Predicting the Electrical Energy Consumption of Electric Arc Furnaces Using Statistical Modeling
Abstract
:1. Introduction
2. Background
2.1. Energy Dynamics
2.2. Nonlinearity
3. Results and Discussion
3.1. Review of Existing Statistical Models
3.1.1. Linear Models
3.1.2. Nonlinear Models
3.2. Input Variables
3.2.1. Time
3.2.2. Chemical
3.2.3. Temperatures
3.2.4. Materials
3.2.5. Other
3.3. Modeling Procedure
3.3.1. Data Complexity
3.3.2. Model Validation
3.3.3. Data Treatment
- Practically impossible within the upper and lower bounds of the furnace operation
- Physically or chemically impossible
- Unlikely from a process standpoint
- Erroneously logged in the system
- Trial heats for calibrating energy consumption for new scrap
- Heats involved in longer maintenance stops
- Heats with unusually long delays or tap-to-tap times
3.3.4. Model Transparency
3.4. Model Performance
3.5. Furnace Types
4. Conclusions
4.1. Model Types
- Fourteen out of 15 studies have used linear models and about 8 out of 15 studies have used nonlinear models. Of the linear models, MLR is the most common model, and, of the nonlinear models, ANN is the most commonly used model.
- Out of a total 27 reported models in the literature, 13 are linear and 14 are nonlinear.
4.2. Input Variables
- Twelve out of the 27 reported models uses the power on time as input variable, despite its close connection to the EE consumption of the heat.
- The use of delay times as input variables are only used in three studies [42,47,48,49], despite its importance to account for irregularities in the EAF and in upstream/downstream processes, all of which increases the time to produce a given heat. Increased production times naturally increases energy losses by radiation, water cooling, and convection.
- Variables representing chemical energy, such as burner and oxygen lancing, are frequently used. Additives such as lime, dolomite, and carbon, and the scrap composition are seldom used, even though they account for 20–50% of the total energy requirement.
4.3. Modeling Procedure
- All reported nonlinear models lack transparencies regarding which input variables have the largest influence on the EE consumption. Even though the input variables are specified, it is impossible to conclude whether the model is using the input variables reasonably in line with established science. However, interpretable machine learning algorithms such as feature importance and SHAP can be used to make nonlinear models more transparent.
- Complete specificity in data treatment is lacking for all but one study [32,33]. Information about the data treatment is either completely omitted, unspecified with respect to statistical or domain-specific heuristics, or vaguely presented with respect to the number of cleaned data points. This limits the practical usage because the instances where the model is valid are unknown.
- A model must be evaluated on future heats for practical applicability. This is because a model used in the industrial process will used to predict performances of future heats. Only two studies have evaluated models on future heats from the same EAF governing the training data used to create the models [47,48,49]. The possibility to sensibly compare the specific model performance with the performances of other models is thus severely limited.
4.4. Model Performance
- Comparisons cannot be made between models that have not reported their performances on either future single heats from the same furnace or single heats from another furnace. This is because any model will always be biased towards the data it is trained on. Seven out of 27 models reported in the literature reach these requirements [40,47,48,49]. None of these models report all performance metrics mean, standard deviation, min/max errors, and values.
- For the models that have been validated on future single heats from the same EAF, or single heats from another EAF, it was found that the nonlinear model type outperformed the linear model type. This indicates that nonlinear models are favorable over linear models when creating statistical models predicting the EE consumption. Furthermore, these results agree well with the inherent nonlinearity of the EAF process.
4.5. Furnace Types
- The type of furnaces studied varies significantly with respect to EAF design, capacity, power output, tap to tap time, and steel type. No clear coherency can be found and all post-2010 papers lack important information on the EAF design governing the data. Without this information, it is difficult to compare models between furnaces or verify the chosen input variables using metallurgical process expertise.
- Proficiency in both metallurgy and statistical modeling is crucial if one aims to create a statistical model that is relevant in practice. Previous process knowledge is necessary to obtain meaningful process models. Processes and models cannot be independently developed.
- The statistical model must be able to predict the performance of future heats with an accuracy that satisfies the requirements on the process as specified by the process engineers. Any reported model performance must therefore be on predictions on future data relative to the training data.
- The models also have to be robust. The implications are twofold: First, the effects of the input variables should be in line with what is expected from physics and chemistry. The effects of the input variables on the output variable for nonlinear statistical models can be analyzed by interpretable machine learning algorithms. Second, the models have to be robust to values outside their scope of training. This means that the data cleaning algorithms used on the training data must be applied to new data before being fed into the model.
