Abstract
The interaction between a supersonic oxygen jet and liquid metal is a dominant factor affecting transport phenomena during the converter process. A systematic description of the interaction is of significant importance for a quantitative understanding of the transport phenomena. In this paper, cold model experiments and the corresponding numerical simulations were carried out to investigate the gas-slag-metal interaction inside an 80 t BOF converter. The effects of the operation parameters, such as inlet pressure, slag thickness and slag viscosity on the multiphase interaction have been studied. It has been found that the cavity profile is closely related to the operational conditions . The cavity depth increases with an increase in oxygen inlet pressure, whereas the cavity width is much less affected. The cavity profile is also clearly influenced by the thickness of the slag layer. The influence of slag viscosity on cavity profile is not significant under the present simulation conditions.
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Keywords
Introduction
The Basic Oxygen Furnace (BOF) steelmaking process can rapidly refine molten iron and scrap into liquid steel with a desired carbon content and temperature via the top injection of high pressure oxygen gas jet. The interaction between gas and liquid metal/slag is the primary determinant of all the complicated phenomena during the converter process [1]. For instance, the top blown jet can affect the decarburization rate and the total Fe content in the slag at the final stage of the process. Therefore, a systematical description of the interaction could be conducive to clearly understand the highly coupled transport phenomena inside the converter, and to further achieve the development of fundamental insights, process optimization [2] and end-point control of BOF operations [3].
Due to the fairly sophisticated transport phenomena and the difficulties in direct observation, water modeling coupled with mathematical modeling offers important tools for tackling process development and optimizing the BOF steelmaking process [4]. Sharma et al. [5] found that the shape of the cavity caused by gas impingement can be predicted from dynamically scaled water models. Molly [6] identified three interaction types as dimpling mode, splashing mode and penetrating mode according to the geometrical shape of cavity. Nordquist et al. [7] studied the effects of nozzle diameter, lance height and gas flow rate on the penetration depth in a water model during the blowing process. It was proved that the penetration depth increased with an increased jet momentum number. Odenthal et al. [8] numerically simulated the penetration of the supersonic oxygen jets and the motion of the phase interfaces. The CFD model was used to gain a better insight into the melt flow related phenomena. Li et al. [9] studied the interaction behavior between the high speed oxygen jet and steel bath under steelmaking conditions in a commercial 150-ton converter. Simulation results showed that the operating pressure of oxygen jet has a much more significant impact on the behavior of slag-metal interface compared to the surface tension of the melts. Sabah et al. [10] presented a novel approach and identified various cavity modes by analyzing the sound produced in the bath. Understanding the interaction would be potentially beneficial to control splashing and prevent slopping. Besides, the interaction is believed to be closely related to actual production [11, 12], e.g. decarburization and dephosphorization process. According to the published literatures mentioned above, it can be deduced that a quantitative understanding of gas-slag-metal interaction affected by various operation parameters is of significant importance. Detailed work, however, is still needed to further illustrate the interaction process, especially exploring the effect of varying operating parameters and fluid properties.
The objective of the present study is to clarify the interaction behavior between top blown jet and molten steel at various conditions in an 80 t BOF converter. The quantitative effect of operational parameters such as inlet pressure, slag thickness and slag viscosity on the multiphase interaction has been studied. In order to validate the numerical model, water modeling experiments in a scaled-down vessel were performed.
Model Description
Geometrical Model
The components in the model consist of a converter and a lance with converging-diverging nozzles. Liquid steel and slag are contained in the converter with a certain height. The lance is placed above the liquid surface with a specific height in the center position. Table 1 shows the main geometrical dimensions of the converter and top lance and the properties of the materials.
Numerical Assumptions
The computational domain is shown in Fig. 1. The following assumptions have been adopted in order to simplify the simulation:
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(1)
The fluids in the converter are treated as Newtonian.
-
(2)
Chemical reactions are not taken into consideration.
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(3)
The flow is symmetric to a vertical plane.
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(4)
The physical properties of the molten steel and slag are assumed to be constant.
Governing Equations
The time-dependent motion of the top blown jet and the molten liquid is calculated by the Volume of Fluid (VOF) technique [13]. It is a fixed grid technique designed for tracking the interface between two or more immiscible fluids. In the VOF model, the volume fraction of each phase is tracked throughout the computational domain. In each defined volume, the sum of volume fractions of all phases is unity. The tracking of the interface between the phases is accomplished by the solution of a continuity equation for the volume fraction of one (or more) of the phases. Thus, a single momentum equation shared by all phases is solved, considering the effective density and effective viscosity, which are calculated by a weighted averaging method based on the volume fraction of each phase. Taking the gas phase for example, the continuity, momentum, and energy equations are, respectively, expressed as:
The volume-averaged density and viscosity in each defined volume can be described as:
Where the subscript g, st and sl represent the gas phase, the steel phase and the slag phase, respectively; φ is the volume fraction; t is time, s; \( {\mathbf{u}} \) is velocity vector, m/s; p is the pressure, Pa; μeff is the effective viscosity coefficient, kg/(m∙s); T is the temperature, K; keff is effective thermal conductivity, W/(m∙K).
