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Article

Optimization of the Cutting Regime in the Turning of the AISI 316L Steel for Biomedical Purposes Based on the Initial Progression of Tool Wear

by
Ricardo del Risco-Alfonso
1,
Roberto Pérez-Rodríguez
2,*,
Patricia del Carmen Zambrano Robledo
3,
Marcelino Rivas Santana
4 and
Ramón Quiza
4
1
CEEFREP Study Centre, University of Camagüey, Camagüey 74650, Cuba
2
CAD/CAM Study Centre, University of Holguin, Holguin 80100, Cuba
3
División de Estudios de Posgrados, Universidad Autónoma de Nuevo León, Nuevo León 64260, Mexico
4
CEFAS Study Centre, University of Matanzas, Matanzas 40100, Cuba
*
Author to whom correspondence should be addressed.
Metals 2021, 11(11), 1698; https://doi.org/10.3390/met11111698
Submission received: 14 September 2021 / Revised: 15 October 2021 / Accepted: 20 October 2021 / Published: 25 October 2021
(This article belongs to the Special Issue Tailor-Made Porous Biomaterials for Hard and Soft Tissues)

Abstract

:
The development of biomedical devices has improved the quality of life for millions of people. The increase in life expectancy generates an increase in the demand for these devices. One of the most used materials for these purposes is 316 L austenitic stainless steel due to its mechanical properties and good biocompatibility. The objective of the present investigation was to identify the dependence between the main cutting force, the initial speed of the tool wear, the surface roughness, and the parameters of the cutting regime. Based on these dependencies, a multi-objective optimization model is proposed to minimize the energy consumed and initial wear rate, as well as to maximize productivity, maintaining the surface roughness values below those established by the ISO 5832-1 standard. The wear of the cutting tool was measured on a scanning electron microscope. For the optimization process, a genetic algorithm based on NSGA-II (Non-nominated Sorting Genetic Algorithm) was implemented. The input variables were the cutting speed and the feed in three levels. The cutting force and surface roughness were set as restrictions. It is concluded that the mathematical model allows for the optimization of the cutting regime during dry turning and with the use of MQL (Minimum Quantity Lubrication) with BIDEMICS JX1 ceramic tools (NTK Cutting Tools, Wixom, MI, USA), of AISI 316 L steel for biomedical purposes. Pareto sets and boundaries allow for choosing the most appropriate solution according to the specific conditions of the workshop where it is applied, minimizing the initial progression of tool wear and energy consumed, and maximizing productivity by guaranteeing the surface roughness values established for these types of parts according to the standard.

