A practical approach of control of real time nonlinear process plant using Multiple Model Predictive Control

Tuan Hung Nguyen, I. Ismail, N. Saad, Abdelraheem Faisal, M. Irfan
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引用次数: 3

Abstract

This paper presents a practical approach of Multiple Model Predictive Control (MMPC) to deal with the nonlinearity of a process plant. The regulation of the nonlinear system over a wide range of operation is handled by a number of linear local MPCs, each is designed based on a local State Space model which describes the dynamic characteristics of the system in a certain level of operation. At each certain time of operation, only one local MPC is active while others are in standby mode and switching among the local MPCs is taken place when the system changes its working condition. In order to produce a “bumpless transfer” during the switching, a Feedback of External Manipulated Variable (FEMV) is provided to the all local MPC controllers. The proposed method is applied to real time Gaseous Pilot Plant and results from the test show that the proposed MMPC improves the performance of nonlinear control system.
多模型预测控制是一种实时非线性过程控制的实用方法
提出了一种实用的多模型预测控制(MMPC)方法来处理过程对象的非线性问题。非线性系统在大范围内运行的调节是由许多线性局部mpc处理的,每个mpc都是基于局部状态空间模型设计的,该模型描述了系统在一定运行水平下的动态特性。每次运行时,只有一个本地MPC处于活动状态,其他MPC处于备用状态,当系统改变工作状态时,本地MPC之间进行切换。为了在切换过程中产生“无颠簸传输”,向所有本地MPC控制器提供了外部操纵变量反馈(FEMV)。将该方法应用于实时气体中试装置,测试结果表明,该方法改善了非线性控制系统的性能。
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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