1. Introduction
Energy generation activities dominated by the large-scale utilization of fossil fuels cause the rapid rise of CO2 and greenhouse gas concentration in the atmosphere, which are the main reasons for climate change [1,2]. With the aggravation of global warming, the zero emission of CO2 as a target is becoming increasingly urgent. The iron and steel industry is the largest source of CO2, and the Chinese government and industry are becoming increasingly concerned. In 2020, China’s iron and steel industry accounted for more than 60% of the world’s total steel carbon emissions, accounting for about 15% of the country’s total carbon emissions [3]. Therefore, decreasing CO2 emissions by the iron and steel industry is particularly important if China is to achieve its carbon neutrality goals. To reduce CO2 emissions, new reducing agents need to be found to replace the carbon used in the iron reduction process. As a reducing agent, H2 does not cause pollution and is an ideal substitute for carbon [4,5]. In recent years, an increasing number of studies have focused on the reduction of iron ore with H2 or H2-rich gases to reduce carbon emissions. H2 is considered to be the most promising clean energy source in the 21st century owing to its diverse sources, high calorific value, good thermal conductivity, and wide range of applications. It has high potential as a replacement for carbon as a reducing agent in the iron and steel industry [6,7,8].
Mousa et al. [9] studied and compared the effect of H2-rich gas on reduction of pellets in terms of its activation energy and rate-determining steps. Ding et al. [10,11] explored fluxed sintering reduction with CO and H2 gas using thermodynamic and kinetic model functions. It was concluded that H2 increases the reduction rate and decreases the activation energy. Bahador et al. [12] analysed magnetite concentrate particle reduction with H2 gas in the temperature range of 700–900 °C, and an activation energy of approximately 29.48 kJ·mol−1 was obtained. Bai et al. [13,14] found that the reduction rate constant increased with an increase in temperature, as well as efficient reduction gas content through kinetic analysis of pellet reduction using H2–N2 under isothermal and non-isothermal conditions. Lin et al. [15] and Tiernan et al. [16] used the temperature-programmed reduction method to study the kinetics of H2 reduction of iron oxide. They found that Fe2O3 was reduced to Fe in two steps: Fe2O3 to Fe3O4 and then Fe3O4 to Fe. The first step is described by the random formation and growth of nuclei, while the second step is matched to a two-dimensional nucleation according to the Avrami–Erofeev model. Chen et al. [17,18] studied the reduction behavior of hematite and magnetite in the suspension ironmaking process using a drop tube furnace reactor. Assuming that the reduction process is a one-step reaction from Fe2O3/Fe3O4 to Fe, the nucleation growth model was used to calculate the kinetic parameters. Previous research has focused on the reduction of sinters and pellets rather than iron ore fines. New ironmaking technologies that use iron ore fines directly as raw materials (FINEX, HIsarna and flash ironmaking processes) are receiving increasing attention owing to their advantages in terms of environmental protection, energy conservation, and consumption reduction. Therefore, studying the kinetics of iron ore fines is extremely important. However, there is little literature on the simultaneous study of the isothermal and non-isothermal reduction behavior of iron ore fines.
The purpose of this study is to compare the isothermal and non-isothermal reduction processes of iron ore fines in an H2 atmosphere. The activation energy, rate-controlling steps, and model functions were deduced using thermogravimetric techniques. The current study can help further the understanding of reduction behavior of iron ore fines in an H2 atmosphere and provide an accurate kinetic model for the optimization of the ironmaking process.
2. Materials and Methods
2.1. Preparation of Sample
The iron oxide particles used in the investigation were provided by a commercial iron and steel plant. The iron oxide particles were crushed into iron ore fines with a particle size < 100 μm. The chemical composition of the iron ore fines is shown in Table 1, which indicates that the main phase in the sample was Fe2O3. The iron ore fines were examined by x-ray diffraction (XRD) analysis, as shown in Figure 1. Scanning electron microscopy (SEM) was used to analyse the morphology of the iron ore fines, as shown in Figure 2.
2.2. Reduction Experiments
In this study, thermogravimetric (TG) measurements were conducted using an analyzer (Model Setsys HCT-2, Beijing hengjiu, Beijing, China) for the isothermal and non-isothermal reduction of iron ore fines at different temperatures. In each experimental run, 100 mg of ore fines was placed in an alumina crucible. In these experiments, the furnace was flushed with N2 (60 mL·min−1) for 40 min before the heating procedure was performed. In the isothermal experiments, the furnace was heated to the target temperature at a heating rate of 20 °C·min−1, during which N2 was introduced into the furnace at a flow rate of 20 mL·min−1. Then, the ore fines were reduced for 60 min in a mixture of 30% H2-70% N2 at a flow rate of 20 mL·min−1 at temperatures of 800 °C, 850 °C, 900 °C, 950 °C, 1000 °C, 1050 °C, and 1100 °C. In the non-isothermal experiments, the sample was heated to 1000 °C at different heating rates of 5, 10, 15, and 20 °C·min−1. During the process, a mixture of 30% H2-70% N2 had been introduced into the furnace since the sample started to heat. The weight loss owing to the removal of oxygen from the iron ore fines was continuously recorded by computer for each heating rate. At the end of the experiment, the reduction gas was replaced with N2, and the furnace was cooled to 25 °C. Subsequently, the samples were packed in a resin and analyzed using SEM.
