The results are presented and discussed in two parts. In part one, the kinetic equation is derived using six reaction times for the intermediate stoichiometry (S1) while the second part focuses on two selected reaction times, 0.5 min and 2 min, with six stoichiometries (S0.5, S0.8, S1, S1.2, S1.6 and S2).
3.1. Kinetic Equation
The change in wt.% of the main elements (Al, Si, Ca) in the alloy and slag (Al
2O
3, SiO
2, CaO) for reaction times (min) 0.25, 0.5, 1, 2, 5, and 20 min can be seen in
Figure 3a–c and
Figure 4. A comparison of the conversion degree of Al, Si, and Ca relative to t.e. based on the composition of the alloy is shown in
Figure 3d, which was calculated using the formula:
For the alloy, the expected conversion degrees relative to t.e. were 72% for Ca and 83% for both Si and Al after just 15 s of reaction time, as illustrated in
Figure 3d. After this point, the reaction rate begins to gradually decrease over time. While Al tends to converge toward t.e., Si exceeds it. The “excess” Si produced must be offset by reduced Ca content, as confirmed in
Figure 3c. Although the slag tends to homogenize after 2 min (
Figure 4), signaling equilibrium, the Ca content in the alloy remains low. This indicates that the t.e. model might be incorrect, possibly due to unaccounted Ca evaporation. A similar deviation in Ca partitioning has been noted in previous studies [
3,
6,
8].
For the slag, the composition changes with distance from the alloy–slag interface, as illustrated in
Figure 4a–c. Unlike the relatively homogeneous composition of the alloy, which has an average standard deviation of 1.15 wt.% Al in parallel EDS measurements, the slag shows a gradient perpendicular to the interface. This gradient decreases over time, stabilizing after approximately 2 min, indicating that approximate equilibrium has been reached. The composition of the slag closest to the interface demonstrates a reduction in SiO
2 and CaO and a corresponding increase in Al
2O
3, suggesting a higher reaction rate compared to the rate of mass transfer away from it. The final compositions of the alloy and slag after extended reaction times align closely with results from similar conditions observed in previous studies [
6,
8].
Although the compositional gradient in the slag phase approaches zero after 2 min of reaction time, suggesting the system has reached equilibrium or approximate equilibrium, some alloy droplets mixed in the slag can still be seen, as illustrated in
Figure 5. Metallic phases, such as Si and Si
2Ca, appear near the interface, with Si
2Ca being the dominant entrapped phase in the slag, similar to what has been observed in previous studies with longer holding times [
6,
9]. The emulsion may be due to Kelvin–Helmholtz instability caused by turbulence at the interface, as discussed by the authors in a previous paper [
3]. The shorter reaction times in this study, compared to longer times in previous studies, might not provide sufficient time for the slag droplets to fully diffuse through the slag. Despite these instabilities, the alloy–slag interface remained smooth across all reaction times, indicating attenuated mass transfer because most expected reactions had already occurred. A notable piece of evidence for intense interfacial phenomena is the absence of a solid calcium aluminate interfacial product layer, which has been observed in experiments with stagnant flow [
3].
A common approach for modeling the reaction between liquid iron, manganese, or silicon and molten slag is to use a first-order kinetic equation. This equation describes the rate at which the concentration changes over time.
X
j,t is the averaged measurement between the interface and the crucible wall of mass fraction of component j at time t representing “the average bulk”, X
j,sat,t the saturated mass fraction of component j at the interface at the same time t, where the difference between these two correspond to the driving force for mass transport; k
j the mass transfer coefficient (cm/s) of j;
the density of the liquid slag (g/cm
3); A
t is the initial interfacial area (cm
2); and m
s,t the mass of the slag. Integrating using X(0) = X
0 yields
The first-order kinetic equation was applied to describe compositional changes in the slag, while no satisfactory fit was found for the Al content in the alloy. This observation suggests that mass transport in the alloy phase is unlikely to be the limiting factor in the conversion process. Multiple models were considered, including nucleation, diffusion, order-based, and geometrical contraction models. Among these, the first-order, Ginstling–Brounshtein, and spherical contraction models provided the best fit. The first-order kinetic equation was ultimately selected because it yielded the most accurate results, was the simplest to interpret, and is widely used in published studies on liquid metal–slag reactions.
