Abstract:
The temperature of rotary kiln, as one of the essential equipment in zinc smelting process, determines the product quality and resource utilization. However, since rotary...Show MoreMetadata
Abstract:
The temperature of rotary kiln, as one of the essential equipment in zinc smelting process, determines the product quality and resource utilization. However, since rotary kiln is a large-scale and highly coupled system, there are plenty of variables affecting the rotary kiln temperature, bringing too much redundant information to describe rotary kiln dynamics. In addition, due to the variations in raw materials, production load, and market demand, there exist various operation conditions, making it difficult to achieve stability control of the rotary kiln temperature with traditional control methods. To solve these problems, an error-triggered adaptive model predictive control (ET-AMPC) is proposed in this article. Specifically, since rotary kiln temperature is hard to regulate due to redundancy among variables and strong nonlinearity, an orthogonal maximum mutual information coefficient feature selection (OMICFS) method is first proposed to determine vital variables affecting temperature most. Then, aiming at the problem of changing operating conditions of rotary kilns, an ET-AMPC method is proposed, which can precisely adapt to different operating conditions and achieve stability control. Finally, experiments on a numerical simulation case and an industrial rotary kiln show the strength and reliability of the proposed method, which reduces 10%–20% trajectory tracking error in the period of operating condition changing and improves the control accuracy effectively.
Published in: IEEE Transactions on Control Systems Technology ( Volume: 31, Issue: 6, November 2023)
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- IEEE Keywords
- Index Terms
- Prediction Model ,
- Operating Conditions ,
- Multiple Conditions ,
- Adaptive Control ,
- Adaptive Model ,
- Predictive Control ,
- Model Predictive Control ,
- Adaptive Model Predictive Control ,
- Multiple Operating Conditions ,
- Raw Materials ,
- Numerical Simulations ,
- Selection Method ,
- Mutual Information ,
- Market Demand ,
- Accurate Control ,
- Feature Selection Methods ,
- Prediction Error ,
- Input Variables ,
- Nonlinear Systems ,
- Model Input ,
- Control Input ,
- Data-driven Models ,
- Zinc Oxide ,
- Unknown Status ,
- Canonical Correlation Analysis ,
- Redundant Variables ,
- Model Mismatch ,
- Predictive Control Strategy ,
- System Output ,
- Forgetting Factor
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Prediction Model ,
- Operating Conditions ,
- Multiple Conditions ,
- Adaptive Control ,
- Adaptive Model ,
- Predictive Control ,
- Model Predictive Control ,
- Adaptive Model Predictive Control ,
- Multiple Operating Conditions ,
- Raw Materials ,
- Numerical Simulations ,
- Selection Method ,
- Mutual Information ,
- Market Demand ,
- Accurate Control ,
- Feature Selection Methods ,
- Prediction Error ,
- Input Variables ,
- Nonlinear Systems ,
- Model Input ,
- Control Input ,
- Data-driven Models ,
- Zinc Oxide ,
- Unknown Status ,
- Canonical Correlation Analysis ,
- Redundant Variables ,
- Model Mismatch ,
- Predictive Control Strategy ,
- System Output ,
- Forgetting Factor
- Author Keywords