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基于遗传神经网络的数字化渐进成形回弹预测
引用本文:韩飞,莫健华,龚攀.基于遗传神经网络的数字化渐进成形回弹预测[J].华中科技大学学报(自然科学版),2008,36(1):121-124.
作者姓名:韩飞  莫健华  龚攀
作者单位:华中科技大学,材料成形及模具技术国家重点实验室,湖北,武汉,430074
摘    要:针对传统BP神经网络具有易陷入局部极小等缺陷,采用遗传算法(GA)对BP神经网络(初始权值、阈值)进行了优化,将人工智能技术和激光扫描测量技术有机结合,建立了金属板材数字化渐进成形回弹预测的遗传神经网络模型,对计算结果与BP神经网络预测结果进行比较,表明遗传神经网络预测值与实测值之间具有很高的相关性和精确度,该模型可用于预测渐进成形工艺参数与回弹量之间的映射关系,为金属板材数字化渐进成形回弹量的预测开辟了一条新的途径.

关 键 词:渐进成形  回弹预测  遗传算法  BP神经网络
文章编号:1671-4512(2008)01-0121-04
收稿时间:2006-12-15

Incremental sheet NC forming springback prediction using genetic neural network
Han Fei,Mo Jianhua,Gong Pan.Incremental sheet NC forming springback prediction using genetic neural network[J].JOURNAL OF HUAZHONG UNIVERSITY OF SCIENCE AND TECHNOLOGY.NATURE SCIENCE,2008,36(1):121-124.
Authors:Han Fei  Mo Jianhua  Gong Pan
Abstract:Artificial neural networks were introduced to the process of incremental sheet NC forming(ISF).There were some disadvantages in BP(backpro pagation) neural networks,such as easily falling into local minimum point,BP networks were optimized by genetic algorithm(GA).By combination of artificial intelligence technology with laser-scanning measuring,built was genetic neural network model for incremental sheet metal NC(numerical control) forming springback prediction.The calculated results were compared with those of traditional BP neural network.The results showed that the prediction precision was precise and the pertinence between the predicted GA-BP and measured values were considerably high.Thus,this model can be used to predicate the relation between the process parameters of ISF and springback and provides a new way to predicate the springback of ISF.
Keywords:incremental sheet NC forming(ISF)  springback prediction  genetic algorithm  BP neural network
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