2.3. Thermal Analysis Kinetics
The reduction degree is defined as the ratio of the weight loss at a fixed time to the theoretical weight loss from iron ore fines, and can be expressed as:
(1)
where α is the reduction degree (%); m0 is the initial sample mass (mg); mt is the sample mass at a particular time t (mg); and m1 is the sample mass after reaction at the end (mg).The kinetics equation based on the Arrhenius rule [19] can be expressed as follows:
(2)
where dα/dt is the reduction rate min−1, when the reduction time corresponds to t; A is the pre-exponential factor, min−1; E is the apparent activation energy, kJ·mol−1; R is the gas constant, 8.314 J/(mol·K); and f(α) is a model function that reveals the reaction kinetics mechanism. A detailed flowchart of the kinetic analysis under isothermal and non-isothermal conditions in this study is shown in Figure 3.2.3.1. Isothermal Condition
The model-free method [20] was used to obtain the relationship between the reduction rate and temperature at the same reduction degree. Therefore, the activation energy can be calculated as follows:
(3)
The apparent activation energy was calculated from the slope of the plots of ln(dα/dt) against 1/T. G(α), which is the integral function of f(α), described as follows:
(4)
Model function G(α) was obtained to describe the relationship of the reduction degree with time. The relationship between G(α) and n for normal solid reactions and its reaction mechanism is shown in Table 2 [21].
The model functions describing the degree of reaction as a function of time and elucidating the reaction mechanism are solved mainly by two methods, namely ln-ln [22] and sharp [23] analysis. These two methods are indirectly and widely used to explore known model functions for polymeric materials but are also applicable to other types of reactants. The ln-ln analysis is based on the Avrami–Erofeev model [24,25]:
(5)
The sharp analysis defines a non-dimensional parameter y(α) to be the target model function, described as:
(6)
where G(0.5) refers to a fixed G(α) with α = 0.5, and t0.5 is the time corresponding to α = 0.5. The model function of the normal solid-state reactions draws the standard curve under a series of α values, and the experimental data are drawn on a standard curve. If the experimental data point coincides with the standard curve of the model function, the model function is obtained.2.3.2. Non-Isothermal Condition
To calculate the activation energy values for the reduction with H2 at different heating rates, the Kissinger–Akahira–Sunose (KAS) [26] iso-conversion rate solution method was used:
(7)
where β is the heating rate. The principle of the iso-conversion method under non-isothermal conditions, is that when α is a fixed value, m(α) is constant. According to Equation (7), the plot of ln(β/T2) vs. 1/T gives the activation energy from the slope and intercept of the curve under different reaction conditions.The model function under a non-isothermal condition usually adopts the Malek method [27]. The idea of the Malek method is to match the experimental data and the standard curve by defining the function y(α).
(8)
The differential expression f(α) and integral F(α) of the model function are substituted into the above equation, and a series of curves drawn by y(α) corresponding to the α value are obtained. The mechanism can be used to describe the simplification process when the corresponding curve is consistent with the experimental data. The standard curves F(α) and f(α) functions are shown in Table 3 [28].
3. Results and Discussion
3.1. The Calculation of Kinetic Parameter with Isothermal Reduction
3.1.1. Reduction Degree and Rate
Figure 4 shows the reduction curves of iron ore fines with H2 gas at different temperatures. It shows that after any specific reduction time an increase in temperature resulted in an increase in the reduction degree. During the early stages of the reaction, the rate of oxygen removal was very high and the degree of reduction increased significantly. In the later stages, the removal rate of oxygen was very low, showing an obvious decrease in the rate until the end of the reduction process, giving a plateau-type curve in the final reduction stage. On the other hand, iron existed in the form of α-Fe when the temperature was <912 °C, and the form of γ-Fe when the temperature was >912 °C. In γ-Fe, the diffusion rate of H2 and reduction product (H2O) were slower than those in α-Fe. Secondly, the dense iron layer was formed by reduction increases as temperature increased, and it became dense due to continuous crystals. The dense iron layer hindered the diffusion of the reducing gas, so that the unreduced iron oxide was not easily reduced by direct contact with the reducing gas [29,30]. However, the H2 reduction reaction of iron oxide is endothermic and has a high reduction potential at high temperature. Therefore, a higher reduction temperature may reduce the effects of kinetic limitations. The reduction curve comprises three consecutive stages: induction, acceleration, and descent.
