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Optimizing the auto-brazing process quality via a Taguchi-neural network approach in the automotive industry

机译:通过Taguchi神经网络方法在汽车行业优化自动钎焊工艺质量

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Many parameters affect the quality of the auto-brazing process. It is not easy to obtain optimal parameters of this process. This paper applies an integrated approach using the Taguchi method and a neural network (NN) to optimize the lap joint quality of air conditioner parts. The proposed approach consists of two phases. First phase executes initial optimization via Taguchi method to construct a database for the NN. In second phase, we use a NN with the Levenberg-Marquardt back-propagation (LMBP) algorithm to provide the nonlinear relationship between factors and the response based on the experimental data. Then, a well-trained network model is applied to obtain the optimal factor settings. The experimental results showed that the tensile strength of specimens of the optimal parameters via the proposed approach is better than apply Taguchi method only.
机译:许多参数会影响自动钎焊过程的质量。获得此过程的最佳参数并不容易。本文采用Taguchi方法和神经网络(NN)的集成方法来优化空调零件的搭接质量。拟议的方法包括两个阶段。第一阶段通过Taguchi方法执行初始优化,以构建NN的数据库。在第二阶段,我们将神经网络与Levenberg-Marquardt反向传播(LMBP)算法结合使用,以根据实验数据提供因子与响应之间的非线性关系。然后,使用训练有素的网络模型来获得最佳因子设置。实验结果表明,所提出的方法对最优参数试样的抗拉强度优于仅应用田口法。

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