Numerical Simulation of Decarburization in a Top-Blown Basic Oxygen Furnace ()

Miguel A. Barron, Dulce Y. Medina, Isaias Hilerio

Departamento de Materiales, Universidad Autonoma Metropolitana-Azcapotzalco, Mexico City, Mexico.

**DOI: **10.4236/mnsms.2014.43011
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Departamento de Materiales, Universidad Autonoma Metropolitana-Azcapotzalco, Mexico City, Mexico.

An improved mathematical model to describe the decarburization process in basic oxygen furnaces for steelmaking is presented in this work. This model takes into account those factors or parameters that determine the bath-oxygen impact area, such as the cavity depth, the lance height, the number of nozzles and the nozzles diameter. In the thermal issue, the model includes the targeted carbon content and temperature. The model is numerically solved, and is validated using reported data plant. The oxygen flow rate and the lance height are varied in the numerical simulations to study their effect on the carbon content and decarburization rate.

Keywords

Basic Oxygen Furnace, Carbon Content, Decarburization, Lance Height, Numerical Simulation, Oxygen Flow Rate, Oxygen Steelmaking

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Barron, M. , Medina, D. and Hilerio, I. (2014) Numerical Simulation of Decarburization in a Top-Blown Basic Oxygen Furnace. *Modeling and Numerical Simulation of Material Science*, **4**, 94-103. doi: 10.4236/mnsms.2014.43011.

1. Introduction

The basic oxygen furnace (BOF) is the world most important technology for producing raw steel from molten pig iron [1] . During almost sixty years, the BOF steelmaking has suffered an outstanding technological and commercial development, and today is considered a mature technology. However, due to the complex nature of the BOF, many plants in the world still depend on skillful operators for achieving their quality and productivity goals. The operation of a top-blown BOF is as follows: a supersonic oxygen jet is blown onto the surface of the molten iron through a water-cooled vertical lance. The oxygen blowing times range from 13 to 25 minutes with an average of about 20 minutes [2] . The dissolved carbon is oxidized to carbon monoxide and carbon dioxide, and those gases together with iron oxide dust are expelled through the furnace mouth. Once the operator or the process computer consider that the heat has reached the desired carbon content and temperature (end-point), the oxygen blown is stopped and a metal sample is taken for chemical analysis and temperature measurement. If the carbon content [C] (weight percent, wt%) is higher or the bath temperature is lower than their end-point specifications, a reblow of oxygen proceeds. A delay reduction may be obtained by cutting tap-to-tap times and by minimizing the number of reblows. The reduction on the tap-to-tap time improves process operation in several ways. One of the most important benefits is that the refractory damage is reduced because steel and slag remain in the furnace for less time [2] .

In many shops, a static charge model is used to calculate the amount of charge and the amount of oxygen required. Some plants have static models that depend on the type of operation and product mix. The static charge model uses initial and final information about the heat, e.g. the amount of hot metal and scrap, the end-point carbon and temperature. The main information is sent to the process computer, and the static model performs calculations at the beginning of the heat. The static model determines the output of the amount of oxygen to be blown and the amount of fluxes to be added to get the targeted carbon and temperature [2] . A dynamic model, on the contrary, controls the blowing period of the BOF steelmaking and calculates the amounts of oxygen and coolant requirements, and predicts the end-point carbon content and temperature of molten steel [3] .

In [4] , a critical carbon content [C]_{c} is defined as the melt carbon content where the decarburization reaction rate during the main blow is equal to the decarburization rate at the end of the blow. In [5] is assumed that the point where the total rate of decarburization via gases is equal to the decarburization rate controlled by mass transfer of carbon in the liquid iron represents [C]_{c}. Some mathematical models have been recently reported to study oxygen steelmaking decarburization [1] [5] [6] . These models are comprehensive and first-principles based, however, their complexity prevent that plant engineers and less trained operators employ them successfully.

