激光透射焊接熔池尺寸预测的FEM-ANN序列建模

B. Acherjee
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引用次数: 3

摘要

在本章中,采用序列建模方法对激光传输焊接过程进行建模,采用有限元法(FEM)和人工神经网络(ANN)技术在较短的时间内预测焊池尺寸。使用脚本语言APDL (ANSYS®参数化设计语言)开发三维有限元模型。在预处理过程中,将激光透射焊接过程中的所有主要物理现象都纳入到模型物理中。根据模型预测的温度场,计算焊缝熔池尺寸(即焊缝宽度和焊深)。利用所建立的有限元模型预测的焊缝尺寸进一步用于神经网络模型的训练。从测试数据集的结果中可以发现,所开发的人工神经网络模型能够以显著的准确性预测输出,并且预测时间更短,从而节省了时间、成本和进行实验的精力。
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FEM-ANN Sequential Modelling of Laser Transmission Welding for Prediction of Weld Pool Dimensions
In this chapter, a sequential modeling approach has been applied for modeling of laser transmission welding process using finite element method (FEM) and artificial neural network (ANN) technique to predict the weld pool dimensions in a shorter time frame. The scripting language, APDL (ANSYS® Parametric Design Language), is used to develop the three-dimensional FE model. During preprocessing, all the major physical phenomena of laser transmission welding process are incorporated into the model physics. Based on the temperature field predicted by the model, the weld pool dimensions (i.e., weld width and weld penetration depth) are calculated. The weld dimensions predicted by the developed FE model are further used for training a neural network model. It is found from the results of test data sets that the developed ANN model can predict the outputs with significant accuracy and takes less prediction time, which in turn saves time, cost, and the efforts for performing experiments.
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