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Computing dependent industrial alarms for alarm flood reduction

机译:计算相关的工业警报以减少警报泛滥

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摘要

In the domain of process control, operators face the problem that more alarms are generated than can be physically addressed by a single operator. Such a situation is called alarm flood. The reasons for alarm floods are either badly designed alarm management systems (AMS) or causal dependent disturbances which either way, raise an alarm based on a single causal disturbance. These dependencies are difficult to recognize during the engineering of an AMS. This article presents an overview of an algorithm for the automatic alarm data analyzer (AADA). It is able to find possible and significant reasons for alarm floods by identifying the most frequent alarms and those causal alarms consolidating alarm-sequences. They are to be used to improve and to redesign an AMS, so that the alarm flood problem can be reduced at the end.
机译:在过程控制领域,操作员面临的问题是,生成的警报数量要比单个操作员所能解决的更多。这种情况称为警报泛滥。警报泛滥的原因是设计不当的警报管理系统(AMS)或因果相关的干扰,这两种方式都可以基于单个因果干扰来发出警报。这些依赖性在AMS的工程设计中很难识别。本文概述了自动警报数据分析器(AADA)的算法。通过识别最频繁的警报以及合并警报序列的因果警报,可以找到造成警报泛滥的可能且重要的原因。它们将用于改进和重新设计AMS,以便最终减少警报泛滥问题。

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