Earing Reduction by Varying Blank Holding Force in Deep Drawing with Deep Neural Network
- Alternative Title
- Earing Reduction by Varying Blank Holding Force in Deep Drawing with Deep Neural Network
- In the present study, we propose a novel method of varying blank holding force (BHF) with the segmental blank holder and investigated its influence on the earing reduction in the circular deep drawing process of an aluminum alloy sheet. Based on the analysis of cup height profile, the prin-ciple of varying BHF using segmental blank holder was presented and analyzed by analytical theory and numerical simulation. The optimal varying BHF was reasonably determined and compared by using the analytical model and deep neural network (DNN) model integrated with genetic algorithm (GA). The integrated DNN-GA model revealed an accurate prediction and op-timization of varying BHF for the minimum earing height variation, which showed a superior re-sult to the analytical model. The optimal varying BHF exhibited a significant influence on the ear-ing formation, resulting in the noticeable decrease of earing height variation. For volume con-sistency, it was found that an increase in thickness at the cup wall region predicted with the op-timal varying BHF was achieved in the transverse direction, which implies an improvement of deep-drawability. Such results indicate that the varying BHF is more reasonable and effective than the uniform BHF. Furthermore, the material properties of the blank sheet also affected the reduction of earing in the deep drawing with varying BHF. The present study revealed that the lower the material strength, the more significant the earing reduction in the deep drawing with varying BHF will be.
- 김동규; 단정통; 이호원; 쩐 민 띠엔
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- blank holding force; deep drawing; deep neural network; earing; genetic algorithm
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