Prediction of Weld Strength in Power Ultrasonic Spot Welding Process Using Artificial Neural Network (ANN) and Back Propagation method

Ziad Al Sarraf
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Abstract

In this presented work, an Artificial Neural Network (ANN) connected with the backpropagation method was employed to predict the strength of joining materials that were carried out by using an ultrasonic spot welding process. The models created in this study were investigated, and their process parameters were analyzed. These parameters were classified and set as input variables like applying pressure, time of duration weld and trigger of vibrating amplitude. In contrast, the weld strength of joining dissimilar materials (Al-Cu) is set as output parameters. The identification from the process parameters is obtained using several experiments and finite element analyses based on prediction. The results of actual and numerical are accurate and reliable; however, their complexity has a significant effect due to being sensitivity to the condition variation of welding processes. Therefore, an efficient technique like an artificial neural network coupled with the backpropagation method is required to use the experiments as input data in the simulation of the ultrasonic welding process, finding the adequacy of the modeling process in the prediction of weld strength and to confirm the performance of using mathematical methods. The results of the selecting non-linear models show a noticeable potency when using ANN with a backpropagation method in providing high accuracy compared with other results obtained by conventional models.
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基于人工神经网络和反向传播方法的功率超声点焊焊缝强度预测
在本研究中,采用人工神经网络(ANN)与反向传播方法相结合,对超声点焊过程中焊接材料的强度进行了预测。对所建立的模型进行了研究,并对其工艺参数进行了分析。将这些参数分类并设置为施加压力、持续焊接时间和振动振幅触发等输入变量。将不同材料(Al-Cu)的焊接强度作为输出参数。通过多次试验和基于预测的有限元分析,得到了对工艺参数的识别。实际和数值计算结果准确可靠;然而,由于对焊接过程的条件变化非常敏感,其复杂性对焊接过程的影响很大。因此,在超声焊接过程的仿真中,需要一种高效的技术,如人工神经网络与反向传播方法相结合,将实验作为输入数据,发现建模过程在焊缝强度预测中的充充性,并确认使用数学方法的性能。选择非线性模型的结果表明,与传统模型相比,采用反向传播方法使用人工神经网络具有明显的优势,可以提供更高的精度。
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来源期刊
Academic Journal of Manufacturing Engineering
Academic Journal of Manufacturing Engineering Engineering-Industrial and Manufacturing Engineering
CiteScore
0.40
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