基于吸光率逆估计的激光弯曲综合有限元-神经网络模型

Ravi Kant, Shrikrishna N. Joshi, Uday S. Dixit
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引用次数: 24

摘要

激光弯曲过程中激光能量在工件表面的吸收是精确计算弯曲角的一个重要而关键的因素。本文提出了一种结合有限元-神经网络的方法来计算激光弯曲过程中弯曲角的精确值。首先,利用ABAQUS软件建立了基于有限元法的三维非线性瞬态热力数值模型。利用有限元模型和实际实验数据,用逆分析方法计算了不同工艺条件下吸收率的适宜值。在给定的输入过程条件下,基于合适的吸光率值,建立了一种人工神经网络模型,用于准确、快速地预测吸光率。然后将预测的吸光率用于有限元模型中,以精确计算弯曲角。通过实验验证了该方法的有效性。验证结果表明,该方法能够以较好的精度(平均预测误差为4.14%)计算出弯曲角。该方法也适用于其他基于激光的制造过程的数值模拟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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An integrated FEM-ANN model for laser bending process with inverse estimation of absorptivity

Absorption of laser energy into the worksheet surface during laser bending process is an important and critical factor for accurate computation of the bend angle. This paper presents an integrated FEM-ANN approach to compute accurate value of bend angle during laser bending process.

Initially, a finite element method (FEM) based three-dimensional nonlinear transient thermo-mechanical numerical model is developed using ABAQUS package. Using FEM model and data obtained in actual experiments, the proper values of absorptivity for various sets of process conditions are computed by inverse analysis technique. Based on the proper values of absorptivity, an artificial neural network (ANN) model is developed for accurate and quick prediction of absorptivity for given input process conditions. The predicted absorptivity is then employed in the FEM model for accurate computation of bend angle.

The performance of the integrated approach is verified by conducting experiments.

The verification results showed that the proposed approach is able to compute the bend angle with a very good accuracy (average prediction error of 4.14?%). The proposed approach can also be suitable for the numerical simulations of other laser based manufacturing processes.

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