Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster

Model-based fault detection and diagnostic systems have become an important solution (Munoz & Sanz-Bobi, 1998:178) in the industry for preventive maintenance. This not only increases plant safety, but also reduces down time and financial losses. This paper investigates a model-based fault detect...

Full description

Bibliographic Details
Main Author: Vorster, Christo
Published: North-West University 2009
Online Access:http://hdl.handle.net/10394/254
id ndltd-NWUBOLOKA1-oai-dspace.nwu.ac.za-10394-254
record_format oai_dc
spelling ndltd-NWUBOLOKA1-oai-dspace.nwu.ac.za-10394-2542014-04-16T03:54:52ZFault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. VorsterVorster, ChristoModel-based fault detection and diagnostic systems have become an important solution (Munoz & Sanz-Bobi, 1998:178) in the industry for preventive maintenance. This not only increases plant safety, but also reduces down time and financial losses. This paper investigates a model-based fault detection and diagnostic system by using neural networks. To mimic process models, a normal feed-forward neural network with time delays is implemented by using the MATLAB@ neural network toolbox. By using these neural network models, residuals are generated. These residuals are then classified by using other neural networks. The main process in question is the Brayton cycle thermal process used in the pebble bed modular reactor. Flownet simulation software is used to generate the data, where practical data is absent. Various training algorithms were implemented and tested during the investigation of modelling and classification concepts on two benchmark processes. The training algorithm that performed best was finally implemented in an integrated conceptThesis (M.Ing. (Electronical Engineering))--North-West University, Potchefstroom Campus, 2004.North-West University2009-01-30T11:57:41Z2009-01-30T11:57:41Z2004Thesishttp://hdl.handle.net/10394/254
collection NDLTD
sources NDLTD
description Model-based fault detection and diagnostic systems have become an important solution (Munoz & Sanz-Bobi, 1998:178) in the industry for preventive maintenance. This not only increases plant safety, but also reduces down time and financial losses. This paper investigates a model-based fault detection and diagnostic system by using neural networks. To mimic process models, a normal feed-forward neural network with time delays is implemented by using the MATLAB@ neural network toolbox. By using these neural network models, residuals are generated. These residuals are then classified by using other neural networks. The main process in question is the Brayton cycle thermal process used in the pebble bed modular reactor. Flownet simulation software is used to generate the data, where practical data is absent. Various training algorithms were implemented and tested during the investigation of modelling and classification concepts on two benchmark processes. The training algorithm that performed best was finally implemented in an integrated concept === Thesis (M.Ing. (Electronical Engineering))--North-West University, Potchefstroom Campus, 2004.
author Vorster, Christo
spellingShingle Vorster, Christo
Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
author_facet Vorster, Christo
author_sort Vorster, Christo
title Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
title_short Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
title_full Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
title_fullStr Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
title_full_unstemmed Fault diagnostic system for predictive maintenance on a Brayton cycle power plant / C. Vorster
title_sort fault diagnostic system for predictive maintenance on a brayton cycle power plant / c. vorster
publisher North-West University
publishDate 2009
url http://hdl.handle.net/10394/254
work_keys_str_mv AT vorsterchristo faultdiagnosticsystemforpredictivemaintenanceonabraytoncyclepowerplantcvorster
_version_ 1716664121954402304