2023
DOI: 10.3390/ma16083251
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Developing a Support Vector Regression (SVR) Model for Prediction of Main and Lateral Bending Angles in Laser Tube Bending Process

Abstract: The laser tube bending process (LTBP) is a new and powerful manufacturing method for bending tubes more accurately and economically by eliminating the bending die. The irradiated laser beam creates a local plastic deformation area, and the bending of the tube occurs depending on the magnitude of the heat absorbed by the tube and its material characteristics. The main bending angle and lateral bending angle are the output variables of the LTBP. In this study, the output variables are predicted by support vector… Show more

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Cited by 6 publications
(2 citation statements)
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“…SVR [44] offers the flexibility to define how much error is acceptable in a model and is used to find an appropriate line (or a hyperplane in higher dimensions) to fit the data. Therefore, the goal of SVR is to find a function that approximates the relationship between the input variables and a continuous target variable while minimizing the prediction error.…”
Section: Support Vector Regressionmentioning
confidence: 99%
“…SVR [44] offers the flexibility to define how much error is acceptable in a model and is used to find an appropriate line (or a hyperplane in higher dimensions) to fit the data. Therefore, the goal of SVR is to find a function that approximates the relationship between the input variables and a continuous target variable while minimizing the prediction error.…”
Section: Support Vector Regressionmentioning
confidence: 99%
“…As a typical kernel-based ML algorithm, SVR is a promotion of support vector machine (SVM). It also follows the function approximation algorithm of SVM and solves the multivariate nonlinear regression estimation problem by introducing an alternative loss function [70]. As a supervised learning method based on the principle of structural risk minimization, SVR has good generalization ability in solving small-sample, nonlinear, and high-dimensional problems [71].…”
Section: Svrmentioning
confidence: 99%