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Improving the performance of globalized dual heuristic programming for fault tolerant control through an online learning supervisor

机译:通过在线学习管理器提高用于容错控制的全球化双重启发式编程的性能

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An advanced reconfigurable controller enhanced by a multiple model architecture is proposed as a tool to achieve fault tolerance in complex nonlinear systems. The most complete adaptive critic design, globalized dual heuristic programming (GDHP), constitutes a highly flexible nonlinear adaptive controller responsible for the generation of new control solutions for novel plant dynamics introduced by unknown faults. The main contribution of the presented work focuses on a novel fault tolerant control supervisor. Working on a higher hierarchical level, the proposed supervisor makes use of two quality indices to perform fault detection, identification and isolation based on the knowledge stored in a dynamic model bank (DMB). In the event of abrupt known faults, such knowledge is then used to greatly reduce the reconfiguration time of the GDHP controller. The synergy of the proposed supervisor and GDHP goes beyond, as solutions designed by the controller to previously unknown faults are autonomously added to the model bank. The fine interrelations between the algorithm's subsystems and its advanced capabilities are illustrated through extensive numerical simulations of a single-input single-output (SISO) linear system and of a multiple-input multiple-output (MIMO) nonlinear system, both subject to a series of fault scenarios involving expected and unexpected, abrupt and incipient faults. Note to Practitioners-The raising complexity of physical plants and control missions inevitably leads to increasing occurrence, diversity and severity of faults. Take automated production process as an example, the extent of time a plant is capable of maintaining acceptable performance levels is now considered to be the single factor with the highest impact on profitability. For a growing number of plants, it has become impractical to list all possible fault scenarios in order to take the necessary steps to assure continuous healthy operation. Therefore, it is now essential to have a control algorithm dedicated to the provision of tailored control solutions capable of maintaining stability and as much performance as possible during the occurrence of faults. This is the goal of fault tolerant control. In the presented paper, the most complete adaptive critic design, globalized dua-l heuristic programming (GDHP), is responsible for the generation of new control solutions for novel plant dynamics introduced by faults unknown at design time. A highly flexible nonlinear adaptive controller, GDHP is capable of dealing with both abrupt and incipient (gradually changing dynamics) faults. Working on a higher hierarchical level, a novel fault supervisor is introduced which makes use of two quality indices to perform fault detection, identification and isolation based on the knowledge stored in a dynamic model bank (DMB). In the event of abrupt known faults, such knowledge is then used to greatly reduce the convergence time of the GDHP controller. The synergy of the proposed supervisor and GDHP goes further, as solutions designed by the controller to previously unknown faults are autonomously added to the model bank in fact allowing the supervisor to learn new fault scenarios and their solutions as they occur. The fine interrelations between the algorithm's subsystems and its advanced capabilities are illustrated through extensive numerical simulations.
机译:提出了一种通过多模型体系结构增强的高级可重构控制器,作为在复杂非线性系统中实现容错的工具。全球化的双重启发式编程(GDHP)是最完整的自适应批评家设计,它构成了一个高度灵活的非线性自适应控制器,负责为未知故障引入的新型工厂动态生成新的控制解决方案。提出的工作的主要贡献集中在一种新颖的容错控制管理器上。在更高的层次上工作,建议的主管根据存储在动态模型库(DMB)中的知识,利用两个质量指标来执行故障检测,识别和隔离。在突然发生已知故障的情况下,此类知识可用于大大减少GDHP控制器的重新配置时间。提议的主管和GDHP的协同作用已超越,因为控制器针对先前未知故障设计的解决方案将自动添加到模型库中。通过对单输入单输出(SISO)线性系统和多输入多输出(MIMO)非线性系统进行广泛的数值模拟,说明了算法子系统与高级功能之间的精细关系,二者均受一系列影响。涉及预期和意外,突然和初期故障的故障场景。给从业者的注意-物理工厂和控制任务的复杂性不可避免地导致故障的发生,多样性和严重性的增加。以自动化生产过程为例,工厂能够维持可接受的性能水平的时间范围现在被认为是对利润率影响最大的单个因素。对于越来越多的工厂,列出所有可能的故障情况以采取必要步骤来确保持续健康运行已变得不切实际。因此,现在有必要提供一种专用于提供量身定制的控制解决方案的控制算法,该解决方案能够在故障发生期间保持稳定性和尽可能多的性能。这是容错控制的目标。在本文中,最完整的自适应批评家设计,全球化的双重启发式编程(GDHP)负责为设计时未知的故障所引入的新型工厂动态生成新的控制解决方案。 GDHP是一种高度灵活的非线性自适应控制器,能够处理突然和早期(逐渐变化的动态)故障。在更高的层次上工作,引入了一种新颖的故障管理程序,该程序使用两个质量指标基于存储在动态模型库(DMB)中的知识执行故障检测,识别和隔离。如果发生已知故障,则可以使用此类知识来大大减少GDHP控制器的收敛时间。拟议的主管和GDHP的协同作用进一步提高,因为控制器针对先前未知故障设计的解决方案会自动添加到模型库中,实际上使主管可以了解新的故障场景及其解决方案。通过广泛的数值模拟,说明了算法子系统与高级功能之间的精细关系。

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