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Article

Machinability Assessment of Hybrid Nano Cutting Oil for Minimum Quantity Lubrication (MQL) in Hard Turning of 90CrSi Steel

1
Department of Fluids Mechanic, Faculty of Automotive and Power Machinery Engineering, Thai Nguyen University of Technology, Thai Nguyen 250000, Vietnam
2
Department of Manufacturing Engineering, Faculty of Mechanical Engineering, Thai Nguyen University of Technology, Thai Nguyen 250000, Vietnam
3
Department of Materials Engineering, Faculty of Mechanical Engineering, Thai Nguyen University of Technology, Thai Nguyen 250000, Vietnam
*
Author to whom correspondence should be addressed.
Lubricants 2023, 11(2), 54; https://doi.org/10.3390/lubricants11020054
Submission received: 20 November 2022 / Revised: 26 January 2023 / Accepted: 29 January 2023 / Published: 31 January 2023
(This article belongs to the Special Issue Tribological Applications of Nano & Submicro Structured Materials)

Abstract

:
Friction and very high temperature are still the major challenges in hard machining technology and they greatly affect cutting efficiency. The application of the MQL (minimum quantity lubrication) method, using nanoparticles in order to improve the cooling lubrication performance of the base cutting oil, has proven to be a promising solution. Hence, this work aimed to investigate the effectiveness of Al2O3/MoS2 hybrid nanofluid and Al2O3 and MoS2 mono nanofluids in the hard turning of 90CrSi steel (60–62 HRC) under an MQL environment. The Box-Behnken experimental design was used for three input variables, including nanoparticle concentration, air pressure, and air flow rate. Their influences on surface roughness and cutting forces were studied. According to the obtained results, it was shown that the application of hybrid nano cutting oils in MQL contributes to achieving better hard machining performance than the use of mono nanofluids. In particular, a lower cutting temperature is reported and the values of surface roughness Ra, back force Fp, and cutting force Fc were smaller and more stable under Al2O3/MoS2 hybrid nanofluid MQL than those under Al2O3 and MoS2 mono nanofluid MQL due to an improvement in cooling lubrication characteristics. Thus, this work provides a novel approach to study hybrid nanofluids for MQL hard machining.