The density of the compressible oxygen is calculated by the ideal gas law equation as follows.
Where pop is the pressure of the ideal gas, Pa; R is the ideal gas constant, J/(mol∙K); Mw is the molecular mass, kg/mol.
Turbulence Model
The standard k-ε model was chosen to describe the turbulence characteristics in this study [14, 15]. Transportation equations of the turbulence kinetic energy k and the dissipation rate ε are respectively given by:
Where ui is the velocity of the fluid in i direction, m/s; Gk is the turbulent kinetic energy generated by average velocity, J; μt is the turbulent viscosity, Pa∙s; Gb is the turbulent kinetic energy generated by buoyancy, J; YM is the turbulent dissipation rate generated by compressible turbulent pulsation; σk and σε are the turbulent Prandtl number of k and ε (1.0, 1.3); Sk and Sε are user-defined source terms; C1ε, C2ε and C3ε are empirical constants, which are 1.44, 1.92, 0.09, respectively [16].
Numerical Method
Due to the symmetry of the converter geometry and the flow, only a quarter of the model was adopted as the computational domain and all the boundaries of the computational domain are shown in Fig. 1b.
These unsteady calculations were implemented in FLUENT 16.2. Regarding to the spatial discretization, the Pressure Staggering Option (PRESTO!) scheme and second order upwind scheme were used for pressure and momentum discretization, respectively. The pressure-velocity coupling was achieved by using Pressure Implicit with Splitting of Operators (PISO) algorithm. In addition, the compressive interface-capturing scheme for arbitrary meshes (CICSAM) scheme was adopted. Due to the high speed oxygen jet, the initial time step size adopted in the present simulation was 1 × 10−6 s.
The simulations were uploaded to a High Performance Computing (HPC) cluster. 2–5 nodes with 40–100 processors were required for the simulations. The calculations lasted about 40 days.
Model Validation
In order to validate the simulation, water modelling experiments were conducted in a 1/6th scaled-down converter. In the experiments, water, vegetable oil and compressed air were used to simulate molten steel, slag and top blown oxygen, respectively. Detailed information was described in the previous work [17, 18]. The multiphase interaction was evaluated by mixing time in the liquid bath. The simulated and measured mixing times under the present conditions were compared as displayed in Fig. 2. The mixing time measured by water modeling in Fig. 2a is approximately 60 s. The corresponding value obtained from simulation is around 65 s, which is 5 s longer than that of the experimental value. This deviation may be caused by that the tracer injection using a long tube can accelerate the mixing process to some extent and by the errors involved in both simulation and experimentation. Based on the results in Fig. 2, it can be concluded that the computational model is essentially valid in this study.
Results and Discussion
Cavity Formation
During the BOF steelmaking process, a high-pressure supersonic jet impinges on the molten bath and then is deflected upwards. A cavity is generated and metal droplets are torn from the cavity surface due to the shearing action [19]. Many metallurgical reactions occur during this emulsion process. A fundamental understanding of the cavity formation is an essential aspect for process optimization and it is well worth being investigated.
Figure 3 shows the simulated dynamic interaction between gas and molten slag/steel. The top blown oxygen jet firstly opens the slag layer when the jet strikes the bath surface. The jet gradually pushes the slag away and then an open eye of liquid metal appears. Finally, the oxygen meets the liquid metal. During the process, the cavity is unstable in nature and oscillates both vertically and horizontally, which means the interaction has noticeably instantaneous characteristics. The BOF has an extremely high refining rate partly because of the increased interfacial area created by the high jet momentum [20]. It is estimated that 75–80 wt. pct. of the carbon is removed in the jet impact zone [21].
In addition, surface waves are found inside the cavity. At the beginning of blowing (t < 0.5 s), the liquid bath surface is stable and even. Gradually, slag splashing appears (t = 1 s) and the cavity is formed on the surface of liquid metal. Meanwhile, the waves in the cavity are pushed by the high speed oxygen jet and morphed into a splash sheet at the margins of the cavity (t = 1.5 s). Then, the waves are transmitted to the peripheral slag interface (t = 3 s). Correspondingly, it accelerates the interface instability and its irregularity as shown in Fig. 3. Similar phenomena were observed by water modeling experiment [22]. However, the magnitude of the cavity oscillation is closely related to the operation parameters and it will be discussed in the following section.
