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An artificial neural network model for predicting joint performance in ultrasonic welding of composites

机译:一种人工神经网络模型,用于预测复合材料超声波焊接的关节性能

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Ultrasonic welding is a robust and cost-effective joining method. It can be applied to joining of metals, polymers and composites. Several approaches have been used in the identification of the relationships between input parameters of the ultrasonic welding (e.g., welding energy, time) and the joint strength, including experimental methods and finite element based prediction. Both these two methods are accurate but require long lead time for model development. The empirically identified relationships may be very complex and the accuracy of prediction is sensitive to the variations of welding conditions. Hence, a more robust and intelligent method is needed for predicting the joint strength. In this paper, an artificial neural network (ANN) method is proposed for predicting the joint strength in ultrasonic welding of polymer composites based on experiments. The input parameters are welding energy, plunging speed, trigger force, surface condition, and annealing temperature. The output parameter is the maximum loading force in a lap shear test. A supervised algorithm of training the network is applied because the equations governing the process are very complex and the conditions of the welding are continuously changing. The trained network is used for determining the quantitative relationship between significant inputs and output parameters as well as for predicting the performance for other inputs which are not experimentally tested or modeled, but fit in the range of training. The ultrasonic welding ANN is a dynamic model which can be continuously trained with new cases, serving as a flexible and cost-effective tool for designing welding procedure.
机译:超声波焊接是一种坚固且经济高效的连接方法。它可以应用于金属,聚合物和复合材料的连接。在识别超声波焊接的输入参数(例如,焊接能量,时间)和关节强度的关系的识别中使用了几种方法,包括实验方法和基于有限元的预测。这两种方法都准确,但需要长时间发出模型开发。经验鉴定的关系可能非常复杂并且预测的准确性对焊接条件的变化敏感。因此,需要更强大和智能的方法来预测接合强度。本文提出了一种人工神经网络(ANN)方法,用于预测基于实验的聚合物复合材料超声波焊接中的关节强度。输入参数焊接能量,速度,触发力,表面状况和退火温度。输出参数是LAP剪切测试中的最大装载力。应用网络的监督算法,因为控制该过程的方程非常复杂,焊接条件连续变化。培训的网络用于确定显着输入和输出参数之间的定量关系,以及预测未进行实验测试或建模的其他输入的性能,但适合培训范围。超声波焊接ANN是一种动态模型,可以通过新案例持续培训,作为用于设计焊接过程的灵活且经济高效的工具。

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