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A Modeling Framework for Control of Smart-Scale Tubular Polymerization Reactors - A Case Study on Nonlinear Model-based Predictive Control of an Emulsion Copolymerization Process

机译:智能规模管式聚合反应器控制的建模框架-以基于非线性模型的乳液共聚过程预测控制为例

摘要

Polymer science is the underlying topic of this master's thesis, and the main scope is to develop and deploy models for on-line optimization and control for polymerization reactors. Specifically, free-radical emulsion copolymerization processes are studied, and the connection between lab-scale experiments to validate the models and the possible usage of the models for industrial-scale applications is maintained. In the work preceding this thesis, the author studied a semi-batch reactor setup for a specific free-radical emulsion copolymerization system, and the purpose of this thesis is to extend the previously established ideas to apply for continuous tubular reactors for a similar chemical system as well.In going from batch type reactor setups, which are typically well-mixed tank reactors, to continuous type reactors with spatial distribution, the model equations are typically changed from ordinary differential equations to partial differential equations. A portion of the thesis is dedicated to establishing the model equations for a distributed system in general, and presenting various approaches to solve a system of partial differential equations. The thesis considers two approaches for this, where one is a spatial discretization method using finite differences to achieve a system of ordinary differential equations, while the other approach is based on a transformation of the variables in the coordinate system of the spatial problem. The respective residence time distributions for the developed models have been used to evaluate the mixing effects of the reactor models, in comparison with lab-scale experiments. Throughout the modeling work, the trade-off between accuracy and numerical efficiency for the models is central.The mathematical models from the work are mainly formulated in the programming/modeling language Modelica. By using some of the in-house developed software of Cybernetica AS, several test cases are simulated to demonstrate how the models perform in on-line use. In order to mimic the behavior of a real plant, so-called plant replacement models are deployed. This is done to create a (slight) discrepancy between the "real" behavior of the reactor and the model on which the controller bases its calculations. In such cases, the need for an on-line estimator becomes evident, and for this thesis a Kalman filter type estimator is deployed. A theoretical foundation is established for both on-line estimation and control using model-based predictive control. The properties that are given the most attention in the context of control are the reactor outlet temperature and the conversion of monomer species through the reactor.The results indicate that in order to encapture the mixing effects of a tubular reactor, as governed by the experiments, the models will require very refined discretization schemes in space, which are hard to obtain without compromising the numerical efficiency of the models. Despite of these observations, the tests show that models with a coarse spatial discretization tend to perform surprisingly well for the purpose of controlling the reactor temperature and the conversion of monomer. When plant replacement models are being deployed, the importance of an active and well-functioning estimator is demonstrated. Both the estimator and the controller are tuned in the simulations to yield as effective performance as possible for setpoint changes etc. In addition, test simulations are conducted in which the cooling jacket of the reactor is segmented to yield two separate degrees of freedom with respect to the cooling of the reactor. This provides a way to control the temperature dependent kinetics of the reactor indirectly, in addition to the actual reactor temperature.
机译:聚合物科学是该硕士学位论文的基础主题,主要范围是开发和部署用于在线优化和控制聚合反应器的模型。具体而言,研究了自由基乳液共聚过程,并保持了实验室规模的实验之间的联系,以验证模型与模型在工业规模应用中的可能用途。在本文之前的工作中,作者研究了用于特定自由基乳液共聚系统的半间歇式反应器装置,并且本文的目的是扩展先前建立的思想,以将其应用于类似化学系统的连续管式反应器从通常是充分混合的釜式反应器的间歇式反应器装置到具有空间分布的连续式反应器,模型方程通常从常微分方程变为偏微分方程。本文的一部分致力于一般地为分布式系统建立模型方程,并提出解决偏微分方程系统的各种方法。本文为此考虑了两种方法,一种是使用有限差分实现常微分方程组的空间离散化方法,另一种方法是基于空间问题坐标系中变量的转换。与实验室规模的实验相比,已开发模型的各自停留时间分布已用于评估反应器模型的混合效果。在整个建模工作中,模型的准确性和数值效率之间的权衡是至关重要的。工作中的数学模型主要以编程/建模语言Modelica来表示。通过使用Cyber​​netica AS的一些内部开发的软件,模拟了几个测试用例,以演示模型如何在线使用。为了模拟真实植物的行为,部署了所谓的植物替换模型。这样做是为了在反应器的“实际”行为与控制器基于其进行计算的模型之间产生(轻微)差异。在这种情况下,对在线估计器的需求变得显而易见,为此,本文采用了卡尔曼滤波器类型的估计器。使用基于模型的预测控制为在线估计和控制建立了理论基础。在控制方面最受关注的特性是反应器出口温度和单体种类通过反应器的转化率。结果表明,为了获得管式反应器的混合效果,应根据实验进行控制,这些模型将需要非常精细的空间离散方案,而这在不影响模型的数值效率的情况下很难获得。尽管有这些观察结果,但测试表明,出于控制反应器温度和单体转化的目的,具有较大空间离散的模型往往表现出令人惊讶的良好性能。当部署工厂替换模型时,将证明活跃且功能良好的估算器的重要性。估算器和控制器都在仿真中进行了调整,以针对设定值变化等产生尽可能有效的性能。此外,还进行了测试仿真,其中将反应堆的冷却套分段以相对于两个独立的自由度反应堆的冷却。除了实际的反应器温度之外,这提供了一种间接控制反应器温度依赖性动力学的方法。

著录项

  • 作者

    Gjertsen Fredrik;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
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