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Surface classification using artificial neural networks

机译:使用人工神经网络进行表面分类

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摘要

Abstract: Quality control tools in manufacturing industry would be significantly enhanced by the development of methods for the consistent and reliable classification of 3D imaged machined surfaces. Such tools would boost the capability of manufacturers to carry out inter- and intra-surface differentiation during the manufacturing phase of component life-cycles. This paper presents an approach to such a classification based on artificial neural networks (ANN). ANN techniques are increasingly sued to resolve demanding problems across the spectrum of engineering disciplines. They are particularly suited for handling classification problems, especially those dealing with noisy data and highly non-linear relationships. Furthermore, once trained, their operation gives them a distinct speed advantage over other technologies. In this paper, the authors use adaptive resonance theory and back propagation neural networks to classify a number of machined surfaces. The authors compare the results with those obtained from conventional methods to determine the effectiveness of the proposed technique. !21
机译:摘要:制造业的质量控制工具将通过开发3D成像机加工表面的一致和可靠分类的方法而显着提高。这些工具将提高制造商在组分寿命周期的制造阶段进行间面分化的能力。本文提出了一种基于人工神经网络(ANN)的这种分类的方法。 ANN技术越来越多地旨在解决跨越工程学科频谱的苛刻问题。它们特别适合处理分类问题,尤其是处理嘈杂数据和高度线性关系的分类问题。此外,一旦接受培训,他们的操作将使他们在其他技术中具有不同的速度优势。在本文中,作者使用自适应共振理论和后传播神经网络来分类许多机加工表面。作者将结果与由传统方法获得的结果进行比较,以确定所提出的技术的有效性。 !21

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