Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron
Industrial process monitoring and modeling represent a critical step in order to achieve the paradigm of zero defect manufacturing. The aim of this paper is to introduce the neo-fuzzy neuron method to be applied in industrial time series modeling. Its open structure and input independence provide fa...
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doaj-063570599338465a82c7d58bcbdda4fe2021-03-29T19:47:59ZengIEEEIEEE Access2169-35362016-01-0146151616010.1109/ACCESS.2016.26116497572156Industrial Time Series Modelling by Means of the Neo-Fuzzy NeuronDaniel Zurita0https://orcid.org/0000-0001-6388-7559Miguel Delgado1Jesus A. Carino2Juan A. Ortega3Guy Clerc4Department of Electronic Engineering, MCIA Research Center, Technical University of Catalonia, Terrassa, SpainDepartment of Electronic Engineering, MCIA Research Center, Technical University of Catalonia, Terrassa, SpainDepartment of Electronic Engineering, MCIA Research Center, Technical University of Catalonia, Terrassa, SpainDepartment of Electronic Engineering, MCIA Research Center, Technical University of Catalonia, Terrassa, SpainLaboratoire Ampère, Université Claude Bernard Lyon 1, Villeurbanne, FranceIndustrial process monitoring and modeling represent a critical step in order to achieve the paradigm of zero defect manufacturing. The aim of this paper is to introduce the neo-fuzzy neuron method to be applied in industrial time series modeling. Its open structure and input independence provide fast learning and convergence capabilities, while assuring a proper accuracy and generalization in the modeled output. First, the auxiliary signals in the database are analyzed in order to find correlations with the target signal. Second, the neo-fuzzy neuron is configured and trained accordingly by means of the auxiliary signal, past instants, and dynamics information of the target signal. The proposed method is validated by means of real data from a Spanish copper rod industrial plant, in which a critical signal regarding copper refrigeration process is modeled. The obtained results indicate the suitability of the neo-fuzzy neuron method for industrial process modeling.https://ieeexplore.ieee.org/document/7572156/Artificial intelligenceforecastingfuzzy neural networksindustrial plantspredictive modelstime series analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Daniel Zurita Miguel Delgado Jesus A. Carino Juan A. Ortega Guy Clerc |
spellingShingle |
Daniel Zurita Miguel Delgado Jesus A. Carino Juan A. Ortega Guy Clerc Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron IEEE Access Artificial intelligence forecasting fuzzy neural networks industrial plants predictive models time series analysis |
author_facet |
Daniel Zurita Miguel Delgado Jesus A. Carino Juan A. Ortega Guy Clerc |
author_sort |
Daniel Zurita |
title |
Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron |
title_short |
Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron |
title_full |
Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron |
title_fullStr |
Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron |
title_full_unstemmed |
Industrial Time Series Modelling by Means of the Neo-Fuzzy Neuron |
title_sort |
industrial time series modelling by means of the neo-fuzzy neuron |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2016-01-01 |
description |
Industrial process monitoring and modeling represent a critical step in order to achieve the paradigm of zero defect manufacturing. The aim of this paper is to introduce the neo-fuzzy neuron method to be applied in industrial time series modeling. Its open structure and input independence provide fast learning and convergence capabilities, while assuring a proper accuracy and generalization in the modeled output. First, the auxiliary signals in the database are analyzed in order to find correlations with the target signal. Second, the neo-fuzzy neuron is configured and trained accordingly by means of the auxiliary signal, past instants, and dynamics information of the target signal. The proposed method is validated by means of real data from a Spanish copper rod industrial plant, in which a critical signal regarding copper refrigeration process is modeled. The obtained results indicate the suitability of the neo-fuzzy neuron method for industrial process modeling. |
topic |
Artificial intelligence forecasting fuzzy neural networks industrial plants predictive models time series analysis |
url |
https://ieeexplore.ieee.org/document/7572156/ |
work_keys_str_mv |
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1724195580612182016 |