Li Ding, Cheng Xin
School of Electrical and Information Engineering, Wuhan Institute of Technology, Wuhan 430205, China.
School of Automation, China University of Geosciences, Wuhan 430074, China.
Entropy (Basel). 2023 Dec 27;26(1):30. doi: 10.3390/e26010030.
Alarm systems are commonly deployed in complex industries to monitor the operation status of the production process in real time. Actual alarm systems generally have alarm overloading problems. One of the major factors leading to excessive alarms is the presence of many correlated or redundant alarms. Analyzing alarm correlations will not only be beneficial to the detection of and reduction in redundant alarm configurations, but also help to track the propagation of abnormalities among alarm variables. As a special problem in correlated alarm detection, the research on first-out alarm detection is very scarce. A first-out alarm is known as the first alarm that occurs in a series of alarms. Detection of first-out alarms aims at identifying the first alarm occurrence from a large number of alarms, thus ignoring the subsequent correlated alarms to effectively reduce the number of alarms and prevent alarm overloading. Accordingly, this paper proposes a new first-out alarm detection method based on association rule mining and correlation analysis. The contributions lie in the following aspects: (1) An association rule mining approach is presented to extract alarm association rules from historical sequences based on the FP-Growth algorithm and J-Measure; (2) a first-out alarm determination strategy is proposed to determine the first-out alarms and subsequent alarms through correlation analysis in the form of a hypothesis test on conditional probability; and (3) first-out rule screening criteria are proposed to judge whether the rules are redundant or not and then consolidated results of first-out rules are obtained. The effectiveness of the proposed method is tested based on the alarm data generated by a public simulation platform.
报警系统通常部署在复杂行业中,以实时监控生产过程的运行状态。实际的报警系统一般存在报警过载问题。导致过多报警的主要因素之一是存在许多相关或冗余报警。分析报警相关性不仅有助于检测和减少冗余报警配置,还有助于跟踪报警变量之间异常情况的传播。作为相关报警检测中的一个特殊问题,对首次报警检测的研究非常少。首次报警是指在一系列报警中出现的第一个报警。首次报警检测旨在从大量报警中识别出第一个报警的发生,从而忽略后续相关报警,以有效减少报警数量并防止报警过载。因此,本文提出了一种基于关联规则挖掘和相关性分析的新型首次报警检测方法。其贡献在于以下几个方面:(1)提出一种关联规则挖掘方法,基于FP-Growth算法和J-Measure从历史序列中提取报警关联规则;(2)提出一种首次报警确定策略,通过以条件概率的假设检验形式进行相关性分析来确定首次报警和后续报警;(3)提出首次报警规则筛选标准,以判断规则是否冗余,进而得到首次报警规则的合并结果。基于一个公共仿真平台生成的报警数据对所提方法的有效性进行了测试。