OPTIMIZATION OF THE FSW PROCESS FOR ALUMINUM ALLOYS AA5083 BY THE GREY-BASED TAGUCHI METHOD T.P. Chen*,a,b, C.H. Chienb, W.B. Linc and Y.J. Chaod Department of Electrical Engineering, Fortune Institute of Technology, Kaohsiung 83160, Taiwan. b Department of Mechanical and Electro-Mechanical Engineering, National Sun Yat-Sen University, Kaohsiung 80424, Taiwan. c Department of Mechanical Engineering, Chinese Military Academy, Kaohsiung 83059, Taiwan. d Department of Mechanical Engineering, University of South Carolina, Columbia, SC 29208, USA. a ABSTRACT Friction Stir Welding (FSW) can produce superior mechanical properties in the weld zone. The purpose of this paper is to find the optimum operating conditions of FSW process for two plates of aluminum alloy AA5083 welded in butt joint. In the FSW procedure, there were four major controllable four-level factors, i.e., the tool rotation speed, transverse speed (feed rate), tool tilt angle with respect to the workpiece surface and pin tool length. The uncontrollable factors are the ultimate tensile strength and elongation rate which can be converted to signal-to-noise ratios with the larger the better. In order to achieve the aim of the multiple-response process of robustness, the grey-based Taguchi method is proposed. A grey relational grade obtained from the grey relational analysis is used as the multiple performance characteristic. Analysis of variance (ANOVA) is the statistic method used to interpret these experimental data assigned to the L16 orthogonal arrays. Taguchi technique with ANOVA is used to find out the significant variables (factors) for the multiple performance characteristic. Introduction Friction Stir Welding (FSW) is a novel material joining technique invented [1] by the welding Institute (TWI) in 1991, which can produce superior mechanical properties in the weld zone. It was initially applied to aluminum alloys. In recent years, FSW has become one of the most important solid-state joining processes. The FSW may be gradually replaced conventional welding methods applied to aluminum alloys materials. As compared to the conventional welding methods, FSW consumes considerably less energy. No cover gas or flux is used, thereby making the process environmentally friendly. The joining does not involve any use of filler metal and therefore any aluminum alloy can be joined without concern for the compatibility of composition, which is an issue in fusion welding. In FSW process [2], a non-consumable rotating tool with a specially designed pin and shoulder is inserted into the abutting edges of sheets or plates to be joined and traversed along the line of joint. The heat is generated between the wear resistant welding tool and the material of the workpieces. The heat causes the latter to soften without reaching the melting point and allows traveling of the tool along the welding line. Comparing the moving velocity of the tool and the heat traveling time for soften temperature, the optimal tool moving velocity was provided by [3]. The percentage of the generated heat from the tool shoulder or the tool pin was investigated by [4]. The tool serves two primary functions: (a) heating of workpiece, and (b) movement of material to produce the joint. The heat transfer process in the workpieces is one of the most important aspects in the FSW study [3-6]. A good understanding of the thermomechanics in the workpieces can be helpful in evaluating the process as well as the weld quality [7]. The study of the heat flow into FSW tools is also helpful in evaluating the weld quality [7-8]. Furthermore, the controllable parameters for FSW processing are not only the moving tool velocity [9] as mentioned above, but also the rotation speed of the tool, length of the tool pin, tool tilt angle with respect to the workpiece surface [10], stirrer geometry and so on. The FSW process is a complex series of materials processing in the physical properties changed. It is not easily to be modeled by simple mathematics, but can be studied by experiment [11] or by finite element method [12]. Taguchi technique for the experimental data analysis is a common method using in conventional welding [13-17], but not in FSW. The grey-based Taguchi technique for the experimental data analysis is a relative new method applied to conventional welding [18]. However, the grey-based Taguchi method for the experimental data analysis is not available for any publications corresponding to the FSW, to the best knowledge of the authors of this paper. The objectives of this current paper are to study the effects of rotation speed of the tool, transverse speed (moving velocity of the tool), tool tiled angle with respect to the workpiece surface and pin tool length on both the ultimate tensile strength and elongation rate simultaneously. The four four-level controllable variables will be assigned to the L16 orthogonal arrays. The values of uncontrollable variables will be converted to the signal-to-noise (S/N) ratio performance measures. Parameter design, based on the Taguchi method, can optimize the performance