Graphical Abstract

1. Introduction

The problem of climate change has been increasingly present, greatly affecting people’s lives around the world. This is posing new challenges to the manufacturing industry which must act faster and transform faster to respond to new, increasingly stricter environmental laws, and also to contribute to protecting the environment [1]. The metal cutting industry is also affected by this trend. It can be said that metal cutting processes are playing a very important role for the industry of each country, and this is one of the measures to evaluate the level of scientific and technological development. In the machining field, the use of cutting fluids in flood condition to lubricate and cool the contact zone is the most commonly used method; however, the treatment of these types of used lubricants has proven to be very expensive and their untreated discharge causes serious environmental pollution [2]. Therefore, the trends toward reducing dependence on industrial lubricants derived from mineral oil, switching to environmentally friendly cutting oils such as plant-based oils, or eliminating cutting oils, have been becoming more and more urgent, especially in the machining of hard materials. Machining in dry conditions, i.e., without using cutting oil, is a solution which has been researched and developed through the development of machine tools and cutting tool materials [3,4,5].
Today, higher-quality rigid machine tools combined with high-quality cutting tool materials have made it easier to directly cut high-hardness materials. However, the heat generated from the cutting zone in hard machining is very large, so it accelerates the tool wear rate, reduces the tool life, adversely affects the machined surface quality, and causes difficulties in handling the workpiece [4]. To overcome these problems, the machining of hard materials with minimal quantity lubrication (MQL) using nano cutting oils is a new solution, which significantly improves the lubrication and cooling efficiency in the cutting zone, thereby improving the cutting performance [6] as well as the cooling effect of the MQL technique [7]. In particular, this technology allows the use of vegetable oils with only a very small amount, so it has very environmentally friendly characteristics [1]. Li et al. [6] studied the heat transfer of MoS2, ZrO2, CNT, PCD, Al2O3, and SiO2 palm-oil-based nanofluids when grinding Ni-based alloy. The authors found that the improvement in viscosity and thermal conductivity of the base vegetable oil was enhanced by suspending nanoparticles, thereby reducing the grinding forces and temperature. In addition, the higher nanoparticle concentration and smaller grain size would be more favorable for decreasing the cutting forces and improving the machined surface quality. Pryazhnikov et al. [8] pointed out that the thermal conductivity coefficient of nanofluids based on water, ethylene glycol, and engine oil was improved when compared to the base fluids. This factor is a complicated function influenced by the grain size, type, and concentration of nanoparticles as well as the types of base fluids. Ali et al. [9] carried out a study on the tribological characteristics of Al2O3 and TiO2 nanoparticles suspended in automotive engine oil. The formation of laminating protective films created by Al2O3 nanoparticles and a decrease in the friction coefficient due to their rolling effect were discovered. Yıldırım et al. [10] studied the influence of hBN ester-based nanofluid on the MQL turning performance of Inconel 625. The authors found that better cutting efficiency, tool life, and surface quality were reported when compared to dry condition. Hegab et al. [11] studied MQL performance using multi-walled carbon nanotubes (MWCNTs) in ECOLUBRIC E200 vegetable oil in the turning process of Ti-6Al-4V alloy. The study results revealed that the cooling and lubricating effects of the MQL method, as well as the machined surface quality, were significantly improved, leading to a reduction in tool wear. They also carried out an investigation of tool performance and chip morphology in the turning of Inconel 718 using MWCNTs and Al2O3 nanofluid. The obtained findings showed that the deformed chip thickness was lower and that a more favorable chip morphology was formed because of the improvement in the MQL cooling and lubricating capabilities [12,13]. Uysal et al. [14] investigated the tool wear and surface roughness in milling under MoS2 vegetable-based nanofluid MQL conditions. The excellent lubricating effect of MoS2 nanosheets contributed to reducing the tool wear and improving the surface roughness. Eltaggaz et al. [15] carried out a study on the turning of austempered ductile iron (ADI) under an MQL environment using Al2O3 vegetable-oil-based nanofluid. A better cutting efficiency by using Al2O3 nanofluid MQL was reported when compared to dry, flood, and MQL with pure based oil. The main reasons for that were the improvement of thermal conductivity and the significant reduction of the friction coefficient.
These effects were achieved due to Al2O3 nanoparticles having high hardness, nearly spherical morphology, and good thermal conductivity [16]. When Al2O3 nanoparticles penetrate into the cutting zone, the “ball rolling” mechanism at the contact surfaces and the tribo film forming are the main factors in reducing the coefficient of friction [17]. In addition, MoS2 nanoparticles have a sheet structure and possess a very small coefficient of friction, so they have a very good lubricating effect [18]. Therefore, this type of nanoparticle is also widely used in the MQL technique for metal cutting processes. Ayşegül Yücel and his co-authors [19] studied the influence of MoS2 mineral-based nanofluid MQL on the turning performance of AA 2024 T3 aluminum alloy. The authors found that significant improvements in surface roughness and surface topography were achieved, and the built-up-edge (BUE) formation was eliminated by nanofluid MQL (NF MQL) conditions due having better lubricating effects than those of dry cutting. Furthermore, a lower tool wear rate and cutting temperature were reported when machining Al alloy under NF MQL when compared to dry and pure MQL environments. The main reason for this phenomenon was the formation of tribo-film layer at the tool–chip interface. In recent years, there has been a trend toward using a combination of two types of nanoparticles suspended in the mineral cutting oil to take advantage of each nanoparticle type in order to improve cooling and lubricating efficiency in the cutting zone. Singh et al. [20] studied the effects of the MQL method using Al2O3-graphene hybrid nanofluid on the hard turning process. The cooling and lubricating efficiency of emulsion-based oil was enhanced, which contributed to improving the hard-turning performance, leading to a reduction in the values of surface roughness, cutting forces, and tool wear. Şirin et al. [21] investigated the effects of three different vegetable-based hybrid nanofluids, including hexagonal boron nitride (hBN)/graphite (Grpt), hBN/MoS2, and Grpt/MoS2, at different cutting speeds and feed rates. The obtained results indicated that hBN/Grpt hybrid nanofluid produced better results in terms of cutting forces, cutting temperature, surface roughness/topography, tool wear, and tool life. Zhang et al. [22] evaluated the lubricating effect of MoS2/CNT hybrid nanofluid with synthetic lipids as the base fluid on Ni-based alloy grinding under an MQL environment. The authors integrated MoS2 nanoparticles with good lubrication properties and CNTs with a high heat-conductivity coefficient. The results revealed that the MoS2/CNT hybrid nanofluid achieved better lubrication performance than the nanofluid in terms of surface quality and grinding force. Dubey et al. [23] compared the effectiveness of Al2O3/graphene hybrid nanofluid to Al2O3 nanofluid with a biodegradable base oil in an MQL turning process of AISI 304 steel. The authors found that the average reduction in cutting forces, surface roughness, and cutting temperature with Al2O3/graphene hybrid nanofluid were 13%, 31%, and 14%, respectively, when compared to Al2O3 nanofluid. The nanoparticle concentration had a stronger impact on the cutting force than on the surface characteristics. Yıldırım et al. [24] compared the tribological behavior of hybrid with biodegradable-based nanofluids, including MWCNT/Al2O3, Al2O3/MoS2, and MWCNT/MoS2 in different concentration ratios to the mono nanofluids, for the hard turning of AISI 420 (55.5 HRC) using coated cermet tools. The obtained findings indicated that the hybrid nanofluids achieved better surface roughness than mono nanofluids, pure fluids, and dry cutting. The Al2O3/MoS2 hybrid nanofluid produced the best surface topography. The cutting temperature and flank wear were significantly reduced by using hybrid nanofluid MQL when compared to pure MQL. Furthermore, the mono and hybrid nanofluids contributed to a significant prevention of failure modes for coated cermet cutting tools in hard turning as compared to dry and pure MQL. On the other hand, the use of naturally biodegradable, vegetable-based cutting oils is a new trend in the application of NF MQL technology, which is an important development toward sustainable production [21].
As seen in this literature analysis, the application of nanofluids as the cutting oil has become very popular in the metal cutting field. However, there has been very little information in these studies on the effects of using Al2O3 and MoS2 nanofluids and Al2O3/MoS2 hybrid nanofluids with soybean-based fluid on the hard turning of 90CrSi steel. Based on this observation, Al2O3, MoS2, and Al2O3/MoS2 hybrid nanofluids were used in the hard turning of 90CrSi steel (60–62 HRC) with different nanoparticle concentrations, air pressures, and air flow rates. The responses studied included surface roughness, surface microstructure, back force Fp, and cutting force Fc.

