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Robust control of large-scale nonlinear constrained systems.

机译:大规模非线性约束系统的鲁棒控制。

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摘要

Current applications of nonlinear model predictive control algorithms are restricted to small-scale processes, due mainly to the computational difficulties encountered when trying to solve the non-convex nonlinear optimization problem on-line. Also, there is no complete procedure in synthesizing a nonlinear model predictive controller that guarantees stability when there is model uncertainty and when the state is not completely measured. Although there are plenty of results available for the nominal closed-loop stability of various NMPC algorithms, few results are available on the robust stability of constrained nonlinear systems. We have proposed a cascade NMPC algorithm for large-scale systems. This control algorithm consists of two levels where the low-level controller guarantees robust stability while the high-level controller optimizes nominal performance subject to robust stability constraint. The low-level controller is an output feedback controller while the high-level controller is a state feedback controller. There are several characteristics to be noticed about this algorithm: it is computationally efficient and is always feasible to be implemented on-line; it uses a closed-loop control strategy; it guarantees robust asymptotic stability with various kinds of model uncertainties, if such a controller exists.; For model uncertainty description, we consider both parametric and structural uncertainty. We develop an uncertainty description that can handle both parametric and structural uncertainties in a uniform manner. We have applied the proposed algorithm to an industrial system consisting of a co-polymerization reactor with recycle. It is a reasonably complex, highly nonlinear and poorly modeled (i.e., uncertain) process. Simulation results show the feasibility of implementing this algorithm on realistic industrial systems where model uncertainties always exist.
机译:非线性模型预测控制算法的当前应用仅限于小规模过程,这主要是由于尝试在线解决非凸非线性优化问题时遇到的计算困难。而且,没有完整的过程可用于合成非线性模型预测控制器,该模型可在存在模型不确定性和状态未完全测量时保证稳定性。尽管对于各种NMPC算法的标称闭环稳定性,有大量可用的结果,但在约束非线性系统的鲁棒稳定性方面,几乎没有可用的结果。我们提出了一种用于大型系统的级联NMPC算法。该控制算法由两个级别组成,其中低级控制器保证鲁棒的稳定性,而高级控制器根据鲁棒稳定性约束来优化标称性能。低电平控制器是输出反馈控制器,而高层控制器是状态反馈控制器。该算法有几个特点要注意:它计算效率高,在线实施总是可行的;它采用闭环控制策略;如果存在这样的控制器,它可以保证具有各种模型不确定性的鲁棒渐近稳定性。对于模型不确定性描述,我们同时考虑了参数不确定性和结构不确定性。我们开发了一种不确定性描述,可以以统一的方式处理参数性和结构性不确定性。我们已经将所提出的算法应用于由带循环的共聚反应器组成的工业系统。这是一个相当复杂,高度非线性且建模不良(即不确定)的过程。仿真结果表明,在始终存在模型不确定性的实际工业系统上实施该算法的可行性。

著录项

  • 作者

    Zhang, Weihua.;

  • 作者单位

    University of Massachusetts Amherst.;

  • 授予单位 University of Massachusetts Amherst.;
  • 学科 Engineering Chemical.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 102 p.
  • 总页数 102
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 化工过程(物理过程及物理化学过程);
  • 关键词

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