4.8 Article

Domain Adaptation Mixture of Gaussian Processes for Online Soft Sensor Modeling of Multimode Processes When Sensor Degradation Occurs

Journal

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
Volume 18, Issue 7, Pages 4654-4664

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2021.3120509

Keywords

Degradation; Gaussian processes; Adaptation models; Robustness; Informatics; Data models; Transfer learning; Gaussian domain adaptation (DA); mixture of Gaussian processes (MGP); robust soft sensor; sensor degradation; transfer learning

Funding

  1. Key Research and Development Program of Guangdong [2020B0101050001]
  2. National Key Research and Development Program of China [2017YFA0700300]
  3. Key Research and Development Program of Zhejiang Province [2021C01151]

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This article proposes a robust domain adaptation method to mitigate the negative effect of sensor degradation on soft sensor modeling. By decomposing industrial data into Gaussian domains, a domain discrepancy indicator is designed for domain adaptation and process mode recognition. Furthermore, a domain mapping is applied to correct the drifted online input data, enhancing the robustness of the soft sensor.
Sensor degradation seriously hinders the practical application of soft sensors. To reduce the negative effect of sensor degradation, in this article, we propose a robust domain adaptation mixture of Gaussian processes (DA-MGP) for online soft sensor modeling of multimode processes. Based on the decomposition of industrial data into a group of Gaussian domains, Gaussian domain discrepancy (GDD) is designed for domain adaptation and process mode recognition. After recognizing the process mode based on GDD, a Gaussian domain adaptation is presented to correct the drifted online input data by domain mapping, which can significantly improve the robustness of the soft sensor against sensor degradation. Furthermore, the domain mapping matrix is utilized as a transferred basis function for a local transferred Gaussian process component, which is used for robust soft sensor modeling. Additionally, an online block processing framework is adopted when the DA-MGP-based soft sensor is applied in online quality prediction. Finally, the TE benchmark process and a real industrial polypropylene process are employed to verify the effectiveness of the proposed method. In the designed five cases of sensor degradation, the DA-MGP-based soft sensor shows its strong robustness against sensor degradation.

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