2. Material and Method

2.1. Experimental Set Up

Figure 1 shows the set up for hard turning experiments. CBN inserts with the designation of CCGW 09T308S 01020 FWH were utilized. The NOGA MiniCool MC1700 (Noga Engineering & Technology (2008) ltd, Shlomi, Israel) was used for the MQL system. The force-measure device was a 9257BA dynamometer (Kistler Instruments (Pte) Ltd., Midview, Singapore). The SJ-210 Mitutoyo surface roughness tester was used for measuring the surface roughness Ra values with the cut-off length of 0.08 mm, measuring speed of 0.25 mm/s, and the retraction speed of the probe of 1 mm/s. After each cutting trial, the surface roughness was measured three times and taken as the average value. A KEYENCE VHX-7000 Digital Microscope (KEYENCE Corporation, Osaka, Japan) was used to investigate the surface microstructure and chip morphology. Al2O3 and MoS2 nanoparticles with grain size of 30 nm were suspended in the soybean oil to form the nano/hybrid nano cutting oils in 1 h using an Ultrasons-HD ultrasonic homogenizer (JP Selecta, Abrera (Barcelona), Spain) at 40 kHz frequency and 600 W maximum power to ensure uniform distribution [16]. Hardened 90CrSi steel (60–62 HRC) with the diameter of 40 mm was utilized, and its chemical composition is shown in Table 1.

2.2. Experiment Design

The Al2O3 and MoS2 nanofluids and the Al2O3:MoS2 (8:2) hybrid nanofluid were prepared with soybean oil (Cai Lan Vegetable Oil Co., Ltd., Ha Long City, Vietnam) as the base oil. Minitab 19.0 software was utilized for Box-Behnken experimental design with three input variables (nanoparticle concentration, air pressure, and air flow rate) and their levels, which were based on previous studies [25,26] (Table 2). A total number of 15 trials were conducted independently in triplicates. The cutting parameters were fixed at cutting speed vc = 160 m/min, feed rate f = 0.12 mm/rev., and cutting depth ap = 0.12 mm [24]. The responses included the surface roughness Ra, back force Fp, cutting force Fc, and chip color. Table 3, Table 4 and Table 5 summarize the experiment design with test run order and the measured values for surface roughness Ra, back force Fp, and cutting force Fc under MoS2 NF MQL, Al2O3 NF MQL, and Al2O3/MoS2 hybrid nanofluid MQL (HF MQL), respectively. Each of the trials was repeated three times under the same cutting conditions and the average values were taken. The sampling frequency of cutting forces was 0.001 s. The cutting length for each experiment under the presented conditions was 83.73 m.

3. Results and Discussion

3.1. Surface Roughness Ra

Figure 2 depicts the effects of the cooling and lubricating methods, including Al2O3/MoS2 HF MQL, Al2O3 NF MQL, and MoS2 NF MQL, on surface roughness Ra, where the horizontal axis represents the order of experimental points in the standard order in experimental designs (Table 3, Table 4 and Table 5), and the vertical axis is the measured values of Ra. From Figure 2, it can be seen that using Al2O3/MoS2 HF MQL (blue line) produced the smaller and the most stable surface roughness Ra values. In the case of using Al2O3 NF MQL (red line), the surface roughness values and their amplitude of fluctuation were larger than those for the Al2O3/MoS2 HF MQL conditions. The roughness values under MoS2 NF MQL (black line) had the largest fluctuation amplitude at the experimental points from the first to eighth, while at the experimental points 9 to 15, the roughness values had small variation and were equivalent to those under the Al2O3/MoS2 HF MQL environment. At each experimental point, the effect of using different cutting oils (MoS2 NF MQL, Al2O3 NF MQL, and Al2O3/MoS2 HF MQL) on the roughness value Ra was compared on the basis of the same regime of NC, p, and Q. Through the investigation of all 15 experimental points, the influence of the survey factors (NC, p, and Q) on the roughness value Ra was evaluated.
The Pareto chart for the effects of standardized factors including NC, p, and Q on the surface roughness value Ra is shown in Figure 3. The horizontal position of the limit line for the area where the inversion hypothesis is rejected was 2.571. The factors extending to the right beyond the limit line had strong influences on the responses.
Effect of nanoparticle concentration (NC): From the Pareto charts in Figure 3, it can be seen that nanoparticle concentration had the greatest effect on Ra when using Al2O3 NF MQL (Figure 3b), followed by MoS2 NF MQL (Figure 3a), and the least effect when using HF MQL (Figure 3c).
Effect of air pressure (p): For the three different nano cutting oils, air pressure had little effect on the roughness value Ra, on which the effect of using Al2O3 NF MQL was greatest (Figure 3b), followed by MoS2 NF MQL (Figure 3a), and HF MQL was least (Figure 3c).
Effect of air flow rate (Q): The air flow rate Q had little effect on the roughness value Ra, on which the greatest effect was reported in the case of using MoS2 NF MQL (Figure 3a), followed by HF MQL (Figure 3c), and then Al2O3 NF MQL (Figure 3b).
The interaction effect between the input factors had little influence on Ra except for the influence of the quadratic interaction of nanoparticle concentration (A*A) in Figure 3a,c. The results of analysis of variance are shown in Table A1, Table A2, Table A3, Table A4, Table A5, Table A6, Table A7, Table A8 and Table A9 in the Appendix A. The suitability of the experimental model for the collected experimental data was evaluated through the coefficient of determination R2. The R2 coefficients for MoS2 NF MQL, Al2O3 NF MQL, and Al2O3/MoS2 HF MQL were 82.98%, 85.77%, and 89.78%, respectively, which proved that the experimental models were suitable for the experimental results.
For all three types of nano cutting oil, it was shown that at the experimental points from 9 to 15, the values and fluctuation amplitude of Ra were smaller than at the experimental points from 1 to 8, and they were less dependent on the nanoparticle concentration and air pressure. This can be explained by the fact that at the experimental points from 9 to 15, there were medium levels of nanoparticle concentration, at 1.0% for the Al2O3/MoS2 hybrid nano cutting oil and Al2O3 nano cutting oil and 0.5% for the MoS2 nano cutting oil. This was the range of appropriate concentrations to produce a small and stable Ra value [17,18]. For the other experimental points (1 to 8), either the low nanoparticle concentration was not enough to create the tribo film, or the high concentration caused the adhesive phenomena on the cutting edge to scratch the machined surface in the case of MoS2 [27], or the mutual compression, collision, and impedance for Al2O3 nanoparticles, thereby producing inconsistent lubrication and negatively affecting the surface quality [26]. Particularly for Al2O3/MoS2 HF MQL, because the concentrations of Al2O3 and MoS2 nanoparticles were in the reasonable ranges, there was a combination between the two main lubrication mechanisms of the “roller” mechanism from Al2O3 nanoparticles and the “tribo film” formation of MoS2 nanoparticles, so the surface roughness values were small and stable [28]. The obtained results showed that the reasonable concentration of nanoparticles in cutting oil will reduce the influences of air pressure p and air flow rate Q. This observation has great practical significance when it is necessary to quickly solve the practical problem, because it is only needed to choose the nanoparticle concentration in a reasonable range, and the air pressure and flow rate can be rapidly selected. However, in order to calculate specifically and accurately, it is still necessary to solve the optimization problem. If the evaluation criterion is the surface roughness value Ra, the results showed that the Al2O3/MoS2 HF MQL condition produced better results than Al2O3 NF MQL and MoS2NF MQL because the Ra values were smaller and more stable. However, for MoS2 NF MQL, when the appropriate concentration of MoS2 nanoparticles of about 0.5% was used, the results were equivalent to Al2O3/MoS2 HF MQL.