The reduction rates dα/dt (min−1) of iron ore fines at 800–1100 °C were calculated from the reduction degree vs. time curve (Figure 5a), and the relationship between the initial (0–30%) and final (80–90%) reduction rate (Figure 5b). It has been shown that the reduction of iron ore fines is a complex multi-step reaction, which is the result of multiple couplings of chemical and structural changes. The theoretical reduction degree of the Fe2O3 (Fe2O3→Fe3O4) and Fe3O4 (Fe3O4→FeO) is fixed at 0.11 and 0.33, respectively. The reduction rate in the initial and final stages gradually increased with increasing temperature, which is consistent with the basic principles of chemical kinetics and diffusion [31].
Figure 6 shows the SEM images of the samples reduced by H2. As temperature increased some inner cracks and micro-pores were uniformly distributed around the metallic iron, due to the reduction hematite. The dense structure of the sample was destroyed and became porous, resulting in the occurrence of a slight sintering phenomenon. When the temperature reached 1100 °C, the metallic iron phase was fully developed and bonded, which promoted a clear boundary to be formed between metallic iron particles and slag.
3.1.2. Apparent Activation Energy and Rate-Controlling Steps
The relationship between the activation energy and rate-controlling steps is presented in Table 4 [32]. The activation energy and rate-controlling steps with different degrees of reduction are shown in Figure 7. The activation energy of iron ore fines fluctuated in the range from 27 to 93 kJ·mol−1 as the degree of reduction increased.
Under isothermal conditions, the iron ore fines were completely reduced by H2 in a shorter time than that taken by using CO [33]. The E value in the initial stages was 28.96 kJ·mol−1, which indicates that the reduction process was most likely controlled by a combined effect of both gaseous diffusion and interfacial chemical reaction mechanisms. This was the same rate-determining step as for CO [34]. In the later stages, the E value obtained was 79.15 kJ·mol−1, which revealed that the interfacial chemical reaction and solid diffusion mechanism was the rate-determining step. However, CO was controlled by an interfacial chemical reaction, which was the rate-controlling mechanism.
3.1.3. Model Function Results
According to the ln-ln analysis, the value of n is directly related to G(α). The avrami–Erofeev exponent n of the samples at 800–1100 °C is shown in Table 5. Table 5 shows the relationship between ln(−ln(1 − α)) and lnt for the samples, which reveals that the range of n was 1.02–1.23 at a reduction temperature of 800–1100 °C and indicates that the reduction of the sample was expressed by the function F1 (instantaneous nucleation and unidimensional growth) toward R2 (bidimensional shape).
Based on the sharp analysis, the standard curves and experimental data of the iron ore fines are shown in Figure 8. The y(α) values for the iron ore fine reductions lay on the curve based on Function F1 and then gradually tended to lie on the curve based on function R2. The sharp analysis results strongly agreed with the ln-ln analysis results.
3.2. The Calculation of Kinetic Parameter with Non-Isothermal Reduction
3.2.1. Reduction Degree and Rate
Figure 9 shows the values of α and dα/dt versus time at different heating rates. The curve shape is similar for all degrees of reduction. It can be seen from the experimental results that the reduction reactions proceeded at ≥350 °C, and the rates increased with increasing temperature. As can be seen from the figure, the heating rate had a significant influence on the reduction reaction rate. However, with an increase in heating rate, the starting and ending temperatures reflected a slight delay in the reduction process. It can be seen from the dα/dt curve that the reaction rate changed significantly during the entire reaction process. This is because the process of H2 reduction of iron ore fines is more sensitive to an increase in the heating rate.
The morphological changes in the sample after reduction were observed by SEM, as shown in Figure 10. The size of the metallic iron particles was relatively large when the sample was reduced at a low heating rate of 5 °C·min−1. With an increase in the heating rate, the grains gathered and formed a dense iron layer, with many metallic iron particles uniformly distributed. In addition, it was found that product organization existed in the pores. On the one hand, the structural changes reduced the porosity and hindered the diffusion of atmospheric water vapor as a macromolecule, and it changed the diffusion path.
3.2.2. Apparent Activation Energy and Rate-Controlling Steps
The activation energies with different reduction degrees are listed in Table 6. Evidently, the activation energy of iron ore fines did not change significantly with an increase in the degree of reduction. The average activation energy was 26 kJ·mol−1, and the reduction reaction was controlled by gaseous diffusion.
