Inference Methods for Detecting the Root Cause of Alarm Floods in Causal Models

P. Wunderlich, O. Niggemann
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引用次数: 3

Abstract

Driven by the oil and chemical industry and amplified by the digitization and automation of the industry, the issue of alarm management has been gaining more and more importance. In highly automated and complex industrial systems, on the one hand, a large number of messages and alarms arise and, on the other hand fewer and fewer employees must be able to handle them. This amount of alarms is called alarm flood and it is a huge safety risk in facilities such as refineries. Therefore, it is necessary to reduce these alarm floods, thus reducing downtime, supporting the operator and preventing catastrophes. A novel approach to reducing alarm floods is concerned with learning the causal relationships between the alarms. The learned interrelations of the alarms are represented by a causal model. Based on these causal model, a root cause analysis is carried out to find out the cause of an alarm flood. This makes it possible to dramatically reduce the number of alarms and messages by displaying only the potential root causes. Therefore, we validate the approach of identifying the root cause of an alarm flood by a given causal model. The three most common inference methods are investigated and their suitability for practical application is evaluated on two demonstrators from SmartFactoryOWL.
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因果模型中报警洪水根本原因检测的推理方法
在石油化工行业的推动下,在工业数字化、自动化的放大下,报警管理问题越来越受到重视。在高度自动化和复杂的工业系统中,一方面会产生大量的消息和警报,另一方面,必须能够处理它们的员工越来越少。这种数量的警报被称为报警洪水,这对炼油厂等设施来说是一个巨大的安全风险。因此,有必要减少这些报警洪水,从而减少停机时间,支持操作人员并防止灾难发生。一种减少报警洪水的新方法是学习报警之间的因果关系。学习到的报警的相互关系由因果模型表示。在这些因果模型的基础上,进行根本原因分析,找出发生报警洪水的原因。这样就可以通过只显示潜在的根本原因来显著减少警报和消息的数量。因此,我们通过给定的因果模型验证了识别报警洪水根本原因的方法。研究了三种最常见的推理方法,并在SmartFactoryOWL的两个演示程序上评估了它们在实际应用中的适用性。
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