1. Introduction
A large variety of methods are available commercially for the synthesis of nanoparticles and these are based on the expense of nanoparticles’ production, easiness, and morphological features. Among these methods, an auto-proliferating combustion process is considered to be the best alternative as by following this simple method, the required phase can be obtained with greater control over stoichiometric ratio [
1,
2,
3]. This method of combustion synthesis requires the application of temperatures, where organic material is utilized to initiate the decomposition process of precursor metal salts [
3,
4,
5]. The morphological features of the prepared samples mainly depend on the temperature and gases produced in the process during complex decomposition and are influenced by the fuel content, fuel/oxidizer proportion, temperature during the chemical process, etc. [
1].
Aluminum alloys reinforced with ceramic particles result in high stiffness, high elastic modulus, and wear resistance [
6]. Cluster formation and heterogeneous distribution of reinforcement throughout the medium due to casting or powder metallurgy manufacturing techniques is a common problem associated with aluminum matrix composites (AMCs). This non-homogeneous distribution of reinforcements in the crystal structure of the Base Metal can influence the isotropy of material characteristics. Friction stir welding (FSW) is a better process as it prevents clustered reinforcement because of the continuous stirring motion of the machine and brings uniform dispersion in the weldment owing to material blending and extreme plastic distortion [
7,
8,
9,
10]. It is a solid-state welding method that occurs far below the material’s melting temperature and avoids the negative impacts of traditional fusion welding. Additionally, it has developed itself as a popular method of joining AMCs [
9]. It was introduced by the Welding Institute [
11] which involves minimum heat intake and the bonding happens well below the alloys’ melting temperature. Hence it is ideal for low MP metals like Al and Mg [
12]. The spinning tool used by FSW is non-consumable. This spinning tool fuses the work piece’s two faying surfaces together. This connecting strategy effectively connects metals, alloys, and MMCs that are hard to connect with traditional methods [
10].
The schematic representation of the FSW method is displayed in
Figure 1. In general, because of the rotation of the equipment, the FSW method reaches a temperature of about 80% of the metal melting temperature. It results in reallocation and refining of reinforcement, recrystallization, and the growth of grain in the nugget zone [
7]. The formulation of variables for FSW is based on a hit and trial method for the determination of process variables and the design of welding tools [
13]. The quality of the weldment can be evaluated primarily by its macrostructure and microstructure. FSW was found to produce microstructural variations across the weld due to the thermo-mechanical treatment involved in the process. Such variations result in local changes in mechanical properties [
14]. During FSW, due to continuous tool motion, the parts are subjected to thermal cycles and extreme plastic deformation at elevated temperatures. The microstructure of the nugget zone is highly affected by the rotor velocity of the tool and the amount of heat input. It is possible to increase the weld quality by monitoring the weld zone temperature [
7]. In general, transverse microhardness measurements are preferred; they provide a hint of the transition of different phases and reinforcement dispersion in the FSW of AMMCs. The maximum hardness appears in the middle of the nugget zone, because of more grain refinement owing to dynamic recrystallization and increasingly homogeneous distribution of smaller reinforcement particulates in the weld zone because of the stirring motion [
7,
15,
16,
17,
18,
19].
The influence of graphite reinforcement addition on surface roughness during turning of AA7075-ZrB
2 in situ Metal Metrix Composites (MMC) was studied by Sivasankaran et al. [
20]. This was observed that for 1% of Gr and 3% ZrB
2 hybrid in situ composites resulted in a good surface finish. Thirumoorthy et al. [
21] reviewed the latest research development in aluminum MMCs.