In the non-isothermal reduction experiment, for CO as reducing agent, a high activation energy was obtained in the initial stage that decreased with an increase in reduction [34]. The average activation energy for H2, in comparison, was lower during the entire stage. This was due to the special characteristics of H2; its smaller molecular size leads to lower density and viscosity, better diffusivity and permeability, better chemical reaction and heat exchange between the gas and the burden, and thus, lower activation energy. Therefore, H2 is a more effective reducing agent in terms of kinetics.
3.2.3. Model Function Results
The Malek [27] method is a kinetic analysis based on multi-heating rate methods, which can be used to determine the reaction mechanisms. The relation curve between y(α) and α is drawn according to the experimental data for the four heating rates, as shown in Figure 11. It can be seen from the figure that the data points under different heating rates coincide. For the reduction degree of 0.1, the reaction follows a mixed control model. When the reduction degree was 0.2, the model function followed two-dimensional diffusion, and the reaction was consistent with the function curve shown in Figure 11 (2). The experimental data followed the curve of function in Figure 11 (9) when the reduction degree was in the range of α = 0.3–0.9. The reaction mechanism was controlled by three-dimensional diffusion. H2 could not be represented by either model when it first came in contact with iron ore fines, so it was a mixed control model, which in turn quickly changed to two-dimensional diffusion, and was mostly reduced by three-dimensional diffusion.
3.3. Influence of Different Parameters on Industrial Applications
The reduction process of iron oxide particles by H2 is very complex, and the factors affecting the reduction kinetics of iron oxide are mainly related to external conditions and the material itself, which can be changed to effectively improve the reduction rate and have an impact on the production of industrial applications.
Owing to the dependence of the kinetic mechanism on the reduction temperature, the temperature of the reduction is higher. The reduction temperature is the most significant factor limiting the rate step; a higher temperature facilitates the diffusion rate and the phase boundary reactions. According to the thermodynamic equilibrium diagram, the driving force of reduction increases with increasing temperature when H2 is used as the reducing agent. Therefore, a higher temperature has a positive effect on the thermodynamics and kinetics. For CO as a reducing gas, the reduction driving force decreases with an increase in temperature. Therefore, H2 has a higher reduction capacity than CO in the high temperature zone, which increases the reduction rate of iron oxide and industrial productivity. Because H2 reduction replaces partial carbon reduction, the amount of carbon reduced per ton of iron and the proportion of direct reduction can be reduced, and the production of CO2 can also be reduced.
The structural characteristics of the ore itself also affect the reduction rate. Owing to the small molecular size of H2 and fast diffusion rate, the contact area of H2 with the same particle size ore is increased, the diffusion resistance is low, and the reduction rate is high compared to CO. A high porosity burden allows for better diffusion of reducing gases to the reaction interface. The sinter has a high internal porosity and pore structure of different sizes, and there is little difference in the reduction effect between H2 and CO. However, the lump and pellets had a relatively dense structure. Because of its strong diffusion ability, it is easier for H2 to permeate into the structure than CO, which strengthens the reduction kinetics, resulting in lower reduction smelting time and higher production efficiency.
4. Conclusions
The isothermal and non-isothermal reduction behavior and mechanism of iron ore fines with H2 were studied, and the reaction kinetics were analyzed by continuously recording the weight change of the TG equipment. The results obtained include the following aspects:
(1). Under isothermal conditions, temperature plays a vital role in the reduction process. The activation energy was 27–93 kJ·mol−1. The rate-controlling step was gaseous diffusion and interfacial chemical reaction mixed control in the initial stages, and interfacial chemical reaction and solid diffusion in the final stages. The reduction of the samples was expressed by the model function F1 (instantaneous nucleation and unidimensional growth) toward R2 (bidimensional shape) through the ln-ln and sharp analyses.
(2). In the non-isothermal reduction experiment, the heating rate significantly affected the reaction rate. The average activation energy calculated by the KAS method was 26 kJ·mol−1. The reaction mechanism was analyzed using the Malek method. The models for the non-isothermal kinetics of the reduction of iron ore fines include mixed control, two-dimensional diffusion, and three-dimensional diffusion, depending on the stage of the reduction process.
(3). The reduction of the sample under isothermal conditions can be described by a unidimensional growth at the initial stage of reduction and the 2D shrinking layer reaction mechanism at a later stage. Under non-isothermal conditions, the reduction of the sample is described, in turn, by the mixing control, 2D reaction, and 3D reaction.
(4). The use of H2 as a reducing agent changes the conditions of the iron oxide reduction reaction, the reduction rate, and the morphology of reduction products, leading to significant changes in its reaction kinetic process. Basic theoretical research on the future large-scale use of H2 in the ironmaking process is needed to really achieve low-carbon ironmaking.
Data curation, B.L. and F.Y.; methodology, G.W., H.Z., Q.X. and J.W. All authors have read and agreed to the published version of the manuscript.
The authors declare no conflict of interest.
Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Figure 5. (a) Variation of reduction rate of iron ore fines with reaction time, and (b) Effect of the reduction temperature on the initial and final rate of reduction.
Figure 6. Microstructure of samples isothermally reduced with H2: (a) 800 °C, (b) 900 °C, (c) 1000 °C, and (d) 1100 °C.
Figure 7. (a) Ln (dα/dt) against 1/T of sample, and (b) activation energy with the increasing of reduction degree.
Figure 8. Standard curves and experimental data based on sharp analysis for samples.
Figure 10. Microstructure after non-isothermal reduction with H2 up to 1000 °C: (a) 5 °C·min−1, (b) 10 °C·min−1, (c) 15 °C·min−1, (d) 20 °C·min−1.
Figure 11. Standard curves and experimental data based on Malek method for samples.
Chemical composition of the iron ore fines (wt%).
TFe | Fe2O3 | FeO | CaO | SiO2 | MgO | Al2O3 |
---|---|---|---|---|---|---|
62.04 | 87.36 | 1.06 | 1.18 | 5.60 | 1.53 | 1.29 |
Model function G(α) for normal solid-state reactions.
Function | Mechanism | G(α) | dα/dt | n |
---|---|---|---|---|
|
One-dimensional diffusion |
|
|
0.62 |
|
Two-dimensional diffusion |
|
|
0.57 |
|
Three-dimensional diffusion, Jander equation |
|
|
0.54 |
|
Three-dimensional diffusion, Ginstling-Brounshtein equation |
|
|
0.57 |
|
Bimolecular decay law (instantaneous nucleation and unidimensional growth) |
|
|
1 |
|
Phase boundary controlled reaction (bidimensional shape) |
|
|
1.11 |
|
Phase boundary controlled reaction (tridimensional shape) |
|
|
1.07 |
|
Random instant nucleation and two-dimensional growth of nuclei (A-E equation) |
|
|
2 |
|
Random instant nucleation and three-dimensional growth of nuclei (A-E equation) |
|
|
3 |
Model function F(α) and f(α) for normal solid-state reactions.
No. | Function | Mechanism | F(α) | f(α) |
---|---|---|---|---|
1 | Parabolic law | One-dimensional diffusion |
|
|
2 | Valensi equation | Two-dimensional diffusion |
|
|
3 | Jander equation (2D, n = 1/2) | Two-dimensional diffusion |
|
|
4 | Jander equation (2D, n = 2) | Two-dimensional diffusion |
|
|
5 | Jander equation (3D, n = 1/2) | Three-dimensional diffusion |
|
|
6 | Jander equation (3D, n = 2) | Three-dimensional diffusion |
|
|
7 | Ginstling–Brounstein equation | Three-dimensional diffusion |
|
|
8 | Antagonistic Jander equation | Three-dimensional diffusion |
|
|
9 | Zhurlev–Lesokin–Tempelman equation (3D) | Three-dimensional diffusion |
|
|
10 | Avrami–Erofeev equation (n = 1/4, m = 4) | Random nucleation and subsequent growth |
|
|
11 | Avrami–Erofeev equation (n = 1/3, m = 3) | Random nucleation and subsequent growth |
|
|
12 | Avrami–Erofeev equation (n = 2/5) | Random nucleation and subsequent growth |
|
|
13 | Avrami–Erofeev equation (n = 1/2, m = 2) | Random nucleation and subsequent growth |
|
|
14 | Avrami–Erofeev equation (n = 2/3) | Random nucleation and subsequent growth |
|
|
15 | Avrami–Erofeev equation (n = 3/4) | Random nucleation and subsequent growth |
|
|
16 | Mampel single law (n = 1, m = 1) | Random nucleation and subsequent growth |
|
|
17 | Avrami–Erofeev equation (n = 3/2) | Random nucleation and subsequent growth |
|
|
18 | Avrami–Erofeev equation (n = 2) | Random nucleation and subsequent growth |
|
|
19 | Avrami–Erofeev equation (n = 3) | Random nucleation and subsequent growth |
|
|
20 | Avrami–Erofeev equation (n = 4) | Random nucleation and subsequent growth |
|
|
21 | Prout–Tompkins equation | Autocatalytic reaction, dendritic nucleation |
|
|
22 | Mampel power law | n = 1/4 |
|
|
23 | Mampel power law | n = 1/3 |
|
|
24 | Mampel power law | n = 1/2 |
|
|
25 | Mampel power law | Phase boundary reaction (One-dimensional) |
|
1 |
26 | Mampel power law | n = 3/2 |
|
|
27 | Mampel power law | n = 2 |
|
|
28 | Order of reaction | n = 1/4 |
|
|
29 | Spherical contraction (n = 1/3) | Phase boundary reaction (symmetrical sphere) |
|
|
30 | Spherical contraction (3D) | n = 3 |
|
|
31 | Cylindrical contraction (2D) | n = 1/2 |
|
|
32 | Cylindrical contraction (2D) | n = 2 |
|
|
33 | Order of reaction | n = 2 |
|
|
34 | Order of Reaction | n = 3 |
|
|
35 | Order of reaction | n = 4 |
|
|
36 | Order of reaction | Chemical reaction |
|
|
37 | Order of reaction | Chemical reaction |
|
|
38 | Order of reaction n = 2/3 | Chemical reaction |
|
|
39 | Exponential law | n = 1 |
|
|
40 | Exponential law | n = 2 |
|
|
41 | Order of reaction | Chemical reaction |
|
|
Relationship between activation energy and reduction mechanism.
