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Root cause analysis for global anomalous events in self-organizing industrial systems

机译:自组织工业系统中全球异常事件的根本原因分析

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In self-organizing industrial systems (SOIS) workflows are not defined by engineers in advance, but the system decides by itself at runtime how to route workpieces through the factory, so that the desired output is manufactured as optimal as possible in the present circumstances. As a consequence, the number of possible workflows is not limited to those which were manually predefined, but limited to all possible routes in the factory (state space explosion). Accordingly, analyzing anomalies in such a huge solution space becomes more challenging. In this paper, we present a root cause analyis (RCA) approach for finding the root cause of global anomalous events which handles this state space explosion in SOIS. To do so, the dependencies between path usage and external factors like available machines and demanded tasks are subdivided into several sub-dependencies. In addition, we propose for one of these sub-dependencies a heuristical description which avoids the enormous computational effort for modeling the dependency exactly. The operating principle of our RCA method is evaluated based on simulation data of an example factory.
机译:在自组织工业系统(SOIS)中,工作流程不是由工程师预先定义的,而是由系统在运行时自行决定如何将工件路由到工厂,以便在当前情况下尽可能地优化所需的输出。结果,可能的工作流程的数量不仅限于手动预定义的工作流程,还限于工厂中所有可能的路线(状态空间爆炸)。因此,在如此巨大的解决方案空间中分析异常变得更具挑战性。在本文中,我们提出了一种根本原因分析(RCA)方法,用于查找处理SOIS中状态空间爆炸的全局异常事件的根本原因。为此,将路径使用与外部因素(例如可用机器和所需任务)之间的依赖关系细分为几个子依赖关系。另外,我们为这些子依赖关系之一提出了启发式描述,该描述避免了为精确建模依赖关系而进行的大量计算工作。我们基于示例工厂的仿真数据评估了RCA方法的工作原理。

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