Metal cutting plays a crucial role in the field of manufacturing. It was found that turning factors such as feed, depth of cut, and speed influence material removal rate (MRR) and surface roughness (RA) [
1]. However, most of these research findings are established with three levels of parameters and are for specific levels of these parameters. Thus, there is adequate scope for extensive research which takes into account extended boundary conditions. The Taguchi orthogonal array has emerged as one of the most widely adopted experimental designs owing to its ability in providing the most optimal parametric combinations [
2]. Generalizations of the behaviors of the factors mentioned above and the specified process performance are difficult because the findings of the earlier researchers were for specific tool–material combinations, such as the range of process variables and given turning conditions. The feed rate indicates an effect on cutting force (FC) and RA. Moreover, the influence on depth of cut was rather low while performing a turning operation on AA2219-TiB
2/ZrB
2 in a setup of a metal matrix composite using uncoated tungsten carbide inserts. The developed linear regression equation also showed a reliable agreement with the confirmation experiment during the turning operation [
3]. The surface quality was obtained at low feed and depth of cut, while the speed was high. Increase in RA was obtained when the machining time was high during machining Inconel 718 superalloy using cemented carbide inserts [
4]. Carbide tool coated with TiAlxN super nitride shows thermal stability at high temperatures while turning AISI 52,100 steel with cemented carbide inserts coated with the HSN
2 tool. Furthermore, the depth of cut, speed, and feed have impacts on forces, RA, and wear of the insert [
5]. Using minimum quantity lubrication (MQL) during machining increases the tool life and improves the quality of the surface generated when related to dry machining. Furthermore, high cutting speed can be utilized when machining with MQL [
6]. The speed was the most substantial factor followed by depth of cut and feed rate, but nose radius does not show a significant effect towards RA during machining of hybrid metal matrix (Al-SiCp-fly ash) composite with uncoated tungsten carbide inserts. The optimal parametric combination obtained from the genetic algorithm shows better outcomes as compared to experimental results [
7]. Grey relational analysis can be used to develop and to identify the RA of work material temperature of surface and vibration of the tool. A lower grey relational grade (GRG) value provides a smooth surface, whereas a higher GRG value increases the RA of the material [
8]. Cryogenic machining provides environmentally clean machining and is successfully used in different machining processes which improve the machining performance. The turning operation in the cryogenic environment increases the MRR and flank wear through intensification in cutting velocity, feed rate, and depth of cut [
9]. The introduction of a magnetic field to turning process responses, namely, radial force, FC, and feed force, results in higher results when compared to a turning operation without a magnetic field. Additionally, the increase in tool life was observed when machining was performed with a magnetic field [
10]. The ANOVA-TOPSIS approach can be suitably used for determining the optimal parametric combination. It was found that the higher the MRR with a good surface, the lesser the machining temperature and the FC. The most relevant factor having the highest influence towards machining response criteria is the depth of cut [
11]. When machining AISI 304 steel with uncoated carbide inserts, the RA is dominated by feed rate. The optimization of turning parameters shows a reduction in machining cost and design process [
12]. The fuzzy model with adaptive networks is called ANFIS, which provides some merits over neural networks [
13]. The wear in abrasive of a coated sample can sufficiently and accurately be predicted with the ANN ANFIS [
14]. The objective of this research is to present the experimental investigation and ANFIS-based modelling during a turning operation of EN31 alloy steel. It was observed that the proposed ANFIS model used for prediction was accurate in predicting the process response at different parametric combinations. Optimization of turning parameters during a hard turning process using teaching–learning and bacterial foraging-based optimization shows an efficient method for determining the optimal turning parameter settings. The teaching–learning algorithm-based optimization is preferred due to its convergence at the shortest possible time [
15]. The hybrid approach of ANFIS vibration and communication particle swarm optimization (VCPSO) for tool wear estimation and obtaining optimal cutting parameter settings shows that the proposed model can estimate the tool wear in real-time, which improves the efficiency of the machining process and raises the tool life [
16]. The proposed research work may be extensively used in the field of metal cutting and the manufacturing environment. Subtractive clustering with ANFIS model can be used for predicting the 2nd law efficiency and total irreversibility with high accuracy as compared to ANN [
17]. The hybrid approach of PSO-ANFIS and MNR algorithm is adept for estimating the CNs of diesel, and biodiesel oils have a novel correlation with high accuracy [
18]. The ANFIS model utilized for automation of friction stir welding, further GA and PSO has been implemented to tune the parameters of ANFIS for better prediction. The developed ANFIS-GA and ANFIS-PSO have been observed to closely accord with the experimental results [
19]. The ANFIS model can foresee more precisely when compared to ANN and other semi-empirical models using AAEDM of D3 steel [
20]. The ANFIS model was tested during the investigation of FDM parameters regarding the mechanical properties of end-use parts. The developed model depicts an error percentage of 2.63%, which validates the experimental data [
21]. ANFIS can be implemented as a booming technique for predicting the performance of rubberized concrete. ANFIS with Gaussian Membership functions (MFs) can predict with better accurately. The relationships amongst the parameters and strength are commonly nonlinear and well taken by the ANFIS [
22]. The comparison of RSM with ANFIS model during friction stir welding of AA2024-AA5083 aluminum alloys in relation to ultimate tensile strength shows that the developed ANFIS model is a powerful method as compared to the RSM model [
23]. ANFIS with fuzzy inference systems (FIS), such as subtractive clustering, grid partition, and fuzzy c-means (FCM), was utilized for determining the cetane number. The result shows that all the fuzzy inference systems can determine the cetane number of fuel (FCM), and the grid partition shows higher desirability [
24]. The adsorption process modelled with ANFIS shows a minimal error of total average error and total average of absolute error, and the coefficients of determination of the training data set were found to be 0.9999 or 0.9823 respectively, when estimating the efficacy of lead adsorption with functional nanocomposite adsorbent of hydroxyapatite (HAp)/chitosan [
25]. The FFA and GA utilized for optimizing ANFIS parameters during bench blasting show that both GA and FFA are capable optimizers for improving the ANFIS prediction [
26]. The ANFIS model implemented for prediction of vapor compression refrigeration system shows good agreement with experimental data and shows better statistical prediction efficiency [
27]. The introduction of FEA optimizer with ANFIS parades a parsimonious modelling for streamflow forecasting by integrating a small number of factors essential to return the relatively strengthen performance [
28]. The ANFIS model developed for estimating carbon dioxide loading abilities of amino acid salt solutions depicts that the developed model is sufficient to estimate the loading capabilities of CO
2 of amino acid salt solution [
29]. The shear impact of the FRP modeled with the help of ANFIS shows better performance when related with seven widely used prediction tips. Further, the ANFIS model shows effective correlation with the experimental data [
30]. The optimal combination obtained from utility function minimization multi criteria optimization approach shows higher material removal rate and lower feed and normal force. Further, the reduction in tool deflection and cutting time, and improvement in surface finish and tool life, were observed [
31]. The cryogenic liquid nitrogen was found to be more efficient for specific energy and temperature reduction and improvement in surface quality during machining of Ti-6Al-4V. The Grey–Taguchi hybrid approach has been utilized for obtaining the optimal parametric combination [
32].