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Total ingoing energy | |
Total Electrical Energy (EE) output from transformer | |
Total energy from chemical reactions in steel and slag | |
Total energy input from burner | |
Total outgoing energy | |
Total energy output into steel | |
Total energy lost in slag | |
Total energy lost in gas | |
Total energy lost in dust | |
Total energy lost in cooling water | |
Total energy lost through radiation | |
Total energy lost through convection | |
Total energy lost in electrical system and arc transfer | |
The temperature of the cooling panels | |
The temperature of the surface area subject to radiation losses | |
Temperature of ingoing material and gas at the start of the EAF process | |
Temperature of the steel at tapping | |
Temperature of the off-gas leaving the EAF through the off-gas system | |
Temperature of the cooling water | |
The temperature of the surface area subject to convection losses | |
The temperature of the air surrounding the EAF | |
Mass of ingoing metallic material | |
Mass of ingoing oxidic material | |
Mass flow of dust in the off-gas system | |
The heat capacity of steel at constant pressure | |
The heat capacity of slag at constant pressure | |
The heat capacity of dust at constant pressure | |
The heat capacity of EAF ambient gas at constant pressure | |
The heat capacity of reactants at constant pressure | |
The heat capacity of products at constant pressure | |
Standard heat of formation for reactants at 298K | |
Standard heat of formation for products at 298K | |
Heat of fusion for steel | |
Heat of fusion for slag | |
k | Conductivity of the cooling panels |
h | Heat transfer coefficient of the EAF ambient gas |
Emissivity factor of the radiating surface area of the EAF | |
Stefan-Boltzmann constant | |
Efficiency factor for the transformer system | |
Efficiency factor for the energy transferred from the arcs | |
Efficiency factor for burning the fuel in the burners | |
Heat generated per volume unit of fuel | |
Volume of the fuel consumed by the burners | |
Surface area of the EAF subject to convection losses | |
Surface area of the cooling panels | |
Surface area of the EAF subject to radiation losses | |
Average power of the transformer system | |
P | Furnace pressure |
M | Molar mass of the furnace gas |
R | Universal gas constant |
Volume flow of gas in the off-gas system | |
Tap-to-tap time | |
Power-on time | |
Delay time for delay type i | |
Gamma distribution shape parameter for delay type i | |
Gamma distribution scale parameter for delay type i | |
Total delay time imposed on a heat in the EAF process | |
K | Number of nodes in the hidden layers |
L | Number of hidden layer |
Coefficient of determination | |
Coefficient of determination adjusted for number of data points and variables | |
n | Number of data points |
p | Number of input variables |
Correlation coefficient for variables X and Y | |
Standard deviation for variable X | |
Standard deviation for variable Y | |
Regular mean error | |
Absolute mean error | |
Root mean square error | |
True value of the output variable for data point i | |
Predicted value of the output variable for data point i | |
Abbreviations | |
The following abbreviations are used in this manuscript: | |
EAF | Electric Arc Furnace |
AC | Alternating Current |
DC | Direct Current |
LF | Ladle Furnace |
EE | Electrical Energy |
DRI | Direct Reduced Iron |
HBI | Hot Briquetted Iron |
MLR | Multivariate Linear Regression |
ANN | Artificial Neural Network |
DNN | Deep Neural Network |
RF | Random Forest |
DT | Decision Tree |
SVM | Support Vector Machine |
RMSE | Root Mean Square Error |
SHAP | Shapley Additive Explanations |
PLS | Partial Least Squares |
ECSC | European Coal and Steel Community |
KPI | Key Performance Indicators |
References
- World Steel Association. Steel Statistical Yearbook 2018. Available online: https://www.worldsteel.org/steel-by-topic/statistics/steel-statistical-yearbook.html (accessed on 16 August 2019).
- Odenthal, H.-J.; Kemminger, A.; Krause, F.; Sankowski, L.; Uebber, N.; Vogl, N. Review of Modeling and Simulation of the Electric Arc Furnace (EAF). Steel Res. Int. 2018, 89, 1–36. [Google Scholar]
- MacRosty, R.; Swartz, C. Dynamics Optimization of Electric Arc Furnace Operation. Inst. Chem. Eng. 2007, 53, 640–653. [Google Scholar] [CrossRef]
- Ledesma-Carrión, D. Energy Optimization of Steel in Electric Arc Furnace. Glob. J. Technol. Optim. 2016, 7, 1–10. [Google Scholar]
