Discovering Prognostic Features Using Genetic Programming in Remaining Useful Life Prediction
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- @Article{Liao:2014:ieeeIE,
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author = "Linxia Liao",
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journal = "IEEE Transactions on Industrial Electronics",
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title = "Discovering Prognostic Features Using Genetic
Programming in Remaining Useful Life Prediction",
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year = "2014",
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month = may,
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volume = "61",
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number = "5",
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pages = "2464--2472",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/TIE.2013.2270212",
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ISSN = "0278-0046",
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abstract = "In prognostics approaches, features (e.g., vibration
level, root mean square or outputs from signal
processing techniques) extracted from the measurement
(e.g., vibration, current, and pressure, etc.) are
often used or modelled as an indicator to the
equipment's health condition. When faults are detected
or when increasing/decreasing trends are shown in the
health indicator, prediction algorithms are applied to
extrapolate the future behaviour and predict remaining
useful life (RUL). However, it is difficult to make an
accurate prediction if the trend of the health
indicator is not obvious through the entire life cycle
or if the trend is only shown right before a failure
occurs. The challenge lies in whether an advanced
feature (e.g., a mathematical combination of a group of
the extracted features) can be found to clearly
present/correlate with the fault progression. A genetic
programming method is proposed to address the challenge
of automatically discovering advanced feature(s), which
can well capture the fault progression, from the
measurement or extracted features in the purpose of RUL
prediction.",
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notes = "Also known as \cite{6544227}",
- }
Genetic Programming entries for
Linxia Liao
Citations