通过对拉深过程中压边量的在线测量确定最佳压边力

IF 3.3 Q2 ENGINEERING, MANUFACTURING
Maria Emanuela Palmieri, Andrea Nono Dachille, Luigi Tricarico
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引用次数: 0

摘要

在成形过程中,噪声参数的变化会对产品质量产生负面影响。为了防止这些波动造成的浪费,本研究提出了一种对深拉深工艺进行在线优化的方法。考虑的噪声参数是摩擦系数,假设在毛坯-刀具界面的润滑条件的变化。该方法通过跟踪空白在临界点处的拉深来估计过程中的噪声因子可变性。利用这一估计,计算出最优压边力(BHF),然后在线调整以改变毛坯滑动,防止零件出现关键问题。为此,建立了一个深拉深案例的有限元模型,并利用数值模拟结果构建代理模型,同时估算摩擦系数和最优压边力。通过初步实验验证了有限元模型的预测能力,并对控制逻辑进行了数值验证。结果表明,这种控制方式是有效的。只需调整一次压边力,就可以获得无缺陷的部件。这种方法克服了反馈控制通常需要多个调整步骤的局限性。确定了估算摩擦系数所需的时间和在不产生缺陷的情况下调整压边力的最大可用时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of the Optimal Blank Holder Force through In-Line Measurement of Blank Draw-In in a Deep Drawing Process
During the forming process, variations in noise parameters can negatively impact product quality. To prevent waste from these fluctuations, this study suggests a method for the in-line optimisation of the deep drawing process. The noise parameter considered is the friction coefficient, assuming the variability in lubrication conditions at the blank–tool interface. The proposed approach estimates the noise factor variability during the process by tracking the draw-in of the blank at critical points. Using this estimation, the optimal blank holder force (BHF) is calculated and then adjusted in-line to modify blank sliding and prevent critical issues on the component. For this purpose, a Finite Element (FE) model of a deep drawing case study was developed, and numerical simulation results were used to construct surrogate models while estimating both the friction coefficient and optimal BHF. The FE model’s predictive capability was verified through preliminary experimental tests, and the control logic was numerically validated. Results show the effectiveness of this control type. By adjusting the BHF just once, a defect-free component is achieved. This method overcomes the limitations of feedback controls, which often need multiple adjustment steps. The time required to estimate the friction coefficient and the maximum time available for adjusting the BHF without causing defects was identified.
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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