Ensemble-based adaptive soft sensor for fault-tolerant biomass monitoring

Manuel Siegl, Vincent Brunner, Dominik Geier, Thomas Becker

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

The accuracy and precision of soft sensors depend strongly on the reliability of underlying model inputs. These inputs (particularly readings of hardware sensors) are frequently subject to faults. This study aims to develop an adaptive soft sensor capable of reliable and robust biomass concentration predictions in the presence of faulty model inputs for a Pichia pastoris bioprocess. Hence, three soft sensor submodels were developed based on three independent model inputs (base addition, CO2 production, and mid-infrared spectrum). An ensemble-based algorithm combined the submodels to form an ensemble model, that is, an adaptive soft sensor, to achieve fault-tolerant prediction. The algorithm's basic steps are as follows: the initial determination of submodel reliability is followed by selecting appropriate submodels to generate a reliable prediction via variance-based weighting of the submodels. The adaptive soft sensor demonstrated high robustness and accuracy in biomass prediction in the presence of multiple simulated sensor faults (RMSE = 0.43 g L−1) and multiple real sensor faults (RMSE = 0.70 g L−1).

Original languageEnglish
Pages (from-to)229-241
Number of pages13
JournalEngineering in Life Sciences
Volume22
Issue number3-4
DOIs
StatePublished - Mar 2022

Keywords

  • adaptive modeling
  • biomass prediction
  • ensemble-based method
  • fault tolerance
  • soft sensor

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