Graphical Abstract

1. Introduction

The development achieved in the field of orthopedic surgery has required the production of biomedical devices, which have led to an improvement in the quality of life of millions of people [1]. At the same time, the increase in the life expectancy of the population generates an increase in the demand for these devices, with the aim of minimizing the impacts of accidents and the occurrence of age-related injuries. One of the most used materials for these purposes is 316 L austenitic stainless steel due to its properties of high resistance to corrosion, low cost, and good bio-compatibility [2].
These steels report poor machinability due to their high tendency to work harder; toughness and relatively low thermal conductivity [3]; and high tensile strength, which induce high cutting forces and the generation of high temperatures. These factors considerably increase tool wear, build-up edge formation, and increase the surface roughness [4,5,6]. Stainless steels are traditionally machined at cutting speeds ranging from 150 to 300 m/min, although these materials show good behavior at higher cutting speeds [7,8]. This aspect is remarkable due to the influence that surface roughness has on the behavior of austenitic stainless steel used as a biomaterial [9,10].
The search for new materials for cutting tools for machining these materials is of interest to the biomedical industry sector. In this sense, studies are appreciated in the dry turning of AISI 304 and AISI 316 steels using multi-layer-coated and cemented carbide tools [11], where it was demonstrated that the cutting speed has a significant effect on the values of the surface roughness. Similarly, studies [12] are identified with the objective of monitoring the wear of coated cemented carbide tools and surface roughness in the turning of AISI 316L steel under different lubrication conditions.
In the case of the use of ceramics as a material for cutting tools, it has been found that alumina successfully machines stainless steels [13]. Furthermore, there is little evidence on the machining of stainless steels with the use of ceramic cutting tools [14,15,16]. The limitations are mainly focused on the studies of the failure mechanisms of the tool, as well as its influence on the surface roughness. The studies analyzed show that ceramic tools can be used with satisfactory results in machining austenitic stainless steels.
There is a direct relationship between the parameters of the cutting regime and the behavior of the initial wear of the cutting tool, alongside its useful life. However, this singularity has received less attention compared to the other two regions of the wear curve [17,18]. At the same time, to evaluate this initial wear of the tool, it is necessary to apply multi-objective optimization [19] of the parameters of the cutting regime [20] in order to reduce its effects. To solve multi-objective optimization problems, a large number of tools have been developed [21]. Among the most used techniques are genetic algorithms, the most widely used being the genetic algorithm of the Non-nominated Sorting Genetic Algorithm (NSGA-II).
The review of the scientific literature confirms that the use of ceramic tools in the machining of stainless steels and specifically AISI 316L has been little discussed. The BIDEMIC JX1 ceramic tool was specially designed for machining heat-resistant alloys [22]; however, there are no studies that relate and optimize the parameters of the cutting regime with the initial wear of these tools for the machining of these types of steels.
The main objective of this research study is to identify the dependence between the main cutting force, the initial speed of wear of the cutting tool, the surface roughness, and the parameters of the cutting regime in turning AISI 316L [15] steel for biomedical purposes. From these dependency relationships, a multi-objective optimization model based on the NSGA-II algorithm [23] is proposed to minimize the energy consumed and initial rate of wear of the cutting tool, and to maximize productivity, maintaining the values of surface roughness below those established in the ISO 5832-1 standard.

2. Materials and Methods

The procedure used for the investigation is shown in Figure 1. The following were selected as response variables: (a) surface roughness due to its influence on the biocompatibility of the material; (b) the initial wear of the cutting tool due to its incidence on the surface roughness; and (c) the values of the cutting forces as an indicator of the machinability of the material.
For the investigation, an AISI 316L steel bar with a chemical composition according to the ISO 5832-1 standard was used. The average hardness obtained with a Wilson Rockwell durometer was 148 HRB. The cutting tool used was a “BIDEMICS” RNGN 120700E004 JX1 (NTK Cutting Tools, Aichi, Japan) from the ceramic family without coating (12.7 mm in diameter and 7.94 mm in thickness), specially designed for machining heat-resistant alloys. The insert was placed in a Kennametal DRGNR-164D-KC3 NA4 (Kennametal, Pittsburgh, PA, USA) holder with top flange and screw fixation. As a machine tool, a HAAS ST10 CNC (HAAS Automation, Oxnard, CA, USA) lathe (Figure 2) was used with a maximum capacity of 356 × 406 mm, 11.2 kW of power, and 6000 rpm in the spindle. A Kistler 9257B dynamometer (Kistler Group, Winterthur, Switzerland) was used to measure cutting forces and a Mitutoyo SJ-201P (Mitutoyo Corporation, Kanagawa, Japan) roughness tester to measure surface roughness.
As a test specimen, an austenitic stainless steel AISI 316L bar, 25 mm in diameter and 120 mm in length, was used, mounted in the CNC machine tool between the nozzle and point. The depth of cut (ap) was kept constant and equal to 0.5 mm. As an output variable, the Fz was measured. Wear (VB) was measured on the relief surface of the cutting tool with the help of a Zeiss EVO MA25 scanning electron microscope (Zeiss Microscopy, Jena, Germany) and, finally, the Ra was measured with a Mitutoyo SJ-201P roughness tester (Mitutoyo Corporation, Kanagawa, Japan). For the MQL lubrication regime, a TRI-COOL MD-1 lubricant (Trico Oilers, Berkshire, UK) was employed and a vegetable type was used in both ferrous and non-ferrous metal-cutting operations.