The work in [
21,
22] focused on the mechanical properties like hardness and crystal structure in FSW Al6061-TiB2 composite formed by the method of stir casting. Grain refining and uniform re-distribution of small TiB
2 particulates in the stir zone takes place after FSW was noticed by comparing the microstructure results before and after welding. Faraji and Asadi [
23] able to notice that, much better distribution of Al
2O
3 particles in MMCs using the square pin profile tool due to significant pulsating stirring action. In another study, Tanvir et al. [
24] fabricated FS-welded joints by adding Al
2O
3 nanoparticles in the base matrix to refine the nugget zone’s crystalline structure and to impede granular growth in the HAZ. They found that the introduction of Al
2O
3 nanoparticles across the joint line contributes to a notable grain refinement structure of the weld zone relative to the base material and unreinforced nugget joints. For the reinforced FSW joint, tensile strength, microhardness, and wear properties were significantly improved relative to the unreinforced joint due to the presence of nanoparticles. In an attempt to assess the impact of SiC and TiC nanoparticles on the weld nugget of AA6082-T6 butt welds, optical and electron microscopy, as well as microhardness testing, were carried by Karakizis et al. [
25]. They mainly focused on the distribution of dislocations and the inclusion of particles in the weld that was intermetallic and reinforcing. They observed that, due to the complex recrystallization process, the particle sizes of all the samples were severely reduced. This also caused a lot of the intermetallic particles of the base metal to be diluted and the dislocations to multiply. They also observed increased elongation and micro-hardness with the addition of SiC and TiC nanoparticles. Tanvir et al. [
26] carried an experimental study to find the impact of the volume fraction of Al
2O
3 nanoparticles on the rheological, mechanical, and micro-structural properties of particulate-nanocomposite (P-NCs)-based aluminum alloy 6061-T6 produced by FSW techniques. In order to determine the distribution of Al
2O
3 nanoparticles in the nugget region, optical microscopy (OM) and SEM were used and the crystal structures of the generated nanocomposites; the extent of nanocomposites formed on the alloy matrix; and the properties of fractures and wear were evaluated. They found a dramatic rise in micro-hardness to 127 HV, which is better than AA6061-T6, with the rise in the volume fraction of Al
2O
3 nanoparticles. They also observed an increment in the tensile strength and wear resistance of generated P-NCs at 0.3 vol fraction of Al
2O
3 nanoparticles as compared to 0.2 and 0.4 vol fraction. Sharifitabar et al. [
27] analyzed the mechanical and tribological features of the friction stir processed (FSP) 5052Al/Al
2O
3 surface composite and the influence of various FSP pass on their features. Friction stir processed by one to four passes was used in two sample series with and without powder. The research revealed that with the escalation of the FSP pass, the grain size of the stir zone reduced and also resulted in a uniform distribution of Al
2O
3 particles in the matrix and nano-composite output with a mean cluster size of 70 nm. They also observed an increase in tensile and yield strengths of the composites.
Mahdi et al. [
28] analyzed the influence of the rotational speed of the tool on tribological and mechanical properties of magnesium-based surface nanocomposites fabricated using FSP. They found an increment in the grain size of the composite with an increase in rotational velocity. They also observed an improvement in the distribution of Al
2O
3 nanoparticles despite a decrease in the hardness with an increase in rotational velocity. Vijay et al. [
29] analyzed the influence of tool pin profile on the characteristics of FSW Al-TiB
2 MMCs. They suggested that square pin profile results with improved properties in comparison with the rest of the profiles used in their study. Nandipati et al. [
30] stated that FSW metal matrix composites yield significant grain refinement and homogeneous particle distribution, with increased strength than the base metal. Khalique et al. [
31] investigated the impact of mechanical properties and microstructure of 6082 aluminium alloy with various percentages of Al
2O
3 reinforcements using the FSW process. To evaluate the optimum values ANOVA and RSM method was also used. Shettigar et al. [
32] developed the AMCs using the stir casting method and welded using the FSW method. They also studied the microstructure and joint strength of the welded joints and obtained a joint efficiency of 97% perpendicular, according to the tensile test. Prabhuraj and Rajakumar [
33] used FSW to weld rolled aluminum plates of 10 mm thickness. Later in a 3.5 wt% sodium chloride solution, the electrochemical corrosion activity of FSW joints was studied. They found that the stir zone has a higher corrosion potential than the parent metal. Kumar et al. [
34] investigated the impact of various parameters that affected the mechanical properties of aluminum-based materials produced using the friction stir process. They found an improvement in strength and hardness and a decrease in wear rate after processing these materials for 3–4 passes using FSW. When the rotational speed is increased, the wear rate decreases. Rao and Trinadh [
35] used the FSW method to make aluminum alloy composites with hybrid reinforcements (different amounts of B
4C and TiB
2 particles). They found an increase in the mechanical properties, especially with 75 percent TiB2 and 25 percent B
4C.