Previous kinetics models for similar metallothermic reactions did not account for dynamic changes in
, and
as the metal and slag compositions were relatively constant. However, in the current system, these properties can vary significantly with reaction and time, especially
. To account for these variations, the alloy–slag interfacial compositions were analyzed at each time step, the dynamic density of the slag was calculated using the Mills calculator [
25], and the mass of slag was assumed to be the same as the initial slag mass for each trial, given that it varied by less than 2% from equilibrium. These calculations were incorporated for consistency and help to account for variability in these dynamic factors while providing a more robust model for the metallothermic reaction process. To simplify practical applications at different production scales, the apparent calculated mass transfer coefficient was derived as a function of the initial surface area of the Al metal. However, it should be noted that the surface area can change drastically during intense metal–slag reactions [
18], which can affect the accuracy of the model.
Quantifying kinetics under transient conditions, especially when interfacial area and melt convection vary, presents significant challenges, particularly given the relatively large conversions observed in this study [
17,
27]. The dynamic interfacial area is even more difficult to measure when reaction rates are rapid and convection is induced by mass transfer across the interface. For stagnant flow, the mass transfer coefficient is typically defined as the diffusivity divided by the effective film thickness of the boundary layer. However, in the current scenario with changing interfacial areas, the film thickness also varies, indicating that the mass transfer coefficient cannot be constant. It must change with both time and spatial position to accurately reflect the dynamic nature of the system. Consequently, the derived kinetic constant is referred to as average and “apparent” because it is suitable for engineering purposes but should be interpreted cautiously in scientific contexts. These variations underscore the complexities of accurately modeling and understanding kinetic behavior in dynamic conditions.
When plotting the left side of Equation (6) against time, as illustrated in
Figure 6a,b, the slope provides an estimate for k
Al2O3. A similar pattern is observed when using SiO
2 and CaO data. The linear fit is quite accurate within the time range of 0.5 to 2 min, suggesting consistent behavior during this period. However, for times up to 0.25 min, the coefficient is slightly higher, likely due to an increase in interfacial area driven by turbulence from significant mass transfer across the interface. This phenomenon has been previously discussed in an earlier paper by the authors [
3]. This behavior aligns with findings by [
18], indicating that interfacial turbulence is notable during the first moments of contact when the driving force for the reaction is at its peak. As the time approaches 2 min, the interface becomes more stable, e.g., as seen in
Figure 2, leading to a better linear fit. Beyond 2 min, the mass transfer coefficient seems to decrease, suggesting the reaction might be approaching equilibrium, or other factors might limit the reaction rate. The former is supported by a near-zero concentration gradient in the slag after 2 min, as shown in
Figure 4. The data point at 5 min could be due to measurement error, or the reaction is no longer limited by mass transfer in the slag phase. Given that approximate equilibrium is achieved within 2 min, this period is crucial due to the significant conversions occurring. This suggests that the reaction is primarily controlled by mass transfer in the slag phase, which aligns with previous studies by the authors [
3].
The mass transfer coefficients obtained from the experiments are presented in
Table 2 using the best fit of k for the time range 0–2 min from
Figure 6a. These mass transfer coefficients were used to model the mass fraction with time (
Figure 7) compared to calculated t.e. In
Table 2, statistical metrics are shown that assess the model’s fit over the whole dataset in
Figure 7. The R
2 value indicates the goodness of fit to the data, demonstrating that the model explains a significant portion of the variance in the outcome variable. The mean absolute error (MAE) measures the average deviation of the predicted values from the observed data. It is relatively insensitive to outliers, giving equal weight to all errors. Norm. MAE is the value normalized by the total change in mass fraction. These statistical measures suggest a robust fit, with similar values observed when considering the weighted average composition of the slag from the interface to the bulk, shown in “()”. This alignment supports the validity of the model and underscores the consistency of the experimental data with the model’s predictions.
The mass transfer coefficients for Al
2O
3, SiO
2, and CaO are within the same order of magnitude. The k represents the average mass transfer coefficient during the initial 2 min of contact under the current experimental conditions. This finding aligns with the mass transfer of MnO (Mn
2+) in reactions between Fe-Si and MnO-SiO
2-CaO-Al
2O
3 slags within a temperature range of 1550–1650 °C [
23]. This study also suggests that turbulence is induced by intense interfacial reactions driven by high Gibbs free energy of reaction. This is supported by the similar initial “jump” in the mass transfer coefficient observed in the first few seconds of the reaction, suggesting an analogous behavior.
At the same temperature range, the Fe–Al system in contact with similar slags has been reported to have a mass transfer coefficient one to two orders of magnitude higher [
22,
28,
29]. This discrepancy is likely due to a lower Gibbs free energy of reactants and fewer moles crossing the interface, leading to less agitation in the melt. In contrast, the current reaction exhibits significant turbulence due to a high driving force and a larger number of moles crossing the interface relative to its volume. Details about these interfacial phenomena in the current system were previously discussed by the authors [
3].