characteristic through the setting of process parameters and can reduce the sensitivity of the system performance to sources of variation. The multiple-response process of robustness, the grey-based Taguchi method [18-19] is proposed. The ANOVA is the statistic method used to interpret these experimental data. Experimental Procedures The specimens used for the friction stir processing experiments were machined from AA5083 aluminum alloy plates, which were bought from market, into 3.0 mm x 50 mm x 160 mm plates. Two plates of AA5083 aluminum alloys were friction stir welded (FSW) in the butt configuration by using an adapted milling machine at Department of Mechanical Engineering, Chinese Military Academy, Taiwan. The two plates were placed side to side and clamped firmly to prevent the abutting joint faces from being forced apart. The FSW procedure was based on the TWI procedure described in the patent [1]. In the FSW procedure, there were four mainly controllable four-level factors, i.e., the tool rotation speed, transverse speed (feed rate), tool tilt angle with respect to the workpiece surface and pin tool length were provided latter in the next section. The welding direction of aluminum alloy was along the line of the joint. The rotation of tool resulted in stirring and mixing of material around the rotating pin and the translation of tool moved the stirred material from the front to the back of the pin and finished welding process. The advanced side and retreating side of the welding sheet were defined according to the rotation of tool and the joint line. The tilt of the tool towards trailing direction ensured that the shoulder of the tool held the stirred material by threaded pin and moved material efficiently from the front to the back of the pin. The insertion depth of pin into the workpieces was associated with the pin height (length). The tool shoulder contacting with the workpiece surface depends on the insertion depth of pin, which resulted in generation of welds with inner channel, surface groove, excessive flash or local thinning of the welded plates and so on. Totally, sixteen FSW butt joints were produced. Each butt joint was cut to be five pieces of specimens for tensile test based on ASTM standard. Initially, five specimens for each trial were the size 10x160mm sawed the vertical direction to the welding line from each butt joint. Then each tensile specimen was milled to be the configuration and size as shown in Figure 1. The tensile tests were carried out by Instron 8801 Universal Testing Machine, and taken their loading and elongation record of specimens. Finally, the ultimate tensile strength and elongation rate can be calculated on the bases of their fracture loading and elongation of specimens. 100 16 12 18 50 Welded R8 Unit: mm Figure 1. Configuration and size of the tensile specimens Methods of analysis Analysis of variance (ANOVA) ANOVA with Taguchi technique [20-21] is the statistic method used to interpret experimental data. In this work, there are four mainly controllable factors, i.e., four-level rotation speed (550/1100/1250/1800 rpm), Transverse speed (53/90/143/180 mm/min), tool tiled angle (1/2/3/4 degree) and pin tool length (2.5/2.7/2.9/3.1 mm), as shown in Table 1, are used for analysis of variance. Their interactions are possible to be computed from resulted experimental data through analysis of variance. In this paper, using Taguchi techniques, only 80 (16×5) experiments for L16 orthogonal arrays are needed for elongation rate (%) and ultimate tensile strength (Mpa). By neglecting the values of the initial and the ending pieces, along welding direction, from each five-piece trial corresponding to the same experimental condition, the resulted elongation rate and ultimate tensile strength, are shown in Table 2. Total degree of freedom can be calculated as 47. The average values of ultimate tensile strength (MPA) and elongation rate (%) with corresponding signal to noise ratios, i.e. SN1 and SN2, respectively, are calculated. The desired characteristic of uncontrollable factors for the response can be measured by signal to noise ratio (SN). Based on the use of Taguchi’s recommendation [20-21], signal to noise ratio for ultimate tensile strength and elongation rate is the larger the better. Table 1. Mainly controllable parameters and their levels Symbol Process parameter unit Level 1 A Rotation speed rpm 550 B Transverse speed mm/min 53 C Tool tiled angle degree 1 D Pin tool length mm 2.5 Level 2 1100 90 2 2.7 Table 2. The FSW process data of L16 orthogonal arrays Process parameter levels Ultimate tensile strength (MPA) Trial no. Ave. S/N1 A B C D 1 1 1 1 1 286.70 49.15 2 1 2 2 2 271.90 48.69 3 1 3 3 3 266.40 48.51 4 1 4 4 4 215.33 46.66 5 2 1 2 3 327.00 50.29 6 2 2 1 4 160.50 44.11 7 2 3 4 1 183.10 45.25 8 2 4 3 2 217.13 46.73 9 3 1 3 4 306.53 49.73 10 3 2 4 3 316.40 50.00 11 3 3 1 2 195.07 45.80 12 3 4 2 1 189.43 45.55 13 4 1 4 2 189.13 45.54 14 4 2 3 1 271.77 48.68 15 4 3 2 4 237.03 47.50 16 4 4 1 3 359.43 51.11 Level 3 1250 143 3 2.9 Level 4 1800 180 4 3.1 Elongation rate (%) Ave. S/N2 16.16 24.17 12.65 22.04 11.67 21.34 7.78 17.82 20.05 26.04 5.77 15.22 8.29 18.37 9.37 19.43 16.16 24.17 17.97 25.09 9.40 19.46 7.13 17.06 13.53 22.63 13.13 22.37 17.32 24.77 30.08 29.56 Grey relational analysis In the grey relational analysis, a data preprocessing is first performed in order to normalize the raw data for analysis. In this study, a linear normalization of the S/N ratio is performed in the range between zero and unity, which is also called the grey relational generating [18-19]. The normalized S/N ratio xij for the ith performance characteristic in the jth experiment can be expressed as: xij = η ij − min j η ij max j η ij − min j η ij (1) In the Taguchi method for the larger the better, the S/N ratio is used to determine the deviation of the performance characteristic from the desired value. The S/N ratio observations y ij η ij for the ith performance characteristic in the jth experiment for the m in each trial can be expressed as: η ij = −10 log10 ( 1 ∑ yij−2 ) m (2) Table 3 shows the normalized S/N ratio for ultimate tensile strength and elongation rate. Basically, the larger normalized S/N ratio corresponds to the better performance and the best normalized S/N ratio is equal to unity. The grey relational coefficient is calculated to express the relationship between the ideal (best) and actual normalized S/N ratio. The grey relational coefficient ξ ij = ξ ij for the ith performance characteristic in the jth min i min j xi0 − xij + ς max i max j xi0 − xij xi0 − xij + ς max i max j xi0 − xij experiment can be expressed as: (3) xi0 is the ideal normalized S/N ratio for the ith performance characteristic and ς the distinguishing coefficient which is defined in the range 0 ≤ ς ≤ 1 . In this paper, the distinguishing coefficient is assumed to be 0.5, which is the most common where used in the literature. A weighting method is then used to integrate the grey relational coefficients of each experiment into the grey relational grade. The overall evaluation of the multiple performance characteristics is based on the grey relational grade, i.e. m γ j = ∑ wiξ ij (4) i =1 where γj is the grey relational grade for the jth experiment, wi the weighting factor for the ith performance characteristic, and m the number of performance characteristics. In this paper, the weighting factors for ultimate tensile strength and elongation rate are assumed to be 0.75 and 0.25, respectively. The grey relational grade is shown in Table 4 for the overall performance characteristics from combination of ultimate tensile strength and elongation rate. Once the optimal level of the FSW process parameters is selected, the final step is to predict and verify improvement of the performance characteristic using the optimal level of FSW process parameters. The estimated grey relational grade using the optimal level of FSW process parameters can be calculated as: γˆ [19] q γˆ = γ m + ∑ (γ i − γ m ) (5) i =1 where γm = total mean of the grey relational grade, γi = mean of the grey relational grade at the optimal level, and q = number of FSW process parameters that significantly affect the multiple performance characteristics. Table 3. Data preprocessing of each performance characteristic Trial no. Ultimate tensile strength Elongation rate Ideal sequence 1 1 1 0.72 0.62 2 0.65 0.48 3 0.63 0.43 4 0.36 0.18 5 0.88 0.75 6 0.00 0.00 7 0.16 0.22 8 0.37 0.29 9 0.80 0.62 10 0.84 0.69 11 0.24 0.30 12 0.21 0.13 13 0.20 0.52 14 0.65 0.50 15 0.48 0.67 16 1.00 1.00 Results and discussions In this work, there are four major controllable factors, i.e., four-level rotation speed (550/1100/1250/1800 rpm), transverse speed (53/90/143/180 mm/min), tool tiled angle (1/2/3/4 degree) and pin tool length (2.5/2.7/2.9/3.1 mm), as shown in Table 1, were chosen for analysis of variance. In Table 2, based on the Taguchi’s recommendation for the larger the better, signal to noise ratios, SN1 and SN2 for ultimate tensile strength and elongation rate, respectively, were computed by the equation (2) with their corresponding average values. Usually, based on the mechanical property of materials considerations, ultimate tensile strength is more than elongation rate concerned. Therefore, in this study, the weighting factors for ultimate tensile strength (UTS) and elongation rate (ELR) are assumed to be 0.75 and 0.25, respectively. In practice, the weighting factor may depend on desired mechanical performance of the products. In the Table 4, the grey relational grade is a single index for the overall performance characteristics from combination of UTS and ELR. It has been shown that experiment 16 is the best multiple performance characteristics among 16 experiments because of the highest grey relational grade in the Table 4. In other words, the optimal FSW process for the best multiple performance characteristics is, based on the experiment 16, the combination of control factors A4B4C1D3. The effect of each FSW process parameter on the grey relational grade at different levels can be separated out because the experimental design is orthogonal. In the Table 5, the optimal