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Pattern mining in alarm flood sequences using a modified PrefixSpan algorithm

机译:使用修改前缀算法的警报洪水序列模式挖掘

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摘要

Proper monitoring of performance of an alarm system throughout its life cycle is an important factor in safety and reliability of industrial plants. Complexity and extent of modern industrial plants and poor design and management of alarm systems, have increased the importance of monitoring of alarm systems. Alarm floods, defined as a large number of alarms triggered in a short interval, is one of the problems that modern complexes are facing regularly. Many researchers have been focusing on this issue both in academia and industry. One approach to deal with alarm flood is analyzing alarms triggered in different floods and finding similar patterns. The identified patterns could help in locating the root cause of an alarm flood. In this paper a modified PrefixSpan sequential pattern recognition algorithm is used to find alarm patterns in different floods. The effectiveness of the algorithm is demonstrated with real alarm floods from a natural gas processing plant. (C) 2019 ISA. Published by Elsevier Ltd. All rights reserved.
机译:在整个生命周期中正确监测警报系统的性能是工业厂房安全性和可靠性的重要因素。现代工业设备的复杂性和程度和警报系统的差的设计和管理,增加了监测报警系统的重要性。警报洪水,定义为短时间内触发的大量警报,是现代复合物正常面临的问题之一。许多研究人员在学术界和工业中一直关注这个问题。处理警报洪水的一种方法正在分析不同洪水中触发的警报并找到类似模式。所识别的模式可以帮助定位警报洪水的根本原因。在本文中,修改后的前缀顺序模式识别识别算法用于在不同洪水中查找警报模式。算法的有效性与来自天然气加工厂的真正警报洪水进行了证明。 (c)2019 ISA。 elsevier有限公司出版。保留所有权利。

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