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A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN

The quality control process for sintered ore is cumbersome and time- and money-consuming. When the assay results come out and the ratios are found to be faulty, the ratios cannot be changed in time, which will produce sintered ore of substandard quality, resulting in a waste of resources and environ...

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Autores principales: Li, Yifan, Zhang, Qunwei, Zhu, Yi, Yang, Aimin, Liu, Weixing, Zhao, Xinfeng, Ren, Xinying, Feng, Shilong, Li, Zezheng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9019411/
https://www.ncbi.nlm.nih.gov/pubmed/35463237
http://dx.doi.org/10.1155/2022/3343427
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author Li, Yifan
Zhang, Qunwei
Zhu, Yi
Yang, Aimin
Liu, Weixing
Zhao, Xinfeng
Ren, Xinying
Feng, Shilong
Li, Zezheng
author_facet Li, Yifan
Zhang, Qunwei
Zhu, Yi
Yang, Aimin
Liu, Weixing
Zhao, Xinfeng
Ren, Xinying
Feng, Shilong
Li, Zezheng
author_sort Li, Yifan
collection PubMed
description The quality control process for sintered ore is cumbersome and time- and money-consuming. When the assay results come out and the ratios are found to be faulty, the ratios cannot be changed in time, which will produce sintered ore of substandard quality, resulting in a waste of resources and environmental pollution. For the problem of lagging sinter detection results, Long Short-Term Memory and Genetic Algorithm-Recurrent Neural Networks prediction algorithms were used for comparative analysis, and the article used GA-RNN quality prediction model for prediction. Through correlation analysis, the chemical composition of the sintered raw material was determined as the input parameter and the physical and metallurgical properties of the sintered ore were determined as the output parameters, thus successfully establishing a GA-RNN-based sinter quality prediction model. Based on 150 sets of original data, 105 sets of data were selected as the training sample set and 45 sets of data were selected as the test sample set. The results obtained were compared to the real value with an average prediction error of 1.24% for the drum index, 0.92% for the low-temperature reduction chalking index (RDI), 0.95% for the reduction index (RI), 0.40% for the load softening temperature T(10%), and 0.43% for the load softening temperature T(40%), with all within the running time thresholds. The study of this model enables the prediction of the quality of sintered ore prior to sintering, thus improving the yield of sintered ore, increasing corporate efficiency, saving energy, and reducing environmental pollution.
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spelling pubmed-90194112022-04-21 A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN Li, Yifan Zhang, Qunwei Zhu, Yi Yang, Aimin Liu, Weixing Zhao, Xinfeng Ren, Xinying Feng, Shilong Li, Zezheng Comput Intell Neurosci Research Article The quality control process for sintered ore is cumbersome and time- and money-consuming. When the assay results come out and the ratios are found to be faulty, the ratios cannot be changed in time, which will produce sintered ore of substandard quality, resulting in a waste of resources and environmental pollution. For the problem of lagging sinter detection results, Long Short-Term Memory and Genetic Algorithm-Recurrent Neural Networks prediction algorithms were used for comparative analysis, and the article used GA-RNN quality prediction model for prediction. Through correlation analysis, the chemical composition of the sintered raw material was determined as the input parameter and the physical and metallurgical properties of the sintered ore were determined as the output parameters, thus successfully establishing a GA-RNN-based sinter quality prediction model. Based on 150 sets of original data, 105 sets of data were selected as the training sample set and 45 sets of data were selected as the test sample set. The results obtained were compared to the real value with an average prediction error of 1.24% for the drum index, 0.92% for the low-temperature reduction chalking index (RDI), 0.95% for the reduction index (RI), 0.40% for the load softening temperature T(10%), and 0.43% for the load softening temperature T(40%), with all within the running time thresholds. The study of this model enables the prediction of the quality of sintered ore prior to sintering, thus improving the yield of sintered ore, increasing corporate efficiency, saving energy, and reducing environmental pollution. Hindawi 2022-04-12 /pmc/articles/PMC9019411/ /pubmed/35463237 http://dx.doi.org/10.1155/2022/3343427 Text en Copyright © 2022 Yifan Li et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Li, Yifan
Zhang, Qunwei
Zhu, Yi
Yang, Aimin
Liu, Weixing
Zhao, Xinfeng
Ren, Xinying
Feng, Shilong
Li, Zezheng
A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title_full A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title_fullStr A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title_full_unstemmed A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title_short A Model Study on Raw Material Chemical Composition to Predict Sinter Quality Based on GA-RNN
title_sort model study on raw material chemical composition to predict sinter quality based on ga-rnn
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9019411/
https://www.ncbi.nlm.nih.gov/pubmed/35463237
http://dx.doi.org/10.1155/2022/3343427
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