From the literature review, it is very much clear that, processing aluminum using the FSW method has a lot of benefits. Additionally, the addition of nanoparticles (Al2O3) as a reinforcement material increases the various properties of the base material. From the review, it is also evident that many research studies have been performed only on carbide and oxide-based reinforcements. No sufficient research work has been carried out on the inclusion of nitride and oxide particle reinforcement in aluminum alloys. However, the introduction of nitride reinforcement and the addition of oxides with nitrides enhances the properties. The research gap on the use of modern characterization methods in the analysis of the composite continues to remain.
Thus, the main objective of the present research is to explore Al-Mg/Al2O3 MMNCs at atmospheric and high temperatures for their mechanical properties and static immersion corrosion behavior in a 3.5 wt% sodium chloride solution using the FSW method. The impact of the size and volume fraction of Al2O3 particles on mechanical and corrosion features will be investigated. This composite has a wide range of applications including marine and aircraft applications. The exploration of these properties is very important as the usage of these composites involves marine application which has a very corrosive environment. Additionally, it finds application in the aircraft industry especially during the landing of aircraft which involves a great deal of wear-resistant and this composite is found to have good wear-resistant properties.
5. ANN Modeling
A three-layer feed-forward ANN framework is proposed in this research and included one input layer, one hidden layer, and one output layer, respectively. In the input layer, the neurons were two, while the output layer has one neuron for the Avg. tensile strength (N/mm
2). The experimental data were implemented as the inputs for the ANN framework, in which each data denotes a complex conglomeration of variables of the hand lay-up process (treatment method, materials used, etc.). The data were categorized into 3, where 70, 15, and 15% of all data were used for training, validation, and testing. In
Table 13 and
Table 14 the correlation coefficient of ANN models is shown for testing, training, and validation data. To train the model, the Levenberg–Marquardt algorithm was utilized. It has been adopted for learning networks. The ANN was iteratively trained to minimize the mean squared error (MSE) performance function between the outputs of the ANN and the corresponding target data.
To find the best network architecture for both the networks, a “trial-and-error method” was used and the investigation was carried out over 1000 distinct network architectures. The inverse of the mean absolute error on the testing set was used to measure the network fitness score on each network with a different configuration (number of hidden layers, number of nodes, etc.). With a higher fitness ranking, the best network architecture has been selected.
Table 10 and
Table 11 shows the results of ANN simulations for the foregoing neural network. It can be seen that for all cases, ANN modeling with fewer neurons in a single hidden layer guesses the yield strength with the partial data. Nonetheless, due to the optimum value of the modeling coefficient, 20 and 14 neurons in a single hidden layer structure were assumed to present the ANN modeling outcome. Yield strength and ultimate strength from ANN modeling is shown in
Figure 18 and
Figure 19, for 20 and 14 hidden neurons within a single hidden neural network layer as it provides the highest accuracy and hence the lowest prediction error. The relation between the goal (experimental values) and the ANN model performance values in the three sub-datasets can be seen in the figure, which shows expected yield strength values for the various datasets. The dots and solid lines in
Figure 18 depict the data and best-fit linear regression with R-values of 0.86865, 0.999172, and 0.99184 for training, validation, and testing sub-datasets respectively, while the overall R value of 0.92734 was obtained for the overall training phase as shown in
Figure 18. The R of the ANN models is close to one, which is appropriate and confirms the model’s predictive potential. Similarly for the prediction of Ultimate tensile strength, the R-values from the ANN model was close to one, hence this model also confirms the ANN predictive ability.
Table 13 and
Table 14 shows the results of ANN simulations for the foregoing neural network. It can be seen that for all cases, ANN modeling with fewer neurons in a single hidden layer guesses the yield strength with the partial data. Nonetheless, due to the optimum value of the modeling coefficient, 20 and 14 neurons in a single hidden layer structure were assumed to present the ANN modeling outcome. Yield strength and ultimate strength from ANN modeling are shown in
Figure 19 for 20 and 14 hidden neurons within a single hidden neural network layer. The predicted yield strength and ultimate strength data obtained from ANN is compared with the experimental data (
Figure 20a,b). It can be seen that the prediction of the results by ANN is significantly better.