Variable Selection for Fault Detection and Identification Based on Mutual Information of Alarm Series

Matthieu Lucke1, Xueyu Mei2, Anna Stief3, Moncef Chioua4, Nina Thornhill

  • 1ABB Corporate Research Germany & Imperial College London
  • 2Tsinghua University
  • 3ABB Corporate Research Center, Kraków
  • 4ABB Corporate Research Germany

Details

16:20 - 16:40 | Thu 25 Apr | Fauna | ThC2.1

Session: Equipment Condition Monitoring for Sustainable Process Operations

Abstract

Reducing the dimensionality of a fault detection and identification problem is often a necessity, and variable selection is a practical way to do it. Methods based on mutual information have been successful in that regard, but their applicability to industrial processes is limited by characteristics of the process variables such as their variability across fault occurrences. The paper introduces a new estimation strategy of mutual information criteria using alarm series to improve the robustness of the variable selection. The minimal-redundancy-maximal-relevance criterion on alarm series is suggested as new reference criterion, and the results are validated on a multiphase flow facility.