Predicting thrust force during drilling of composite laminates with step drills through the Gaussian process regression

PurposeHere, the authors use step angles, stage ratios, feed rates and spindle speeds as predictors to develop a Gaussian process regression for predicting thrust force during composite laminates drilling with step drills.Design/methodology/approachUse of machine learning methods could benefit machi...

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Vydané v:Multidiscipline modeling in materials and structures Ročník 18; číslo 5; s. 845 - 855
Hlavní autori: Zhang, Yun, Xu, Xiaojie
Médium: Journal Article
Jazyk:English
Vydavateľské údaje: Bingley Emerald Publishing Limited 12.10.2022
Emerald Group Publishing Limited
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ISSN:1573-6105, 1573-6113
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Shrnutí:PurposeHere, the authors use step angles, stage ratios, feed rates and spindle speeds as predictors to develop a Gaussian process regression for predicting thrust force during composite laminates drilling with step drills.Design/methodology/approachUse of machine learning methods could benefit machining process optimizations. Accurate, stable and robust performance is one of major criteria in choosing among different models. For industrial applications, it is also important to consider model applicability, ease of implementations and cost effectiveness.FindingsThis model turns out to be simple, accurate and stable, which helps fast estimates of thrust force. Through combining the Taguchi method's optimization results and the Gaussian process regression, more data could be expected to be extracted through fewer experiments.Originality/valueThrough combining the Taguchi method's optimization results and the Gaussian process regression, more data could be expected to be extracted through fewer experiments.
Bibliografia:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
ISSN:1573-6105
1573-6113
DOI:10.1108/MMMS-07-2022-0123