Quality control in die casting with neural networks

A. Faessler, M. Loher
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引用次数: 9

Abstract

Die casting is an attractive manufacturing process for metal pieces of complicated shape which are produced in large quantities. In applications of high safety standards comprising parts exposed to high mechanical stress a 100% X-ray examination after production is required. In this paper it is shown that this expensive and time-consuming process can be replaced by employing a classifier based on an artificial neural net. All the process parameters considered as relevant for the quality are input to the net, which then calculates a quality index. The net is trained with a learning base of 120 items. Thereafter, the results obtained by means of a multilayer perceptron, a learning vector quantization and a dynamic learning vector quantization are compared. Our dynamic learning vector quantization, which represents an attractive new approach, is discussed in some detail.
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基于神经网络的压铸件质量控制
压铸是大批量生产形状复杂的金属件的一种有吸引力的制造工艺。在高安全标准的应用中,包括暴露在高机械应力下的部件,需要在生产后进行100% x射线检查。本文表明,使用基于人工神经网络的分类器可以取代这种昂贵且耗时的过程。所有被认为与质量相关的工艺参数都输入到网络中,然后计算质量指数。该网络使用120个项目的学习基础进行训练。然后,比较了多层感知器、学习向量量化和动态学习向量量化得到的结果。我们的动态学习矢量量化是一种很有吸引力的新方法,我们对此进行了详细的讨论。
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