A less complex mathematical model previously reported in the literature [7] is presented in this work. This model considers that [C]_{c} = 0.3 wt%, and two decarburization mechanisms prevail: in the first one for

the rate of carbon removal depends on the bath-oxygen impact area, whereas in the second one for the decaburization rate is determined by the oxygen flow rate. Unfortunately, the above model has two significant drawbacks: the bath-oxygen interface area is assumed constant and independent of the blowing conditions, and the employed thermal model, based on the thermodynamic carbon content-temperature equilibrium, is rather simple. In this work, the above model is improved in two ways: 1) taking into account those factors or parameters that determine the bath-oxygen interface area, such as the lance height, the cavity depth, the number of nozzles of the lance and the diameter of the nozzles, and 2) modification of the thermal model to include the targeted carbon content and temperature. The improved decarburization model is validated using data plant reported in the literature. Besides, numerical simulations are carried out to analyze the influence of the oxygen flow rate and the lance height on the carbon content and the decarburization rate.

2. Mathematical Model

The fast decarburization rates in the BOF are due to the large surface area available for the chemical reactions. When the oxygen jet hits the metal bath, a great amount of gas composed by CO + CO_{2} + inert evolves and the formed gas-metal-slag emulsion increases the rate of the refining reactions [2] . Roughly, the decarburization starts when all the silicon dissolved in the melt has been depleted, and this is due to the huge chemical affinity between oxygen and silicon. The time required for the silicon depletion, and therefore the beginning of decarburization, is defined here as t_{Si}. The total time during which oxygen is blown is named here as blowing time t_{b}. These are concepts that allow to tackle in an easy way the decarburization and the thermal modeling issues. On the other hand, the carbon content dynamics is different for low and high carbon contents given that the controlling mechanism is different for each case.

2.1. Decarburization Rate

For the decarburization rate is controlled by the mass transfer, i.e. the transport of carbon to the bath-oxygen interface:

(1)

where t is the time (min), k_{d} is the mass transfer coefficient (m/min), S is the area (m^{2}) of the oxygen-melt impact zone, and V_{m} is the melt volume (m^{3}).

For the decarburization rate is governed by the oxygen flow rate of the supersonic jet:

(2)

where Q_{O} is the oxygen flow rate (Nm^{3}/min), x_{in} is the mol fraction (dimensionless) of inert gas in the decarburization zone, e.g. nitrogen, x_{CO} is the relative content (dimensionless) of CO in the CO + CO_{2} mixture, and W_{m} is the melt weight (g). In Equation (2) x_{CO} is determined from the equilibrium constant of the chemical reaction and some thermodynamic considerations. In [7] , the following implicit expression to determine x_{CO} is derived:

(3)

where T is the melt temperature (K) and P is the pressure (atm). Besides, f_{c} is the carbon activity coefficient (dimensionless), which depends on the carbon content and the melt temperature. A least square fitting yields an expression to determine f_{c} [7] :

(4)

where A_{1} = 0.1666, A_{2} = –0.01585, A_{3} = 9.9613 × 10^{–7}, A_{4} = 3.0246 × 10^{–5}.

2.2. Impact Zone Area

The decarburization reactions take place both in the oxygen-melt impact zone and in the gas-metal-slag emulsion. However, is in the impact zone where a significant proportion of the carbon removal in the BOF occurs [5] . An increase in the impact area increases the reaction rate significantly, and inversely, a decrease in the impact area lowers the reaction rate [8] . A lance with multiple nozzles creates individual cavities in the liquid bath, and the total impact area of a jet can be calculated by summation of the individual areas [9] . In this work an empirical expression is employed to estimate the impact area [10]

(5)

where a is the cavity shape factor (dimensionless) and L is the cavity depth (mm). The cavity depth depends on the lance height, i.e. the distance from the lance tip to the initial melt level. In this work, L is estimated from the expression [11]

(6)

where h is the lance height (mm) and L_{0} is a parameter which depends on the oxygen flow rate and on the geometrical characteristics of the particular lance being used [11] :

(7)

where k_{α} is a coefficient (dimensionless) according to the nozzle angle, n is the number of nozzles in the lance, and d is the nozzles diameter (mm).

2.3. Thermal Model

The pig iron, scrap, iron ore and fluxes are charged into the BOF. The supersonic oxygen jet is injected at high flow rates through a water cooled lance. The generated gases and the iron oxide fumes exit from the mouth of the furnace. At tapping, the liquid steel and the molten slag are the remaining products. The oxidation reactions of the melt dissolved elements such as silicon, carbon, manganese, phosphorus and iron, occurring during the oxygen blow produce more thermal energy than that required to raise the temperature of the melt to the target temperature, and to melt the fluxes. The excess heat is used to melt the cold scrap and reduce the iron ore to metal; besides, some heat is lost to the surroundings [2] . A thermal model that considers all the above factors involved in the oxygen steelmaking process would result very complex and computer time consuming, and would require a lot of computational power not always available in some plants. Then, the engineers and plant operators are in search of simple models which represent with reasonable accuracy the BOF decarburization and the thermal phenomena.

