Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques

The walking beam furnace (WBF) is one of the most prominent process plants often met in an alloy steel production factory and characterized by high non-linearity, strong coupling, time delay, large time-constant and time variation in its parameter set and structure. From another viewpoint,...

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Main Authors: Banadaki Hamed Dehghan, Nozari Hasan Abbasi, Shoorehdeli Mahdi Aliyari
Format: Article
Language:English
Published: VINCA Institute of Nuclear Sciences 2015-01-01
Series:Thermal Science
Subjects:
Online Access:http://www.doiserbia.nb.rs/img/doi/0354-9836/2015/0354-98361200210B.pdf
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spelling doaj-18956fa4ae5e4971b2da6a4ed4ce27952021-01-02T00:32:33ZengVINCA Institute of Nuclear SciencesThermal Science0354-98362015-01-0119270372110.2298/TSCI120410210B0354-98361200210BShort-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniquesBanadaki Hamed Dehghan0Nozari Hasan Abbasi1Shoorehdeli Mahdi Aliyari2Department of Electrical Engineering, Islamic Azad University, Ashkezar Branch, Yazd, IranDepartment of Electrical Engineering, Islamic Azad University, Joybar Branch, Joybar, IranDepartment of Mechatronics, Faculty of Electrical Engineering, K. N. Toosi University, Tehran, IranThe walking beam furnace (WBF) is one of the most prominent process plants often met in an alloy steel production factory and characterized by high non-linearity, strong coupling, time delay, large time-constant and time variation in its parameter set and structure. From another viewpoint, the WBF is a distributed-parameter process in which the distribution of temperature is not uniform. Hence, this process plant has complicated non-linear dynamic equations that have not worked out yet. In this paper, we propose one-step non-linear predictive model for a real WBF using non-linear black-box sub-system identification based on locally linear neuro-fuzzy (LLNF) model. Furthermore, a multi-step predictive model with a precise long prediction horizon (i.e., ninety seconds ahead), developed with application of the sequential one-step predictive models, is also presented for the first time. The locally linear model tree (LOLIMOT) which is a progressive tree-based algorithm trains these models. Comparing the performance of the one-step LLNF predictive models with their associated models obtained through least squares error (LSE) solution proves that all operating zones of the WBF are of non-linear sub-systems. The recorded data from Iran Alloy Steel factory is utilized for identification and evaluation of the proposed neuro-fuzzy predictive models of the WBF process.http://www.doiserbia.nb.rs/img/doi/0354-9836/2015/0354-98361200210B.pdfNon-linear predictionWalking beam furnacelocally linear neuro-fuzzylocally linear model treeleast-squares error
collection DOAJ
language English
format Article
sources DOAJ
author Banadaki Hamed Dehghan
Nozari Hasan Abbasi
Shoorehdeli Mahdi Aliyari
spellingShingle Banadaki Hamed Dehghan
Nozari Hasan Abbasi
Shoorehdeli Mahdi Aliyari
Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
Thermal Science
Non-linear prediction
Walking beam furnace
locally linear neuro-fuzzy
locally linear model tree
least-squares error
author_facet Banadaki Hamed Dehghan
Nozari Hasan Abbasi
Shoorehdeli Mahdi Aliyari
author_sort Banadaki Hamed Dehghan
title Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
title_short Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
title_full Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
title_fullStr Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
title_full_unstemmed Short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
title_sort short-term and long-term thermal prediction of a walking beam furnace using neuro-fuzzy techniques
publisher VINCA Institute of Nuclear Sciences
series Thermal Science
issn 0354-9836
publishDate 2015-01-01
description The walking beam furnace (WBF) is one of the most prominent process plants often met in an alloy steel production factory and characterized by high non-linearity, strong coupling, time delay, large time-constant and time variation in its parameter set and structure. From another viewpoint, the WBF is a distributed-parameter process in which the distribution of temperature is not uniform. Hence, this process plant has complicated non-linear dynamic equations that have not worked out yet. In this paper, we propose one-step non-linear predictive model for a real WBF using non-linear black-box sub-system identification based on locally linear neuro-fuzzy (LLNF) model. Furthermore, a multi-step predictive model with a precise long prediction horizon (i.e., ninety seconds ahead), developed with application of the sequential one-step predictive models, is also presented for the first time. The locally linear model tree (LOLIMOT) which is a progressive tree-based algorithm trains these models. Comparing the performance of the one-step LLNF predictive models with their associated models obtained through least squares error (LSE) solution proves that all operating zones of the WBF are of non-linear sub-systems. The recorded data from Iran Alloy Steel factory is utilized for identification and evaluation of the proposed neuro-fuzzy predictive models of the WBF process.
topic Non-linear prediction
Walking beam furnace
locally linear neuro-fuzzy
locally linear model tree
least-squares error
url http://www.doiserbia.nb.rs/img/doi/0354-9836/2015/0354-98361200210B.pdf
work_keys_str_mv AT banadakihameddehghan shorttermandlongtermthermalpredictionofawalkingbeamfurnaceusingneurofuzzytechniques
AT nozarihasanabbasi shorttermandlongtermthermalpredictionofawalkingbeamfurnaceusingneurofuzzytechniques
AT shoorehdelimahdialiyari shorttermandlongtermthermalpredictionofawalkingbeamfurnaceusingneurofuzzytechniques
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