- Gerardi, D.; Marlin, T.; Swartz, C. Optimization of Primary Steelmaking Purchasing and Operation under Raw Material Uncertainty. Ind. Eng. Chem. Res. 2013, 52, 12383–12398. [Google Scholar] [CrossRef]
- Morales, R.; Rodríguez-Hernández, H.; Conejo, A. A Mathematical Simulator for the EAF Steelmaking Process Using Direct Reduced Iron. ISIJ Int. 2005, 41, 426–435. [Google Scholar] [CrossRef]
- Nyssen, P.; Colin, R.; Junqué, J.-L.; Knoops, S. Application of a dynamic metallurgical model to the electric arc furnace. La Revue de Métallurgie 2004, 10, 317–326. [Google Scholar] [CrossRef]
- Çamdali, Ü. Determination of the Optimum Production Parameters by Using Linear Programming in the AC Electric Arc Furnace. Can. J. Met. Mater. Sci. 2013, 44, 103–110. [Google Scholar] [CrossRef]
- MacRosty, R.; Swartz, C. Dynamic Modeling of an Industrial Electric Arc Furnace. Ind. Eng. Chem. Res. 2005, 44, 8067–8083. [Google Scholar] [CrossRef]
- Mapelli, C.; Baragiola, S. Evaluation of energy and exergy performances in EAF during melting and refining period. Ironmak. Steelmak. 2006, 33, 379–388. [Google Scholar] [CrossRef]
- Kirschen, M.; Badr, K.; Pfeifer, H. Influence of Direct Reduced Iron on the Energy Balance of the Electric Arc Furnace in Steel Industry. Energy 2011, 36, 6146–6155. [Google Scholar] [CrossRef]
- Logar, V.; Dovžan, D.; Škrjanc, I. Modeling and Validation of an Electric Arc Furnace: Part 1, Heat and Mass Transfer. ISIJ Int. 2012, 52, 402–412. [Google Scholar] [CrossRef] [Green Version]
- Logar, V.; Dovžan, D.; Škrjanc, I. Modeling and Validation of an Electric Arc Furnace: Part 2, Thermo-chemistry. ISIJ Int. 2012, 52, 413–423. [Google Scholar] [CrossRef] [Green Version]
- Çamdalı, Ü.; Tunç, M. Modelling of Electric Energy Consumption in the AC Electric Arc Furnace. Int. J. Energy Res. 2002, 26, 935–947. [Google Scholar] [CrossRef]
- Opitz, F.; Treffinger, P. Physics-Based Modeling of Electric Operation, Heat Transfer, and Scrap Melting in an AC Electric Arc Furnace. Met. Mater. Trans. B 2016, 47, 1489–1503. [Google Scholar] [CrossRef]
- Morales, R.; Conejo, A.; Rodríguez, H. Process Dynamics of Electric Arc Furnace during Direct Reduced Iron Melting. Met. Mater. Trans. B 2002, 33, 187–199. [Google Scholar] [CrossRef]
- Prakash, S.; Mukherjee, K.; Singh, S.; Mehrotra, S.P. Simulation of energy dynamics of electric furnace steelmaking using DRI. Ironmak. Steelmak. 2007, 34, 61–70. [Google Scholar] [CrossRef]
- Kho, T.S.; Swinbourne, D.R.; Blanpain, B.; Arnout, S.; Langberg, D. Understanding stainless steelmaking through computational thermodynamics Part 1: Electric Arc Furnace Melting. Miner. Process. Extr. Met. 2010, 119, 1–8. [Google Scholar] [CrossRef]
- Kirschen, M.; Risonarta, V.; Pfeifer, H. Energy efficiency and the influence of gas burners to the energy related carbon dioxide emissions of electric arc furnaces in steel industry. Energy 2009, 34, 1065–1072. [Google Scholar] [CrossRef]
- Trejo, E.; Martell, F.; Micheloud, O.; Teng, L.; Llamasa, A.; Montesinos-Castellanosa, A. A novel estimation of electrical and cooling losses in electric arc furnaces. Energy 2012, 42, 446–456. [Google Scholar] [CrossRef]
- Fathi, A.; Saboohi, Y.; Škrjanc, I.; Logar, V. Comprehensive Electric Arc Furnace Model for Simulation Purposes and Model-Based Control. Steel Res. Int. 2017, 83, 600083. [Google Scholar] [CrossRef]
- Wendelstorf, J. Analysis of the EAF Operation by Process Modelling. Arch. Met. Mater. 2008, 53, 385–390. [Google Scholar]
- Rashid, M.M.; Mhaskar, P.; Swartz, C. Multi-rate modeling and economic model predictive control of the electric arc furnace. J. Process. Control 2016, 40, 50–61. [Google Scholar] [CrossRef]
- Oosthuizen, D.; Craig, I.; Pistorius, P. Economic evaluation and design of an electric arc furnace controller based on economic objectives. Control Eng. Pract. 2004, 12, 253–265. [Google Scholar] [CrossRef]
- Shyamal, S.; Swartz, C. Real-Time Dynamic Optimization-Based Advisory System for Electric Arc Furnace Operation. Ind. Eng. Chem. Res. 2018, 57, 13177–13190. [Google Scholar] [CrossRef]
- Sandberg, E. Energy and Scrap Optimisation of Electric arc Furnaces by Statistical Analysis of Process Data. Ph.D. Thesis, Luleå University of Technology, Luleå, Sweden, 2005. [Google Scholar]
- Pfeifer, H.; Kirschen, M. Thermodynamic analysis of EAF electrical energy demand. In Proceedings of the 7th European Electric Steelmaking Conference, Venice, Italy, 26–29 May 2002. [Google Scholar]