3.2. Surface Microstructure

To further evaluate the effectiveness of Al2O3/MoS2 HF MQL, we used images of the machined surface microstructure and surface profile taken at three experimental points corresponding to 0.5% MoS2 NF MQL, 1% Al2O3NF MQL, and 1% Al2O3/MoS2 HF MQL, with fixed cutting conditions and medium levels of air pressure, p = 5 bar, and air flow rate, Q = 200 l/min. Figure 4 shows the microstructure images and Figure 5 shows a 3D model and profile images of the machined surface in hard turning under different cooling lubrication conditions. Figure 4a is the microstructure of the machined surface with 0.5% MoS2 NF MQL. It can be observed that the surface has a dark color with small purple stripes, and is smooth. The main reasons for these phenomena were the unique characteristics of MoS2 nanoparticles created from their hexagonal crystal system combining Mo and S elements through short covalent bonds, but the space between them is large. Hence, the bond between two adjacent sulfur atom layers is weak, and the so-called “easy-to-slide planes” are generated by cutting forces to effectively reduce the friction coefficient on the contact faces, so it reduces the Ra values [18,29,30]. Furthermore, the dark purple and light blue stains indicated the higher cutting temperature in the cutting zone [31]. On the other hand, similar to graphene nanosheets, MoS2 nanosheets contribute to the formation of the tribo films owing to the good wettability, so the tribological effect is improved [32]. As a result, the surface profile is quite smooth, and the roughness values are small.
Figure 4b shows the surface microstructure under 1% Al2O3 NF MQL. The machined surface was quite smooth with white stripes and brown and purple-brown stains. The main reason for this was that Al2O3 nanoparticles have high hardness and nearly spherical morphology, so they create the “roller” effect in the contact zone to help reduce friction and cutting forces, contributing to a decrease in surface roughness [17]. In addition, due to the great pressure at the contact faces, the Al2O3 nanoparticles are pinched, deformed, and adhered to the machined surface, which is reflected in the white stripes in Figure 4b [26]. Figure 4c exhibits the surface microstructure when using 1% Al2O3/MoS2 HF MQL. The machined surface was quite bright and smooth. The good friction-reducing effect of MoS2 nanosheets combined with the roller and mending effects of Al2O3 nanoparticles contributed to a reduction in the cutting forces, surface roughness, and cutting temperature. Accordingly, the surface stains were mainly light straw color to dark straw color [28,32].
From the 3D-model and profile images of the machined surface in the different surveyed lubrication conditions, as shown in Figure 5, it can be seen that the machined surface was very smooth with small roughness values. In addition, there were no sharp differences when observing the surface profiles.

