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Quasi-Decentralized Networked Control of Process Systems.

机译:过程系统的拟分散网络控制。

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摘要

Modern industrial and commercial systems, such as chemical plants and manufacturing processes are large-scale dynamical systems that involve complex, distributed arrangements of interconnected subsystems which are tightly integrated through mass, energy and information flows. The traditional solution for exchanging information and control signals is point-to-point communication which involves a wire connecting the central control computer with each sensor or actuator point. As the size and complexity of industrial systems continue to grow, however, the complexity and cost of installing and maintaining hard-wired control systems become significant. These considerations, coupled with the significant growth in computing and networking abilities in recent times, have led to an increased reliance on distributed computing and process operations across computer net- works, which, compared with point-to-point cables, have many advantages. Yet, control over networks also poses a number of fundamental challenges that need to be addressed before plant operation can take full advantage of their potential. Issues such as band-width limitations, network-induced delays, data losses, signal quantization and real-time scheduling constraints challenge many of the assumptions in traditional process control theory and can degrade the overall control quality if not properly accounted for in the control system design. While these issues have been the subject of significant research work on networked control systems, the majority of research studies have focused mainly on single-unit processes using a centralized control architecture, which is not always the best choice for the structure of the controller in a plant-wide setting. By comparison, results on networked control of multi-unit plants with tightly interconnected units have been limited.;The work in this dissertation presents a methodology for the development of a resource-aware quasi-decentralized model-based control framework for plants with distributed, interconnected units that exchange information over a shared communication network. The framework brings together tools from model-based feedback control, state estimation and sensor scheduling, nonlinear and robust control, as well as hybrid system theory. The central objective is to reduce the exchange of information between the local control systems as much as possible without sacrificing the desired stability and performance properties of the overall plant. To this end, dynamic models of the interconnected units are embedded in the local control system of each unit to provide it with an estimate of the evolution of its neighbors when measurements are not transmitted through the network. The use of a model to recreate the interactions of a given unit with one of its neighbors allows the sensor suite of the neighboring unit to send its data in a discrete fashion since the model can provide an approximation of the unit's dynamics. The state of each model is then updated using the information of the corresponding unit provided by its sensors at discrete time instances to compensate for model uncertainty. Using hybrid system formulations, explicit characterization of the maximum allowable update period (i.e., minimum cross communication rate) between each control system and the sensors of its neighboring units is obtained. Techniques for handling practical implementation issues such as uncertain and nonlinear plant dynamics, incomplete and discrete state measurements, and time-varying external disturbances within the quasi-decentralized control design framework are also developed. Finally, case studies involving applications to simulated models of representative chemical plants are presented to illustrate the developed methods.
机译:现代工业和商业系统(例如化工厂和制造过程)是大规模的动力学系统,涉及相互关联的子系统的复杂,分布式布置,这些子系统通过质量,能量和信息流紧密集成。交换信息和控制信号的传统解决方案是点对点通信,其中涉及将中央控制计算机与每个传感器或执行器点连接的电线。但是,随着工业系统的规模和复杂性不断增长,安装和维护硬接线控制系统的复杂性和成本变得非常重要。这些考虑因素以及近来计算和联网功能的显着增长,导致对计算机网络的分布式计算和过程操作的依赖性增加,与点对点电缆相比,它具有许多优势。然而,对网络的控制还带来了许多基本挑战,在工厂运营可以充分利用其潜力之前,必须解决这些挑战。带宽限制,网络引起的延迟,数据丢失,信号量化和实时调度约束之类的问题挑战了传统过程控制理论中的许多假设,并且如果在控制系统中未适当考虑,可能会降低总体控制质量设计。尽管这些问题一直是网络控制系统的重要研究课题,但大多数研究主要集中在使用集中式控制体系结构的单机过程上,这对于控制单元中的控制器结构而言并不总是最佳选择。全厂范围的设置。相比之下,具有紧密互连单元的多单元工厂的网络控制的结果是有限的。本论文的工作提出了一种开发基于资源的准分散模型的分布式工厂控制模型的方法。互连的单元,它们通过共享的通信网络交换信息。该框架汇集了来自基于模型的反馈控制,状态估计和传感器调度,非线性和鲁棒控制以及混合系统理论的工具。中心目标是尽可能减少本地控制系统之间的信息交换,而又不牺牲整个工厂所需的稳定性和性能。为此,将互连单元的动态模型嵌入到每个单元的本地控制系统中,以在不通过网络传输测量值时向其提供其邻居演变的估计。使用模型来重建给定单元与其邻居之一的相互作用,可以使相邻单元的传感器套件以离散方式发送其数据,因为该模型可以提供单元动态的近似值。然后,在离散的时间点使用其传感器提供的相应单元的信息来更新每个模型的状态,以补偿模型的不确定性。使用混合系统公式,可以获得每个控制系统与其相邻单元的传感器之间的最大允许更新周期(即最小的交叉通信速率)的明确特征。还开发了用于处理实际实施问题的技术,例如不确定和非线性的工厂动力学,不完整和离散的状态测量以及准分散控制设计框架内随时间变化的外部干扰。最后,介绍了涉及代表性化学工厂模拟模型应用的案例研究,以说明开发的方法。

著录项

  • 作者

    Sun, Yulei.;

  • 作者单位

    University of California, Davis.;

  • 授予单位 University of California, Davis.;
  • 学科 Engineering Chemical.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 202 p.
  • 总页数 202
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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