4.7 Article

Disturbance-Encoding-Based Neural Hammerstein-Wiener Model for Industrial Process Predictive Control

Journal

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSMC.2020.3004382

Keywords

Predictive models; Process control; Industries; Neural networks; Feeds; Slurries; Steady-state; Disturbance attenuation; Hammerstein-Wiener (HW); industrial process control; long short-term memory (LSTM); model predictive control (MPC); neural network

Funding

  1. National Natural Science Foundation of China
  2. National Science Fund for Distinguished Young Scholars of China [61725306]
  3. National Natural Science Foundation of China [61771492, 61472134, U1701261]

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This study proposes a model predictive control technique based on the HW model, which improves the control reliability by introducing a disturbance encoder and an observer. The superiority and effectiveness of the proposed method have been demonstrated through simulation and industrial application.
The control reliability of model predictive control is largely determined by the accuracy of the process model. The Hammerstein-Wiener (HW) model is an important nonlinear process modeling technique that has obtained great success in some process industries. Disturbances result in model mismatch and steady-state deviation, but little effort has been devoted to the coupling effects and inertial information in measured disturbances. In addition, few studies try to construct a disturbance observer (DO) to alleviate unmeasured disturbances. The present work proposes prompt disturbance rejection. First, a spatial-temporal long short-term memory-based measurable disturbance encoder is devised to analyze time-series information from measured disturbances and their coupling effects. The encoder can further clarify the status of inertial interference components and the disturbance intensity. Second, a DO is designed to estimate and attenuate unmeasured disturbances. Third, to create the new HW network, which is improved by integrating the disturbance encoder and observer differential, neural networks are used as nonlinear parts. Finally, a model predictive controller based on this improved model is constructed for real-time industrial process control. Simulation comparison experiments have demonstrated the superiority of the proposed methods. Real industry application in the country's largest lead-zinc froth flotation plant in China validated the proposed model's effectiveness in controlling chemical reagents.

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