E, kJ·mol−1 | Rate-Controlling Step |
---|---|
8–16 | Gaseous diffusion |
29–42 | Combination of gaseous diffusion and interfacial chemical reaction |
60–67 | Interfacial chemical reaction |
>90 | Solid diffusion |
Avrami–Erofeev exponent n at 800–1100 °C for samples.
Temperature/°C | 800 | 850 | 900 | 950 | 1000 | 1050 | 1100 |
n | 1.02 | 1.03 | 1.01 | 1.13 | 1.12 | 1.18 | 1.23 |
Function | F1→R2 |
Apparent activation energy of iron ore fines in different reduction degrees.
α | 0.1 | 0.2 | 0.3 | 0.4 | 0.5 | 0.6 | 0.7 | 0.8 | 0.9 | 1 |
Slope | 2944 | 3251 | 3210 | 3137 | 3126 | 3060 | 3100 | 3186 | 3662 | 3367 |
Activation energy (kJ·mol−1) | 24 | 27 | 27 | 26 | 26 | 26 | 26 | 26 | 30 | 27 |
Average activation energy (kJ·mol−1) | 26 |
References
1. Lei, R.; Sheng, Z.; Tiandou, P.; Ou, X.M. A review of CO2 emissions reduction technologies and low-carbon development in the iron and steel industry focusing on China. Renew. Sustain. Energy Rev.; 2021; 143, 110846.
2. Zhang, Q.; Shen, J.L.; Xu, L.S. Carbon peak and low-carbon transition path of China’s iron and steel industry. Iron Steel; 2021; 56, pp. 152-163.
3. Fan, Z.Y.; Friedmann, S.J. Low-carbon production of iron and steel: Technology options, economic assessment, and policy. Joule; 2021; 5, pp. 829-862. [DOI: https://dx.doi.org/10.1016/j.joule.2021.02.018]
4. Liu, S.; Liu, X.; Qing, L.; Zhang, X.; Qie, Y.N. Study on the appropriate production parameters of a gas-injection blast furnace. High Temp. Mater. Process.; 2020; 39, pp. 10-25.
5. Higuchi, K.; Matsuzaki, S.; Saito, K.; Nomura, S. Improvement in reduction behavior of sintered ores in a blast furnace through injection of reformed coke oven gas. ISIJ Int.; 2020; 60, pp. 2218-2227. [DOI: https://dx.doi.org/10.2355/isijinternational.ISIJINT-2020-063]
6. Liu, W.G.; Zuo, H.B.; Wang, J.S.; Xue, Q.G.; Yang, F.; Ren, B.L. The production and application of hydrogen in steel industry. Int. J. Hydrogen Energy; 2021; 46, pp. 10548-10569. [DOI: https://dx.doi.org/10.1016/j.ijhydene.2020.12.123]
7. Dawood, F.; Anda, M.; Shafiullah, G.M. Hydrogen production for energy: An overview. Int. J. Hydrogen Energy; 2020; 45, pp. 3847-3869. [DOI: https://dx.doi.org/10.1016/j.ijhydene.2019.12.059]
8. Parra, D.; Valverde, L.; Pino, F.J.; Patel, M.K. A review on the role, cost and value of hydrogen energy systems for deep decarbonisation. Renew. Sustain. Energy Rev.; 2019; 101, pp. 279-294. [DOI: https://dx.doi.org/10.1016/j.rser.2018.11.010]
9. Mousa, E.A.; Babich, A.; Senk, D. Reduction behavior of iron ore pellets with simulated coke oven gas and natural gas. Steel Res. Int.; 2013; 84, pp. 1085-1097. [DOI: https://dx.doi.org/10.1002/srin.201200333]
10. Ding, C.Y.; Lv, X.W.; Li, G.; Bai, C.G.; Xuan, S.W.; Tang, K.; Chen, Y. Reduction of CaO–Fe2O3 series compounds by CO. ISIJ Int.; 2017; 57, pp. 1181-1190. [DOI: https://dx.doi.org/10.2355/isijinternational.ISIJINT-2017-088]
11. Ding, C.Y.; Lv, X.W.; Li, G.; Bai, C.G.; Xuan, S.W.; Tang, K.; Lv, X. Isothermal reduction of powdery 2CaO·Fe2O3 and CaO·Fe2O3 under H2 atmosphere. Int. J. Hydrogen Energy; 2018; 43, pp. 24-36. [DOI: https://dx.doi.org/10.1016/j.ijhydene.2017.11.075]
12. Abolpour, B.; Afsahi, M.M.; Azizkarimi, M. Hydrogen reduction of magnetite concentrate particles. Miner. Process. Extr. Metall.; 2018; 130, pp. 1-14. [DOI: https://dx.doi.org/10.1080/25726641.2018.1521576]
13. Bai, M.H.; Long, H.; Li, L.J.; Liu, D.; Ren, S.B.; Zhao, C.F.; Cheng, J. Kinetics of iron ore pellets reduced by H2-N2 under non-isothermal condition. Int. J. Hydrogen Energy; 2018; 43, pp. 15586-15592. [DOI: https://dx.doi.org/10.1016/j.ijhydene.2018.06.116]
