Fault Detection and Classification for Induction Motors using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @InProceedings{Zhang:2019:EuroGP,
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author = "Yu Zhang2 and Ting Hu and Xiaodong Liang and
Mohammad Zawad Ali and Md Nasmus Sakib Khan Shabbir",
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title = "Fault Detection and Classification for Induction
Motors using Genetic Programming",
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booktitle = "EuroGP 2019: Proceedings of the 22nd European
Conference on Genetic Programming",
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year = "2019",
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month = "24-26 " # apr,
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editor = "Lukas Sekanina and Ting Hu and Nuno Lourenco",
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series = "LNCS",
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volume = "11451",
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publisher = "Springer Verlag",
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address = "Leipzig, Germany",
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pages = "178--193",
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organisation = "EvoStar, Species",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-030-16669-4",
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URL = "https://www.springer.com/us/book/9783030166694",
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DOI = "doi:10.1007/978-3-030-16670-0_12",
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size = "16 pages",
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abstract = "Induction motors are the workhorse in various industry
sectors, and their accurate fault detection is
essential to ensure reliable operation of critical
industrial processes. Since various types of mechanical
and electrical faults could occur, induction motor
fault diagnosis can be interpreted as a multi-label
classification problem. The current and vibration input
data collected by monitoring a motor often require
signal processing to extract features that can better
characterize these waveforms. However, some extracted
features may not be relevant to the classification,
feature selection is thus necessary. Given such
challenges, in recent years, machine learning methods,
including decision trees and support vector machines,
are increasingly applied to detect and classify
induction motor faults. Genetic programming (GP), as a
powerful automatic learning algorithm with its
abilities of embedded feature selection and multi-label
classification, has not been explored to solve this
problem. In this paper, we propose a linear GP (LGP)
algorithm to search predictive models for motor fault
detection and classification. Our method is able to
evolve multi-label classifiers with high accuracies
using experimentally collected data in the lab by
monitoring two induction motors. We also compare the
results of the LGP algorithm to other commonly used
machine learning algorithms, and are able to show its
superior performance on both feature selection and
classification.",
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notes = "http://www.evostar.org/2019/cfp_eurogp.php#abstracts
Part of \cite{Sekanina:2019:GP} EuroGP'2019 held in
conjunction with EvoCOP2019, EvoMusArt2019 and
EvoApplications2019",
- }
Genetic Programming entries for
Yu Zhang2
Ting Hu
Xiaodong Liang
Mohammad Zawad Ali
Md Nasmus Sakib Khan Shabbir
Citations