论文标题

基于警报的根本原因分析在工业过程中使用深度学习

Alarm-Based Root Cause Analysis in Industrial Processes Using Deep Learning

论文作者

Javanbakht, Negin, Neshastegaran, Amir, Izadi, Iman

论文摘要

警报管理系统在现代行业中变得必不可少。警报将异常情况告知操作员,特别是在设备故障的情况下。由于系统各个部分之间的互连,每个故障都会影响系统正常工作的其他部分。结果,故障通过完美的设备传播,增加了警报数量。因此,对操作员触发警报的主要故障的及时检测可以防止以下后果。但是,由于系统的复杂性,通常无法找到基础故障与警报之间的精确关系。结果,操作员需要支持才能立即做出适当的决定。基于历史警报数据对警报进行建模可以帮助操作员确定警报的根本原因。该研究旨在使用数据库中的历史警报数据对工业警报之间的关系进行建模。首先,收集警报数据,并将警报标签进行测序。然后,使用单词嵌入将这些序列转换为数值向量。接下来,使用基于自发的Bilstm-CNN分类器来学习历史警报数据之间的结构和相关性。训练模型后,该模型用于在线故障检测。最后,作为一个案例研究,提出的模型是在著名的田纳西州伊士曼进程中实施的,并提出了结果。

Alarm management systems have become indispensable in modern industry. Alarms inform the operator of abnormal situations, particularly in the case of equipment failures. Due to the interconnections between various parts of the system, each fault can affect other sections of the system operating normally. As a result, the fault propagates through faultless devices, increasing the number of alarms. Hence, the timely detection of the major fault that triggered the alarm by the operator can prevent the following consequences. However, due to the complexity of the system, it is often impossible to find precise relations between the underlying fault and the alarms. As a result, the operator needs support to make an appropriate decision immediately. Modeling alarms based on the historical alarm data can assist the operator in determining the root cause of the alarm. This research aims to model the relations between industrial alarms using historical alarm data in the database. Firstly, alarm data is collected, and alarm tags are sequenced. Then, these sequences are converted to numerical vectors using word embedding. Next, a self-attention-based BiLSTM-CNN classifier is used to learn the structure and relevance between historical alarm data. After training the model, this model is used for online fault detection. Finally, as a case study, the proposed model is implemented in the well-known Tennessee Eastman process, and the results are presented.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源