首页> 外文会议>2012 IEEE International Conference on Control Applications. >SOA-based platform implementing a structural modelling for large-scale system fault detection: Application to a board machine
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SOA-based platform implementing a structural modelling for large-scale system fault detection: Application to a board machine

机译:基于SOA的平台,实现用于大型系统故障检测的结构建模:在纸板机上的应用

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This paper presents a tool designed for analysing fault propagation and fault impact on large-scale process performances. The analysis is based on structural description of the process. The main physical variables are associated to each subsystem and a relational model linking these variables for all the different functioning modes of the system is determined. In large-scale systems every component must provide a certain function in order to make the overall system working satisfactorily. When a fault or a badly tuned parameter affects a control loop, the required function cannot be fulfilled which may cause a failure. Therefore, some Loop Performance Indexes (LPI) indicating if the control loops operate properly are necessary to evaluate the impact of the failure on the overall process performances represented by a high level index Key Performance Index (KPI). Structural models provide an interesting approach for the analysis of a system and also studying the impact of a fault because they only need a limited knowledge about the behaviour of the system. Generic component models can be used to describe the system architecture. At the first level different statistical tests are applied to the KPI. When a set of LPI or KPI deviate from their nominal or desired values, the elements which are source of an eventual malfunctioning can be searched in the structural graph by searching the nodes predecessors. The selected LPI are tested in their turn by mean of statistical tests. A node is declared to be “faulty” if the value of the corresponding LPI is out of the acceptable (pre defined) limits. The procedure is iterated until the last level of the model is reached. This procedure researches the possible cause of KPI value significant deviation. The procedure was applied on a board machine. In this process, the main KPI is the value of moisture of the board at the end of the production chain. The corresponding structural model which relates the moisture (to- node) to the control loops (nodes) has been developed. In order to validate the large-scale capabilities of such approach, the model has been integrated within the PREDICT's SOA(Services Oriented Archiecture) software platform: KASEM (Kowledge and Advanced Services for E-Monitoring). The platform enables to apply the “on-line” statistical test to the KPI and LPIs of the board machine and supports the iterative procedure Indeed, the iterative procedure based on the structural graph was integrated as one of the KASEM diagnostic tools with a dynamic and animated graph and used during the KASEM workflow to solve the problem.
机译:本文提出了一种工具,用于分析故障传播和故障对大规模过程性能的影响。分析基于过程的结构描述。主要的物理变量与每个子系统相关联,并且确定了将这些变量链接到系统所有不同功能模式的关系模型。在大规模系统中,每个组件必须提供某种功能,以使整个系统令人满意地工作。当故障或参数调整不当影响控制回路时,所需的功能将无法实现,从而可能导致故障。因此,需要一些表示控制回路是否正常运行的回路性能指数(LPI),以评估故障对由高水平指数关键性能指数(KPI)表示的整体过程性能的影响。结构模型为分析系统和研究故障的影响提供了一种有趣的方法,因为它们仅需要有关系统行为的有限知识。通用组件模型可用于描述系统架构。在第一级,不同的统计检验应用于KPI。当一组LPI或KPI偏离其标称值或期望值时,可以通过搜索节点的前任节点来在结构图中搜索最终导致故障的元素。所选的LPI依次通过统计测试进行测试。如果相应LPI的值超出可接受的(预定义)限制,则将节点声明为“故障”。重复该过程,直到达到模型的最后一个级别。该程序研究了KPI值显着偏差的可能原因。该程序在纸板机上进行。在此过程中,主要的KPI是生产链末端的木板水分值。已经开发了将水分(节点)与控制回路(节点)相关联的相应结构模型。为了验证这种方法的大规模功能,该模型已集成到PREDICT的SOA(面向服务的架构)软件平台:KASEM(电子监控的知识和高级服务)中。该平台能够将“在线”统计测试应用于纸板机的KPI和LPI,并支持迭代过程。的确,基于结构图的迭代过程已被集成为KASEM诊断工具之一,具有动态和动态特性。动画图,并在KASEM工作流程中用于解决问题。

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