3.3. Effects on the Cutting Force Components Fp, Fc

The influences of the survey variables (nanoparticle concentration, air pressure p, air flow rate Q) on the cutting force Fc are shown in Figure 6. The results showed that the three types of Al2O3, MoS2, and Al2O3/MoS2 nano cutting oil contributed to achieving small force values, and their changes were almost the same. There was no difference when changing the type of cutting oil. The effects of the investigated variables on the back force Fp are shown in Figure 7. The values and variation of the back force Fp depended heavily on the cooling lubrication modes and on the survey parameters. The use of the MQL method with nano and hybrid nano cutting oils significantly reduces the friction between the flank face of the cutting tool and the machined face, so it mainly affects the back force Fp, and it has little effect on the feed force Ff and cutting force Fc. Therefore, it is recommended to use as the criterion the back force Fp rather than Fc to evaluate the effect of the cooling and lubricating condition, which is quite convenient and obvious.
The MoS2 NF MQL condition produced the Fp values with the largest fluctuation amplitude (Figure 7). At the experimental points from 1 to 8, the back force Fp was large and varied strongly. For the experimental points from 9 to 15, the values of the back force Fp were small and stable because there was a reasonable concentration of MoS2 nanoparticles (0.5%) to promote the cooling lubrication efficiency, so it produced stable cutting force values and good surface quality [18,27].
For the Al2O3 NF MQL mode, the Fp values and their fluctuation amplitude were smaller than those of MoS2 NF MQL but larger than those under Al2O3/MoS2 HF MQL. The back force Fp under the Al2O3/MoS2 HF MQL environment was the smallest and most stable among the investigated cooling lubrication conditions. The reason was that the combination of the two types of nanoparticles to form the hybrid nanofluid promoted the advantages of both nanoparticle types. With an Al2O3/MoS2 mixing ratio of 8:2 and a concentration of hybrid nanofluid from 0.5% to 1.5%, the concentration of each nanoparticle type was in the reasonable domain, so the back force Fp was small and stable. Moreover, when the back force Fp changed significantly, it caused vibration and adversely affected the machined part quality [33,34]. Hence, Fp could be used as the criterion for evaluating the effectiveness of different cooling lubrication methods.
The Pareto charts of the effects on the cutting force Fc (Figure 8) showed that all three investigated factors (NC, p, and Q) under the MoS2 NF MQL and Al2O3 NF MQL environments had little effect on Fc. In Figure 8a, nanoparticle concentration (NC) had the greatest influence, followed by air flow rate (Q) and air pressure (p). For Al2O3 NF MQL in Figure 8b, the air flow rate (Q) had the strongest effect, followed by the air pressure (p) and finally the nanoparticle concentration (NC). For Al2O3/MoS2 HF MQL (Figure 8c), the influence of the survey factors was greater, among which Q had the greatest influence, followed by NC and p with little influence. These observations were reflected in the results of the analysis of variance shown in Table A4, Table A5 and Table A6 of the Appendix A. The R2 coefficients for MoS2 NF MQL, Al2O3 NF MQL, and Al2O3/MoS2 HF MQL were 84.03%, 73.56%, and 92.93%, respectively, which proved that the experimental models were suitable for the experimental results. The use of the NF MQL and HF MQL methods mainly improved the frictional condition between the flank face of the cutting tool and the machined surface, so they had little effect on the cutting force component Fc. Hence, there was not much difference between the three different cooling lubrication methods, so the cutting force Fc should not be used as the criterion for evaluation.
The influence of cooling lubrication methods on the back force Fp is shown in Figure 9. The influence of the survey factors on Fp was evaluated through the Pareto charts. In the case of MoS2 NF MQL (Figure 9a), the concentration of nanoparticles (NC) greatly affected Fp, followed by the air pressure (p) and air flow rate (Q). When using Al2O3 NF MQL (Figure 9b), p had the greatest influence, followed by Q and then NC. For HF MQL (Figure 9c), Q had the greatest influence, while NC and p had little effect. These effects were also evaluated through the results of the analysis of variance shown in Table A7, Table A8 and Table A9 of the Appendix A. The R2 coefficients for MoS2 NF MQL, Al2O3 NF MQL, and Al2O3/MoS2 HF MQL were 99.09%, 89.47%, and 89.85%, respectively, which proved that the experimental models were suitable for the experimental results.
With the three cooling lubrication conditions, the use of HF MQL produced the best effects in terms of the smallest values for Fp and its fluctuation, followed by Al2O3 NF MQL and finally MoS2 NF MQL. However, when using a reasonable concentration of MoS2 nanoparticles in the cutting oil (about 0.5%), MoS2 NF MQL had the same results as Al2O3/MoS2 HF MQL, which was similar to the case with surface roughness.

4. Conclusions

The main target of this paper was to investigate the hard turning process of 90CrSi steel under an MQL environment using Al2O3/MoS2 hybrid nanofluid, Al2O3 nanofluid, and MoS2 nanofluid. Based on the Box-Behnken experimental design, the effects of nanoparticle concentration, air pressure, and air flow rate on surface roughness, back force Fp, and cutting force Fc were evaluated using Pareto charts. In addition, the surface microstructure was investigated.
The evaluation was carried out for all 15 experimental points according to the Box-Behnken experimental design. At each experimental point, comparisons and evaluations were carried out with the same cutting conditions: NC, p, and Q. With this new approach, the differences among the three different cooling lubrication methods were compared and evaluated, and the influence of the survey parameters on the objective functions was also considered.
The application of Al2O3/MoS2 hybrid nano cutting oils in MQL improved the machining performance and produced better results when compared to MQL using the MoS2 and Al2O3 mono nanofluids, as the values of the responses were the lowest and the most stable. For the investigated cooling lubrication conditions, the nanoparticle concentration and its quadratic interaction had the strongest effects on surface roughness Ra. The quadratic interactions of nanoparticle concentration (NC*NC) and air pressure (P*P) exhibited the largest impact on Fp, Fc in the cases of MoS2 nanofluid and Al2O3/MoS2 hybrid nanofluid, while the interaction effect of nanoparticle concentration with air flow rate (NC*Q) and air pressure had a strong influence on Fp, Fc when using Al2O3 nanofluid.
The MoS2 nanoparticle concentration had strong effects on back force Fp. If a reasonable concentration value was selected (about 0.5%, the average studied range), it significantly reduced the influence of air pressure and air flow rate, and the values of the responses were small and stable. On the other hand, the back force Fp could be used as the criterion for evaluating the effectiveness of different cooling lubrication methods.
In further work, more investigation is needed focusing on the optimization problems and to find more accurate values for nanoparticle concentration, air pressure, and air flow rate for NF MQL and HF MQL. Moreover, deeper study should be made of the machined surface microstructure to explore the cooling and lubricating mechanisms of nanoparticles in the cutting zone.