The reduced predictability of modeled CaO can be attributed to its behavior between 5 and 20 min. During this period, there is a persistent difference between the average wt.% CaO and the saturated wt.% CaO. This constant discrepancy indicates that equilibrium has not been achieved. As a result, the model anticipates a continued decrease in CaO concentration from 5 to 20 min.
Using the calculated mass transfer coefficient for Al
2O
3 from
Table 2 and pilot-scale data from reference [
8], the mass fraction of Al
2O
3 over time was derived and is presented in
Figure 8. This calculation employed the average dynamic slag densities from the current study, with the initial interfacial area estimated by assuming a spherical shape for the liquid Al. In the pilot-scale experiments, the combined weight of metal and slag was approximately 0.5 tons. Around 5 kg of aluminum metal blocks were added, with a total of 21 blocks inserted over a span of 90 min. A similar approach was assumed for an industrial-scale scenario, assuming a total weight of 50 tons and the addition of 10 kg Al pieces each. The reaction times from the pilot experiments [
8] fall within the same range as the calculations. The discrepancy between the model’s predictions and experimental results is partly attributed to the kinetic equation’s omission of continuous Al addition. The kinetic equation reflects a global reaction rate, and without accounting for the ongoing addition of Al. The reaction times for pilot and industrial were calculated as 58 min and 73 min for 100% completion and 28 min and 35 min for 95% completion, respectively. The results should be interpreted as indicating the lower bound of the reaction rate. Since the reaction in the slag phase is mass-transfer controlled, vigorous stirring should enhance the rate of mass transfer. Under constant stoichiometry and stirring, these reaction times depend solely on the initial Al surface area. While a larger surface area of inserted Al reduces reaction time, in practice, the energy from the dropped Al can catalyze interfacial phenomena and induce convection, which can influence reaction time. Furthermore, the exothermic nature of the overall reaction may depend on the mass and surface area of the inserted Al metal, as these factors could accelerate the initial reaction rate by locally increasing the temperature at the reaction interface. These effects should be considered in more detail when scaling up.
3.2. Kinetics for Varying Al-SiO2 Stoichiometry
Figure 9a–c illustrates the change in alloy composition with stoichiometry for holding times of 0.5 and 2 min. The final composition of the alloys is generally close to t.e., even for a reaction time of 0.5 min. Stoichiometries of 0.5 and 2 are the closest to computed t.e., and these are the only stoichiometries that converge to t.e. within 0.5 min.
Figure 9d displays the conversion relative to t.e. for alloy components with varying stoichiometries. Deviation from t.e. increases as stoichiometry rises from 0.5 to 1.2, then shifts to decreasing deviation as stoichiometry increases from 1.2 to 2. Ca deviates from t.e. somewhat more than Al and Si, aligning with previous studies on stoichiometries of 1 and 1.2 [
6,
8], hence, particularly, the Ca activity coefficient should be a subject of further research.
For all stoichiometries, the measured concentration gradients between the alloy–slag interface and the slag bulk indicated time-dependent transport of slag components (Al
2O
3, SiO
2, and CaO). This indicates mass transport limitations in the slag phase. Al
2O
3, which is produced at the interface, decreases in concentration with distance into the bulk. Conversely, SiO
2 and CaO, which are reduced components, increase in concentration with distance toward the bulk.
Figure 10a–r shows the concentration changes for Al
2O
3, SiO
2, and CaO from the alloy–slag interface to the bulk slag for reaction times of 0.5 and 2 min. The lowest conversion relative to t.e. occurred for stoichiometry 1.6, while the highest conversion occurred for stoichiometry 0.8.
The accumulated Al2O3 content near the interface tends to increase its positive deviation from t.e. as stoichiometry decreases, which correlates with the expected number of moles that should cross the interface. This implies that a higher number of reacting moles also necessitates a higher number of moles to be transported through the slag bulk. This relationship supports that the reaction in the slag phase is controlled by mass transfer.
For stoichiometries of 1.2, 1.6, and 2, the saturated Al
2O
3 content tends to reach its maximum and stabilize at around 60 wt.% at the beginning of the reaction (0.5 min). This level is significantly lower than the 78 wt.% Al
2O
3 concentration in the solid CaAl
4O
7 product layer reported for stagnant flow conditions [
3]. This indicates that dissolution occurs quickly and that the mass transport of compounds in the slag is rapid due to the interfacial phenomena observed in the present study.
