Comprehensive Electric Arc Furnace Electric Energy Consumption Modeling: A Pilot Study
Abstract
:1. Introduction
2. Materials and Methods
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- Melting:
- ○
- the considered process parameters were:
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- coke (kg): used for protective slag formation,
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- lime (kg): used for protective slag formation,
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- dolomite [kg]: used for protective slag formation,
- ▪
- E-type scrap (kg),
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- low-alloyed steel (moderate content of Cr) (kg),
- ▪
- packets of scrap (kg),
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- oxygen consumption (Nm3) used for cutting the scrap and its combustion and forming the slag (important component of slag is FeO), and
- ▪
- natural gas consumption (Nm3) used for heating the scrap.
- ○
- The considered maintenance and other technological delays are:
- ▪
- lime addition (min): the additional time needed for lime addition,
- ▪
- scrap charging (min): the additional time needed for charging of the electric arc furnace with scrap,
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- reparation of the linings with the dolomite or magnesite (min): the additional time needed for reparation of the refractory linings of the heart of the electric arc furnace,
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- electrode settings (min): the additional time needed for electrode settings and replacing,
- ▪
- other technological delays (min): the additional delays due to, for example, the maintenance of a dust collector, water cooling system, or overhead cranes,
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- Refining and tapping:
- ○
- the considered process parameters are:
- ▪
- oxygen consumption (Nm3),which is used for uniform melt temperature distribution for removing the unwanted chemical elements such as sulfur or phosphorus,
- ▪
- limestone (kg), which is used for slag creation,
- ▪
- carbon content obtained by the first chemical composition analysis (%),
- ▪
- nominal final carbon content (%) where the melt can be used for producing several different grades of steel in further processing steps; the possibilities are determined from the first chemical composition analysis, and
- ▪
- carbon powder (kg), which is used for carbonizing and additional slag formation,
- ○
- the considered maintenance and other technological delays:
- ▪
- chemical analysis delay (min): there can be problems with the sampling or the chemical analysis has to be repeated,
- ▪
- temperature and oxygen analysis delay (min): there can be problems with the sampling or the automatic lance used for the analysis,
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- extended refining (min): due to the chemical analysis and the temperature adjustments, the refining process needs to be extended in order to achieve a proper chemical composition and a proper temperature before tapping,
- ▪
- delay due to Ca-treated steel production (min): to produce Ca-treated steel, proper oxygen content is needed before tapping; in addition, the spout wear and geometry are important,
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- delay due to waiting for a lower electricity tariff (min): during the higher electricity tariff period (from 6:00 to 8:00 a.m.), the production in the steel plant stops,
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- delay due to steel grade changing (min): based on the first chemical analysis, the steel grade can be changed according to the foreseen planned production,
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- delay during tapping (min): delays can occur due to spout maintenance or spout blocking, ladle treatment and casting coordination and management, and, last but not least,
- -
- Electric energy consumption (MWh).
3. EAF Electric Energy Consumption Modeling
3.1. Linear Regression Modeling
3.2. Genetic Programing Modeling
4. Validation of the Modeling Results
5. Conclusions
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- For modeling the EAF electric energy consumption, 25 parameters were used.
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- Parameters involved melting (e.g., coke, dolomite, quantity), refining and tapping (e.g., injected oxygen, carbon, and limestone quantity), maintenance, and technological delays.
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- The data from 3248 consecutively produced batches in 2018 were used.
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- For modeling, linear regression and genetic programming were used.
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- Both developed models were validated by using the data from 278 batches produced in 2019.
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- Both models showed that the electric energy consumption could be reduced by up to 1.16% with the reduction of the maintenance and other technological delays.