Author Contributions

Conceptualization, T.M.D. and T.T.L.; methodology, T.B.N., T.M.D., V.L.H. and T.T.L.; software, T.M.D., N.M.T. and V.L.H.; validation, T.M.D., N.M.T., V.L.H. and T.T.L.; formal analysis, T.B.N., N.M.T., V.L.H. and T.T.L.; investigation, T.B.N. and T.T.L.; resources, V.L.H.; data curation, N.M.T. and V.L.H.; writing—original draft, T.B.N., T.M.D., N.M.T. and T.T.L.; writing—review and editing, T.M.D. and T.T.L.; visualization, N.M.T. and V.L.H.; supervision, T.M.D. and T.T.L.; project administration, T.M.D. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by Thai Nguyen University of Technology, Thai Nguyen University, Vietnam.

Acknowledgments

The work presented in this paper is supported by Thai Nguyen University of Technology, Thai Nguyen University, Vietnam.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

Table A1. Results of the ANOVA analysis of surface roughness Ra under MoS2 NF MQL.
Table A1. Results of the ANOVA analysis of surface roughness Ra under MoS2 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model90.0460120.0051122.710.142
  Linear30.0209640.0069883.700.096
    NC 10.0120130.0120136.360.053
    p 10.0032810.0032811.740.245
    Q 10.0056710.0056713.000.144
  Square30.0232960.0077654.110.081
    NC*NC10.0229100.02291012.140.018
    p*p10.0006750.0006750.360.576
    Q*Q10.0006750.0006750.360.576
 2-Way Interaction30.0017520.0005840.310.818
    NC*p10.0014630.0014630.780.419
    NC*Q10.0000860.0000860.050.840
    p*Q10.0002030.0002030.110.756
Error50.0094370.001887
  Lack-of-Fit30.0093710.00312494.420.010
  Pure Error20.0000660.000033
Total140.055449
“*” represents the interactions between the factors.
Table A2. Results of the ANOVA analysis of surface roughness Ra under Al2O3 NF MQL.
Table A2. Results of the ANOVA analysis of surface roughness Ra under Al2O3 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model90.0109220.0012143.350.098
  Linear30.0058320.0019445.370.051
    NC10.0035700.0035709.850.026
    p10.0022610.0022616.240.055
    Q10.0000010.0000010.000.965
  Square30.0031910.0010642.940.138
    NC*NC10.0015390.0015394.250.094
    p*p10.0018760.0018765.180.072
    Q*Q10.0001030.0001030.290.616
 2-Way Interaction30.0018990.0006331.750.273
    NC*p10.0002980.0002980.820.406
    NC*Q10.0009770.0009772.700.162
    p*Q10.0006250.0006251.720.246
Error50.0018120.000362
  Lack-of-Fit30.0017770.00059234.170.029
  Pure Error20.0000350.000017
Total140.012734
“*” represents the interactions between the factors.
Table A3. Results of the ANOVA analysis of surface roughness Ra under Al2O3/MoS2 HF MQL.
Table A3. Results of the ANOVA analysis of surface roughness Ra under Al2O3/MoS2 HF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model90.0104470.0011614.880.048
  Linear30.0005220.0001740.730.576
    NC10.0000030.0000030.010.913
    p10.0002880.0002881.210.321
    Q10.0002310.0002310.970.370
  Square30.0086610.00288712.130.010
    NC*NC10.0071480.00714830.040.003
    p*p10.0010990.0010994.620.084
    Q*Q10.0013330.0013335.600.064
 2-Way Interaction30.0012630.0004211.770.269
    NC*p10.0001820.0001820.770.422
    NC*Q10.0000250.0000250.110.759
    p*Q10.0010560.0010564.440.089
Error50.0011900.000238
  Lack-of-Fit30.0011720.00039143.400.023
  Pure Error20.0000180.000009
Total140.011636
“*” represents the interactions between the factors.
Table A4. Results of the ANOVA analysis of cutting force Fc under MoS2 NF MQL.
Table A4. Results of the ANOVA analysis of cutting force Fc under MoS2 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model91766.40196.272.920.125
  Linear3543.68181.232.700.156
    NC1379.09379.095.650.063
    p119.0719.070.280.617
    Q1145.52145.522.170.201
  Square31128.19376.065.600.047
    NC*NC11072.681072.6815.980.010
    p*p12.492.490.040.855
    Q*Q115.6415.640.230.650
 2-Way Interaction394.5431.510.470.717
    NC*p133.2433.240.500.513
