Soft Sensor Transferability: A Survey
Soft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of process hard-to-measure variables based on their relation with easily accessible ones. They allow implementation of real-time control and monitoring of the plants and present other advantages in terms...
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doaj-1a04736f00f7405697a43b44f7b5c9462021-08-26T13:31:06ZengMDPI AGApplied Sciences2076-34172021-08-01117710771010.3390/app11167710Soft Sensor Transferability: A SurveyFrancesco Curreri0Luca Patanè1Maria Gabriella Xibilia2Department of Mathematics and Computer Science, University of Palermo, 90123 Palermo, ItalyDepartment of Engineering, University of Messina, 98166 Messina, ItalyDepartment of Engineering, University of Messina, 98166 Messina, ItalySoft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of process hard-to-measure variables based on their relation with easily accessible ones. They allow implementation of real-time control and monitoring of the plants and present other advantages in terms of costs and efforts. Given the complexity of industrial processes, these models are generally designed with data-driven black-box machine learning (ML) techniques. ML methods work well only if the data on which the prediction is performed share the same distribution with the one on which the model was trained. This is not always possible, since plants can often show new working conditions. Even similar plants show different data distributions, making SSs not scalable between them. Models should then be created from scratch with highly time-consuming procedures. Transfer Learning (TL) is a field of ML that re-uses the knowledge from one task to learn a new different, but related, one. TL techniques are mainly used for classification tasks. Only recently TL techniques have been adopted in the SS field. The proposed survey reports the state of the art of TL techniques for nonlinear dynamical SSs design. Methods and applications are discussed and the new directions of this research field are depicted.https://www.mdpi.com/2076-3417/11/16/7710soft sensorinferential modeldynamical modelprocess system monitoringsystem identificationmachine learning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Francesco Curreri Luca Patanè Maria Gabriella Xibilia |
spellingShingle |
Francesco Curreri Luca Patanè Maria Gabriella Xibilia Soft Sensor Transferability: A Survey Applied Sciences soft sensor inferential model dynamical model process system monitoring system identification machine learning |
author_facet |
Francesco Curreri Luca Patanè Maria Gabriella Xibilia |
author_sort |
Francesco Curreri |
title |
Soft Sensor Transferability: A Survey |
title_short |
Soft Sensor Transferability: A Survey |
title_full |
Soft Sensor Transferability: A Survey |
title_fullStr |
Soft Sensor Transferability: A Survey |
title_full_unstemmed |
Soft Sensor Transferability: A Survey |
title_sort |
soft sensor transferability: a survey |
publisher |
MDPI AG |
series |
Applied Sciences |
issn |
2076-3417 |
publishDate |
2021-08-01 |
description |
Soft Sensors (SSs) are inferential dynamical models employed in industries to perform prediction of process hard-to-measure variables based on their relation with easily accessible ones. They allow implementation of real-time control and monitoring of the plants and present other advantages in terms of costs and efforts. Given the complexity of industrial processes, these models are generally designed with data-driven black-box machine learning (ML) techniques. ML methods work well only if the data on which the prediction is performed share the same distribution with the one on which the model was trained. This is not always possible, since plants can often show new working conditions. Even similar plants show different data distributions, making SSs not scalable between them. Models should then be created from scratch with highly time-consuming procedures. Transfer Learning (TL) is a field of ML that re-uses the knowledge from one task to learn a new different, but related, one. TL techniques are mainly used for classification tasks. Only recently TL techniques have been adopted in the SS field. The proposed survey reports the state of the art of TL techniques for nonlinear dynamical SSs design. Methods and applications are discussed and the new directions of this research field are depicted. |
topic |
soft sensor inferential model dynamical model process system monitoring system identification machine learning |
url |
https://www.mdpi.com/2076-3417/11/16/7710 |
work_keys_str_mv |
AT francescocurreri softsensortransferabilityasurvey AT lucapatane softsensortransferabilityasurvey AT mariagabriellaxibilia softsensortransferabilityasurvey |
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