C:\Users\raoh\Desktop\Paper_5.xps TJER 2012, Vol. 9, No. 1, 37-45 1.Introduction Optimization of parameters in machining is a non linear model with constraints, so it is difficult to con- ducted this optimization using conventional approach- es. As an alterna-tive, non-conventional approaches ________________________________________ *Correponding author’s e-mail: abhanglb@yahoo.co.in have become useful approaches to solve machining parameter optimization problems. The LINGO solver program is global optimization software; it gives min- imum values of surface roughness and their respective optimal conditions. In many real machining applica- Optimal Machining Parameters for Achieving the Desired Surface Roughness in Turning of Steel LB Abhang* and M Hameedullah Department of Mechanical Engineering, Aligarh Muslim University, Aligarh, India Received 26 July 2010; accepted 1 January 2011 Abstract: Due to the widespread use of highly automated machine tools in the metal cutting industry, manufacturing requires highly reliable models and methods for the prediction of output performance in the machining process. The prediction of optimal manufacturing conditions for good surface finish and dimensional accuracy plays a very important role in process planning. In the steel turning process the tool geometry and cutting conditions determine the time and cost of production which ultimately affect the quality of the final product. In the present work, experimental investigations have been conducted to determine the effect of the tool geometry (effective tool nose radius) and metal cutting conditions (cut- ting speed, feed rate and depth of cut) on surface finish during the turning of EN-31 steel. First and sec- ond order mathematical models are developed in terms of machining parameters by using the response surface methodology on the basis of the experimental results. The surface roughness prediction model has been optimized to obtain the surface roughness values by using LINGO solver programs. LINGO is a mathematical modeling language which is used in linear and nonlinear optimization to formulate large problems concisely, solve them, and analyze the solution in engineering sciences, operation research etc. The LINGO solver program is global optimization software. It gives minimum values of surface rough- ness and their respective optimal conditions. Keywords: Metal cutting, Response surface methodology, Surface roughness, Optimization 38 LB Abhang and M Hameedullah tions, three conflicting objectives are often considered. These are the maximum production rate, minimum operational cost, and quality of machining. Therefore, three cutting parameters and tool geometries need to be determined in a turning operation: cutting velocity feed rate, depth of cut, and tool nose radius. The pur- pose of the turning operation is to produce low surface roughness. Proper selection of cutting parameters and tools can produce longer tool life and lower surface roughness. Hence, the design of experiments by fac- torial input, with response surface methodology (R.S.M). applied to cutting parameters, was adopted to study the surface roughness (Abhang, Hameedullah 2010). Hard turning eliminates the series of operation required to produce the component and thereby reduces the metal cutting cycle time. This results in improvement of productivity (Konig et al. 1984). The proper selection of the cutting tool inserts and cutting conditions plays an important role in process planning for steel turning. This task is traditionally completed by the process planner by taking the data from the hand books and cutting tool catalogues. Since different cutting tool inserts are available with different geome- tries, coatings and materials, it becomes difficult for the process planner to decide the required inserts on the basis of available data (Wang et al. 2002). It is nec- essary that reliable mathematical models be formulat- ed so that optimum selection of tool geometry and cutting parameters can be achieved. To date very few models have been developed for the case of EN-31 alloy steel turning incorporating tool geometry (tool nose radius) and the cutting conditions. Researchers have studied the effect of the metal cutting parameters on surface roughness, but the combined effect of tool nose radius and cutting parameters (cutting speed, feed rate, and depth of cut) has not been studied properly. Therefore, in this paper, an effort has been made to develop the mathematical models incorporating tool geometry (tool nose radius) and cutting conditions by performing the experiments on the EN-31 alloy steel with a tungsten carbide tool and then optimizing the turning process by LINGO-solver programmer. Suresh et al. (2002) have developed a surface roughness pre- diction model for turning mild steel using a response surface methodology. As surface roughness prediction model has also been optimized by using genetic algo- rithms. Feng, Wang (2002) have developed empirical models for surface roughness prediction in finish turn- ing. They have included work piece hardness, feed rate, and