In [7] is assumed that the melt temperature varies linearly with the carbon content as follows:

(8)

where A and B are constants whose values are 1873 and 50, respectively. The above assumption rests on the fact that when the scrap is added to the pig iron, the melt temperature follows a trajectory close and parallel to the liquidus line of the Fe-C equilibrium diagram. In this work a thermal model is proposed in which A and B depend on the initial and the end-point carbon content and temperature:

(9)

(10)

where T_{0} is the initial melt temperature (K), [C]_{0} is the initial melt carbon content, T_{ep} is the end-point melt temperature (K), and [C]_{ep} is the end-point melt carbon content. Solving the above pair of simultaneous equations yield

(11)

(12)

Substitution of the values of A and B obtained through Equations (11) and (12) in Equation (8) yields an improved value of the melt temperature.

3. Numerical Solution

Equations (1) and (2) are ordinary differential equations that are numerically integrated using the fourth order Runge-Kutta method [12] with a time step of 1 × 10^{–4} min. The computer simulations for verification purposes showed that this time step is small enough to assure the stability and the convergence of the numerical solution. On the other hand, Equation (3) is a nonlinear algebraic equation that is numerically solved for x_{CO} by means of the first order Newton-Raphson procedure [12] with a convergence criterion of 1 × 10^{–6} which satisfies the required accuracy. FORTRAN programming language was employed for the elaboration of the computer program, and the executable file was obtained using an Absoft compiler. Calculation flow chart is shown in Figure 1.

4. Results and Comments

Numerical simulations are carried out to: 1) validate a particular numerical solution of the mathematical model with data plant taken from the literature; 2) analyze the influence of oxygen gas flow rate and lance height on the carbon content and the decarburization rate. Numerical results are discussed and compared, as much as possible, with results previously reported by other authors.

4.1. Validation

The mathematical model was validated using the plant data reported in [1] and [13] . The plant data for validation were as follows: W_{m} = 200 × 10^{6} g, Q_{O} = 620 Nm^{3}/min, T_{0} = 1623 K, T_{ep} = 1923 K, [C]_{0} = 4 wt%, [C]_{ep} = 0.1 wt%, h = 2500 mm, n = 6, d = 45 mm, P = 1 atm, t_{Si} = 2 min, t_{b} = 18 min. Calculated values of A and B were 1930.7 and 76.9, respectively. Besides, the following parameter values were employed in the computer simulations [14] : [C]_{c} = 0.3 wt%, k_{d} = 3.98 m/min, a = 4.1632, x_{in} = 0, k_{α} = 1.2. Melt volume is calculated from V_{m} = W_{m}/ρ_{m}, where ρ_{m} = 7.1 g·cm^{–3}. The results of validation are shown in Figure 2. One can see that the agreement between the numerical results and the plant data are very good, except at the end of the oxygen blow, i.e. for 10 < t < 14 min, where the numerical results are a little bit underestimated. This gives some reliability to the subsequent numerical simulations.

Figure 1. Calculation flow chart.

Figure 2. Model validation using the plant data reported in [1] and [13] . Plant data (filled circles), model results (solid line).

4.2. Effect of the Oxygen Flow Rate

The oxygen flow rate controls the decarburization rate if. Due to the high availability of carbon during the initial oxygen blow, the decarburization rate is mainly determined by the oxygen flow rate. The blowing rates have a wide variation from shop to shop and depend on the lance design and on the pressure and quality of the oxygen supply. The oxygen flow rate in plant operation is frequently limited by the volume of the furnace, the lance design, and the capacity of the gas collection and cleaning system to handle the gaseous reaction product and fumes [2] .

Considering the plant data of [1] and [13] which are detailed in Section 4.1, numerical simulations were carried out for three values of the oxygen flow rate: 500, 620 and 700 Nm^{3}/min. The results are depicted in Figure 3 and Figure 4, which show the effect of the oxygen flow rate on the carbon content and the decarburization rate, respectively.