14. Bai, M.H.; Long, H.; Ren, S.B.; Liu, D.; Zhao, C.F. Reduction behavior and kinetics of iron ore pellets under H2–N2 atmosphere. ISIJ Int.; 2018; 58, pp. 1034-1041. [DOI: https://dx.doi.org/10.2355/isijinternational.ISIJINT-2017-739]
15. Lin, H.Y.; Chen, Y.W.; Li, C. The mechanism of reduction of iron oxide by hydrogen. Thermochim. Acta; 2003; 400, pp. 61-67. [DOI: https://dx.doi.org/10.1016/S0040-6031(02)00478-1]
16. Tiernan, M.J.; Barnes, P.A.; Parkes, G.M.B. Reduction of iron oxide catalysts: The investigation of kinetic parameters using rate perturbation and linear heating thermoanalytical techniques. J. Phys. Chem. B; 2001; 105, pp. 220-228. [DOI: https://dx.doi.org/10.1021/jp003189+]
17. Chen, F.; Mohassab, Y.; Jiang, T.; Sohn, H.Y. Hydrogen reduction kinetics of hematite concentrate particles relevant to a novel flash ironmaking process. Metall. Mater. Trans. B; 2015; 46, pp. 1133-1145. [DOI: https://dx.doi.org/10.1007/s11663-015-0332-z]
18. Chen, F.; Mohassab, Y.; Zhang, S.Q.; Sohn, H.Y. Kinetics of the reduction of hematite concentrate particles by carbon monoxide relevant to a novel flash ironmaking process. Metall. Mater. Trans. B; 2015; 46, pp. 1716-1728. [DOI: https://dx.doi.org/10.1007/s11663-015-0345-7]
19. Mccune, R.C.; Wynblatt, P. Calcium segregation to a magnesium oxide (100) surface. J. Am. Ceram. Soc.; 1983; 66, pp. 111-117. [DOI: https://dx.doi.org/10.1111/j.1151-2916.1983.tb09985.x]
20. Vyazovkin, S.; Wight, C.A. Model-free and model-fitting approaches to kinetic analysis of isothermal and nonisothermal data. Thermochim. Acta; 1999; 340–341, pp. 53-68. [DOI: https://dx.doi.org/10.1016/S0040-6031(99)00253-1]
21. Wiltowski, T.; Hinckley, C.C.; Smith, G.V.; Nishizawa, T.; Saporoschenko, M.; Shiley, R.H.; Webster, J. Kinetics and mechanisms of iron sulfide reductions in hydrogen and in carbon monoxide. J. Solid State Chem.; 1987; 71, pp. 95-102. [DOI: https://dx.doi.org/10.1016/0022-4596(87)90146-0]
22. Hancock, J.D.; Sharp, J.H. Method of comparing solid-state kinetic date and its application to the decomposition of kaolinite, brucite, an BaCO3. J. Am. Ceram. Soc.; 1972; 55, pp. 74-77. [DOI: https://dx.doi.org/10.1111/j.1151-2916.1972.tb11213.x]
23. Sharp, J.H.; Brindley, G.W.; Achar, B.N.N. Numerical data for some commonly used solid state reaction equations. J. Am. Ceram. Soc.; 2006; 49, pp. 379-382. [DOI: https://dx.doi.org/10.1111/j.1151-2916.1966.tb13289.x]
24. Avrami, M. Kinetics of phase change. II: Transformation-time relations for random distribution of nuclei. J. Chem. Phys.; 1940; 8, pp. 212-224. [DOI: https://dx.doi.org/10.1063/1.1750631]
25. Avrami, M. Granulation, phase change, and microstructure kinetics of phase change. III. J. Chem. Phys.; 1941; 9, pp. 177-184. [DOI: https://dx.doi.org/10.1063/1.1750872]
26. Kissinger, H.E. Reaction kinetics in differential thermal analysis. Anal. Chem.; 1957; 29, pp. 1702-1706. [DOI: https://dx.doi.org/10.1021/ac60131a045]
27. Málek, J. A computer program for kinetic analysis of non-isothermal thermoanalytical data. Thermochim. Acta; 1989; 138, pp. 337-346. [DOI: https://dx.doi.org/10.1016/0040-6031(89)87270-3]
28. Dang, J.; Zhang, G.H.; Chou, K.C. Kinetics and mechanism of hydrogen reduction of ilmenite powders. J. Alloys Compd.; 2015; 619, pp. 443-451. [DOI: https://dx.doi.org/10.1016/j.jallcom.2014.09.057]
29. EI-Geassya, A.A. Influence of silica on the gaseous reduction of wustite with H2, CO and H2-CO mixtures. Trans. Iron Steel Inst. Jpn.; 1985; 25, pp. 1036-1044. [DOI: https://dx.doi.org/10.2355/isijinternational1966.25.1036]