Objective Function and Optimization with NSGA-II

In the present research study, we proposed to minimize the initial progression of the cutting tool wear and energy consumed, as well as to maximize productivity and maintain the surface roughness values below the established limit. These parameters were selected because they represent the three main components in the cost of a machining process [24,25]. Productivity is defined by unit machining time, which can be defined as the inverse of the material removal rate. Therefore, the optimization problem can be stated as follows:
The objective functions are:
Minimize :   t 0 = 1 MRR = 10 3 V · f · a P [ min / dm 3 ]
Minimize :   VB 0 = λ V μ f ε [ mm / min ]
Minimize :   E 0 = P c · t 0 60 [ kW · h / dm 3 ]
where MRR is the material removal rate, the terms λ, μ, and ε are regression coefficients, while Pc is the cutting power given by:
P c = F z · V 6 · 10 4 [ kW ]
where Fc is the main cutting force, which is related to the cutting parameters for:
F c = α V β f γ [ N ]
where α, β, and γ are regression coefficients. Equations (1)–(3) are subject to restrictions:
200   m / min V 400   m / min
0.1 mm / rev f 0.20   mm / rev
R a = φ · V χ · f ψ 0.5   [ μ m ]
where φ, χ, and ψ are regression coefficients.

3. Results and Discussion

A chemical composition study was carried out on the BIDEMICS RNGN 120700E004 JX1 (NTK Cutting Tools, Aichi, Japan) insert (Figure 3). The results are shown in Table 1, verifying that the chemical composition is similar in both areas. Therefore, the insert is shown to be uncoated. Each one underwent a visual inspection of the cutting edge with the help of the Olympus SZH microscope (Olympus Corporation, Tokyo, Japan) in order to verify the surface integrity.
The experiment was developed for a dry (1) turning operation and with the use of MQL (−1). The cutting speed (V) in three levels (200, 300, and 400 m/min; 1, 0, and −1) and the advance (f) in three levels (0.1, 0.15, and 0.2 mm/rev; 1, 0, and −1) were taken as independent variables and three replications were made of each run (Table 2).

3.1. Study of the Initial Progression of the Cutting Tool Wear

From the cutting tool wear values obtained and considering that the machining length was constant (100 mm for each cutting pass under both lubrication conditions), the initial progression of wear could be defined for lubrication conditions. This allowed for obtaining the equations that define it (Table 3).
Figure 4 shows how the initial progression of tool wear for both lubrication conditions increased with the increasing cutting speed, this being the factor that has the greatest impact. This corresponds to the theory of metal cutting [18], where it is observed that the cutting tool wear is lower during machining using the MQL.