Figure 3 shows that as the oxygen flow is increased, the carbon content experiences a faster decrease. An inflexion point at [C] = [C]_{c} is exhibited by the three flow rates considered, and this inflexion point corresponds to a transition in the decarburization mechanism: the carbon oxidation process passes from being controlled by the oxygen flow rate to a process controlled by the mass transfer, the area of the impact zone and the lance height. The time at which this transition of decarburization mechanism occurs is named here as transition time t_{t}, and is depicted in Figure 5 as a function of the oxygen flow rate. It is appreciated that t_{t} decreases from 15.85 to 11.89

Figure 3. Melt carbon content as a function of the blowing time and the oxygen flow rate. 500 (solid), 620 (dashed), 700 Nm^{3}/min (dotted).

Figure 4. Decarburization rate as a function of the blowing time and the oxygen flow rate. 500 (solid), 620 (dashed), 700 Nm^{3}/min (dotted).

min as the oxygen flow rate increases from 500 to 700 Nm^{3}/min. In accordance to Figure 5, t_{t} has a slightly nonlinear dependence on the oxygen flow rate.

Given that t_{Si} = 2 min, during this time the decarburization rate is null given that the silicon has a preferential oxidation than the carbon, as is seen in Figure 4. Thereafter, the decarburization rate remains constant until the transition time is reached; then it decays nonlinearly until the end of the blow. The laboratory investigations on decarburization kinetics have demonstrated that for high carbon melts at a partial pressure of oxygen similar to that in the BOF the rate of carbon removal is a linear function of the gas flow rate [15] . This corroborates the results shown in Figure 6, where this linear dependence is exhibited.

4.3. Effect of the Lance Height

The lance height is a trade-off between a faster carbon removal rates and a right slag forming. When the lance is too high, the rate of carbon removal is reduced and erratic; besides, the slag will be over-oxidized and higher iron losses occur by oxidation. When the lance is too low, the carbon removal is increased [16] and the oxidation losses are reduced. However, there is a correct lance height, and it depends on the furnace and lance design and the oxygen flow rate [2] . The cavity depth is increased and the impact zone area is decreased when the lance height is decreased [5] , so in the last minutes of the blow where the decarburization rates depends on the mass transfer and the impact zone area, the lance height is the main factor controlling the carbon removal.

Figure 7 shows the melt carbon content as a function of the lance height during the last five minutes of the

Figure 5. Time for the decarburization mechanism shift as a function the of oxygen flow rate.

Figure 6. Decarburization rate as a function of the oxygen flow rate.

oxygen blow. For the carbon contents exhibits exponential time decay due to thermodynamic considerations, in accordance to Equation (1); this behavior is observed in Figure 7.

In spite of the exponential time decay of the carbon content, at the end of the blow this variable has a linear dependence on the lance height, as is seen in Figure 8.

Finally, as reported in [2] and [16] , the decarburization rate decreases as the lance height is increased, as is observed in Figure 9.

5. Conclusions

An improved mathematical model of decarburization in basic oxygen furnaces is presented in this work. Improvements consist in taking into account those factors or parameters that determine the bath-oxygen impact area, such as the depth of cavity, the lance height, the nozzles number and the nozzles diameter, and by modification of the thermal model to include the carbon content and temperature end-points specifications. The improved model is validated using data plant reported in the literature. Conclusions are as follows:

1) The oxygen flow rate controls the decarburization rate for carbon contents above a critical value. As the oxygen flow rate is increased, the decarburization rate is increased too. The decarburization rate has a linear dependence on the oxygen flow rate.

2) The lance height controls the decarburization rate for carbon contents below a critical value. As the lance height is decreased, the decarburization rate is increased. The carbon content at the end of the blow has a linear dependence on the lance height.

Figure 7. Melt carbon content as a function of the blowing time and the lance height. 1800 (solid), 2200 (dashed), 2500 mm (dotted).

Figure 8. Carbon content at the end of the blow as a function of the lance height.

Figure 9. Decarburization rate as a function of the blowing time and the lance height. 1800 (solid), 2200 (dashed), 2500 mm (dotted).

3) The present model has a reasonable reliability given that it is able to reproduce in a proper manner the data plant considered. Then, in spite of its simplifications, this improved model can be used as a static or dynamic model to train plant technicians and operators.

Conflicts of Interest

The authors declare no conflicts of interest.

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