首页> 外文会议>Artifical Neural Networks in Engineering (ANNIE'96) Conference, held November 10-13, 1996, in St. Louis, Missouri, U.S.A. >Injection mold complexity evalaution model using a backpropagation network implemented on a parallel computer
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Injection mold complexity evalaution model using a backpropagation network implemented on a parallel computer

机译:使用并行计算机上实现的反向传播网络的注塑模具复杂性评估模型

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Mold design is one of the most important activities in the injection molding process. It is a complex task which affects several downstream processes including mold construction, quality of part produced, and cost of mold manufacture. Various factors such as part dimensions, number of undercuts, parting line, cavity detail, tolerances, and number of cavities per mold have been found influencing the complexity of a mold design. This paper demonstrates the application of a backpropagation neural network, running on a parallel computer, to evalaute the complexity level of a mold. The outputs from the network are classified into three levels: easy, moderate, and difficult. Ten part samples have been used to determine the ability of the network in classifying the levels of mold complexity.
机译:模具设计是注塑过程中最重要的活动之一。这是一项复杂的任务,会影响几个下游过程,包括模具构造,所生产零件的质量以及模具制造成本。已发现影响模具设计复杂性的各种因素,例如零件尺寸,底切数量,分型线,型腔细节,公差和每个模具的型腔数量。本文演示了在并行计算机上运行的反向传播神经网络在评估模具复杂度方面的应用。网络的输出分为三个级别:简单,中等和困难。已使用十个零件样本来确定网络对模具复杂程度进行分类的能力。

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