Momentum Characteristics
The gas-slag-steel interaction generates a shaped cavity , which has been proved to be a prerequisite for an uniform mixing and rapid smelting process [23]. Therefore, it is necessary to clarify the interaction behavior, which was affected by different operational parameters. The interaction momentum characteristics under different conditions were assessed at a specific lance height of 950 mm.
Effect of Inlet Pressure
The velocity and turbulence kinetic energy attenuation with initial inlet pressure of 0.7, 0.8, 0.9 and 1.0 MPa, are presented respectively in Fig. 4.
The injected momentum is increased with increasing inlet pressure, which is clearly shown both in the attenuation of velocity and turbulence kinetic energy at given slag properties (Fig. 4). Increasing inlet pressure can introduce more energy to the impact zone, resulting in an intense interaction. Besides, the attenuation of velocity is suppressed with the increase of the inlet pressure. For the interaction area, the velocity with a higher inlet pressure, e.g. 1.0 MPa, almost doubles that at 0.7 MPa (see the zoom-in part in Fig. 4). Consequently, the gas-slag-metal interaction generates a deeper cavity with higher inlet pressure. On the other hand, significant variation of the cavity width in the radial direction under different inlet pressures is not observed. Similar results were found from experimental tests [24].
Effect of Slag Thickness
The influence of slag layer was studied since it is important for the gas-slag-steel interaction.
The effect of slag thickness on the interaction momentum is illustrated in Fig. 5. The attenuation tendency of the turbulence kinetic energy is consistent with that of the velocity at different slag thickness. The presence of slag dampens the velocity in the interfacial region as can be seen in the conditions with initial slag thickness of 100 and 150 mm (see the zoom-in part in Fig. 5). The interaction with less slag leads to a deeper cavity. It can also be concluded that the turbulence kinetics energy is very unstable in the area above the interaction zone between gas and liquid slag/steel. The reason can be attributed to the reflection of the oxygen gas. The gas phase is reflected back when the gas interacts with molten slag/steel at higher bath level with thicker slag. Therefore, it can be imagined that turbulence in the adjacent area above the interaction zone is more violent with more slag as indicated in the attenuation of turbulence kinetic energy.
Effect of Slag Viscosity
During steelmaking process, the viscosity of the slag varies with the temperature and slag compositions. To some extent, the variation of slag viscosity can be one or two order of magnitudes [23]. In this context, the gas-slag-metal interaction with varying slag viscosities was numerically investigated.
In Fig. 6, the velocity and turbulence kinetic energy are depicted along the injected axis. Different slag viscosities produce non-significant changes in the attenuations of velocity and turbulent kinetic energy under the given conditions. The penetration depths are almost the same with different viscosities. Only slight turbulence changes can be seen above the interaction zone. Similar conclusions were obtained in the studies of supersonic injection system in electric arc furnace by Memoli et al. [25]. However, further studies are needed to investigate the influence of viscosities with larger order of magnitude variation and of the chemical reactions, which are extremely important in actual production.
Conclusions
The gas-slag-metal interaction during steelmaking of an 80 t BOF converter was investigated by means of VOF approach. The numerical model was validated by water modeling experiment. The findings from the present study can be summarized as follows:
-
1.
The gas-slag-metal interaction has noticeably instantaneous characteristics, and the surface wave in the interaction cavity accelerates the instability and irregularity of the interface.
-
2.
The cavity depth generated from gas-slag-metal interaction increases with increasing inlet pressure, whereas the cavity width is much less affected.
-
3.
The presence of slag dampens the velocity in the interfacial region and thicker slag results in smaller cavity depth.
-
4.
The effect of slag viscosity on the gas-slag-metal interaction is non-significant under the present simulation conditions.
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Acknowledgements
The financial support from Ministry of Education of the People’s Republic of China (No. 20120006110036), Jiangxi Provincial Department of Science and Technology (S2017ZPYFE0263) and computer support from HPC (KU Leuven) are highly acknowledged. Lingling Cao and Yannan Wang want to thank the support of the China Scholarship Council.
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Cao, L. et al. (2018). Assessment of Gas-Slag-Metal Interaction During a Converter Steelmaking Process. In: Hwang, JY., et al. 9th International Symposium on High-Temperature Metallurgical Processing. TMS 2018. The Minerals, Metals & Materials Series. Springer, Cham. https://doi.org/10.1007/978-3-319-72138-5_36
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