A novel LSSVM-L Hammerstein model structure for system identification and nonlinear model predictive control of CSTR servo and regulatory control

IF 1 Q4 ENGINEERING, CHEMICAL
A. Naregalkar, Subbulekshmi Durairaj
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引用次数: 3

Abstract

Abstract A continuous stirred tank reactor (CSTR) servo and the regulatory control problem are challenging because of their highly non-linear nature, frequent changes in operating points, and frequent disturbances. System identification is one of the important steps in the CSTR model-based control design. In earlier work, a non-linear system model comprises a linear subsystem followed by static nonlinearities and represented with Laguerre filters followed by the LSSVM (least squares support vector machines). This model structure solves linear dynamics first and then associated nonlinearities. Unlike earlier works, the proposed LSSVM-L (least squares support vector machines and Laguerre filters) Hammerstein model structure solves the nonlinearities associated with the non-linear system first and then linear dynamics. Thus, the proposed Hammerstein’s model structure deals with the nonlinearities before affecting the entire system, decreasing the model complexity and providing a simple model structure. This new Hammerstein model is stable, precise, and simple to implement and provides the CSTR model with a good model fit%. Simulation studies illustrate the benefit and effectiveness of the proposed LSSVM-L Hammerstein model and its efficacy as a non-linear model predictive controller for the servo and regulatory control problem.
一种新的LSSVM-L Hammerstein模型结构用于CSTR伺服调节控制系统辨识和非线性模型预测控制
摘要连续搅拌槽式反应器(CSTR)具有高度非线性、工作点变化频繁、扰动频繁等特点,伺服及调节控制问题具有挑战性。系统辨识是基于CSTR模型的控制设计的重要步骤之一。在早期的工作中,非线性系统模型包括一个线性子系统,然后是静态非线性,用LSSVM(最小二乘支持向量机)和Laguerre滤波器表示。该模型结构首先解决线性动力学问题,然后解决相关的非线性问题。与早期的工作不同,提出的LSSVM-L(最小二乘支持向量机和拉盖尔滤波器)Hammerstein模型结构首先解决与非线性系统相关的非线性问题,然后解决线性动力学问题。因此,所提出的Hammerstein模型结构在影响整个系统之前就处理了非线性,降低了模型的复杂性,提供了一个简单的模型结构。这种新的Hammerstein模型稳定、精确、易于实现,并为CSTR模型提供了良好的模型拟合%。仿真研究表明了所提出的LSSVM-L Hammerstein模型的优点和有效性,以及它作为伺服和调节控制问题的非线性模型预测控制器的有效性。
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来源期刊
Chemical Product and Process Modeling
Chemical Product and Process Modeling ENGINEERING, CHEMICAL-
CiteScore
2.10
自引率
11.10%
发文量
27
期刊介绍: Chemical Product and Process Modeling (CPPM) is a quarterly journal that publishes theoretical and applied research on product and process design modeling, simulation and optimization. Thanks to its international editorial board, the journal assembles the best papers from around the world on to cover the gap between product and process. The journal brings together chemical and process engineering researchers, practitioners, and software developers in a new forum for the international modeling and simulation community. Topics: equation oriented and modular simulation optimization technology for process and materials design, new modeling techniques shortcut modeling and design approaches performance of commercial and in-house simulation and optimization tools challenges faced in industrial product and process simulation and optimization computational fluid dynamics environmental process, food and pharmaceutical modeling topics drawn from the substantial areas of overlap between modeling and mathematics applied to chemical products and processes.
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