30. El-Geassy, A.A.; Rajakumar, V. Influence of particle size on the gaseous reduction of wustite at 900–1100 °C. Trans. Iron Steel Inst. Jpn.; 1985; 25, pp. 1202-1211. [DOI: https://dx.doi.org/10.2355/isijinternational1966.25.1202]
31. Gleitzer, C. Some remarkable features in the reduction of iron oxides. Solid State Ionics; 1990; 38, pp. 133-141. [DOI: https://dx.doi.org/10.1016/0167-2738(90)90453-X]
32. Nasr, M.I.; Omar, A.A.; Khedr, M.H.; El-Geassy, A.A. Effect of nickel oxide doping on the kinetics and mechanism of iron oxide reduction. ISIJ Int.; 1995; 35, pp. 1043-1049. [DOI: https://dx.doi.org/10.2355/isijinternational.35.1043]
33. Zuo, H.B.; Wang, C.; Dong, J.J.; Jiao, K.X.; Xu, R.S. Reduction kinetics of iron oxide pellets with H2 and CO mixtures. Int. J. Miner. Metall. Mater.; 2015; 22, pp. 688-696. [DOI: https://dx.doi.org/10.1007/s12613-015-1123-x]
34. El-Geassy, A.A.; Nasr, M.I.; El-Raghy, S.M.; Hammam, A.A. Comparative studies on isothermal and non-isothermal reduction of haematite in carbon monoxide atmosphere. Ironmak. Steelmak.; 2019; 47, pp. 948-957. [DOI: https://dx.doi.org/10.1080/03019233.2019.1646564]
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer
© 2022 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.
Abstract
Direct reduction of iron ore with H2 has become an alternative technology for iron production that reduces pollutant emissions. The reduction kinetics of iron ore fines in an H2 atmosphere under isothermal and non-isothermal conditions were studied by thermogravimetric analysis. X-ray diffraction and scanning electron microscopy were used to measure the mineral composition and analyse the morphology of the reduced fines, respectively. In the isothermal reduction experiment, it was found that the final reduction time was shorter, the higher the temperature, and the metallic iron particles formed a dense matrix structure. It is likely that the initial stages reduction process is the result of a combination of gaseous diffusion and interfacial chemical reaction mechanisms, and that the later stages a combination of interfacial chemical reaction and solid diffusion is the rate control mechanism. In the non-isothermal experiment, the heating rate had a significant effect on the reaction rate. The results show that the non-isothermal reduction proceeded through three stages: mixing control model, two-dimensional diffusion, and three-dimensional diffusion.
You have requested "on-the-fly" machine translation of selected content from our databases. This functionality is provided solely for your convenience and is in no way intended to replace human translation. Show full disclaimer
Neither ProQuest nor its licensors make any representations or warranties with respect to the translations. The translations are automatically generated "AS IS" and "AS AVAILABLE" and are not retained in our systems. PROQUEST AND ITS LICENSORS SPECIFICALLY DISCLAIM ANY AND ALL EXPRESS OR IMPLIED WARRANTIES, INCLUDING WITHOUT LIMITATION, ANY WARRANTIES FOR AVAILABILITY, ACCURACY, TIMELINESS, COMPLETENESS, NON-INFRINGMENT, MERCHANTABILITY OR FITNESS FOR A PARTICULAR PURPOSE. Your use of the translations is subject to all use restrictions contained in your Electronic Products License Agreement and by using the translation functionality you agree to forgo any and all claims against ProQuest or its licensors for your use of the translation functionality and any output derived there from. Hide full disclaimer