Author Contributions
Funding
Conflicts of Interest
References
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Parameter | Abbreviation | Average | Standard Deviation |
---|---|---|---|
Coke (kg) | COKE | 814.27 | 89.35 |
Lime (kg) | CAO | 998.16 | 90.20 |
Dolomite (kg) | CAOMGO | 703.74 | 123.23 |
E-type scrap (kg) | E_SCRAP | 42.54 | 5.32 |
Low-alloyed steel (moderate content of cr) (kg) | SCRAP_BLUE | 6.19 | 5.17 |
Packets of scrap (kg) | SCRAP_PACK | 7.03 | 3.99 |
Oxygen consumption (Nm3) | OXYGEN_MELTING | 1220.50 | 117.67 |
Natural gas consumption (Nm3) | GAS | 442.01 | 61.36 |
Lime addition (min) | CACO3_T | 0.13 | 0.82 |
Scrap charging (min) | SCRAP_MANIPULATION_T | 0.93 | 1.75 |
Reparation of the linings with the dolomite or magnesite (min) | REPARATION_MAINT | 1.23 | 7.03 |
Electrode settings (min) | ELECTRODE_MANIPULATION_T | 1.99 | 6.58 |
Other technological delays (min) | OTHER_T | 5.48 | 42.44 |
Oxygen consumption (Mm3) | OXYGEN_REFINING | 459.00 | 115.81 |
Limestone (kg) | CACO3 | 72.75 | 185.92 |
Carbon content obtained by the first chemical composition analysis (%) | C_1 | 0.23 | 0.14 |
Required, final carbon content (%) | C_REQUIRED | 0.41 | 0.16 |
Carbon powder (kg) | C | 175.11 | 103.09 |
Chemical analysis delay (min) | CHEMICAL_ANALYSIS_T | 4.02 | 3.48 |
Temperature and oxygen analysis delay (min) | OXYGEN_TIME_ANALYSIS_T | 1.00 | 3.42 |
Extended refining (min) | REFINING_T | 1.28 | 2.75 |
Delay due to Ca-treated steel production (min) | CA_TREATMENT_T | 1.84 | 9.04 |
Delay due to waiting for lower electricity tariff (min) | PEAK_TARIFFE_T | 5.20 | 27.76 |
Delay due to steel grade changing (min) | GRADE_CHANGING_T | 2.87 | 9.13 |
Delay during tapping (min) | TAPPING_T | 0.97 | 3.95 |
Parameter | Average | Standard Deviation |
---|---|---|
Coke (kg) | 800.58 | 68.56 |
Lime (kg) | 989.06 | 105.04 |
Dolomite (kg) | 696.31 | 59.42 |
E-type scrap (kg) | 40.50 | 5.22 |
Low-alloyed steel (moderate content of cr) (kg) | 7.41 | 4.95 |
Packets of scrap (kg) | 7.67 | 2.96 |
Oxygen consumption (Nm3) | 1211.83 | 128.30 |
Natural gas consumption (Nm3) | 505.48 | 69.25 |
Lime addition (min) | 0.13 | 1.01 |
Scrap charging (min) | 0.21 | 0.42 |
Reparation of the linings with the dolomite or magnesite (min) | 0.00 | 0.00 |
Electrode settings (min) | 0.52 | 1.82 |
Other technological delays (min) | 0.05 | 0.35 |
Oxygen consumption (Mm3) | 495.44 | 106.34 |
Limestone (kg) | 96.40 | 210.69 |
Carbon content obtained by the first chemical composition analysis (%) | 0.32 | 0.13 |
Required, final carbon content (%) | 0.42 | 0.13 |
Coke (kg) | 87.54 | 65.20 |
Chemical analysis delay (min) | 4.22 | 2.62 |
Temperature and oxygen analysis delay (min) | 0.51 | 1.44 |
Extended refining (min) | 1.76 | 2.76 |
Delay due to Ca-treated steel production (min) | 0.09 | 1.03 |
Delay due to waiting for lower electricity tariff (min) | 0.01 | 0.08 |
Delay due to steel grade changing (min) | 1.17 | 3.46 |
Delay during tapping (min) | 1.25 | 1.65 |
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Kovačič, M.; Stopar, K.; Vertnik, R.; Šarler, B. Comprehensive Electric Arc Furnace Electric Energy Consumption Modeling: A Pilot Study. Energies 2019, 12, 2142. https://doi.org/10.3390/en12112142
Kovačič M, Stopar K, Vertnik R, Šarler B. Comprehensive Electric Arc Furnace Electric Energy Consumption Modeling: A Pilot Study. Energies. 2019; 12(11):2142. https://doi.org/10.3390/en12112142
Chicago/Turabian StyleKovačič, Miha, Klemen Stopar, Robert Vertnik, and Božidar Šarler. 2019. "Comprehensive Electric Arc Furnace Electric Energy Consumption Modeling: A Pilot Study" Energies 12, no. 11: 2142. https://doi.org/10.3390/en12112142