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Steady-state detection of evaporation process based on multivariate data fusion

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  • Xiaoshan Qian
  • Lisha Xu
  • Xingli Cui

Abstract

In this paper, we introduce an innovative multivariable data fusion strategy for adaptive steady-state detection, specifically tailored for the alumina evaporation process. This approach is designed to counteract the production instabilities that often arise from frequent alterations in production conditions. At the core of our strategy is the application of an adaptive denoising algorithm based on the Gaussian filter, which adeptly eliminates erroneous data from selected variables without compromising the fidelity of the original signal. Subsequently, we implement a multivariable R-test methodology, integrated with the adaptive Gaussian filter, to conduct a thorough and precise steady-state detection via data fusion. The efficiency of this method is rigorously validated using actual data from industrial processes.Our findings reveal that this strategy markedly enhances the stability and efficiency (by 10%) of the alumina evaporation process, thereby offering a substantial contribution to the field. Moreover, the versatility of this approach suggests its potential applicability in a wide range of industrial settings, where similar production challenges prevail. This study not only advances the domain of process control but also underscores the significance of adaptive strategies in managing complex, variable-driven industrial operations.

Suggested Citation

  • Xiaoshan Qian & Lisha Xu & Xingli Cui, 2024. "Steady-state detection of evaporation process based on multivariate data fusion," PLOS ONE, Public Library of Science, vol. 19(9), pages 1-19, September.
  • Handle: RePEc:plo:pone00:0309652
    DOI: 10.1371/journal.pone.0309652
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