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Towards machine learning-based predictive maintenance in industry using vibration and acoustic data

(2022)
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MLA
Nieves Avendano, Diego. Towards Machine Learning-Based Predictive Maintenance in Industry Using Vibration and Acoustic Data. Ghent University. Faculty of Engineering and Architecture, 2022.
APA
Nieves Avendano, D. (2022). Towards machine learning-based predictive maintenance in industry using vibration and acoustic data. Ghent University. Faculty of Engineering and Architecture, Ghent, Belgium.
Chicago author-date
Nieves Avendano, Diego. 2022. “Towards Machine Learning-Based Predictive Maintenance in Industry Using Vibration and Acoustic Data.” Ghent, Belgium: Ghent University. Faculty of Engineering and Architecture.
Chicago author-date (all authors)
Nieves Avendano, Diego. 2022. “Towards Machine Learning-Based Predictive Maintenance in Industry Using Vibration and Acoustic Data.” Ghent, Belgium: Ghent University. Faculty of Engineering and Architecture.
Vancouver
1.
Nieves Avendano D. Towards machine learning-based predictive maintenance in industry using vibration and acoustic data. [Ghent, Belgium]: Ghent University. Faculty of Engineering and Architecture; 2022.
IEEE
[1]
D. Nieves Avendano, “Towards machine learning-based predictive maintenance in industry using vibration and acoustic data,” Ghent University. Faculty of Engineering and Architecture, Ghent, Belgium, 2022.
@phdthesis{01GMAPBVQ6HYAA4DND5Q5DQK98,
  author       = {{Nieves Avendano, Diego}},
  isbn         = {{9789463556590}},
  language     = {{eng}},
  pages        = {{XXVIII, 163}},
  publisher    = {{Ghent University. Faculty of Engineering and Architecture}},
  school       = {{Ghent University}},
  title        = {{Towards machine learning-based predictive maintenance in industry using vibration and acoustic data}},
  year         = {{2022}},
}