By comparing the alloy compositional deviation from t.e. with that of the slag, two interesting patterns emerge. In the mid-stoichiometry ranges (1 and 1.2), the alloy deviates significantly from t.e. after 2 min, while the slag appears relatively homogenous from the interface to the crucible wall. This observation suggests either that the system is at equilibrium but the calculated t.e. for the alloy is incorrect, or that the reaction is no longer controlled by the concentration gradient in the slag phase. This flattening trend is less pronounced for S1.6, while the opposite trend between 0.5 and 2 min is observed for S2. This is likely because the alloy reached equilibrium with the slag approximately 2 mm into the slag bulk, leaving no chemical driving force for further reaction, only the driving force for mixing, which is constrained by less significant turbulence due to relatively fewer moles of reactants crossing the interface to that of the lower stoichiometries. Additionally, both S1.6 and S2 displayed a similar trend where the mass transfer coefficient appeared high between 0 and 0.5 min and then low between 0.5 and 2 min. This may be attributed to S1.6 and S2 experiencing the largest compositional changes in the slag and coupled with the highest viscosity, as shown in
Figure 11, may indicate complex kinetic behavior dependent on the slag phase.
Since the mass transfer coefficient was estimated with reasonable accuracy between 0 and 2 min using a first-order equation (Equation (6)), this same time range was selected to examine the kinetic behavior for various stoichiometries. The same method was applied to the stoichiometry series, with the results presented in
Table 3 for weighted average composition. The linear fit was notably less accurate for stoichiometries 1.6 and 2, as reflected by poorer performance metrics. The compositional gradient in the slag tends to vanish after approximately 2 min of reaction time for all stoichiometries except 1.6 and 2. For stoichiometries 1.2 and lower, the concentration gradient continues to drive diffusion up until this time, following the first-order relationship in Equation (6), providing further evidence that the reaction in the slag phase is mass-transfer controlled.
As stoichiometry increases, the alloy-to-slag mass ratio rises from about 1/6 for S0.5 to 1/2 for S1.6 and S2. This change in ratio suggests that the relatively shorter transport distance in the slag could decrease the influence of mass transfer control in the slag while increasing its significance in the alloy. To validate this, the same model was tested under the assumption of mass transfer control in the alloy, as well as mixed control (in both the alloy and slag), using the equation derived in reference [
30]. However, neither assumption resulted in a satisfactory fit. Both stoichiometries displayed a similar trend: the coefficient was high between 0 and 0.5 min, then attenuated between 0.5 and 2 min.
Figure 11a shows the dynamic viscosities at varying distances perpendicular to the alloy–slag interface for some stoichiometries and initial slag viscosity after a reaction time of 0.5 min. The viscosity tends to decrease with distance from the alloy–slag interface to the bulk slag due to the relative increase in Al
2O
3, which gives a higher viscosity compared to CaO and SiO
2. As the reaction progresses and mass transfer homogenizes the slag, the change in viscosity with distance from the interface decreases. Using these values for 0.5-min and 2-min reaction times, the calculated total averages are displayed in
Figure 11b. The average dynamic viscosity is generally lower with lower stoichiometries, reflecting the lower reduction degrees of CaO and SiO
2 relative to the total volume (see
Figure 12b).
Considering the mass transport limitation in the slag, it is reasonable to quantify the relationship between the mass transfer coefficient and the average viscosity of the slag. According to the surface renewal model for mass transfer [
31], the mass transfer coefficient is given by:
where k
s is the mass transfer coefficient in the slag phase, D is the diffusivity of the component, and t
c is the reaction time. Assuming that the Stokes–Einstein relation is valid for this system, i.e., diffusivity is inversely proportional to dynamic viscosity, the following relationship is obtained, and the result is shown in
Figure 11c.
This figure displays the apparent mass transfer coefficient of Al2O3 plotted against the square root of the inverse viscosity, using the total average viscosity after 0.5 min (with similar results for 2 min). The best-fit linear line, representing Equation (8), is shown. This outcome provides further evidence that the rate of reaction is controlled by mass transfer in the slag phase. However, the scattered data points suggest that viscosity alone is not the only significant factor in kinetics, especially given the turbulent interfacial phenomena.
The mass of the alloy and the slag was not measured in this study, and accurate measurement in practice is challenging due to issues such as liquid spills or the mixing of solid phases. Since the stoichiometry varied, the number of moles crossing the interface also changed. This variable must be controlled to understand the kinetics and the deviating behavior of the alloy shown in
Figure 9d. Equation (9) provides a reasonable estimate of the alloy mass produced for different stoichiometries, based on the known alloy composition and the initial metal mass.
where n
Al,react., n
Al,0, n
Si,prod., n
alloy, M
i, and x
i are initial guess reacted moles of Al, actual initial moles Al in the metal, guessed moles Si produced, molar weights for component i, and final molar fractions of component i, respectively.
