精密工学会誌論文集
Online ISSN : 1881-8722
Print ISSN : 1348-8724
ISSN-L : 1348-8716
論文
鍛造工程設計のためのニューラルネットワーク構築に関する検討
森 敏彦李 蘇洋
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ジャーナル フリー

2006 年 72 巻 3 号 p. 337-341

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抄録
It is a difficult task to select the process variables and determine the optimum design using trial-and-error procedure in the metals industry. In this paper, an attempt has been made to combine finite element analyses (FEA) and artificial neural network (ANN) to study the effect of process variables on material flow behavior and required forming load in cold forging. The process variables are used as the inputs and the finite element results as the target outputs, a neural network model was established. In order to achieve a proper neural network model which can generalize the training data obtained from FE data well, some crucial training parameters, such as learning algorithms, hidden neurons and hidden layers, number of training data and error goal, have been investigated. Finally, the optimum neural network model was used to predict random unseen data and thus find the optimum process variables according to a certain decision rule.
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© 2006 公益社団法人 精密工学会
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