tool point angle, depth of cut, cutting speed and cutting time. Ozel, Karpat (2005) studied the pre- dictive modeling of surface roughness and tool wear in hard turning using regression and neural networks. The cutting tool used was made of cubic boron nitride. In this study, effects of cutting edge radius, work-piece hardness, cubic-baron-nitride (CBN) context, cutting length, cutting speed and feed rate on surface rough- ness and tool wear were experimentally investigated. Effective rake angle was kept constant in this study. Dilbag (2007) studied the optimization of tool geome- try and cutting parameters for hard turning. The cut- ting tool used was made of mixed ceramic inserts. In this study, effects of cutting speed, feed rate, and neg- ative rake angle and tool nose radius on surface rough- ness were experimentally investigated. However, effective depth of cut has been kept constant through out the study. Yang, Tarng (1998) employed the Taguchi method to investigate the cutting characteris- tics of S45C steel bars using tungsten carbide tools. The optimal cutting parameters namely, cutting speed, feed rate and depth of cut for turning operations with regard to performance indexes such as tool life and surface roughness are considered. Kopac et al. (2002) investigated the optimal machining parameters for achieving good surface roughness in fine turning of cold pre-formed steel C15 E4 (ISO). Manna, Bhattacharyya (2004) took the significant cutting parameters into consideration and used multiple linear regression mathematical models relating the surface roughness height Ra and Rt to the cutting parameters for turning Al/SiC-MMC. Aslan et al. (2007) used an orthogonal array and analysis of variance to optimize cutting parameters in turning hardened AISI4140 steel with a Al2O3 ceramic tool coated with TiCN. The flank wear and surface roughness had been selected as investigated quality objectives and the authors tried to determine optimal values of cutting parameters, such as cutting speed, feed rate and depth of cut. Nalbant et al. (2007) used the Taguchi method to find good sur- face roughness in turning of AISI 1030 steel bars using TiN coated tools in terms of three cutting parameters, namely insert radius, feed rate and depth of cut. It is evident from the above-mentioned literature that all the models studied only cutting parameters (i.e., cutting conditions) for the turning process. Additionally, the optimization of the tool geometry (considering effective tool nose radius) and the metal cutting conditions for the EN-31 alloy steel turning- have never been reported. Therefore, an effort has been made in this paper to obtain the optimum values of the tool geometry and the cutting conditions for minimizing the surface roughness by LINGO-solver software. 2. Methodology In this work, experimental results were used for modeling using response surface roughness methodol- ogy (RSM). RSM is a collection of mathematical and statistical techniques that are useful for the modeling 39 Optimal Machining Parameters for Achieving the Desired Surface Roughness in Turning of Steel and analysis of problems in which response of interest is influenced by several variables and the objective is to optimize the response. RSM is practical, economi- cal and relatively easy for use. Additionally it has been widely researched in the modeling metal cutting process (Birdie 1993, Hasegawa et al. 1976; Montgomery 1991). RSM was also successfully used for application in tool life testing (Abhang et al. 2010; Mehrban et al. 2008) surface analysis and tool wear rate in metal cutting. The experimental data was uti- lized to build a mathematical model (first order, sec- ond order, and an exponential model) by the regression method. This mathematical model was taken as objec- tive function and was optimized using a LINGO- solver programmer to obtain the machining conditions for the required surface finish The following linear relationship is commonly used for representing the mathematical models in metal cutting: Y = Ø (v, f, d, r) + (1) Where, v, f, d, and r are the speed, feed, depth of cut and tool nose radius respectively of the metal cut- ting processes, and is the error, which is normally distributed with mean = 0 according to observed response Y and Ø is the response function. The rela- tionship between surface roughness and other inde- pendent variables is modeled as shown below: Ra = c va fb dc rd (2) Where c is constant, b, c, and d are the exponents. Equation (2) can be represented in linear mathematical from as shown: ln Ra = ln (c) + alnv + b ln (f) + c lnd + dlnr (3) The constants and exponents a, b, c and d can be obtained by the method of least squares. The first- order linear model developed from the equation, can be represented as follows. Y1 = y- = boxo + b1x1 + b2x2 + b3x3 + b4x4 (4) Where, Y1 is the estimated response based on first- order equation on the logarithmic scale, y is the meas- ured surface roughness xo = 1(dummy variable), x1, x2, x3 and x4 are logarithmic transformations of cutting speed, feed rate, depth of cut, and