A Novel Spatio-Temporal Adaptive Prediction Modeling Strategy for Industrial Production Process.

IEEE Trans. Instrum. Meas.(2023)

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摘要
Evaporation is a key process for recycling resources and reducing the environmental pollution in alumina production. Its outlet liquid material concentration is a significant production indicator for evaluating evaporation quality and also an important basis for adjusting evaporation operation parameters. The quality detection of sodium aluminate solution, however, lags behind, and the delayed production information affects the accuracy of optimization and control. Therefore, to achieve efficient and green production, a novel spatio-temporal prediction model based on mutual information (MI) is presented in this article. First, data reconciliation is applied for preprocessing to obtain high-quality process production information. Besides, the process mechanism model is constructed by using the process knowledge and balance principle. By taking into account the nonlinearity and time-varying characteristics, a spatio-temporal data-driven model with MI and moving window (MW) is established for mechanism error compensation. Finally, an industrial evaporation process is applied to illustrate the feasibility of the proposed prediction model, and more than 90% prediction error within the 2% error range, which demonstrates that the proposed prediction model improves the prediction condition and performance effectively.
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关键词
Predictive models,Production,Adaptation models,Liquids,Process control,Data models,Quality assessment,Data preprocessing,data-driven model,error compensation,evaporation industrial production process,mechanism modeling
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