Litcius/Paper detail

A Direct Transfer Entropy-Based Multiblock Bayesian Network for Root Cause Diagnosis of Process Faults

Pallavi Kumari, Qingsheng Wang, Faisal Khan, Joseph Sang‐Il Kwon

2022Industrial & Engineering Chemistry Research18 citationsDOI

Abstract

In chemical processes, Bayesian network (BN)-based approaches have been extensively applied for process fault diagnosis. Generally, BN is learned using score and search algorithms where search algorithms create candidate networks whose fitness to data is measured by scores. However, existing approaches cannot utilize cyclic loop knowledge while learning BN. Since cyclic loops are prevalent in chemical processes, their unaccountability results in inaccurate BN and reduces diagnosis accuracy. Therefore, for accurate diagnosis, we propose direct transfer entropy (DTE)-based multiblock BN to discover cyclic loops while learning BN. First, the process is segmented into multiple blocks. Next, block-level BNs are learned using DTE-based score and Greedy search. By eliminating the common source variable effect, DTE finds correct causality between process variables and obtains accurate block-level BNs, which are fused to discover significant cyclic loops that were otherwise unachievable when finding BN. The performance of the developed methodology is demonstrated through a benchmark process.

Topics & Concepts

Bayesian networkComputer scienceEntropy (arrow of time)Process (computing)Transfer entropyArtificial intelligenceBenchmark (surveying)Machine learningBlock (permutation group theory)Data miningAlgorithmPattern recognition (psychology)Principle of maximum entropyMathematicsGeographyPhysicsGeometryOperating systemQuantum mechanicsGeodesyFault Detection and Control SystemsRisk and Safety AnalysisMachine Fault Diagnosis Techniques