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Nonparametric Nonlinear Model Predictive Control

机译:非参数非线性模型预测控制

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Model Predictive Control (MPC) has recently found wide acceptance in industrial applications, but its potential has been much impeded by linear models due to the lack of a similarly accepted nonlinear modeling or data-based technique. Aimed at solving this problem, the paper addresses three issues: (ⅰ) extending second-order Volterra nonlinear MPC (NMPC) to higher-order for improved prediction and control; (ⅱ) formulating NMPC directly with plant data without needing for parametric modeling, which has hindered the progress of NMPC; and (ⅲ) incorporating an error estimator directly in the formulation and hence eliminating the need for a nonlinear state observer. Following analysis of NMPC objectives and existing solutions, nonparametric NMPC is derived in discrete-time using multidimensional convolution between plant data and Volterra kernel measurements. This approach is validated against the benchmark van de Vusse nonlinear process control problem and is applied to an industrial polymerization process by using Volterra kernels of up to the third order. Results show that the nonparametric approach is very efficient and effective and considerably outperforms existing methods, while retaining the original data-based spirit and characteristics of linear MPC.
机译:模型预测控制(MPC)最近在工业应用中得到了广泛的接受,但是由于缺乏类似接受的非线性建模或基于数据的技术,线性预测极大地阻碍了它的潜力。为了解决这个问题,本文解决了三个问题:(ⅰ)将二阶Volterra非线性MPC(NMPC)扩展到高阶以改善预测和控制; (ⅱ)直接用工厂数据制定NMPC,而无需进行参数建模,这阻碍了NMPC的发展; (ⅲ)直接在公式中加入误差估计器,从而消除了对非线性状态观测器的需求。在分析了NMPC目标和现有解决方案之后,使用植物数据和Volterra内核测量之间的多维卷积,在离散时间内导出了非参数NMPC。该方法针对基准van de Vusse非线性过程控制问题进行了验证,并通过使用高达三阶的Volterra核将其应用于工业聚合过程。结果表明,非参数方法非常有效,并且在保持原有的基于数据的精神和线性MPC特征的同时,大大优于现有方法。

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