This equation assumes that only the stoichiometric relationship from reaction Equation (1) is relevant to the mass produced. The validity of the equation was evaluated by using calculated equilibrium values for fractions and mass of the final alloy, with the results shown in
Figure 12a. The deviation from the actual equilibrium mass of the alloy ranged from 0.003% to 2.88%. The highest deviations were observed for stoichiometries 0.5 (−2.88%) and 1.2 (+1.81%) relative to the actual equilibrium alloy mass. This equation was then used to estimate the real mass of the alloy produced in experiments and on larger production scales (
Figure 12b). The graph demonstrates that the relative alloy mass decreases with increased Si content (low stoichiometry) and increases with higher Ca and Al content (medium and high stoichiometries). Ignoring weight loss due to evaporation, the weight change of the slag was calculated and is also shown in the same figure, varying by only 1–2 wt.% for these stoichiometries.
In addition to viscosity, turbulence at the interface induced by the reaction was examined as a potential factor affecting kinetics. Turbulence is a function of the reaction degree, which is tied to the number of moles crossing the interface due to the reaction. Using the predicted alloy mass, the number of oxidized moles of Al to Al
2O
3, normalized by the initial moles of Al, was calculated and is shown in
Figure 13a. The number of moles of Al consumed, normalized by the initial total mass of metal and slag, is shown in
Figure 13b. Although relatively more moles cross the interface with decreasing stoichiometry, leading to greater interfacial turbulence (
Figure 13a), this effect is mitigated by the larger slag mass content, where the composition changes less due to less reduction in SiO
2 and CaO. Interfacial turbulence and viscosity seem to work in favor of each other under these conditions. Despite lower stoichiometries involving fewer moles being converted in the total system, interfacial turbulence remains high, and the lower viscosity allows relatively fast mass transfer in the relatively larger volume of slag. However, these relationships do not fully explain the deviation between experimental results and t.e. in the alloy (
Figure 9d), prompting further investigation into the underlying chemistry.
The deviation from t.e. in the alloy, as illustrated in
Figure 9d, was analyzed using the activities of the main reacting components, a
Al and a
SiO2, which represent equilibrium activities calculated in FactSage 8.1 [
2]. The equilibrium activities of Al and SiO
2 have an inverse relationship with stoichiometry. For stoichiometries 0.5 to 1, the deviation from t.e. increases, indicating less reaction than expected, as a
SiO2 decreases relative to a
Al. However, the trend reverses for stoichiometries of 1.2 and above, showing a decreasing deviation as a
Al increases, while a
SiO2 remains relatively constant, as indicated in
Table 4. This relationship can be visualized in
Figure 14 using Equations (10) and (11), which show Al conversion relative to t.e. as a function of the equilibrium activities a
Al and a
SiO2.
where constants A and B are 0.074 and 1.12 for the 0.5-min data and 0.082 and 1.18 for the 2-min data. The exponents could be related to the molar relationship in Equation (1). This model represents the best fit obtained by varying both the exponents and the constants in front of each activity. The relatively good fit indicates that the observed deviations from t.e. with respect to stoichiometries could be attributed to the inter-relationship between the activities of the main components. This understanding is valuable for predicting process outcomes, given that a larger deviation from t.e. for S1.2 was observed in pilot-scale studies [
8].
The metallic content in the slag tends to decrease with reaction time, as quantified in a Si metal refining study [
16]. It was found that emulsion levels increase with CaO content due to more reaction between Ca and SiO
2. Previous studies by the authors [
6], as well as studies with varying initial CaO/SiO
2 ratios in the slag [
9], have shown that the Si
2Ca phase is the most prominent metallic phase entrapped in the slag. These findings align with the present results, indicating that the metallic phase entrapped in slag decreases with decreasing stoichiometry and exhibits a higher degree of coalescence (with larger droplets), as seen in
Figure 15a–c. This pattern is due to the increased CaO reduction to Si
2Ca with stoichiometry, which may result from either slower mass transfer of the metallic phase in the slag due to higher viscosity or reduced interfacial turbulence due to less mass transfer across the interface (
Figure 13a). These factors proved to be more critical than reaction time. The separation between alloy and slag was observed to be most satisfactory for stoichiometries 0.5 and 0.8. Stoichiometry 2 had fewer entrapped alloy droplets than stoichiometries 1–1.6, likely due to reduced Ca content in the alloy, as expected from t.e. Although the alloy and slag are in approximate equilibrium for higher stoichiometries, the potential loss of metal in slag must be considered when assessing the overall kinetics at pilot and industrial scales.