Application of Multivariate Adaptive Regression Splines to Sheet Metal Bending Process for Springback Compensation

Application of Multivariate Adaptive Regression Splines to Sheet Metal Bending Process for Springback Compensation

Aşkın, Dilan Rasim;Tuna, Balkan;E., Platin Bülent;
matec web of conferences 2016 Vol. 80 pp. 14002-
204
askin2016applicationmatec

Abstract

An intelligent regression technique is applied for sheet metal bending processes to improve bending performance. This study is a part of another extensive study, automated sheet bending assistance for press brakes. Data related to material properties of sheet metal is collected in an online manner and fed to an intelligent system for determining the most accurate punch displacement without any offline iteration or calibration. The overall system aims to reduce the production time while increasing the performance of press brakes.

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ID: 21885
Ref Key: askin2016applicationmatec
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