3.2. Evaluation of the Wear of the Cutting Tool on the Relief Surface

The flank wear (VB) of the inserts was carried out after machining throughout the operation (100 mm) for each combination of the variables of feed speed, cutting speed, and type of lubrication. Wear was measured on the incidence surface since it is the surface that most influences surface roughness, as shown by the studies carried out by Kumar et al. [26] and Labidi et al. [27].
In Figure 5a,b, the magnitude of the wear of the cutting tool on the incidence surface is shown for the cutting speed of 200 m/min and feed speed of 0.1 mm/rev for dry machining and with MQL, respectively. It can be seen that the insert that was used with MQL had a better behavior in terms of wear. It is also observed that the magnitude of wear (VB) was lower in the case of machining with MQL. In the case of dry machining, the appearance of material detachment in the cutting tool was also identified on the attack surface. This detachment occurred, fundamentally, in a small area where the first contact of the cutting tool with the specimen occurred. This corresponds to that reported by other studies of Mohd-Ali et al. [28], Mohd-Ali et al. [29], and Ahmad-Azhar et al. [30].
Figure 6a,b shows the wear of the cutting tool on the incidence surface for the cutting speed of 200 m/min and feed speed of 0.2 mm/rev for the dry machining and MQL, respectively. As in the previous case, the insert in the machining with MQL had a better performance and less wear was observed on the cutting tool. If the wear areas are compared for the minimum cutting speed, with the minimum and maximum values of the feed rate, it can be concluded that in the case of dry machining and with MQL, there was practically no variation in wear. Therefore, the behavior is very similar, evidencing the little influence of the feed rate on it.
Figure 7a,b show the wear of the cutting tool on the incidence surface for the cutting speed of 400 m/min and feed speed 0.1 mm/rev of the dry machining and with MQL, respectively. As can be seen, the magnitude of wear increased with increasing cutting speed, indicating a better behavior for the insert working with MQL, whose wear magnitude was lower.
Figure 8a,b show the wear of the cutting tool for the cutting speed of 400 m/min and feed rate 0.2 mm/rev for the dry machining and with MQL, respectively. It can be seen that, concerning the lower cutting speed by varying the feed rate, the wear was practically unchanged. However, when compared with the cutting speed, the variation in wear was significant, which shows that the cutting speed in these tools is the factor that most influences the wear. It can be seen that, for all cases, the predominant wear on the incidence surface was the abrasive wear.

3.3. Cutting Regime Optimization

The optimization was carried out using the so-called a posteriori approach, where no information is provided on the preferences between the different targets before running the optimization [23]. This method returns a set of non-dominated solutions called Pareto fronts. In the present study, the NSGA-II genetic classification algorithm was selected [31].
To test the convergence of the Pareto front obtained, 30 repetitions were carried out for each problem. In both cases, a population of 5000 solutions and a maximum of 20,000 generations were used. As a frontal quality metric, hyper-volume was selected since it evaluates both the diversity and convergence of the obtained set [32].
Once the optimization had been carried out, the graphical representations of the Pareto set (Figure 9a) and Pareto front (Figure 9b) for dry machining were obtained, which allowed for choosing the most appropriate solution according to the specific conditions from the workshop. Firstly, it can be observed that the Pareto front formed a special curve, where the values of the main time and cutting energy increased simultaneously when the initial progression of the wear of the cutting tool decreased.
For dry machining, the reference point was selected at τ0 = 100 min/dm3, E0 = 1.5 kWh/dm3, and VB 0 = 0.8 mm/min. With these parameters, the mean value of the Pareto frontal hypervolume, with a confidence of 95%, was in the interval 17.46 ± 0.02, which corresponds to a coefficient of variation of 0.3%. This result indicates a high coincidence of the obtained fronts, thus the results are close enough to the true Pareto front to be used for practical purposes. Two areas can be appreciated. The first zone (AB interval) corresponded to the value of the lowest cutting speed, with feed speed values that increased from its minimum to the value where the maximum feasible surface roughness value of the surface was reached (according to the value that was set as a restriction). In the second zone (interval B–C), both cutting parameters increased at the same time, maintaining the surface roughness at its maximum feasible value (Table 4).
Regarding the dry machining, the graphical representations of the Pareto set (Figure 10a) and Pareto front (Figure 10b) were obtained for machining with MQL, which allowed for choosing the most appropriate solution according to the specific shop conditions for this lubrication regime. It was observed that when using the MQL, there was also a correspondence between the increase in the unit cutting time and the unit cutting energy (with the corresponding decrease in the wear rate of the cutting tool).
For the case of machining with MQL, the hypervolume was calculated with reference to the point t0 = 100 min/dm3, E0 = 1.4 kWh/dm3 y, and VB 0 = 0.5 mm/min. The resulting value was 12.86 ± 0.01 for a confidence level of 95%, corresponding to a coefficient of variation of 0.2%. Here, there was also a good convergence with the true Pareto front.
Three zones could be identified in the solutions obtained. The first zone (interval A–B) corresponded to the lowest value of the cutting speed. In this zone, the value of the speed of advance increased from its minimum value to the point where the surface roughness reached its limit of feasibility. The second subset contained the solutions where the surface roughness reached its maximum allowed value. In this case, the cutting speed and feed speed increased simultaneously until reaching their upper limit. Finally, the third zone was comprised of solutions where the feed speed was kept at its maximum value, while the cutting speed increased to its upper limit. This increase corresponded to a decrease in surface roughness and all this can be seen in Table 5.
It should be noted that in the case of the work with MQL, proceeding from point B to C means an increase of 118% in productivity and a decrease of 31% in energy consumption, but the consumption of the cutting tools increases by 124%. This type of analysis should be complemented with the corresponding cost evaluation for the lubrication regime.

