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Published in: Neural Computing and Applications 6/2017

01-10-2016 | Engineering Applications of Neural Networks

Hybrid multistep modeling for calculation of carbon efficiency of iron ore sintering process based on yield prediction

Authors: Xiaoxia Chen, Xin Chen, Jinhua She, Min Wu

Published in: Neural Computing and Applications | Issue 6/2017

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Abstract

Iron ore sintering is the second most energy-consuming process in steelmaking. The main source of energy for it is the combustion of carbon. To find ways of reducing the energy consumption, it is necessary to predict the carbon efficiency. In this study, the comprehensive carbon ratio (CCR) was taken to be a measure of carbon efficiency, and a hybrid multistep model (HMSM) was built to calculate it. First, the sintering process was analyzed, and the key characteristics of the process parameters were extracted. Next, an HMSM that combines mechanism modeling, data-driven modeling, and integrated modeling was constructed based on the characteristics of the process parameters. The model has three levels: the prediction of key state parameters, yield prediction, and mechanism modeling. First, an integrated fuzzy predictive model predicts the key state parameters based on the evaluation of current operating conditions. Next, predicted values of the state parameters along with key material parameters are used as inputs for a particle swarm optimization-based backpropagation neural network predictive model that predicts the yield. Finally, the predicted yield is fed into the mechanism model, which calculates the CCR. Mechanism and data correlation analyses were used to determine the most appropriate inputs for the three levels. Model verification using actual process data showed that the HMSM accurately predicted the CCR. More specifically, the relative error was in the range (0 %, 2 %] for 91 % of the test samples, and the maximum error was only 5 %. This model lays the groundwork for increasing the carbon efficiency of iron ore sintering.

