Title of article :
Process Fault Detection Using Hierarchical Artificial Neural Network Diagnostic Strategy
Author/Authors :
OTHMAN, MOHAMAD RIZZA Kolej Universiti Kejuruteraan dan Teknologi Malaysia, Malaysia , WIJAYANUDDIN ALI, MOHAMAD Universiti Teknologi Malaysia - Faculty of Chemical and Natural Resources Engineering - Process Control and Safety Laboratory, Malaysia , KAMSAH, MOHD ZAKI Universiti Teknologi Malaysia - Faculty of Chemical and Natural Resources Engineering - Process Control and Safety Laboratory, Malaysia
From page :
11
To page :
26
Abstract :
This paper focuses on the use of artificial neural network (ANN) to detect and diagnose fault in process plant. In this work, the ANN uses two layers of hierarchical diagnostic strategy. The first layer diagnoses the node where the fault originated and the second layer classifies the type of faults or malfunctions occurred on that particular node. The architecture of the ANN model is founded on a multilayer feed forward network and used back propagation algorithm as the training scheme. In order to find the most suitable configuration of ANN, a topology analysis is conducted. The effectiveness of the method is demonstrated by using a fatty acid fractionation column. Results show that the system is successful in detecting original single and transient fault introduced within the process plant model
Keywords :
process fault detection and diagnosis , hierarchical diagnostic strategy , artificial neural network , fatty acid fractionation column
Journal title :
Jurnal Teknologi :F
Journal title :
Jurnal Teknologi :F
Record number :
2666441
Link To Document :
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