Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann
Inference measurements with time-delayed feed-forward neural networks facilitates the inference of unknown variables from known variables in non-linear dynamic systems. This is based only on the mapping data of the known variable and variable to be inferred. For successful inference, several constra...
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ndltd-netd.ac.za-oai-union.ndltd.org-nwu-oai-dspace.nwu.ac.za-10394-3432014-04-16T03:52:55ZNeural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter AckermannAckermann, Dirk WouterInference measurements with time-delayed feed-forward neural networks facilitates the inference of unknown variables from known variables in non-linear dynamic systems. This is based only on the mapping data of the known variable and variable to be inferred. For successful inference, several constraints have to be overcome. This is, the neural network should have the correct topology, the training data set characteristics must have inherent attributes to ensure generalisation and the training algorithm must be capable of finding an acceptable local minimum on the error surface. At present, the neural network topology is based on trial and error, while the generalisation capability of the trained neural network is tested by using test and validation sets. Due to the lack of design methods for the topology of neural networks and the need for independent testing and validation, this thesis endeavours to develop a generalised method to find the optimum topology for accurate inference measurements. The aim is further to develop a method for judging the training set that could lead to generalisation without using test sets or validation sets. For this to be done, the training algorithm should succeed in finding a small enough local minimum on the error surface. The developed methods are applied to a simulated model of the pebble bed modular reactor (PBMR).Thesis (Ph.D. (Electronical Engineering)--North-West University, Potchefstroom Campus, 2004.North-West University2009-02-04T09:19:07Z2009-02-04T09:19:07Z2004Thesishttp://hdl.handle.net/10394/343 |
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description |
Inference measurements with time-delayed feed-forward neural networks facilitates the
inference of unknown variables from known variables in non-linear dynamic systems. This
is based only on the mapping data of the known variable and variable to be inferred. For
successful inference, several constraints have to be overcome. This is, the neural network
should have the correct topology, the training data set characteristics must have inherent
attributes to ensure generalisation and the training algorithm must be capable of finding
an acceptable local minimum on the error surface. At present, the neural network topology
is based on trial and error, while the generalisation capability of the trained neural network
is tested by using test and validation sets.
Due to the lack of design methods for the topology of neural networks and the need
for independent testing and validation, this thesis endeavours to develop a generalised
method to find the optimum topology for accurate inference measurements. The aim is
further to develop a method for judging the training set that could lead to generalisation
without using test sets or validation sets. For this to be done, the training algorithm
should succeed in finding a small enough local minimum on the error surface.
The developed methods are applied to a simulated model of the pebble bed modular
reactor (PBMR). === Thesis (Ph.D. (Electronical Engineering)--North-West University, Potchefstroom Campus, 2004. |
author |
Ackermann, Dirk Wouter |
spellingShingle |
Ackermann, Dirk Wouter Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
author_facet |
Ackermann, Dirk Wouter |
author_sort |
Ackermann, Dirk Wouter |
title |
Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
title_short |
Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
title_full |
Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
title_fullStr |
Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
title_full_unstemmed |
Neural network inference measurements applied to the pebble bed modular reactor / Dirk Wouter Ackermann |
title_sort |
neural network inference measurements applied to the pebble bed modular reactor / dirk wouter ackermann |
publisher |
North-West University |
publishDate |
2009 |
url |
http://hdl.handle.net/10394/343 |
work_keys_str_mv |
AT ackermanndirkwouter neuralnetworkinferencemeasurementsappliedtothepebblebedmodularreactordirkwouterackermann |
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