4. Conclusions

The study carried out shows that there is a statistically significant effect of cutting speed and feed rate on the initial progression of wear on the impact surface of BIDEMICS JX1 cutting tools, coinciding with recent studies [25]. The initial progression of wear on the incidence surface has a direct relationship with the logarithms of the cutting speed and feed rate. In this case, the cutting speed is the parameter with the highest incidence, in accordance with that reported in similar studies [17].
For the analysis of the convergence of each Pareto front obtained in each replica, the hypervolume was taken as the front quality metric. In this sense, both for dry machining and MQL, the coefficient of variation is 0.3% and 0.2%, respectively, which indicates a high coincidence of the faces obtained. Thus, it is evidenced that the results are close enough to the true Pareto front to be used for practical purposes.
The sets and Pareto boundaries obtained provide a range of optimal solutions that can be applied in different workshops according to their needs. For decision-making, solution A should be selected if lower consumption of the cutting tools is desired, without considering productivity and energy consumption. Solution D represents the one with the highest productivity and lowest energy consumption. Points B and C are compensation solutions. It should be noted that proceeding from point B to C means a 118% increase in productivity and a 31% decrease in energy consumption, but the consumption of the cutting tools increases by 124%. This type of analysis must be complemented by the corresponding cost evaluation.
The mathematical model of the optimization of the cutting regime (V, f) using a genetic algorithm based on NSGA-II during dry turning and with the use of MQL, with BIDEMICS JX1 ceramic tools from AISI 316L steel, allowed for the identification of the solutions more relevant for minimizing the initial progression of cutting tool wear and the energy consumed. Productivity was maximized, guaranteeing surface roughness values according to the ISO 7206-2 standard. The approach uses a new generation genetic algorithm design, in contrast to similar studies [5,19,20,27].

Author Contributions

Conceptualization, R.d.R.-A., R.P.-R., M.R.S. and R.Q.; investigation, R.R.A., R.P.R. and P.d.C.Z.R.; software, R.Q. and M.R.S.; validation, R.Q. and M.R.S.; writing—original draft preparation, R.d.R.-A., R.P.-R. and P.d.C.Z.R.; data curation, R.d.R.-A., R.P.-R. and R.Q.; supervision, M.R.S. and R.Q. All authors have read and agreed to the published version of the manuscript.