    NC*Q161.1561.150.910.384
    p*Q10.150.150.000.964
Error5335.6967.14
  Lack-of-Fit362.0220.670.150.921
  Pure Error2273.67136.84
Total142102.09
“*” represents the interactions between the factors.
Table A5. Results of the ANOVA analysis of cutting force Fc under Al2O3 NF MQL.
Table A5. Results of the ANOVA analysis of cutting force Fc under Al2O3 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model92796.93310.771.550.329
  Linear3416.50138.830.690.596
    NC122.5522.550.110.751
    p1167.54167.540.830.403
    Q1226.42226.421.130.337
  Square3600.85200.281.000.466
    NC*NC1316.81316.811.580.265
    p*p1105.21105.210.520.502
    Q*Q1263.35263.351.310.304
 2-Way Interaction31779.58593.192.950.137
    NC*p10.530.530.000.961
    NC*Q11072.561072.565.340.069
    p*Q1706.50706.503.510.120
Error51005.15201.03
  Lack-of-Fit3773.97257.992.230.324
  Pure Error2231.18115.59
Total143802.08
“*” represents the interactions between the factors.
Table A6. Results of the ANOVA analysis of cutting force Fc under Al2O3/MoS2 HF MQL.
Table A6. Results of the ANOVA analysis of cutting force Fc under Al2O3/MoS2 HF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model93085.15342.797.310.021
  Linear3615.22205.074.370.073
    NC114.6614.660.310.600
    p18.368.360.180.690
    Q1592.20592.2012.620.016
  Square32294.11764.7016.300.005
    NC*NC196.3096.302.050.211
    p*p11979.571979.5742.190.001
    Q*Q1413.08413.088.800.031
 2-Way Interaction3175.8258.611.250.385
    NC*p114.3614.360.310.604
    NC*Q1153.39153.393.270.130
    p*Q18.078.070.170.696
Error5234.6246.92
  Lack-of-Fit3220.8073.6010.650.087
  Pure Error213.836.91
Total143319.78
“*” represents the interactions between the factors.
Table A7. Results of the ANOVA analysis of back force Fp under MoS2 NF MQL.
Table A7. Results of the ANOVA analysis of back force Fp under MoS2 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model9344,22038,24760.370.000
  Linear399,04033,01352.110.000
    NC196,33296,332152.050.000
    p1242724273.830.108
    Q12822820.440.535
  Square3240,21280,071126.380.000
    NC*NC1236,944236,944373.990.000
    p*p1372437245.880.060
    Q*Q11601600.250.637
 2-Way Interaction3496816562.610.163
    NC*p1375837585.930.059
    NC*Q14004000.630.463
    p*Q18108101.280.310
Error53168634
  Lack-of-Fit328969657.110.126
  Pure Error2271136
Total14347,388
“*” represents the interactions between the factors.
Table A8. Results of the ANOVA analysis of back force Fp under Al2O3 NF MQL.
Table A8. Results of the ANOVA analysis of back force Fp under Al2O3 NF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model946,527.05169.74.720.051
  Linear318,106.66035.55.510.048
    NC1645.8645.80.590.477
    p116,327.116,327.114.900.012
    Q11133.61133.61.030.356
  Square310,407.93469.33.170.123
    NC*NC14342.94342.93.960.103
    p*p13013.53013.52.750.158
    Q*Q14627.94627.94.220.095
 2-Way Interaction318,012.56004.25.480.049
    NC*p1408.2408.20.370.568
    NC*Q110,063.110,063.19.190.029
    p*Q17541.27541.26.880.047
Error55477.81095.6
  Lack-of-Fit31829.1609.70.330.807
  Pure Error23648.71824.3
Total1452,004.8
“*” represents the interactions between the factors.
Table A9. Results of the ANOVA analysis of back force Fp under Al2O3/MoS2 HF MQL.
Table A9. Results of the ANOVA analysis of back force Fp under Al2O3/MoS2 HF MQL.
SourceDFAdj SSAdj MSF-Valuep-Value
Model92959.31328.814.920.047
  Linear3458.10152.702.280.197
    NC16.256.250.090.772
    p16.646.640.100.765
    Q1445.21445.216.660.049
  Square32081.26693.7510.370.014
    NC*NC133.4733.470.500.511
    p*p11653.341653.3424.720.004
    Q*Q1562.55562.558.410.034
 2-Way Interaction3419.95139.982.090.220
    NC*p11.801.800.030.876
    NC*Q1418.00418.006.250.054
    p*Q10.160.160.000.963
Error5334.3666.87
  Lack-of-Fit3330.62110.2158.860.017
  Pure Error23.741.87
Total143293.67
“*” represents the interactions between the factors.

