Induction of Virtual Sensors with Function Stacks
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- @InProceedings{Ashlock:2009:ANNIEa,
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author = "Daniel Ashlock and Adam J. Shuttleworth and
Kenneth M. Bryden",
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title = "Induction of Virtual Sensors with Function Stacks",
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booktitle = "ANNIE 2009, Intelligent Engineering Systems through
Artificial Neural Networks",
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year = "2009",
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editor = "Cihan H. Dagli and K. Mark Bryden and
Steven M. Corns and Mitsuo Gen and Kagan Tumer and Gursel Suer",
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volume = "19",
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address = "St. Louis, MO, USA",
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note = "Part I",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "9780791802953",
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DOI = "doi:10.1115/1.802953.paper4",
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abstract = "Virtual sensors are mathematical models that predict
the readings of a sensor in a location currently
without an operational sensor. Virtual sensors can be
used to compensate for a failed sensor or as a
framework for supporting mathematical decomposition of
a model of a complex system. This study applies a novel
genetic programming representation called a function
stack to the problem of virtual sensor induction in a
simple thermal system. Real-valued function stacks are
introduced in this study. The thermal system modelled
is a heat exchanger. Function stacks are found to be
able to efficiently find compact and accurate models
for each often sensors using the data from the other
sensors. This study serves as proof-of-concept for
using function stacks as a modeling technology for
virtual sensors.",
- }
Genetic Programming entries for
Daniel Ashlock
Adam J Shuttleworth
Kenneth M Bryden
Citations