- Steinparzer, T.; Haider, M.; Zauner, F.; Enickl, G.; Naussed, M.M.; Horn, A.C. Electric Arc Furnace Off-Gas Heat Recovery and Experience with a Testing Plant. Steel Res. Int. 2014, 85, 519–526. [Google Scholar] [CrossRef]
- Keplinger, T.; Haider, M.; Steinparzer, T.; Trunner, P.; Patrejko, A.; Haselgrübler, M. Modeling, Simulation, and Validation with Measurements of a Heat Recovery Hot Gas Cooling Line for Electric Arc Furnaces. Steel Res. Int. 2018, 89, 1800009. [Google Scholar] [CrossRef]
- Guézennec, A.-G.; Huber, J.-C.; Patisson, F.; Sessiecq, P.; Birat, J.-P.; Ablitzer, D. Dust formation in Electric Arc Furnace: Birth of the particles. Powder Technol. 2005, 157, 2–11. [Google Scholar] [CrossRef] [Green Version]
- Machado, J.; Brehm, F.A.; Mendes Moraes, C.A.; dos Santos, C.A.; Fria Vilela, A.C.; Marimon da Cuna, J.B. Chemical, physical, structural and morphological characterization of the electric arc furnace dust. J. Hazard. Mater. B 2006, 136, 953–960. [Google Scholar] [CrossRef] [PubMed]
- Köhle, S.; Lichterbeck, R.; Paura, G. Verbesserung der Energetischen Betriebsführung von Drehstrom-Lichtbogenöfen; European Commission: Brussels, Belgium, 1996; ISBN 92-827-6467-2. [Google Scholar]
- Köhle, S. Effects on the Electric Energy Consumption of Arc Furnace Steelmaking. In Proceedings of the 4th European Electric Steel Congress, Madrid, Spain, 3–6 November 1992. [Google Scholar]
- Köhle, S. Variables influencing electric energy and electrode consumption in electric arc furnaces. Met. Plant Technol. Int. 1992, 6, 48–53. [Google Scholar]
- Bowman, B. Performance comparison update–AC vs DC furnaces. Iron Steel Eng. 1995, 26–29. [Google Scholar]
- Kleimt, B.; Köhle, S. Power consumption of electric arc furnaces with post-combustion. Met. Plant Technol. Int. 1997, 3, 56–57. [Google Scholar]
- Köhle, S. Improvements in EAF operating practices over the last decade. In Proceedings of the Electric Furnace Conference, Pittsburgh, PA, USA, 14–16 November 1999. [Google Scholar]
- Köhle, S. Recent improvements in modelling energy consumption of electric arc furnaces. In Proceedings of the 7th European Electric Steelmaking Conference, Venice, Italy, 26–29 May 2002. [Google Scholar]
- Köhle, S.; Hoffmann, J.; Baumert, J.; Picco, M.; Nyssen, P.; Filippini, E. Improving the Productivity of Electric arc Furnaces; European Commission: Luxembourg, 2003; ISBN 92-894-6136-5. [Google Scholar]
- Kleimt, B.; Köhle, S.; Kühn, R.; Zisser, S. Application of models for electrical energy consumption to improve EAF operation and dynamic control. In Proceedings of the 8th European Electric Steelmaking Congress, Birmingham, GB, USA, 9–11 May 2005; pp. 183–197. [Google Scholar]
- Kirschen, M.; Zettl, K.-M.; Echterhof, T.; Pfeifer, H. Models for EAF energy efficiency. Steel Times Int. 2017, 1–6. [Google Scholar]
- Conejo, A.; Cárdenas, J. Energy Consumption in the EAF with 100% DRI. In Proceedings of the Iron & Steel Technology Conference, Cleveland, OH, USA, 1–4 May 2006; Volume 1. [Google Scholar]
- Czapla, M.; Karbowniczek, M.; Michaliszyn, A. The Optimisation of Electric Energy Consumption in the Electric Arc Furnace. Arch. Met. Mater. 2008, 53, 559–565. [Google Scholar]
- Sandberg, E.; Lennox, B.; Undvall, P. Multivariate Prediction of End Conditions for Electric Arc Furnaces. In Proceedings of the 2nd International Confence on Process Development in Iron and Steelmaking, Luleå, Sweden, 6–9 June 2004. [Google Scholar]
- Sandberg, E.; Lennox, B.; Marjanovic, O.; Smith, K. Multivariate process monitoring of EAFs. Ironmak. Steelmak. 2005, 32, 221–226. [Google Scholar] [CrossRef]
- Sandberg, E.; Lennox, B.; Undvall, P. Scrap management by statistical evaluation of EAF process data. Control Eng. Pract. 2007, 15, 1063–1075. [Google Scholar] [CrossRef]
- Baumert, J.-C.; Engel, R.; Weiler, C. Dynamic modelling of the electric arc furnace process using artificial neural networks. Revue de Métallurgie 2002, 99, 839–849. [Google Scholar] [CrossRef]
- Baumert, J.-C.; Vigil, J.R.; Nyssen, P.; Schaefers, J.; Schutz, G.; Gillé, S. Improved Control of Electric arc Furnace Operations by Process Modelling; European Commission: Luxembourg, 2005; ISBN 92-894-9789-0. [Google Scholar]
- Mathy, C.; Terho, K.; Chouvet, M.; Coq, X.L.; Baumert, J.; Engel, R.; Hoffmann, J. Production of Steel at Lower Operating Costs in EAF; European Commission: Luxembourg, 2003; ISBN 92-894-6377-5. [Google Scholar]
