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Nonlinear Model Predictive Control and Dynamic Real Time Optimization for Large-scale Processes.

机译:大规模过程的非线性模型预测控制和动态实时优化。

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摘要

This dissertation addresses some of the theoretical and practical issues in optimized operations in the process industry. The current state-of-art is to decompose the optimization into the so-called two-layered structure, including real time optimization (RTO) and advanced control. Due to model discrepancy and inconsistent time scales in different layers, this structure may render suboptimal solutions. Therefore, the dynamic real time optimization (D-RTO) or economically-oriented nonlinear model predictive control (NMPC) that directly optimizes the economic performance based on first-principle dynamic models of processes has become an emerging technology. However, the integration of the first-principle dynamic models is likely to introduce large scale optimization problems, which need to be solved online. The associated computational delay may be cumbersome for the online applications.;We first derive a first-principle dynamic model for an industrial air separation unit (ASU). The recently developed advanced step method is used to solve both set-point tracking and economically-oriented NMPC online. It shows that set-point tracking NMPC based on the first-principle model has superior performance against that with linear data-driven model. In addition, the economically-oriented NMPC generates around 6% cost reduction compared to set-point tracking NMPC. Moreover the advanced step method reduces the online computational delay by two orders of magnitude.;Then we deal with a realistic set-point tracking control scenario that requires achieving offset-free behavior in the presence of plant-model mismatch. Moreover, a state estimator is used to reconstruct the plant states from outputs. We propose two formulations using NMPC and moving horizon estimation (MHE) and we show both approaches are offset-free at steady state. Moreover, the analysis can be extended to NMPC coupled with other nonlinear observers. This strategy is implemented on the ASU process.;After that, we study the robust stability of output-feedback NMPC in the presence of plant-model mismatch. The Extended Kalman Filter (EKF), which is a widely-used technology in industry is chosen as the state estimator. First we analyze the stability of the estimation error and a separation-principle-like result indicates that the stability result is the same as the closed-loop case. We further study the impact of this estimation error on the robust stability of the NMPC.;Finally, nominal stability is analyzed for the D-RTO, i.e. economically-oriented NMPC, for cyclic processes. Moreover, two economically-oriented NMPC formulations with guaranteed nominal stability are proposed. They ensure the system converges to the optimal cyclic steady state.
机译:本文主要研究过程工业中优化操作中的一些理论和实践问题。当前的最新技术是将优化分解为所谓的两层结构,包括实时优化(RTO)和高级控制。由于模型差异和不同层中的时间尺度不一致,这种结构可能会导致次优解决方案。因此,基于流程的第一原理动态模型直接优化经济绩效的动态实时优化(D-RTO)或经济导向的非线性模型预测控制(NMPC)已成为一种新兴技术。但是,第一原理动态模型的集成可能会引入大规模优化问题,需要在线解决。对于在线应用而言,相关的计算延迟可能很麻烦。我们首先导出工业空气分离单元(ASU)的第一原理动力学模型。最近开发的高级步进方法用于在线解决设定点跟踪和面向经济的NMPC。结果表明,基于第一原理模型的设定点跟踪NMPC具有优于线性数据驱动模型的性能。此外,与设定点跟踪NMPC相比,面向经济的NMPC可使成本降低约6%。此外,先进的步进方法将在线计算延迟减少了两个数量级。然后,我们处理了一个现实的设定点跟踪控制方案,该方案要求在存在工厂模型不匹配的情况下实现无偏移行为。此外,状态估计器用于根据输出重构工厂状态。我们提出了两种使用NMPC和移动视界估计(MHE)的公式,并且我们证明了这两种方法在稳态下都是无偏移的。而且,分析可以扩展到与其他非线性观测器耦合的NMPC。此策略在ASU流程上执行。之后,我们研究了存在工厂模型不匹配的情况下输出反馈NMPC的鲁棒稳定性。扩展卡尔曼滤波器(EKF)是状态估计器,它是工业上广泛使用的技术。首先,我们分析估计误差的稳定性,并且类似分离原理的结果表明该稳定性结果与闭环情况相同。我们将进一步研究此估计误差对NMPC鲁棒稳定性的影响。最后,针对循环过程的D-RTO(即经济型NMPC)分析名义稳定性。此外,提出了两种具有保证名义稳定性的经济导向型NMPC配方。它们确保系统收敛到最佳循环稳态。

著录项

  • 作者

    Huang, Rui.;

  • 作者单位

    Carnegie Mellon University.;

  • 授予单位 Carnegie Mellon University.;
  • 学科 Engineering Chemical.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 153 p.
  • 总页数 153
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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