Title :
A neural-network approach to fault detection and diagnosis in industrial processes
Author :
Maki, Yunosuke ; Loparo, Kenneth A.
Author_Institution :
Case Sch. of Eng., Case Western Reserve Univ., Cleveland, OH, USA
fDate :
11/1/1997 12:00:00 AM
Abstract :
Using a multilayered feedforward neural-network approach, the detection and diagnosis of faults in industrial processes that requires observing multiple data simultaneously are studied in this paper. The main feature of our approach is that the detection of the faults occurs during transient periods of operation of the process. A two-stage neural network is proposed as the basic structure of the detection system. The first stage of the network detects the dynamic trend of each measurement, and the second stage of the network detects and diagnoses the faults. The potential of this approach is demonstrated in simulation using a model of a continuously well-stirred tank reactor. The neural-network-based method successfully detects and diagnoses pretrained faults during transient periods and can also generalize properly. Finally, a comparison with a model-based method is presented
Keywords :
fault diagnosis; fault location; feedforward neural nets; industrial control; fault detection; fault diagnosis; industrial processes; multilayered feedforward neural-network approach; neural-network approach; simulation; tank reactor; transient periods; Chemical industry; Chemical processes; Circuit faults; Fault detection; Fault diagnosis; Filtering; Neural networks; Nonlinear filters; Pattern recognition; Robustness;
Journal_Title :
Control Systems Technology, IEEE Transactions on