- Gajic, D.; Savic-Gajic, I.; Savic, I.; Georgieva, O.; Gennaro, S.D. Modelling of electrical energy consumption in an electric arc furnace using artificial neural networks. Energy 2016, 108, 132–139. [Google Scholar] [CrossRef]
- Haupt, M.; Vadenbo, C.; Zeltner, C.; Hellweg, S. Influence of Input-Scrap Quality on the Environmental Impact of Secondary Steel Production. J. Ind. Ecol. 2016, 21, 391–401. [Google Scholar] [CrossRef]
- Chen, C.; Liu, Y.; Kumar, M.; Qin, J. Energy Consumption Modelling Using Deep Learning Technique — A Case Study of EAF. In Proceedings of the 51st CIRP Confence on Manufacturing Systems, Stockholm, Sweden, 16–18 May 2018. [Google Scholar]
- Knacke, O.; Kubaschewski, O.; Hesselmann, K. Thermochemical Properties of Inorganic Substances, 2nd ed.; Springer: Berlin, Germany, 1991. [Google Scholar]
- Gaskell, D.R. Introduction to the Thermodynamics of Materials, 5th ed.; Taylor & Francis: Boca Raton, FL, USA, 2008. [Google Scholar]
- Hastie, T.; Tibshirani, R.; Friedman, J. The Elements of Statistical Learning – Data Mining, Inference, and Prediction, 2nd ed.; Springer Series in Statistics; Springer: New York, NY, USA, 2013; pp. 22–26. [Google Scholar]
- Kirschen, M.; Pfeifer, H. Thermodynamic analysis of EAF electrical energy demand. In Proceedings of the 8th European Electric Steelmaking Congress, Birmingham, GB, USA, 9–11 May 2005. [Google Scholar]
- Fisher, A.; Rudin, C.; Dominici, F. All Models are Wrong but Many are Useful: Variable Importance for Black-Box, Properietary, or Misspecified Prediction Models, using Model Class Reliance. arXiv 2008, unpublished. arXiv:1801.01489v3. [Google Scholar]
- Lundberg, S.; Lee, S.-I. A Unified Approach to Interpreting Model Predictions. Adv. Neural Inf. Process. Syst. 2017, 4765–4774. [Google Scholar]
- Ajossou, A.; Palm, R. Impact of Data Structure on the Estimators R-square and Adjusted R-square in Linear Regression. Int. J. Math. Compu. 2013, 20, 84–93. [Google Scholar]
Energy Factor | Description | Equation | Proportionality | |
---|---|---|---|---|
In | Total Electrical Energy (EE) output from transformer | |||
Total energy from chemical reactions in steel and slag | ||||
Total energy input from burner | ||||
Out | Total energy output to steel | |||
Total energy lost in slag | ||||
Total energy lost in gas | ||||
Total energy lost in dust | ||||
Total energy lost in cooling water | ||||
Total energy lost through radiation | ||||
Total energy lost through convection | ||||
Energy lost in electrical system and arc transfer |
Energy Factor | Percentage of in and Out Energy Balance | |
---|---|---|
In | Electric | 40–66% |
Oxidation | 20–50% | |
Burner/fuel | 2–11% | |
Out | Liquid steel | 45–60% |
Slag and dust | 4–10% | |
Off gas | 11–35% | |
Cooling | 8–29% | |
Radiation and electrical losses | 2–6% |
Study | Linear | Nonlinear | ||||||
---|---|---|---|---|---|---|---|---|
MLR -Regular | MLR -Mean Furnace Values | PLS | ANN | DNN | SVM | DT | RF | |
Köhle et al. [32,33,34] (1992) | x | |||||||
Bowman [35] (1995) | x | |||||||
Köhle et al. [36] (1997) | x | |||||||
Köhle [37] (1999) | x | |||||||
Köhle [38,39] (2002) | x | x | ||||||
Kleimt et al. [40] (2005) | x | |||||||
Kirchen et al. [41] (2017) | x | |||||||
Conejo et al. [42] (2006) | x | |||||||
Czapla et al. [43] (2008) | x | |||||||
Sandberg et al. [26,44,45,46] (2004-2007) | x | |||||||
Baumert et al. [47] (2002) | x * | x | ||||||
Baumert et al. [48,49] (2005) | x * | x | ||||||
Gajic et al. [50] (2016) | x | |||||||
Haupt et al. [51] (2016) | x * | x | x | |||||
Chen et al. [52] (2018) | x * | x | x * | x * | ||||
Total | 9 | 5 | 1 | 4 | 1 | 1 | 1 | 1 |
15 | 8 |
Study | Köhle et al. [32,33,34,36] | Köhle [37,38,39] | Kirchen et al. [41] | Conejo et al. [42] | Czapla et al. [43] | Sandberg et al. [26,44,45,46] | Baumert et al. [47] | Baumert et al. [48,49] | Gajic et al. [50] | Haupt et al. [51] | Chen et al. [52] | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Year | 1992 | 1997 | 1999 | 2002 | 2017 | 2006 | 2008 | 2004–2007 | 2002 | 2005 | 2016 | 2016 | 2018 | ||||||||
Model(s) | K1 | K2 | K3 | K4 | A | A | A,B | A | B | A | B | C | D | E | A | B | C | D | A | A,B,C | A,B,C,D |
Time | |||||||||||||||||||||
Power On | x * | x * | x | x | x | x | x | x | x | ⊕ | ⊕ | x | |||||||||
Power Off | x | x | x | x | x | x | x | ||||||||||||||
Tap-to-Tap | x | x | |||||||||||||||||||