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Literature
1.
go back to reference Gupta RC (2010) Theory and laboratory experiments in ferrous metallurgy. Raj press, New Delhi Gupta RC (2010) Theory and laboratory experiments in ferrous metallurgy. Raj press, New Delhi
2.
go back to reference Li WX, Zhang CX, Wang HF, Zhou JC, Qi YH, Shangguan FQ, Gan R, Fang B (2010) Status and development trend of energy saving and emission reduction technology in sinter process. In: 2010 national energy and environmental protection production technology conference, pp 77–91 Li WX, Zhang CX, Wang HF, Zhou JC, Qi YH, Shangguan FQ, Gan R, Fang B (2010) Status and development trend of energy saving and emission reduction technology in sinter process. In: 2010 national energy and environmental protection production technology conference, pp 77–91
3.
go back to reference Cao H, Li H, Cheng H (2012) A carbon efficiency approach for life-cycle carbon emission characteristics of machine tools. J Clean Prod 37:19–28CrossRef Cao H, Li H, Cheng H (2012) A carbon efficiency approach for life-cycle carbon emission characteristics of machine tools. J Clean Prod 37:19–28CrossRef
4.
go back to reference Li DZ, Chen HX, Hui ECM (2013) A methodology for estimating the life-cycle carbon efficiency of a residential building. Build Environ 59:448–455CrossRef Li DZ, Chen HX, Hui ECM (2013) A methodology for estimating the life-cycle carbon efficiency of a residential building. Build Environ 59:448–455CrossRef
5.
go back to reference Cui Q, Li Y (2015) An empirical study on the influencing factors of transportation carbon efficiency: evidences from fifteen countries. Appl Energy 141:209–217CrossRef Cui Q, Li Y (2015) An empirical study on the influencing factors of transportation carbon efficiency: evidences from fifteen countries. Appl Energy 141:209–217CrossRef
6.
go back to reference Chen X, Wen WW, Wu M, Cao WH (2013) BP neural network model of coke consumption of sintering process based on chaotic PSO algorithm. Comput Appl Chem 30(10):111–114 (In Chinese) Chen X, Wen WW, Wu M, Cao WH (2013) BP neural network model of coke consumption of sintering process based on chaotic PSO algorithm. Comput Appl Chem 30(10):111–114 (In Chinese)
7.
go back to reference Chen X, Chen XX, Wu M, She JH (2016) Modeling and optimization method featuring multiple operating modes for improving carbon efficiency of iron ore sintering process. Control Eng Pract 54:117–128CrossRef Chen X, Chen XX, Wu M, She JH (2016) Modeling and optimization method featuring multiple operating modes for improving carbon efficiency of iron ore sintering process. Control Eng Pract 54:117–128CrossRef
8.
go back to reference Chen XX, She JH, Chen X, Wu M (2016) Modeling method of carbon efficiency in iron ore sintering process. In: 2016 IEEE international conference on industrial technology (ICIT), IEEE, pp 1033–1038 Chen XX, She JH, Chen X, Wu M (2016) Modeling method of carbon efficiency in iron ore sintering process. In: 2016 IEEE international conference on industrial technology (ICIT), IEEE, pp 1033–1038
9.
go back to reference Mnassri B, Ouladsine M (2015) Reconstruction-based contribution approaches for improved fault diagnosis using principal component analysis. J Process Control 33:60–76CrossRef Mnassri B, Ouladsine M (2015) Reconstruction-based contribution approaches for improved fault diagnosis using principal component analysis. J Process Control 33:60–76CrossRef
10.
go back to reference Sayemuzzaman M, Jha MK (2014) Seasonal and annual precipitation time series trend analysis in North Carolina, United States. Atmos Res 137:183–194CrossRef Sayemuzzaman M, Jha MK (2014) Seasonal and annual precipitation time series trend analysis in North Carolina, United States. Atmos Res 137:183–194CrossRef
11.
go back to reference Yang Y, Farid SS, Thornhill NF (2014) Data mining for rapid prediction of facility fit and debottlenecking of biomanufacturing facilities. J Biotechnol 179:17–25CrossRef Yang Y, Farid SS, Thornhill NF (2014) Data mining for rapid prediction of facility fit and debottlenecking of biomanufacturing facilities. J Biotechnol 179:17–25CrossRef
12.
go back to reference Li X, Hipel KW, Dang Y (2015) An improved grey relational analysis approach for panel data clustering. Expert Syst Appl 42(23):9105–9116CrossRef Li X, Hipel KW, Dang Y (2015) An improved grey relational analysis approach for panel data clustering. Expert Syst Appl 42(23):9105–9116CrossRef
13.
go back to reference Huang C, Dai C, Guo M (2015) A hybrid approach using two-level DEA for financial failure prediction and integrated SE-DEA and GCA for indicators selection. Appl Math Comput 251:431–441MATHMathSciNet Huang C, Dai C, Guo M (2015) A hybrid approach using two-level DEA for financial failure prediction and integrated SE-DEA and GCA for indicators selection. Appl Math Comput 251:431–441MATHMathSciNet
14.
go back to reference Zhao JP, Loo CE, Dukino RD (2015) Modeling fuel combustion in iron ore sintering. Combust Flame 162(4):1019–1034CrossRef Zhao JP, Loo CE, Dukino RD (2015) Modeling fuel combustion in iron ore sintering. Combust Flame 162(4):1019–1034CrossRef
15.
go back to reference Pahlevaninezhad M, Emami MD, Panjepour M (2014) The effects of kinetic parameters on combustion characteristics in a sintering bed. Energy 73:160–176CrossRef Pahlevaninezhad M, Emami MD, Panjepour M (2014) The effects of kinetic parameters on combustion characteristics in a sintering bed. Energy 73:160–176CrossRef
16.
go back to reference Dong J, Zheng C, Kan G (2015) Applying the ensemble artificial neural network-based hybrid data-driven model to daily total load forecasting. Neural Comput Appl 26(3):603–611CrossRef Dong J, Zheng C, Kan G (2015) Applying the ensemble artificial neural network-based hybrid data-driven model to daily total load forecasting. Neural Comput Appl 26(3):603–611CrossRef
17.
go back to reference Yu SW, Zhu KJ, Diao FQ (2008) A dynamic all parameters adaptive BP neural networks model and its application on oil reservoir prediction. Appl Math Comput 195(1):66–75MATHMathSciNet Yu SW, Zhu KJ, Diao FQ (2008) A dynamic all parameters adaptive BP neural networks model and its application on oil reservoir prediction. Appl Math Comput 195(1):66–75MATHMathSciNet