Funding

The authors thank the Government of Mexico for granting the Scholarship through the Secretary of Foreign Relations, which allowed for the stay at the Tecnológico de Monterrey to carry out the research, and Honeywell Aerospace de México for the logistical support.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Data sharing is not applicable to this article.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Procedure used in the investigation (t0 is the unit cut-off time, V is the cutting speed, VB 0 is the initial wear progression, E 0 is the unit energy of cutting, f is the feed speed, Ra is the surface roughness). NSGA-II: Non-nominated Sorting Genetic Algorithm. BIDEMICS JX1: ceramic tools.
Figure 1. Procedure used in the investigation (t0 is the unit cut-off time, V is the cutting speed, VB 0 is the initial wear progression, E 0 is the unit energy of cutting, f is the feed speed, Ra is the surface roughness). NSGA-II: Non-nominated Sorting Genetic Algorithm. BIDEMICS JX1: ceramic tools.
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Figure 2. CNC machine tool used to perform wear tests on the cutting tools. CNC: Computer Numerical Control. Fz: main cutting force. Fa: axial cutting force. Fr: radial cutting force.
Figure 2. CNC machine tool used to perform wear tests on the cutting tools. CNC: Computer Numerical Control. Fz: main cutting force. Fa: axial cutting force. Fr: radial cutting force.
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Figure 3. Microstructure of the tool with 127X magnification: (a) external zone and (b) internal zone. EHT: Electron High Tension. WD: Working Distance.
Figure 3. Microstructure of the tool with 127X magnification: (a) external zone and (b) internal zone. EHT: Electron High Tension. WD: Working Distance.
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Figure 4. Behavior of the initial wear progression for (a) MQL (Minimum Quantity Lubrication) machining and (b) dry machining.
Figure 4. Behavior of the initial wear progression for (a) MQL (Minimum Quantity Lubrication) machining and (b) dry machining.
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Figure 5. Wear on the incidence surface of the cutting tool for V = 200 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
Figure 5. Wear on the incidence surface of the cutting tool for V = 200 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
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Figure 6. Wear on the incidence surface of the cutting tool for V = 200 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
Figure 6. Wear on the incidence surface of the cutting tool for V = 200 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
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Figure 7. Wear on the incidence surface of the cutting tool for V = 400 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
Figure 7. Wear on the incidence surface of the cutting tool for V = 400 m/min and f = 0.1 mm/rev: (a) dry and (b) with MQL.
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Figure 8. Wear on the incidence surface of the cutting tool for V = 400 m/min and f = 0.1 mm/r: (a) dry and (b) with MQL.
Figure 8. Wear on the incidence surface of the cutting tool for V = 400 m/min and f = 0.1 mm/r: (a) dry and (b) with MQL.
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Figure 9. Values obtained in the optimization for dry machining. (a) graph of the Pareto set, (b) graph of the Pareto front (A, B and C: most relevant solutions for the selection of machining parameters).
Figure 9. Values obtained in the optimization for dry machining. (a) graph of the Pareto set, (b) graph of the Pareto front (A, B and C: most relevant solutions for the selection of machining parameters).
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Figure 10. Values obtained in the optimization for machining with MQL. (a) graph of the Pareto set, (b) graph of the Pareto front (A, B, C and D: most relevant solutions for the selection of machining parameters).
