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A deployed engineering design retrieval system using neural networks

机译:使用神经网络的已部署工程设计检索系统

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We describe a neural information retrieval system (NIRS), now in production within the Boeing Company, which has been developed for the identification and retrieval of engineering designs. Two-dimensional and three-dimensional representations of engineering designs are input to adaptive resonance theory (ART-1) neural networks to produce clusters of similar parts. The trained networks are then used to recall an appropriate cluster when queried with a new part design. This application is of great practical value to industry because it aids in the identification, retrieval, and reuse of engineering designs, potentially saving large amounts of nonrecurring costs. In this paper, we review the application, the neural architectures and algorithms, and then give the current status and the lessons learned in developing a neural network system for production use in industry.
机译:我们描述了一种波音公司目前正在生产的神经信息检索系统(NIRS),该系统已开发用于工程设计的识别和检索。工程设计的二维和三维表示被输入到自适应共振理论(ART-1)神经网络中,以产生相似零件的簇。当使用新零件设计查询时,经过训练的网络可用于召回适当的集群。该应用程序对工业设计具有重大的实用价值,因为它有助于工程设计的识别,检索和重用,从而可能节省大量的非经常性费用。在本文中,我们回顾了神经网络的应用,神经架构和算法,然后给出了开发用于工业生产的神经网络系统的现状和经验教训。

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