: Cutting force, Factorial design, Metal cutting, Response surface methodology, Statistical modeling

Abstract:
In this paper, we present machining tests by turning En-31 steel alloy with tungsten carbide
inserts using soluble oil-water mixture lubricant under different machining conditions. Firstorder
and second-order cutting force prediction models were developed by using the
experimental data by applying response surface methodology combined with factorial design of
experiments. Analysis of variance (ANOVA) is also employed to check the adequacy of the
developed models. The established equations show that feed rate and depth of cut are the main
influencing factors on the cutting force followed by tool nose radius and cutting velocity. It
increases with increase in the feed rate, depth of cut and tool nose radius but decreases with an
increase in the cutting velocity. The predicted cutting force values of the samples have been
found to lie close to that of the experimentally observed values with 95% confident levels.
Moreover, the surface response counters have been generated from the model equations.
Desirability function is used for single response optimization.
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Journal: MSL | Year: 2011 | Volume: 1 | Issue: 2 | Views: 3049 | Reviews: 0

 

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