首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Modelling and optimization of the resistance spot welding process via a Taguchi-neural approach in the automobile industry
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Modelling and optimization of the resistance spot welding process via a Taguchi-neural approach in the automobile industry

机译:汽车行业中通过Taguchi神经方法对电阻点焊过程进行建模和优化

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摘要

Many parameters affect the quality of the resistance spot welding (RSW) process. It is not easy to obtain optimal parameters of the RSW process in the automobile industry. Conventionally, the Taguchi method has been widely used in engineering; however, with this method the desired results can only be obtained with the use of very discrete control factors, thus leading to uncertainty about the real optimum. In the process to weld the low-carbon sheet steels of the auto body, the Taguchi method was used for the initial optimization of the RSW process parameters. A neural network with the Levenberg-Marquardt back-propagation algorithm was then adopted to develop the relationships between the welding process parameters and tensile shear strength of each specimen. The optimal parameters of the RSW process were determined by simulating the process parameters using a well-trained neural network model. Experimental results illustrate the Taguchi-neural approach.
机译:许多参数会影响电阻点焊(RSW)工艺的质量。在汽车工业中,获得RSW工艺的最佳参数并不容易。传统上,田口方法已广泛用于工程中。但是,采用这种方法,只能通过使用非常离散的控制因素才能获得所需的结果,从而导致无法确定实际最优值。在焊接车身低碳钢板的过程中,使用Taguchi方法初步优化了RSW工艺参数。然后采用带有Levenberg-Marquardt反向传播算法的神经网络来建立焊接工艺参数与每个试样的拉伸剪切强度之间的关系。 RSW过程的最佳参数是通过使用训练有素的神经网络模型模拟过程参数来确定的。实验结果说明了田口神经方法。

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