2024
DOI: 10.1007/s42452-024-05766-9
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Corner cutting accuracy for thin-walled CFRPC parts using HS-WEDM

Mohamed AbouHawa,
Abeer Eissa

Abstract: Carbon Fiber-Reinforced polymer (CFRP) composite parts with thin-walled corners are in great demand in aircraft, cars, and precision instruments. Nonetheless, the fabrication of these parts is difficult due to their low stiffness. High-speed WEDM is an advanced technique for cutting thin CFRP components as it is a non-contact method for removing materials. Nonetheless, testing results demonstrate an unavoidable deformation in the thin-walled corners of the CFRP composite. The objective of this study is to impr… Show more

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Cited by 3 publications
(1 citation statement)
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“…Due to its capacity to model complex nonlinear relationships, polynomial regression is extensively used across various fields, such as optimizing production processes, analyzing survival data, and managing energy systems. AbouHawa et al used polynomial regression to model the intricate relationship between process parameters and product quality, predicting the optimal production conditions [14]. Oliveira et al analyzed survival data to understand and predict the relationship between the survival rates of specific diseases or conditions and their covariates [15].…”
mentioning
confidence: 99%
“…Due to its capacity to model complex nonlinear relationships, polynomial regression is extensively used across various fields, such as optimizing production processes, analyzing survival data, and managing energy systems. AbouHawa et al used polynomial regression to model the intricate relationship between process parameters and product quality, predicting the optimal production conditions [14]. Oliveira et al analyzed survival data to understand and predict the relationship between the survival rates of specific diseases or conditions and their covariates [15].…”
mentioning
confidence: 99%