2023
DOI: 10.1109/tim.2023.3291771
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Development of an Adversarial Transfer Learning-Based Soft Sensor in Industrial Systems

Abstract: Data-driven soft sensors are usually used to predict quality-related but hard-to-measure variables in industrial systems. However, the acceptable prediction performance mainly relies on the premise that training data are sufficient for model training. To acquire more training data, this paper proposes an adversarial transfer learning (ATL) methodology to enhance soft sensor learning. Firstly, a hierarchical transfer learning algorithm, which integrates a feature extraction method with model-based transfer lear… Show more

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Cited by 5 publications
(2 citation statements)
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“…However, as industrial demands evolve, the working conditions for the fermentation process of Pichia pastoris are subject to change, leading to a noticeable increase in the predictive error of conventional models. Consequently, researchers have proposed soft sensor modeling methods based on transfer learning, which have proven effective in mitigating model errors amidst changing conditions [9][10][11]28,29]. Further, this paper hypothesizes that with limited labeled samples available from a single-source working condition, knowledge transfer from just one source is insufficient to effectively enhance predictive performance under target conditions.…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…However, as industrial demands evolve, the working conditions for the fermentation process of Pichia pastoris are subject to change, leading to a noticeable increase in the predictive error of conventional models. Consequently, researchers have proposed soft sensor modeling methods based on transfer learning, which have proven effective in mitigating model errors amidst changing conditions [9][10][11]28,29]. Further, this paper hypothesizes that with limited labeled samples available from a single-source working condition, knowledge transfer from just one source is insufficient to effectively enhance predictive performance under target conditions.…”
Section: Discussionmentioning
confidence: 99%
“…The effectiveness of the proposed method was validated through an industrial multiphase flow process. Li et al [10] proposed an adversarial transfer learning methodology to enhance soft sensor learning to acquire more training data. The effectiveness of the proposed soft sensor and the rationale analyzer was validated in a simulated wastewater plant, benchmark simulation model No.2, and a full-scale oxidation ditch wastewater plant.…”
Section: Introductionmentioning
confidence: 99%