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A Kernel-based Approach to MIMO LPV State-space Identification and Application to a Nonlinear Process System

机译:基于内核的MIMO LPV状态空间识别和应用于非线性过程系统的方法

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This paper first describes the development of a nonparametric identification method for linear parameter-varying (LPV) state-space models and then applies it to a nonlinear process system. The proposed method uses kernel-based least-squares support vector machines (LS-SVM). While parametric identification methods require proper selection of basis functions in order to avoid over-parametrization or structural bias, the problem of variance-bias tradeoff is avoided by estimating the functional dependencies of the state-space representation on the LPV scheduling variables using measured input and output data under the LS-SVM framework. The proposed formulation allows for LS-SVM to reconstruct and uncover static, as well as dynamic dependencies on scheduling variables in multi-input multi-output (MIMO) LPV models. This is achieved by assuming that the states are measurable, which is a common scenario during online control of many chemical processes described by lumped parameter models. The proposed method does not require an explicit declaration of the feature maps of the nonlinearities of the assumed model structure; instead, it requires the selection of a nonlinear kernel function and tuning its parameters. The developed identification method is applied to a continuous stirred tank reactor (CSTR) model under realistic noise conditions. Another numerical example along with the CSTR system illustrates the performance of the proposed algorithm under both static and dynamic dependence on the scheduling variables.
机译:本文首先介绍了用于线性参数变化(LPV)状态空间模型的非参数识别方法的开发,然后将其应用于非线性过程系统。该方法使用基于内核的最小二乘支持向量机(LS-SVM)。虽然参数识别方法需要正确选择基本函数以避免过度参数或结构偏差,但是通过使用测量的输入估计LPV调度变量上的状态空间表示的功能依赖性来避免方差 - 偏差问题。 LS-SVM框架下的输出数据。所提出的配方允许LS-SVM重建和揭示静态,以及对多输入多输出(MIMO)LPV型号中的调度变量的动态依赖性。这是通过假设这些状态可测量来实现的,这是在线控制集总参数模型描述的许多化学过程的在线控制过程中的常见场景。该方法不需要明确声明假定模型结构的非线性的特征映射;相反,它需要选择非线性内核功能并调整其参数。开发的识别方法在现实噪声条件下施加到连续搅拌釜反应器(CSTR)模型。另一种数值示例以及CSTR系统示出了在对调度变量的静态和动态依赖下所提出的算法的性能。

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