Frequent Alarm Pattern Mining of Industrial Alarm Flood Sequences by an Improved PrefixSpan Algorithm

Author:

Yang Songbai12,Zhang Tianxing23,Zhai Yingchun12,Wang Kaifa12,Zhao Guoxi4,Tu Yuanfei25ORCID,Cheng Li25

Affiliation:

1. Petrochina Tarim Petrochemical Co., Ltd., Korla 841000, China

2. Control Engineering Centre of Nanjing Tech University, Nanjing 210037, China

3. Kunlun Digital Intelligence Technology Co., Ltd., Beijing 100007, China

4. Hexagon’s Asset Lifecycle Intelligence, Beijing 100026, China

5. College of Electronic Engineering and Control Science, Nanjing Tech University, Nanjing 210037, China

Abstract

Alarm systems are essential to the process safety and efficiency of complex industrial facilities. However, with the increasing size of plants and the growing complexity of industrial processes, alarm flooding is becoming a serious problem and posing challenges to alarm systems. Extracting alarm patterns from an alarm flood database can assist with an alarm root cause analysis, decision support, and the configuration of an alarm suppression model. However, due to the large size of the alarm database and the problem of sequence ambiguity in the alarm sequence, existing algorithms suffer from excessive computational overhead, incomplete alarm patterns, and redundant outputs. In order to solve these problems, we propose an alarm pattern extraction method based on the improved PrefixSpan algorithm. Firstly, a priority-based pre-matching strategy is proposed to cluster similar sequences in advance. Secondly, we improved PrefixSpan by considering timestamps to tolerate short-term order ambiguity in alarm flood sequences. Thirdly, an alarm pattern compression method is proposed for the further distillation of pattern information in order to output representative alarm patterns. Finally, we evaluated the effectiveness and applicability of the proposed method by using an alarm flood database from a real diesel hydrogenation unit.

Funder

ostgraduate Research & Practice Innovation Program of Jiangsu Province

Publisher

MDPI AG

Subject

Process Chemistry and Technology,Chemical Engineering (miscellaneous),Bioengineering

Reference23 articles.

1. Wang, Z., Hu, W., Cao, W., and Wu, M. (2021, January 26). Detection of Sequential Alarm Patterns in Complex Industrial Facilities Using ClaSP and Top-K Algorithms. Proceedings of the 40th Chinese Control Conference, Shanghai, China.

2. Pattern Mining of Alarm Flood Sequences Using an Improved PrefixSpan Algorithm with Tolerance to Short-Term Order Ambiguity;Zhu;Ind. Eng. Chem. Res.,2021

3. EEMUA (2007). Alarm System: A Guide to Design, Management, and Procurement, The Engineering Equipment and Materials Users Association (EEMUA). [2nd ed.].

4. Risk Matrix and Event Tree Based Half Quantitative Alarm Priority Analysis for Alarm Systems;Dai;Proc. Intg. Opti. Sust.,2019

5. Criteria and algorithms for online and offline detections of industrial alarm floods;Wang;IEEE Trans. Control. Syst. Technol.,2017

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