Figure 10. Values obtained in the optimization for machining with MQL. (a) graph of the Pareto set, (b) graph of the Pareto front (A, B, C and D: most relevant solutions for the selection of machining parameters).
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Table 1. Chemical composition of the cutting tool.
Table 1. Chemical composition of the cutting tool.
% W% O% Al% C% Zr
External Zone55.2318.7816.126.43.45
Internal Zone56.2217.9417.334.923.57
Table 2. Experimental results using the complete factorial array. No.: Number of the trials. LC: lubrication conditions. VB: flank wear. Fz: main cutting force. f: feed speed. Ra: surface roughness.
Table 2. Experimental results using the complete factorial array. No.: Number of the trials. LC: lubrication conditions. VB: flank wear. Fz: main cutting force. f: feed speed. Ra: surface roughness.
Input ParametersOutput ParametersInput ParametersOutput Parameters
No.VfLCVBRaFzNo.VfLCVBRaFz
10−110.0770.30248.17280−110.0760.41240.30
211−10.0440.38290.97291−110.0960.33220.81
31110.0750.54340.1130−10−10.0550.48290.72
4−1010.0600.55310.98310010.0740.49288.98
50−1−10.0540.30229.2232−1−110.0630.57289.99
6−1−110.0620.53290.87331010.0910.40285.01
7−1110.0500.67383.8134−1010.0610.58319.90
81010.0800.38280.703510−10.0500.34222.40
90110.0640.66348.493601−10.0490.42290.26
101−110.0970.30224.27370−1−10.0520.30237.05
11−1−1−10.0460.47242.89381110.0780.52345.55
1201−10.0480.43291.043900−10.0410.44260.38
1300−10.0530.41261.82400110.0730.64351.78
14−11−10.0410.52330.374101−10.0490.44288.00
1510−10.0490.33215.9142−1110.0610.66379.04
16−10−10.0440.49288.87431−1−10.0640.26205.63
171−1−10.0580.25200.28440010.0720.51292.54
180010.0740.52280.4845−1−110.0640.55225.29
19−1−1−10.0480.48229.63460−110.0760.37244.65
201110.0870.50344.8947−1−1−10.0300.46233.31
21−11−10.0370.51344.1848−10−10.0380.49285.02
2200−10.0510.42263.77491−110.0880.31223.08
230−1−10.0500.32231.4150−1010.0600.54314.86
24−1110.0580.68384.665110−10.0680.33218.83
250110.0700.68346.43521010.0820.42284.35
2611−10.0480.40292.395311−10.0710.37296.17
271−1−10.0560.29202.3954−11−10.0410.53332.12
Table 3. Models of the initial progression of the tool wear. MQL: Minimum Quantity Lubrication. VB’0: initial wear progression.
Table 3. Models of the initial progression of the tool wear. MQL: Minimum Quantity Lubrication. VB’0: initial wear progression.
Lubrication RegimeEquation of the Initial Progression of Tool WearR2
Dry VB 0 = V 1.52 · f 0.820 3.25 · 10 3 0.99
MQL VB 0 = V 1.42 · f 0.911 2.33 · 10 3 0.92
Table 4. Relevant solutions for dry machining.
Table 4. Relevant solutions for dry machining.
SolutionVariablesObjectivesRestriction
V
[m/min]
F
[mm/rev]
t0
[min/dm3]
E0
[kW·h/dm3]
V B 0
[ mm / min ]
Ra
[μm]
A2000.10100.01.440.1460.47
B2000.1190.91.380.1580.50
C4000.2025.00.920.7410.50
Table 5. Relevant solutions for MQL machining.
Table 5. Relevant solutions for MQL machining.
SolutionVariablesObjectivesRestriction
V
[m/min]
F
[mm/r]
t0
[min/dm3]
E0
[kW·h/dm3]
V B 0
[ mm / min ]
Ra
[μm]
A2000.10100.01.350.0980.42
B2000.1590.91.280.1060.50
C2400.2041.70.880.2380.50
D4000.2025.00.770.4910.37
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del Risco-Alfonso, R.; Pérez-Rodríguez, R.; Zambrano Robledo, P.d.C.; Rivas Santana, M.; Quiza, R. Optimization of the Cutting Regime in the Turning of the AISI 316L Steel for Biomedical Purposes Based on the Initial Progression of Tool Wear. Metals 2021, 11, 1698. https://doi.org/10.3390/met11111698

AMA Style

del Risco-Alfonso R, Pérez-Rodríguez R, Zambrano Robledo PdC, Rivas Santana M, Quiza R. Optimization of the Cutting Regime in the Turning of the AISI 316L Steel for Biomedical Purposes Based on the Initial Progression of Tool Wear. Metals. 2021; 11(11):1698. https://doi.org/10.3390/met11111698

Chicago/Turabian Style

del Risco-Alfonso, Ricardo, Roberto Pérez-Rodríguez, Patricia del Carmen Zambrano Robledo, Marcelino Rivas Santana, and Ramón Quiza. 2021. "Optimization of the Cutting Regime in the Turning of the AISI 316L Steel for Biomedical Purposes Based on the Initial Progression of Tool Wear" Metals 11, no. 11: 1698. https://doi.org/10.3390/met11111698

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