Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6973410 | Journal of Loss Prevention in the Process Industries | 2015 | 6 Pages |
Abstract
The analysis of consequential alarms is beneficial to avoiding alarm flooding and finding out root alarms in an industrial process. In this context, a novel similarity computation method taking into account of correlation delays between process alarms is introduced firstly. Subsequently, the Granger causality method is suggested to further clarify mutual impacts of similar alarm variables based on process data. Through the combination of alarm data similarity analysis and process data causality analysis, the consequential alarms can be effectively identified along with their evolution paths. An industrial case is employed to illustrate the benefits of the contribution.
Keywords
Related Topics
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Chemical Health and Safety
Authors
Jia Wang, Hongguang Li, Jinwen Huang, Chong Su,