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Figure 1. The experimental set up.
Figure 1. The experimental set up.
Lubricants 11 00054 g001
Figure 2. Effects of cooling and lubricating methods on surface roughness Ra (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Figure 2. Effects of cooling and lubricating methods on surface roughness Ra (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Lubricants 11 00054 g002
Figure 3. Pareto charts of the effects of standardized factors on surface roughness Ra under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Figure 3. Pareto charts of the effects of standardized factors on surface roughness Ra under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Lubricants 11 00054 g003
Figure 4. Microstructure and profile images of the machined surface under: (a) 0.5% MoS2 NF MQL; (b) 1% Al2O3 NF MQL; (c) 1% Al2O3/MoS2 HF MQL.
Figure 4. Microstructure and profile images of the machined surface under: (a) 0.5% MoS2 NF MQL; (b) 1% Al2O3 NF MQL; (c) 1% Al2O3/MoS2 HF MQL.
Lubricants 11 00054 g004
Figure 5. 3D and profile images of the machined surface under: (a) 0.5% MoS2 NF MQL; (b) 1% Al2O3 NF MQL; (c) 1% Al2O3/MoS2 HF MQL.
Figure 5. 3D and profile images of the machined surface under: (a) 0.5% MoS2 NF MQL; (b) 1% Al2O3 NF MQL; (c) 1% Al2O3/MoS2 HF MQL.
Lubricants 11 00054 g005aLubricants 11 00054 g005b
Figure 6. Effects of investigated variables on the cutting force Fc (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Figure 6. Effects of investigated variables on the cutting force Fc (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Lubricants 11 00054 g006
Figure 7. Effects of investigated variables on the back force Fp (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Figure 7. Effects of investigated variables on the back force Fp (Al2O3/MoS2 hybrid nanofluid MQL: HF MQL; Al2O3 nanofluid MQL: Al2O3 NF MQL; MoS2 nanofluid MQL: MoS2 NF MQL).
Lubricants 11 00054 g007
Figure 8. Pareto charts of the effects of standardized factors on cutting force Fc under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Figure 8. Pareto charts of the effects of standardized factors on cutting force Fc under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Lubricants 11 00054 g008aLubricants 11 00054 g008b
Figure 9. Pareto charts of the effects of standardized factors on cutting force Fp under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Figure 9. Pareto charts of the effects of standardized factors on cutting force Fp under: (a) MoS2 NF MQL, (b) Al2O3 NF MQL, (c) Al2O3/MoS2 HF MQL.
Lubricants 11 00054 g009
Table 1. Chemical composition in % of 90CrSi steel [25].
Table 1. Chemical composition in % of 90CrSi steel [25].
ElementCSiMnNiSPCrMoWVTiCu
Weight (%)0.85–0.951.20–1.600.30–0.60Max
0.40
Max 0.03Max
0.03
0.95–1.25Max
0.20
Max
0.20
Max
0.15
Max
0.03
Max
0.3
Table 2. Input variables and their levels.
Table 2. Input variables and their levels.
Input VariablesUnitSymbolLevel
LowHigh
Nanoparticle
concentration of Al2O3 and Al2O3/MoS2
wt.%NC0.51.5
Nanoparticle
concentration of MoS2
wt.%NC0.20.8
Air pressurebarp46
Air flow ratel/minQ150250
Table 3. The experiment design with test run order and the measured values under MoS2 NF MQL.
Table 3. The experiment design with test run order and the measured values under MoS2 NF MQL.
Std
Order
Run
Order
Input VariablesResponses
NC
(wt.%)
p
(bar)
Q
(l/min)
Ra
(µm)
Fp
(N)
Fc
(N)
180.242000.249220.698.7
250.842000.355508.7112.9
3110.262000.356345.5108.9
4120.862000.385510.9111.5
5130.251500.345268.097.1
660.851500.442460.2108.4
7100.252500.240236.097.3
840.852500.318468.2124.3
920.541500.254101.483.7
1070.561500.280135.985.1
11140.542500.276165.692.3
1290.562500.274143.294.4
13150.552000.244124.8105.3
1430.552000.238104.884.6
1510.552000.250104.485.5
Table 4. The experiment design with test run order and the measured values under Al2O3 NF MQL.
Table 4. The experiment design with test run order and the measured values under Al2O3 NF MQL.
Std
Order
Run
Order
Input VariablesResponses
NC
(wt.%)
p
(bar)
Q
(l/min)
Ra
(µm)
Fp
(N)
Fc
(N)
110.542000.313157.0100.5
291.542000.353135.4115.8
370.562000.315248.0116.6
4111.562000.390266.8130.5
5140.551500.317280.8148.9
641.551500.313145.994.8
730.552500.307171.0110.4
8101.552500.365236.8121.8
913141500.302230.6134.7
1012161500.375213.3111.0
112142500.305105.692.5
128162500.328262.0122.0
1315152000.301188.0113.1
145152000.303109.992.2
156152000.295118.998.5
Table 5. The experiment design with test run order and the measured values under Al2O3/MoS2 hybrid nanofluid MQL.
Table 5. The experiment design with test run order and the measured values under Al2O3/MoS2 hybrid nanofluid MQL.
Std
Order
Run
Order
Input VariablesResponses
NC
(wt.%)
p
(bar)
Q
(l/min)
Ra
(µm)
Fp
(N)
Fc
(N)
110.542000.313137.6113.3
291.542000.353141.7130.3
370.562000.315139.2119.3
4111.562000.390145.9128.7
5140.551500.317159.7128.8
641.551500.313130.3108.7
730.552500.307113.899.5
8101.552500.365125.2104.1
913141500.302152.0134.7
1012161500.375153.1139.4
112142500.305148.1120.1
128162500.328148.4119.1
1315152000.301115.496.8
145152000.303117.391.7
156152000.295118.095.3
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Ngoc, T.B.; Duc, T.M.; Tuan, N.M.; Hoang, V.L.; Long, T.T. Machinability Assessment of Hybrid Nano Cutting Oil for Minimum Quantity Lubrication (MQL) in Hard Turning of 90CrSi Steel. Lubricants 2023, 11, 54. https://doi.org/10.3390/lubricants11020054

AMA Style

Ngoc TB, Duc TM, Tuan NM, Hoang VL, Long TT. Machinability Assessment of Hybrid Nano Cutting Oil for Minimum Quantity Lubrication (MQL) in Hard Turning of 90CrSi Steel. Lubricants. 2023; 11(2):54. https://doi.org/10.3390/lubricants11020054

Chicago/Turabian Style

Ngoc, Tran Bao, Tran Minh Duc, Ngo Minh Tuan, Vu Lai Hoang, and Tran The Long. 2023. "Machinability Assessment of Hybrid Nano Cutting Oil for Minimum Quantity Lubrication (MQL) in Hard Turning of 90CrSi Steel" Lubricants 11, no. 2: 54. https://doi.org/10.3390/lubricants11020054

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