tool nose radius, respectively. the experimental error is and b-values are the estimates of corresponding parameters. If this model is not sufficient to represent the process, then the second-order model will be developed. The gener- al second order model is as given below: (5) Where Y2 is the estimated response based on sec- ond order equation, the parameters bo, b1, b2, b3, b4, b11, b12, b13 and b44 are to be estimated by the method of least squares. Optimization of Surface finish by the LINGO- solver Approach LINGO is a mathematical modeling language which is used in linear and non-linear optimization in engineering sciences, operation research, etc.The sim- plicity of operation and computational efficiency are the two main attractions of the LINGO solver approach. Optimization helps find the answer that yields the best result, or attains the highest profit, out- put, or happiness. It also has the potential to find the answer that achieves the lowest cost, minimize surface roughness, minimizes waste, or prevents discomfort. Through the LINGO solver optimization we can obtain the global optimum values (i.e., minimization or maximization characteristics). 3. Experimental Details A detailed survey has been carried out to find out how metal cutting parameters, namely cutting speed, feed rate, depth of cut and tool nose radius of the sin- gle point cutting tool were selected for experimenta- tion. The range of each parameter is set at three differ- ent levels, namely low, middle and high based on industrial practices as shown in Table 1. The factorial design with eight added centre points (24 + 8) used in this work is a composite design. The complete design consists of 24 experiments as shown in Table 2 (all factors are in coded form). The coded number for variables used in Tables 1 and 2 are obtained from the following transformation equations as suggested by (Birdie 1993; Montgomery 1991): X1 = (ln v - ln 112) / (ln 112- ln 39) (6) X2 = (ln f - ln 0.10) / (ln 0.10 - ln 0.06) (7) X3 = (ln d - ln 0.4) / (ln 0.4- ln 0.2) (8) X4 = (ln r - ln 0.8) / (ln 0.8- ln 0.4) (9) Where x1 is the coded value of cutting speed v, x2 is the coded value of feed rate f, x3 is the coded value of depth of cut d, and x4 is the coded value of tool nose radius r. 40 LB Abhang and M Hameedullah In this investigation, a commercial alloy steel work piece (EN-31 steel alloy) is machined on heavy duty lathe machine (LTM-20). The chemical composition of the material is shown in Table 3. This material is suitable for a wide variety of automotive type applica- tions the construction of axles, roller bearings, ball bearings, shear blades, spindles, mandrels, forming and molding dies, rollers, blanking and forming tools, knurling tools and spline shafts. These are all exam- ples of automotive components produced using mate- rials where turning is the prominent machining process used. An optical surface roughness measuring micro- scope was used to measure surface roughness (Ra) of the machined components. The surface roughness was measured at three equally spaced locations around the circumference of the workpieces to obtain statistically significant data for each test. The cutting tools used for experimentation were CNMA 120404, CNMA 120408, CNMA 120412 and diamond shape carbide (Make: Widia India Limited, Bangalore). The tool holder used for experimentation was WIDAX SCLCR 1212, Fo9 (ISO Designation). 4. Results and Discussion The experimental study was conducted to see the effect of cutting parameters and tool geometry (i.e., nose radius) on the outcome of the steel turning process. The variation of surface roughness with respect to the variables are shown in Figs. 1 through 5. It can be observed that cutting speed (v) and nose radius (r) have a negative influence, while feed rate (f) and depth of cut (d) have a positive influence on the surface roughness (Ra). The surface roughness (Ra) of EN-31 steel decreased with increased cutting speed (v) and tool nose radius (r) whereas it increased with an increasing feed rate (f) and depth of cut (d). It can also be seen that the feed rate influences the surface rough- ness more predominantly than the other factors. Large values of tool nose radii also yield low surface rough- ness as compared to the smaller tool nose radii of the cutting tool (Fig. 5). Hence smaller values of feed rate and depth of cut must be selected in order to achieve better surface finish during the steel turning process. In order to under stand the relationship between the machining response and parameters, the experimental results were used to develop the mathematical models Table 1. Process variabls and their levels Table 2. Design matrix with experimental results Table 3. Chemical composition of an alloy steel [EN-31] work piece Table 4. ANOVA for the first-order model (first block) Note: DF = degree of freedom, s = significant Table 5. ANOVA for the second-order model (whole block) Note: DF = degree of freedom, s = significant 41 Optimal Machining Parameters for Achieving the Desired Surface Roughness in Turning of Steel using RSM. In this