论文标题
使用过程挖掘和警报数据的植物拓扑提取的框架
A Framework for Plant Topology Extraction Using Process Mining and Alarm Data
论文作者
论文摘要
工厂容易出现故障。为了通知操作员发生故障的发生,警报被用作现代计算机控制工厂的基本部分。但是,由于植物的不同部位的互连,单个断层经常通过植物传播,并触发A(有时很大)的警报。图形植物拓扑可以帮助操作员,工艺工程师和维护专家发现植物不适的根本原因或发现故障的传播路径。在本文中,开发了一种方法来提取植物拓扑形成警报数据。该方法基于过程挖掘,基于记录事件的过程(不一定是工程设计)的概念和算法集合。警报数据的基于事件的性质以及记录的警报的时间顺序使其适合过程挖掘。本文开发的方法基于准备警报数据进行过程挖掘,然后使用合适的工艺挖掘算法来提取植物拓扑。提取的拓扑用熟悉的培养皿网表示,可用于根本原因分析并发现断层传播路径。还讨论了评估提取拓扑的方法。关于田纳西州著名的伊士曼进程的案例研究证明了该方法的实用性。
Industrial plants are prone to faults. To notify the operator of a fault occurrence, alarms are utilized as a basic part of modern computer-controlled plants. However, due to the interconnections of different parts of a plant, a single fault often propagates through the plant and triggers a (sometimes large) number of alarms. A graphical plant topology can help operators, process engineers and maintenance experts find the root cause of a plant upset or discover the propagation path of a fault. In this paper, a method is developed to extract plant topology form alarm data. The method is based on process mining, a collection of concepts and algorithms that model a process (not necessarily an engineering one) based on recorded events. The event based nature of alarm data as well as the chronological order of recorded alarms make them suitable for process mining. The methodology developed in this paper is based on preparing alarm data for process mining and then using the suitable process mining algorithms to extract plant topology. The extracted topology is represented by the familiar Petri net which can be used for root cause analysis and discovering fault propagation paths. The methods to evaluate the extracted topology are also discussed. A case study on the well-known Tennessee Eastman process demonstrates the utility of the proposed method.