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Springback Prediction for Complex Sheet Metal Forming Parts Based on Genetic Neural Network

机译:基于遗传神经网络的复杂金属形成零件的回弹预测

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Accurate springback prediction and control is essential for sheet metal forming. In this paper, back propagation (BP) neural network and genetic algorithm (GA) was introduced to predict springback of complex sheet metal forming parts. GA was used to optimize the weights of BP neural network and the results were compared with those of traditional BP neural network and regression model. The comparison indicated that the prediction precision of GA-BP model was rather accurate. The model can be used to predicate springback and provides a theoretical guide for complex sheet metal parts forming, tools designing and die modification.
机译:精确的回弹预测和控制对于金属板形成至关重要。在本文中,引入了回到传播(BP)神经网络和遗传算法(GA)以预测复杂金属板形成部件的回弹。 GA用于优化BP神经网络的重量,并将结果与​​传统的BP神经网络和回归模型进行比较。比较表明,GA-BP模型的预测精度相当准确。该模型可用于谓词回弹,并为复杂金属板件形成,工具设计和模具改造提供了理论指南。

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