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Techniques for predictor design in multivariable predictive control

机译:多变量预测控制中的预测器设计技术

摘要

Model Based Predictive Control (MBPC) or only Predictive Control is one of the control methods which have developed considerably over a few past years. It is mostly based on discrete models of controlled systems. Model of a controlled system is used for computation of predictions of the systems output on the basis of past inputs, outputs and states and designed sequence of future control increments. This paper is focused in comparison of various approaches to computation of multi-step-ahead predictions using a multivariable input - output model. Computational aspects of derivation of predictions can be limiting especially in adaptive predictive control. Many processes are affected by external disturbances that can be measured. Inclusion of measurable disturbances into prediction equations for different approaches was also elaborated.
机译:基于模型的预测控制(MBPC)或仅预测控制是在过去几年中已得到显着发展的一种控制方法。它主要基于受控系统的离散模型。受控系统的模型用于根据过去的输入,输出和状态以及未来控制增量的设计顺序来计算系统输出的预测。本文着重比较使用多变量输入输出模型计算多步提前预测的各种方法。预测推导的计算方面可能会受到限制,尤其是在自适应预测控制中。许多过程受到可以测量的外部干扰的影响。还阐述了将可测量的扰动纳入不同方法的预测方程式。

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