work, a commercially available statistical Minitab software package was used for the computation of the regression constants and expo- nents. The developed equations clearly show that the feed rate is the most influencial parameter on surface roughness followed by tool nose radius and depth of cut. This is in agreement with the work of (Birdie 1993; Sundaram, Lambert 1981). The increase in feed rate increases surface roughness, but surface rough- ness decreases with increasing cutting velocity and tool nose radius. During machining, if the feed rate is increased, the normal load on the tool also increases Figure 1. Surface roughness and feed rate relationship (depth of cut 0.2mm and nose radius 0.44 mm) Figure 2. Surface roughness and cutting speed relationship (depth of cut 0.20mm and nose radius 0.4mm) Figure 3. Surface roughness and depth of cut relationship (tool nose radius 0.4 mm and feed rate 0.6 mm/rev.) 42 LB Abhang and M Hameedullah and it will generate heat which in turn increases the surface roughness. This is anticipated as it is well known that for a given tool nose radius, the theoretical surface roughness is generally (Ra = f2 /32r) (Sundaram, Lambert 1981). Thus, with an increase in depth of cut, the surface roughness value increases, because with an increase in depth of cut chatter may result causing degradation of the workpiece surface (Chen 2000), and a larger tool nose radius reduces sur- face roughness. The surface roughness values obtained by using an insert radius of 1.2 mm were less than the surface roughness values obtained by using the insert radii of 0.8 mm and 0.4 mm. The reason for obtaining better surface quality with in insert radius of 1.2 mm than with the other two inserts may be ascribed to the form of better roundness of this insert than the other two. 4.1 The Roughness Models The proposed first order model developed from the above functional relationship using the RSM method is as follows: Ra = 8.6 - 0.00017v + 28.2f + 3.74d - 0.688r (10) The transformed equation of surface roughness pre- diction is as follows: Ra = 26.049 (v-0.0265 f0.224 d0.114 r-0.038) (11) Equation (11) is derived from the Eq. (10) by sub- stituting the coded values of x1, x2, x3 and x4 in terms of lnv, lnf, lnd and lnr. The analysis of variance and the F-ratio test have been performed to justify the fitness of the mathematical model. Since the calculated value of the F-ratio is more than the standard tabulated value of the F-ratio for surface roughness as shown in Table 4, the model is adequate. Their p-values smaller than 5% or equal to zero, at a 95% confidence level to rep- resent the definite relationship between the machining parameters and machining response for the turning process. The multiple regression coefficient of the first-order model was found to be 0.8671.This shows that the first order can explain the variation to the extent of 86.71%. In order to see whether a second- order model can represent more accurately than the first order, a second order model was developed. It is to be noted from the second-order equations that some of the coefficients are not considered. Only significant Figure 4. Surface roughness and tool nose radius relationship (depth of cut 0.2 mm and feed rate 0.06 mm/rev.) Figure 5. Surface roughness and tool nose radius relationship (depth of cut 0.4 mm and feed rate 0.1 mm/rev.) 43 Optimal Machining Parameters for Achieving the Desired Surface Roughness in Turning of Steel parameters and their coefficients are included in the second-order equation. The remaining insignificant parameters are omitted. The student's t-test was applied to determine the significance and non-signifi- cance of these parameters and their coefficients. The second-order mathematical model is as follows: Y2 = 5.13 + 0.0155v + 55.0f + 9.51d + 0.60r - 0.0000 51v2 + 0.0187f2 - 0.0110d2 - 0.00102r2 - 48.6vf- 10.5 vd - 0.38dr (12) Where, Y2 is the estimated response of surface roughness based on second-order equation, v is the cutting speed in meters/minute, f is the feed rate in mm/revolution, d is the depth of cut in mm and r is the tool nose radius in mm. It is observed that feed rate has positive influence followed by depth of cut, cut- ting speed, and tool nose radius on the surface rough- ness (Ra). The surface roughness (Ra) of En-31 steel decreased with increasing cutting speed (v) and tool nose radius, whereas it increased with an increase in feed rate and depth of cut. The analysis of variance for the second order model is shown in Table 5. The model is adequate since their p-values are smaller than 5% or equal to zero at a 95% confidence level to rep- resent the relationship between the machining param- eters and machining response for the turning process. The multiple regression coefficient of the second order was found to be 0.8983. This means that the second- order can explain the variation to the extent of 89.83%. Since the difference of multiple regression coefficients between the first order and the second order is only 3.12%, it can be concluded that the first order model is adequate to represent the