Service | x | ||||||||||||||||||||
Delay | x | x | x | x | x | x | |||||||||||||||
Chemical | |||||||||||||||||||||
Burner | x | x | x | x | x | x | x | x | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | x | x | |||
Oxygen lancing | x | x | x | x | x *** | x | x | x | x | x | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | ⊕ | x | ||
Additives | x | x | x | x | x | ||||||||||||||||
Scrap comp. | x | ||||||||||||||||||||
Temperature | |||||||||||||||||||||
Target | x | x | x | x | x | x | x | ⊕ | ⊕ | ||||||||||||
LF | x | ||||||||||||||||||||
Measured | x | x | |||||||||||||||||||
Materials | |||||||||||||||||||||
Charge mix | x | x | x | x | x | x | x | x | x | x | x | ||||||||||
Metal weight | x | x | x | x | x | x | x | x | x | x | ⊕ | ⊕ | |||||||||
Slag weight | x | x | x | x | x | x | x | x | x | x | ⊕ | ⊕ | |||||||||
Hot metal | x | x | x | ||||||||||||||||||
Scrap density | x | ||||||||||||||||||||
Steel tap weight | x | x | x | x | x | x | x | x | |||||||||||||
Other | |||||||||||||||||||||
Heats since cold start | x | x | |||||||||||||||||||
Energy | x | x ** | x | x | x | x | x | x | x | ||||||||||||
Preheating | x | x | x | x | x | x | |||||||||||||||
Furnace specific | x | x | x | ||||||||||||||||||
Continuous | x | x | x | x | x | x |
Data Complexity | Model Validation | Data Treatment | ||||||||||
Model Type | Study | Model | # of Data Points | # of Input Variables | Training/Test Split | Out of Sample Testing | Testing on Future Heats | Statistical Data Treatment | Domain Data Treatment | % Data Cleaned of Total | Model Transparency | |
Linear | MLR—mean furnace values | Köhle et al. [32,33] (1992) | K1 | 14 * | 7 | 13/0 | x | 7% | x | |||
Bowman [35] (1995) | K1 | 11 * | 7 | ⊕ | x | x | ||||||
K1 | 11* | 7 | ⊕ | x | x | |||||||
Köhle et al. [36] (1997) | K2 | 7 * | 8 | 7/0 | x | |||||||
K2 | 7 * | 8 | 7/0 | x | ||||||||
Köhle [37] (1999) | K3 | 35 * | 13 | 35/0 | x | |||||||
Köhle [38,39] (2002) | K4 | 13 * | 16 | ⊕ | x | x | ||||||
K4 | 7 * | 16 | ⊕ | x | x | |||||||
K4 | 34 * | 16 | ⊕ | x | x | |||||||
K4 | 35 ** | 16 | 35/0 | x | ||||||||
MLR—regular | Köhle [38,39] (2002) | K4 | 16 | 644/0 | x | |||||||
K4 | 16 | 1185/0 | x | |||||||||
K4 | 16 | 1200/0 | x | |||||||||
K4 | 16 | 88/0 | x | |||||||||
K4 | 1967 | 16 | 1200/0 | 39% | x | |||||||
K4 | 16 | 1136/0 | x | |||||||||
Kleimt [40] (2005) | K4 | 200 | 16 | ⊕ | x | x | ||||||
K4 | 60 | 16 | ⊕ | x | x | |||||||
Kirchen et al. [41] (2017) | K4 | 16 | ⊕ | x | x | |||||||
A | 16 | x | ||||||||||
Conejo et al. [42] (2006) | A | 2169 | 11 | 1047/- | x | 48% | x | |||||
Czapla et al. [43] (2008) | A | |||||||||||
B | ||||||||||||
Baumert et al. [47] (2002) | K4 | 16 | ⊕ | x | x | |||||||
A | 425/- | x | x | |||||||||
Haupt et al. [51] (2016) | C | 20,557 | 13 | x | x | ~5% | x | |||||
Chen et al. [52] (2018) | A | 10,990 | 16 | 10,990/0 | x | |||||||
PLS | Sandberg et al. (2004–2007) [26,44,45,46] | A | 3716 | 127 | x | 5–20% | ||||||
B | 3837 | 62 | x | 5–20% | ||||||||
Non- linear | ANN | Baumert et al. [47] (2002) | B | 10 | 425/- | x | x | |||||
C | 395 | 100 | 375/20 | x | x | |||||||
D | 840 | 84 | 668/150 | x | x | x | 2.6% | |||||
E | 769 | 82 | 707/62 | x | x | |||||||
Baumert et al. [48,49] (2005) | A | 411 | 7 | |||||||||
B | 411 | 84 | ||||||||||
C | 103 | 866/- | ||||||||||
D | 1932 | 95 | 921/1011 | x | x | |||||||
Gajic et al. [50] (2016) | A | 46 | 5 | 39/7 | x | |||||||
RF | Haupt et al. [51] (2016) | A | 20,557 | 13 | x | x | ~5% | |||||
B | 20,557 | 13 | x | x | ~5% | |||||||
DT | Chen et al. [52] (2018) | B | 10,990 | 16 | 10,990/0 | x | ||||||
SVM | C | 10,990 | 16 | 10,990/0 | x | |||||||
DNN | D | 10,990 | 16 | 10,990/0 | x |
Model Type | Study | Model | Mean Error (kWh/t) | Std. Error (kWh/t) | (Min)Max Error (kWh/t) | Error Metric | Comment | ||
Linear | MLR—mean furnace values | Köhle et al. [32,33] (1992) | K1 | - | 1.7 | 5.1 ** | (6)20 * | ||
Bowman [35] (1995) | K1 | - | ~0 | 13.3 | (-)- | Direct Current (DC) furnaces | |||
K1 | - | 2 | 11.2 | (-)- | Alternating Current (AC) furnaces | ||||
Köhle et al. [36] (1997) | K2 | 0.87 | −3.9 | 17.4 | (37)23 | Without post combustion *** | |||
K2 | 0.83 | −4.8 | 16.2 | (43)12 | With post combustion *** | ||||
Köhle [37] (1999) | K3 | 0.76 | −0.26 *** | 40 | (76)70 | ||||
Köhle [38,39] (2002) | K4 | 0.95⊕ | 0 | 22 | (-)- | ||||
K4 | 0.96⊕ | 2 | 11 | (-)- | |||||
K4 | 0.78⊕ | −1 | 39 | (-)- | |||||
