2021
DOI: 10.1007/s00170-021-07408-5
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Application of machine learning for acoustic emissions waveform to classify galling wear on sheet metal stamping tools

Abstract: Galling wear in sheet metal stamping processes can degrade the product quality and adversely affect mass production. Studies have shown that acoustic emission sensors can be used to measure galling. In the literature, attempts have been made to correlate the acoustic emission features and galling wear in the sheet metal stamping process. However, there is very little attempt made to implement machine learning techniques to detect acoustic emission features that can classify non-galling and galling wear as well… Show more

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Cited by 6 publications
(2 citation statements)
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“…Modern presses are equipped with four force sensors, one for each of the press columns [25], but four signals might not be enough to achieve effective decomposition and feature recognition. For this reason, multiple sensors are used to achieve a richer supply of data, such as acoustic sensors embedded in the tool holders [26][27][28], thin film local load sensors [29] or sensors to measure in-process the geometry [30], the quality [31] or the temperature [32] of the stamped parts. Another problem connected to data-driven approaches is that in real industrial cases, signals may shift for reasons that are often unknown and lead to conditions that are "false positives", i.e., conditions that apparently indicate an anomaly but that eventually correspond to regular production with good quality and no evidently worn or failed tools.…”
Section: Introductionmentioning
confidence: 99%
“…Modern presses are equipped with four force sensors, one for each of the press columns [25], but four signals might not be enough to achieve effective decomposition and feature recognition. For this reason, multiple sensors are used to achieve a richer supply of data, such as acoustic sensors embedded in the tool holders [26][27][28], thin film local load sensors [29] or sensors to measure in-process the geometry [30], the quality [31] or the temperature [32] of the stamped parts. Another problem connected to data-driven approaches is that in real industrial cases, signals may shift for reasons that are often unknown and lead to conditions that are "false positives", i.e., conditions that apparently indicate an anomaly but that eventually correspond to regular production with good quality and no evidently worn or failed tools.…”
Section: Introductionmentioning
confidence: 99%
“…In the application of AE technology, some researchers integrate AI (artificial intelligence) technologies for AE signal identification. Griffin, Shanbhag, Pereira, and Rolfe (2021) correlated the AE characteristics in the sheet metal stamping process with the flash wear. The training of the neural network helped realize the accurate classification of rolling wear of the stamping tools.…”
Section: Introduction and Literature Reviewmentioning
confidence: 99%