steel turning process under consideration. The first order mathematical model acts as an objective function in order to minimize the out- put surface roughness factor. Ramin = 8.68 - 0.00017v + 28.2f + 3.74d - 0.688r (13) The constrained optimization problem is stated the objective function of minimum Ra using the above model. The constraints are subjected to, 39 < v < 189, 0.06 < f < 0.15, 0.2< d < 0.6 and 0.4 < r < 1.2, xi1 < xi < xi4. In this case xi1 and xi4 are the upper and the lower bounds of process variables xi, and x1, x2, x3, and x4 are the logarithmic transformation of cutting speed, feed rate, depth of cut and tool nose radius. Table 6 shows a global optional solution found at step: 6 with optimum machining conditions. The objective value obtain by LINGO-solver is 10.26223 µm. 4.2 Optimization The objective of the optimization was to find cut- ting parameters within the speed range of 39 miters/minute to 189 meters/minute; the feed rate range 0.06 mm/revolution to 0.15 mm/revolution, a depth of cut range from 0.2 mm to 0.6 mm and a tool nose radius range of 0.4 to 1.2 mm. Cutting parame- ters all should be carried out so that the surface rough- ness (Ra) is minimized. The best result consisted of speed of 189 meters/minute, a feed rate of 0.06 mm/revolution, a depth of cut of 0.2 mm and a tool nose radius of 1.2 mm. This gave an optimum surface roughness (Ra) of 10.26 µm corresponding to the dezirable 95% confidence interval. Hence in order to reduce machining time and to achieve a better surface finish and metal removal rate, a combination of a high speed and a low feed rate, with a lower depth of cut and high tool nose radians must be selected for the machining process. This optimization approach is quite advantageous in order to have the range of the surface roughness values and their corresponding opti- mum machining conditions for certain ranges of input machining parameters. It would be helpful for a man- ufacturing engineer to select the machining conditions for the desired machining performance of the product. This LINGO-solver approach provides global opti- mum machining conditions for corresponding mini- mum values of surface roughness. The LINGO-solver Table 6. Global optimum solution Table 7. Confirmation test results Note: v cutting speed m/min. f feed rate mm/rev, d depth of cut mm and r nose radius mm 44 LB Abhang and M Hameedullah approach, used to optimize the mathematical model, was found to be the most useful technique for research. With the known boundaries of surface roughness and machining conditions, machining could be performed with a relatively high rate of success, with selected machining conditions. 4.3 Verification Test of Optimal Result After identifying the most effective parameters, the final step is to verify the optimal values of parameters and the surface roughness (i.e., response) by conduct- ing confirmation experiments and comparing the results of these validation runs with respects to the val- ues obtained by the LINGO-solver optimization model. The validation experiments were conducted according to the optimal process parameter levels (i.e., high cutting speed, low feed rate, low depth of cut and high tool nose radius). Three trials were conducted and the corresponding surface roughness values were measured. The average experimental values and soft- ware predicted value are 10.29 µm and 10.26 respec- tively, at the 95% confidence levels. The Table. 7 shows experimental values and optimal values of sur- face roughness. The experimental values were com- pared with the predicted values from the LINGO- solver and the software found that the experimental values were very close to the predicted values. 5. Conclusions A reliable surface roughness model for steel turning was developed using RSM and incorporated cutting speed, feed rate, depth of cut, and the tool nose radius. The study was optimized by the LINGO-solver approach, which is a global optimization technique. This has resulted in a fairly useful method of obtaining process parameters in order to attain the required sur- face quality. The optimal parameter combination of the turning process corresponded to a cutting speed of 189 mitres/minute, a feed rate of 0.06 mm/revolution, a depth of cut of 0.2 mm, and a tool nose radius of 1.2 mm by the Lingo-solver approach.This has validated the trends available in the literature and extended the data range to the present operating conditions, apart from improving the accuracy and modeling by involv- ing the most recent modeling method. The application of LINGO-solver optimization to obtain optimal machining conditions will be quite useful at the com- putational planning stage in the production of high quality goods with tight tolerances by a variety of machining operations, and in the adaptive control of automated machine tools. Acknowledgment The authors would like to express their deep grati- tude to the Department of Mechanical Engineering of Aligarh Muslim University for providing laboratory facilities and financial support. 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