K4 | 0.92⊕ | 2 | 7 | (-)- | Monthly data. Up to 35% shredded scrap. | ||||
MLR—regular | Köhle [38,39] (2002) | K4 | 0.31⊕ | −5 | 15 | (-)- | 96 out of 1035 had energy loss data. | ||
K4 | 0.54⊕ | 1 | 24 | (-)- | 332 out of 1185 heats had energy loss data. | ||||
K4 | 0.64⊕ | −70 | 29 | (-)- | All heats had energy loss data. High burner gas. | ||||
K4 | 0.83⊕ | 14 | 27 | (-)- | All heats had energy loss data. With hot metal. | ||||
K4 | 0.61⊕ | −21 | 26 | (-)- | No heats had energy loss data. Without hot metal. | ||||
K4 | 0.60⊕ | 48 | 22 | (-)- | No heats had energy loss data. Preheating in shaft. | ||||
Kleimt [40] (2005) | K4 † | - | −45 | 31 | (-)- | Standard operation. | |||
K4 † | - | −29 | 25 | (-)- | Airtight operation. | ||||
Kirchen et al. [41] (2017) | K4 † | 0.31 | 74.4 | - | (-)- | Mean error = Root Mean Square Error (RMSE) | |||
A | 0.96 | 10.7 | - | (-)- | New MLR model, Mean error = RMSE | ||||
Conejo et al. [42] (2006) | A | 0.92 | - | 18.7 | (-)- | ||||
Czapla et al. [43] (2008) | A | - | - | - | (-)- | ||||
B | - | - | - | (-)- | |||||
Baumert et al. [47] (2002) | K4 † | - | −6.0 MWh/heat | 6.4 MWh/heat | (-)- | Regular | |||
A † | - | −2.2 MWh/heat | 3.9 MWh/heat | (-)- | Developed Köhle | ||||
Haupt et al. [51] (2016) | C | 0.31 | - | - | (-)- | ||||
Chen et al. [52] (2018) | A | 0.79 | 2.1 MWh/heat ++ | - | 28.2 MWh/heat ++ | Absolute | |||
PLS | Sandberg et al. [26,44,45,46] (2004-2007) | A | 0.50 | 8.6 | 12.3 | (-)- | Ovako Steel. Calculate using a series of heats from last emptying of the furnace (approximately 20 heats). Mean error RMSE. | ||
B | 0.46 | 5.8 | 8.1 | (-)- | Fundia Special Bar. Calculated using moving average of 20 heats. | ||||
Non- linear | ANN | Baumert et al. [47] (2002) | B † | - | −0.8 MWh/heat | 1.9 MWh/heat | (-)- | Static | |
C † | - | ~0 MWh/heat | 1.3 MWh/heat | (3.5)6 MWh/heat | Dynamic, independent ANNs. | ||||
D † | - | −0.1 MWh/heat | 3.3 MWh/heat | (-)- | Dynamic, interconnected ANNs. | ||||
E † | - | ~0 MWh/heat | 1.8 MWh/heat | (-)- | Dynamic, interconnected ANNs. | ||||
Baumert et al. [48,49] (2005) | A | - | −0.2 MWh/heat | 4 MWh/heat | (-)- | Dynamic, independent ANNs. | |||
B | - | ~0 MWh/heat | 2.5 MWh/heat | (-)- | Dynamic, interconnected ANNs. | ||||
C | - | ~0 MWh/heat | 1.2 MWh/heat | (4)4.9 MWh/heat | With scrap data added to input layers | ||||
D † | - | −0.3 MWh/heat | 1.9 MWh/heat | (8)5 MWh/heat | With scrap data as separate ANN feed. | ||||
Gajic et al. [50] (2016) | A | 0.92 | 15.10 | - | (-)- | Absolute | Reported Regular, Absolute, and RMS Errors. | ||
Haupt et al. [51] (2016) | A | 0.62 | - | - | (-)- | 1000 random batches in 70% training and 30% test data. | |||
RF | B | 0.60 | - | - | (-)- | ||||
DT | Chen et al. [52] (2018) | B | 0.78 | 1.8 MWh/heat ++ | - | 29.5 MWh/heat ++ | Absolute | ||
SVM | C | 0.76 | 1.7 MWh/heat ++ | - | 26.2 MWh/heat ++ | Absolute | |||
DNN | D | 0.85 | 1.5 MWh/heat ++ | - | 17.4 MWh/heat ++ | Absolute |
Performance Netric | Nonlinear | Linear | Single Heats on Model K4 |
---|---|---|---|
Mean error (kWh/t) | −5.2 to 0 | −14.2 * | −45 to 74.4 |
Standard deviation error (kWh/t) | 7.7–25.8 | 25.2 * | 25–41.3 |
Max negative error (kWh/t) | −51.6 to −22.6 | - | - |
Max positive error (kWh/t) | 31.6–38.7 | - | - |
- | - | 0.31 * |
Model Type | Study | Model | Furnace Information | |
Linear | MLR—mean furnace values | Köhle et al. [32,33] (1992) | K1 | 14 AC furnaces of 64–147 t average tap weights and between 52–140 min average time from first power on to tapping. Natural gas/oxygen burner ratio exceeds 2:1 for some furnaces. Bottom stirring, charging by two baskets, and foaming slag is present at nearly half of the furnaces, respectively. All furnaces are without scrap pre-heating. Coal is injected up to 7 kg/t and included in the baskets up to 14 kg/t. |
Bowman [35] (1995) | K1 | 11 DC furnaces. | ||
K1 | 11 AC furnaces. | |||
Köhle et al. [36] (1997) | K2 | 7 AC furnaces without Post-combustion. Average tap weight 60–95 t and average time from first power on to tapping between 41–65 min. Furnace No.5 with low electric power as well as with high electric power separated into two data sets which also used overstoichiometric burner oxygen. | ||
K2 | The same 7 AC furnaces but with Post-combustion. Same as above except without overstoichiometric oxygen for furnace No.5. | |||
