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首页> 外文期刊>International Journal of Computer Integrated Manufacturing >Classification and selection of sheet forming processes with machine learning
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Classification and selection of sheet forming processes with machine learning

机译:机器学习纸张形成过程的分类和选择

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摘要

Sheet metal forming is a critical component of modern manufacturing. The procedure for selecting a suitable manufacturing process to achieve the final geometry of a metal part is unstructured and heavily reliant on human expertise. Similarly, classification and design of new metal forming processes has yet to be automated. In this study, a machine learning approach was used for the first time to identify the manufacturing process that formed a part solely from the final geometry. Several neural network configurations were tested with different geometry representation methods. The best performing classifier employed a deep convolutional neural network and achieved an accuracy of 89%, namely when the geometry was given through a mapping of the mean and Gaussian curvatures. The high accuracy rate establishes that automated methods can perform this step between design and manufacture, thus eliminating the need for human experts in matching each product to a suitable forming method.
机译:金属板形成是现代制造业的关键组成部分。 选择合适的制造过程以实现金属部件的最终几何形状的程序是非结构化的,并严重依赖于人类专业知识。 类似地,新的金属成型过程的分类和设计尚未自动化。 在这项研究中,首次使用机器学习方法来识别仅从最终几何形状形成一部分的制造过程。 用不同的几何表示方法测试了几种神经网络配置。 最佳性能的分类器采用深卷积神经网络,并在通过纱线和高斯曲率的绘图给出几何形状时实现了89%的精度。 高精度率建立了自动化方法可以在设计和制造之间进行这一步骤,从而消除了对每个产品与合适的成形方法相匹配的人体专家的需求。

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