18.
go back to reference Zeng B, Meng W, Tong M (2016) A self-adaptive intelligence grey predictive model with alterable structure and its application. Eng Appl Artif Intel 50:236–244CrossRef Zeng B, Meng W, Tong M (2016) A self-adaptive intelligence grey predictive model with alterable structure and its application. Eng Appl Artif Intel 50:236–244CrossRef
19.
go back to reference Fu M, Wang W, Le Z (2015) Prediction of particular matter concentrations by developed feed-forward neural network with rolling mechanism and gray model. Neural Comput Appl. doi:10.1007/s00521-015-1853-8 Fu M, Wang W, Le Z (2015) Prediction of particular matter concentrations by developed feed-forward neural network with rolling mechanism and gray model. Neural Comput Appl. doi:10.​1007/​s00521-015-1853-8
20.
go back to reference Xu X, Hua C, Tang Y (2015) Modeling of the hot metal silicon content in blast furnace using support vector machine optimized by an improved particle swarm optimizer. Neural Comput Appl. doi:10.1007/s00521-015-1951-7 Xu X, Hua C, Tang Y (2015) Modeling of the hot metal silicon content in blast furnace using support vector machine optimized by an improved particle swarm optimizer. Neural Comput Appl. doi:10.​1007/​s00521-015-1951-7
21.
go back to reference Wu M, Chen XX, Cao WH, She JH, Wang CS (2014) An intelligent integrated optimization system for the proportioning of iron ore in a sintering process. J Process Control 24:182–202CrossRef Wu M, Chen XX, Cao WH, She JH, Wang CS (2014) An intelligent integrated optimization system for the proportioning of iron ore in a sintering process. J Process Control 24:182–202CrossRef
22.
go back to reference Wang JZ, Wang JJ, Zhang ZG, Guo SP (2011) Forecasting stock indices with back propagation neural network. Expert Syst Appl 38:14346–14355 Wang JZ, Wang JJ, Zhang ZG, Guo SP (2011) Forecasting stock indices with back propagation neural network. Expert Syst Appl 38:14346–14355
23.
go back to reference Jin C, Jin SW, Qin LN (2012) Attribute selection method based on a hybrid BPNN and PSO algorithms. Appl Soft Comput 12(8):2147–2155CrossRef Jin C, Jin SW, Qin LN (2012) Attribute selection method based on a hybrid BPNN and PSO algorithms. Appl Soft Comput 12(8):2147–2155CrossRef
24.
go back to reference Lin Z, Chen G, Guo W (2008) PSO-BPNN-based prediction of network security situation. In: 3rd international conference on innovative computing information and control. IEEE, pp 37–37 Lin Z, Chen G, Guo W (2008) PSO-BPNN-based prediction of network security situation. In: 3rd international conference on innovative computing information and control. IEEE, pp 37–37
25.
go back to reference Wu M, Xu C, She J (2012) Neural-network-based integrated model for predicting burn-through point in lead-zinc sintering process. J Process Control 22(5):925–934CrossRef Wu M, Xu C, She J (2012) Neural-network-based integrated model for predicting burn-through point in lead-zinc sintering process. J Process Control 22(5):925–934CrossRef
26.
go back to reference Chen CI, Huang SJ (2013) The necessary and sufficient condition for GM (1,1) grey prediction model. Appl Math Comput 219(11):6152–6162MATHMathSciNet Chen CI, Huang SJ (2013) The necessary and sufficient condition for GM (1,1) grey prediction model. Appl Math Comput 219(11):6152–6162MATHMathSciNet
27.
go back to reference Sun B, Gui WH, Wu TB (2013) An integrated prediction model of cobalt ion concentration based on oxidation–reduction potential. Hydrometallurgy 140:102–110CrossRef Sun B, Gui WH, Wu TB (2013) An integrated prediction model of cobalt ion concentration based on oxidation–reduction potential. Hydrometallurgy 140:102–110CrossRef
28.
go back to reference Sideratos G, Hatziargyriou ND (2007) An advanced statistical method for wind power forecasting. IEEE T Power Syst 22:258–265CrossRef Sideratos G, Hatziargyriou ND (2007) An advanced statistical method for wind power forecasting. IEEE T Power Syst 22:258–265CrossRef
29.
go back to reference Chang WY (2013) Short-term wind power forecasting using the enhanced particle swarm optimization based hybrid method. Energies 6:4879–4896CrossRef Chang WY (2013) Short-term wind power forecasting using the enhanced particle swarm optimization based hybrid method. Energies 6:4879–4896CrossRef
30.
go back to reference Chiang CC, Ho MC, Chen JA (2006) A hybrid approach of neural networks and grey modeling for adaptive electricity load forecasting. Neural Comput Appl 15(3–4):328–338CrossRef Chiang CC, Ho MC, Chen JA (2006) A hybrid approach of neural networks and grey modeling for adaptive electricity load forecasting. Neural Comput Appl 15(3–4):328–338CrossRef
31.
go back to reference Wu M, Duan P, Cao W, She JH, Xiang J (2012) An intelligent control system based on prediction of the burn-through point for the sintering process of an iron and steel plant. Expert Syst Appl 39(5):5971–5981CrossRef Wu M, Duan P, Cao W, She JH, Xiang J (2012) An intelligent control system based on prediction of the burn-through point for the sintering process of an iron and steel plant. Expert Syst Appl 39(5):5971–5981CrossRef
32.
go back to reference Zhou H, Zhao JP, Loo CE, Ellis BG, Cen KF (2012) Numerical modeling of the iron ore sintering process. ISIJ Int 52(9):1550–1558CrossRef Zhou H, Zhao JP, Loo CE, Ellis BG, Cen KF (2012) Numerical modeling of the iron ore sintering process. ISIJ Int 52(9):1550–1558CrossRef
33.
go back to reference Yang W, Ryu C, Choi S, Choi E, Lee D, Huh W (2004) Modeling of combustion and heat transfer in an iron ore sintering bed with considerations of multiple solid phases. ISIJ Int 44(3):492–499CrossRef Yang W, Ryu C, Choi S, Choi E, Lee D, Huh W (2004) Modeling of combustion and heat transfer in an iron ore sintering bed with considerations of multiple solid phases. ISIJ Int 44(3):492–499CrossRef
34.
Metadata
Title
Hybrid multistep modeling for calculation of carbon efficiency of iron ore sintering process based on yield prediction
Authors
Xiaoxia Chen
Xin Chen
Jinhua She
Min Wu
Publication date
01-10-2016
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 6/2017
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-016-2615-y

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