Köhle [37] (1999) | K3 | 27 AC furnaces 8 DC furnaces. 17 in Europe, 9 in Asia, 4 in America, 2 in Africa, and 1 in Australia. 28 conventional single shell furnaces, 3 twin shell, 3 single shaft, and one double shaft. Most furnaces are charged with Direct Reduced Iron(DRI), Hot Briquetted Iron (HBI), and hot metal besides scrap. Post-combustion is “widely” applied using mainly overstoichiometric input of burner oxygen. Scrap preheating: 5 of the conventional single shell furnaces uses basket scrap pre-heating, 2 twin shell furnaces and the double shaft furnace uses burners for scrap-preheating. Average tap weight 60–165 t, average DRI/HBI 0–750 kg/t, average hot metal 0–580 kg/t, and active power between 30–112 MW | ||
Köhle [38,39] (2002) | K4 | 13 AC furnaces of those in the previous study by Köhle et al. [33] | ||
K4 | 7 AC furnaces of those in the previous study by Köhle et al. [36] | |||
K4 | 34 AC and DC furnaces of those in the previous study by Köhle [37] | |||
MLR—regular | Köhle [38,39] (2002) | K4 | Feralpi. Single shell AC, 70 MVA, 80 t tap weight. Power at main melting 54 MW. Tap-to-tap time 43 min. | |
K4 | PAEB. Single shell DC, 140 MVA, 155 t tap weight. Power at main melting 96 MW. Tap-to-tap time 63 min. | |||
K4 | PADI. Twin shell DC, 140 MVA, 150 t tap weight. Power at main melting 103 MW. Tap-to-tap time 53 min. | |||
K4 | Cockerill. Single shaft DC, 110 MVA, 160 t tap weight. Power at main melting 70 MW. Tap-to-tap time 98 min. | |||
K4 | ARES. Double shaft AC, 105 MVA, 110 t tap weight. Power at main melting 74 MW. Shaft pre-heating by exhaust gas. Tap-to-tap time 51 min. | |||
Kleimt [40] (2005) | K4 K4 | DC furnace with permanent off-gas analysis. 130 t tap weight. 130 MVA. Tap-to-tap time 65 min, Power on time 50 min. 3 NG/oxygen burners, two of them has supersonic capabilities. Two oxygen lances. Coal lancing. | ||
Kirchen et al. [41] (2017) | K4 A | Two EAF with different energy efficiencies and EE demand. | ||
Conejo et al. [42] (2006) | A | AC Single Shell with 220 t capacity and 155 MVA transformed. Input material is 100% DRI supplied from two local plants (HYL and MIDREX). Average power on time 57 min, average power off time 25 min, average delay time 46 min. | ||
Czapla et al. [43] (2008) | A | Min/max charging weight: 148 t/165 t. Min/max tap-to-tap time: 45/67 min. Min/max power-on time: 35/45 min | ||
B | Min/max charging weight: 54/85 t. Min/max tap-to-tap time: -/- min. Min/max power-on time: 40/73min | |||
Baumert et al. [47] (2002) | K4 A | PADI. DC Dual Shell using a 1-1-2-2 basket melting scheme, which means that one alternates processing of scrap baskets No.1 and No.2 in both vessels. 155 t furnace capacity. | ||
Haupt et al. [51] (2016) | C | EAF of Fingershaft type that preheats scrap to 800–1000 °C. Average electricity consumption is 26.3 MWh. | ||
Chen et al. [52] (2018) | A | Steel plant in South Wales, UK. | ||
PLS | Sandberg et al. [26,44,45,46] (2004–2007) | A | Ovako Steel AB, Hofors. Bearing steels, spring steels. | |
B | Fundia Special Bar AB, Smedjebacken. Long products, low alloyed PADI. DC Dual Shell using a 1-1-2-2 basket melting scheme, which means that one alternates processing of scrap baskets No.1 and No.2 in both vessels. 155 t furnace capacity. | |||
Non- linear | ANN | Baumert et al. [47] (2002) | C | PAEB. DC Single Shell. 155 t furnace capacity. 96 MW max power. |
D | PADI | |||
E | PAEB | |||
Baumert et al. [48,49] (2005) | A | PADI | ||
B | PADI | |||
C | PAEB | |||
D | PAEB | |||
Gajic et al. [50] (2016) | A | Italian EAF. Stainless steel products. | ||
Haupt et al. [51] (2016) | A | Swiss EAF of Fingershaft type that preheats scrap to 800–1000 °C. Average electricity consumption is 26.3 MWh. | ||
RF | B | |||
DT | Chen et al. [52] (2018) | B | Steel plant in South Wales, UK. | |
SVM | C | |||
DNN | D |
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Carlsson, L.S.; Samuelsson, P.B.; Jönsson, P.G. Predicting the Electrical Energy Consumption of Electric Arc Furnaces Using Statistical Modeling. Metals 2019, 9, 959. https://doi.org/10.3390/met9090959
Carlsson LS, Samuelsson PB, Jönsson PG. Predicting the Electrical Energy Consumption of Electric Arc Furnaces Using Statistical Modeling. Metals. 2019; 9(9):959. https://doi.org/10.3390/met9090959
Chicago/Turabian StyleCarlsson, Leo S., Peter B. Samuelsson, and Pär G. Jönsson. 2019. "Predicting the Electrical Energy Consumption of Electric Arc Furnaces Using Statistical Modeling" Metals 9, no. 9: 959. https://doi.org/10.3390/met9090959