2022
DOI: 10.1007/s10845-021-01902-z
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Predicting part distortion field in additive manufacturing: a data-driven framework

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Cited by 13 publications
(3 citation statements)
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“…5(b)), i.e., when considering all the axes, with a maximum value of 0.25 mm being seen in the Nickel layer. As discussed in the literature [21][22][23][24], distortions are changes in the shape and dimensions of components subjected to thermal cycling, as a result of material movement (plastic deformation) that occurs due to the thermal stresses developed during the arc deposition manufacturing process. Distortions affect the shape and dimensions of a component or structure both globally and locally (when they are also called deformities).…”
Section: Simulation Of the Electric Arc Process With Controlled Short...mentioning
confidence: 99%
“…5(b)), i.e., when considering all the axes, with a maximum value of 0.25 mm being seen in the Nickel layer. As discussed in the literature [21][22][23][24], distortions are changes in the shape and dimensions of components subjected to thermal cycling, as a result of material movement (plastic deformation) that occurs due to the thermal stresses developed during the arc deposition manufacturing process. Distortions affect the shape and dimensions of a component or structure both globally and locally (when they are also called deformities).…”
Section: Simulation Of the Electric Arc Process With Controlled Short...mentioning
confidence: 99%
“…Predicting when machines will reach their maximum pace allows automated systems to flexibly adapt manufacturing processes to changes in the system conditions, increasing productivity while decreasing energy use. Comparisons with province forecasting analytics were made using detailed experimental evaluations of actual data from a metal packaging mill, improving the suggested method's efficacy (Aljarrah et al, 2023). Peng et al (2023) introduced laser additive manufacturing optimization to enhance their external qualities.…”
Section: Literature Reviewmentioning
confidence: 99%
“…In AM, the classification is used for pore detection from process monitoring data [15]. The regression capabilities can be used to predict the distortion of AM parts [16][17][18]. However, published results were limited in the geometrical variety of the specimens.…”
Section: Neural Networkmentioning
confidence: 99%