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Automated maintenance path generation with Bayesian networks, influence diagrams, and timed failure propagation graphs

机译:自动维护路径生成与贝叶斯网络,影响图和定时故障传播图

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Large and complex systems such as space vehicles, power plants, manufacturing facilities, oil refineries, gas delivery systems, among others often have networks of alarms monitoring basic parameters (e.g. high or low temperature, voltage out-of-tolerance, power loss, etc.) which are correlated to failure modes, but not necessarily in a very direct way. In this paper, we present a plurality of graph-based methods which are combined in a novel way for the automated analysis of a system's alarms (or any other observable discrepancies) to determine the most appropriate maintenance. Specifically: (i) Timed Failure Propagation Graphs (TFPG) and/or Bayesian Networks (BN) read alarms as evidence for conducing backward root-cause diagnosis and forward failure effects analysis while (ii) Influence Diagrams (ID) select optimal maintenance operations considering the likely causes and effects as well as the utility of available maintenance options. Innovative contributions to these individual techniques include an automated BN instantiation methodology and system/sensor TFPG diagnostic algorithms. The overall proposed system then determines optimal maintenance paths suggested to be conducted by personnel.
机译:诸如太空车辆,发电厂,制造设施,炼油厂,燃气输送系统等大型和复杂的系统通常具有报警网络,监测基本参数(例如高或低温,电压差距,功率损耗,电源损耗。)与故障模式相关,但不一定以非常直接的方式。在本文中,我们介绍了一种基于图形的基于图的方法,这些方法以一种新颖的方式组合,用于系统的警报(或任何其他可观察到的差异)以确定最合适的维护。具体而具体:(i)定时失败传播图(TFPG)和/或贝叶斯网络(BN)读取警报作为用于调节落根导致诊断和前向失败效果分析的证据,而(ii)影响图(ID)选择最佳维护操作可能的原因和效应以及可用维护选项的效用。对这些单独技术的创新贡献包括自动BN实例化方法和系统/传感器TFPG诊断算法。然后,整体提出的系统确定了由人员进行的最佳维护路径。

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