2023
DOI: 10.1007/s41060-023-00440-6
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Hyperparameter analysis of wide-kernel CNN architectures in industrial fault detection: an exploratory study

Jurgen van den Hoogen,
Dan Hudson,
Stefan Bloemheuvel
et al.

Abstract: Industrial fault detection has become more data-driven due to advancements in automated data analysis using deep learning. Such methods make it possible to extract useful features, e. g., from time series data retrieved from sensors, which is typically of complex nature. This allows for effective fault detection and prognostics that boost the efficiency and productivity of industrial equipment. This work explores the influence of a variety of architectural hyperparameters on the performance of one-dimensional … Show more

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