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首页> 外文期刊>Chemical Engineering Research & Design: Transactions of the Institution of Chemical Engineers >Non-linear model based predictive control through dynamic non-linear partial least squares
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Non-linear model based predictive control through dynamic non-linear partial least squares

机译:动态非线性偏最小二乘的基于非线性模型的预测控制

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The extension of model predictive control (MPC) to non-linear systems is proposed through dynamic non-linear Partial Least Squares (PLS) models. PLS has been shown to be an appropriate multivariate regression methodology for modelling noisy, correlated and/or collinear data. It has been applied extensively, within a 'static' framework, for the modelling and analysis of industrial process data. The contribution of this paper is the development of a non-linear dynamic PLS framework for applications in MPC. The non-linear dynamic PLS models make use of an error based non-linear partial least squares algorithm where the non-linear inner models are built within an AutoRegressive with eXogeneous inputs (ARX) framework. In particular, quadratic and feedforward neural network inner models are considered. The application of a dynamic PLS model within a MPC framework opens up the potential of using multivariate statistical projection based methods not only for process modelling, inferential estimation and performance monitoring, but also for model predictive control. A benchmark simulation of a pH neutralization system is used to demonstrate the application of a non-linear dynamic PLS framework for model predictive control. [References: 33]
机译:通过动态非线性偏最小二乘(PLS)模型,提出了将模型预测控制(MPC)扩展到非线性系统的方法。 PLS已被证明是用于建模嘈杂,相关和/或共线数据的合适的多元回归方法。它已在“静态”框架内广泛应用于工业过程数据的建模和分析。本文的贡献是开发了一种适用于MPC的非线性动态PLS框架。非线性动态PLS模型使用基于误差的非线性偏最小二乘算法,其中非线性内部模型是在具有异质输入的自动回归(ARX)框架内构建的。特别地,考虑了二次神经网络和前馈神经网络内部模型。在MPC框架中动态PLS模型的应用打开了使用基于多元统计投影的方法的潜力,该方法不仅用于过程建模,推断估计和性能监视,而且还用于模型预测控制。使用pH中和系统的基准仿真来演示非线性动态PLS框架在模型预测控制中的应用。 [参考:33]

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