Title :
Sensor fault detection and diagnosis based on SOMNNs for steady-state and transient operation
Author :
Yu Zhang ; Bingham, Chris ; Gallimore, Michael ; Zhijing Yang ; Jun Chen
Author_Institution :
Sch. of Eng., Univ. of Lincoln, Lincoln, UK
Abstract :
The paper presents a readily implementable approach for sensor fault detection, identification (SFD/I) and faulted sensor data reconstruction in complex systems based on self-organizing map neural networks (SOMNNs). Two operational regimes are considered, i.e. the steady operation and operation with transients. For steady operation, SOMNN based estimation error (EE) are used for SFD. EE contribution plots are employed for SFI. For operation with transients, SOMNN classification maps are used for SFD/I comparing with the `fingerprint´ maps. In addition, extension algorithm of SOMNNs is developed for faulted sensor data reconstruction. The validation of the proposed approach is demonstrated through experimental data during the commissioning of industrial gas turbines.
Keywords :
estimation theory; fault diagnosis; gas turbines; large-scale systems; pattern classification; self-organising feature maps; sensors; SFD; SFD-I; SOMNN classification; SOMNN-based EE; SOMNN-based estimation error; complex systems; faulted sensor data reconstruction; fingerprint maps; industrial gas turbines; self-organizing map neural networks; sensor fault detection; sensor fault diagnosis; steady operation; steady-state operation; transient operation; Fault detection; Fault diagnosis; Neurons; Temperature sensors; Transient analysis; Turbines; Vectors; estimation error; self-organizing map neural network; sensor fault detection; sensor fault identification;
Conference_Titel :
Computational Intelligence and Virtual Environments for Measurement Systems and Applications (CIVEMSA), 2013 IEEE International Conference on
Conference_Location :
Milan
Print_ISBN :
978-1-4673-4701-3
DOI :
10.1109/CIVEMSA.2013.6617406