Miriyala, Srinivas Soumitri and Mitra, Kishalay
(2020)
Multi-objective optimization of iron ore induration process using optimal neural networks.
Materials and Manufacturing Processes, 35 (5).
pp. 537-544.
ISSN 1042-6914
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Abstract
Induration in steel industries is the process of pelletizing iron ore particles. It is an important unit operation which produces raw materials for a subsequent chemical reduction in Blast Furnace. Of the enormous amount of energy consumed by Blast Furnace, a large portion is utilized in processing the raw materials. High-quality raw materials, therefore, ensure less consumption of energy in the Blast Furnace. Thus, optimization of induration process is necessary for conservation of a significant amount of energy in steelmaking industries. To realize this, a highly non-linear, industrially validated, 22 dimensional first principles based model for induration is created and a multi-objective optimization problem is designed. However, the physics-based model being computationally expensive, Multi-layered Perceptron Networks (MLPs) are trained to emulate the induration process. Novelty in this work lies with the optimal architecture design of MLPs through a multi-objective integer non-linear programming (MO-INLP) problem and with simultaneous training size estimation through four different Sobol sampling-based algorithms. Successful emulation of induration process resulted in 10-fold speed increment in optimization through surrogate models. To justify the parsimonious behavior of resultant MLPs, five different tests are performed for checking whether they are over-fitted. Comparison with Kriging adds to other highlights.
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IITH Creators: |
IITH Creators | ORCiD |
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Mitra, Kishalay | http://orcid.org/0000-0001-5660-6878 |
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Item Type: |
Article
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Uncontrolled Keywords: |
Iron, ores, steels, energy, optimization, neural, genetic, algorithm, computation, simulations, data, nonlinear, Indexed in WoS |
Subjects: |
Chemical Engineering |
Divisions: |
Department of Chemical Engineering |
Depositing User: |
Team Library
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Date Deposited: |
16 Dec 2019 11:59 |
Last Modified: |
14 Nov 2022 05:11 |
URI: |
http://raiithold.iith.ac.in/id/eprint/7160 |
Publisher URL: |
http://doi.org/10.1080/10426914.2019.1643476 |
OA policy: |
https://v2.sherpa.ac.uk/id/publication/5840 |
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