Smith predictor-based PI control of a wet granulation process

T. Shaqarin
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引用次数: 0

Abstract

The need for prediction and reference updating in feedback control of a wet granulation process is addressed. The granulation process is often modeled as a multi-input multi-output (MIMO) linear model with dead-time. Industrial implementation of granulation process poses strict constraints on the process inputs & outputs. The presence of dead-time and the physical necessity of the input-output constraints are the key challenges of the wet granulation control. These challenges motivated the use of model predictive control (MPC) for such processes. In this work, a Smith predictor-based proportional-integral (PI) controller is designed for the dead-time compensation. Accompanied with the reference updating method to handle the physical constraints. The regulation and reference tracking control problems are assessed via closed-loop simulations of the wet granulation model. The ability of the proposed control approach of dead-time compensation and coping with input/output constraints is rigorously proved. The current approach is compared to MPC of a similar granulation process and found superior in terms of output stability, performance and reference tracking.
基于Smith预测的湿制粒过程PI控制
讨论了湿制粒过程反馈控制中预测和参考更新的需要。造粒过程通常被建模为具有死区时间的多输入多输出(MIMO)线性模型。造粒工艺的工业实施对工艺的投入和产出有严格的限制。死区时间的存在和输入输出约束的物理必要性是湿制粒控制的关键挑战。这些挑战促使对此类过程使用模型预测控制(MPC)。本文设计了一种基于Smith预测器的比例积分(PI)控制器用于死区补偿。伴随着引用更新方法来处理物理约束。通过对湿造粒模型的闭环仿真,评估了调节和参考跟踪控制问题。严格证明了该控制方法的死区补偿和处理输入/输出约束的能力。将目前的方法与类似造粒过程的MPC进行比较,发现在输出稳定性,性能和参考跟踪方面优于MPC。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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