FSW process for the best multiple performance characteristics is predicted to be the combination of control factors A4B1C1D3 which is the case excluding in the table of L16 orthogonal arrays. The relative important FSW process factors are DBAC. Figure 2 shows the response graph of the grey relational grade, where the larger grey relational grade, the better are the multiple performance characteristics. The effect at B1 and B4 has not much different. The accuracy of the grey relational grade for optimal combination of the FSW process parameters with the significantly effect multiple performance characteristics can be checked by the statistic method of ANOVA. Table 4. Grey relational grade and its order of each performance characteristic Trial no. ultimate tensile strength ( ξ ij ) elongation rate ( ξ ij ) Weighting Ideal sequence 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 0.75 1 0.64 0.59 0.57 0.44 0.81 0.33 0.37 0.44 0.72 0.76 0.40 0.39 0.39 0.59 0.49 1.00 0.25 1 0.57 0.49 0.47 0.38 0.67 0.33 0.39 0.41 0.57 0.62 0.42 0.36 0.51 0.50 0.60 1.00 Grey relational grade Order 0.62 0.57 0.55 0.43 0.78 0.33 0.38 0.44 0.68 0.72 0.40 0.38 0.42 0.57 0.52 1.00 5 7 8 11 2 16 15 10 4 3 13 14 12 6 9 1 The ANOVA summary results of the grey relational grade, as shown in the Table 6, indicates that pin tool length, transverse speed and rotation speed are the relatively significant FSW process parameters, respectively, for affecting the multiple performance characteristics. This result agrees with result of the response table for the grey relational grade, as shown in Table 5. Based on the previous discussions, the optimal FSW process for the best multiple performance characteristics is predicted to be the case of rotation speed at level 4, transverse speed at level 1, tool tiled angle at level 1 and pin tool length at level 3. The final step is to predict and verify the optimal FSW process parameters combinations for the best multiple performance characteristics. Standard FSW processing parameters is not available in the literature yet because FSW is a novel material joining technique. Therefore, in the paper, the initial FSW process parameters are not able to provide. The objective of this study becomes to obtain the optimal FSW process parameters combinations for the best multiple performance characteristics. Based on the equation (5), the estimated grey relational grade using the optimal FSW parameters can then be obtained. Table 7 shows the results of the confirmation experiment using optimal FSW parameters from prediction and experiment. The difference of grey relational grade between prediction and experiment is about 9% only, and prediction case is excluding the effect of non-significant parameters. The fracture positions of the specimens with the combination of control factors A4B4C1D3 are all located at base material which is outside of the welded zone. This result was seen and verified during the test at the case of experiment 16 but did not provide in Table 2. A4B4C1D3 is the experimental case of rotation speed at level 4, transverse speed at level 4, tool tiled angle at level 1 and pin tool length at level 3. A4B1C1D3 is the estimative case of rotation speed at level 4, transverse speed at level 1, tool tiled angle at level 1 and pin tool length at level 3. According to both difference (as shown Table 7) and response (as shown in Table 5 or in Figure 2) of the grey relational grade, both cases has not much different. Table 5. Response table for the grey relational grade Factors A B C D 1 0.54 0.62 0.59 0.49 2 0.48 0.55 0.56 0.46 3 0.55 0.46 0.56 0.76 4 0.63 0.56 0.49 0.49 Max-min 0.14 0.16 0.10 0.31 Rank 3 2 4 1 Levels Total mean grey relational grade 0.55 G rey R elational G rade 0.8 0.6 A B C D 0.4 0.2 0 A1 A2 A3 A4 B1 B2 B3 B4 C1 C2 C3 C4 D1 D2 D3 D4 Process Parameters Levels Figure 2. Response graph of the grey relational grade Source Sum of squares A 0.0424 B 0.0536 C 0.0234 D 0.2450 ERROR 0.1156 Total 0.4800 Table 6. ANOVA summary of the grey relational grade Degree of freedom Mean square F 3 0.0141 # 4.27 3 0.0179 # 5.39 3 0.0078 2.35 3 0.0817 # 24.65 35 0.0033 47 # At least 95% confidence. Contribution (%) 6.76 9.08 2.79 48.95 32.42 100 Table 7. Results of welding performance using the optimal FSW process parameters Prediction Experiment Level A4B1C1D3 A4B4C1D3 Ultimate tensile strength (MPA) 359.43 Elongation rate (%) 30.08 Grey relational grade 0.91 1 Conclusions The optimum operating conditions of FSW process have been obtained for two plates of aluminum alloy AA5083 welded in butt joint. The optimal FSW process parameters combinations are rotation speed at 1900 rpm, transverse speed at 53 or 180 mm/min, tool tiled angle at 1 degree and pin tool length at 2.9 mm for the best multiple performance characteristics. The most significant FSW process parameter is pin tool length for affecting the multiple performance characteristics. Tool tiled angle is not a significant FSW process parameter for two plates of aluminum alloy AA5083 welded in butt joint. 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