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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Automatic grinding burn recognition based on time-frequency analysis and convolutional neural networks
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Automatic grinding burn recognition based on time-frequency analysis and convolutional neural networks

机译:基于时频分析和卷积神经网络的自动研磨烧伤识别

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摘要

The grinding process is employed to provide a high-quality surface finish and tight dimensional tolerances to the manufactured components. However, it has the disadvantage of generating a large amount of heat during machining that is mostly transferred to the workpiece when employing conventional grinding wheels, which makes it highly susceptible to thermal damage. In terms of the different thermal damage associated with this process, grinding burn deserves special attention, as it affects the aesthetic aspect of the machined components. Since there is an increasing demand for productivity and high-quality products, the use of systems to monitor grinding burn becomes crucial when global competitiveness is in evidence. In this study, a novel approach, based on time-frequency images of acoustic emission signals and convolutional neural networks was proposed to monitor grinding burn. Experimental data were obtained from grinding tests on N2711 grade steel under different cutting conditions. Three different time-frequency analyses, including the short-time Fourier transform, the continuous wavelet transform, and the Hilbert-Huang transform, were used to generate the images that served as input for the CNN models. Through the proposed approach, grinding burn was successfully recognized, as the highest accuracy obtained by the models was 99.4% on the test dataset. This result is superior when considering those reported in the literature, in which conventional machine learning techniques are employed for grinding burn monitoring.
机译:研磨工艺用于为制造部件提供高质量的表面光洁度和紧密的尺寸公差。然而,在采用传统的砂轮时,在加工过程中产生大量热量的缺点是在采用传统的砂轮时产生大量热量,这使其使其高易受热损伤的影响。就与此过程相关的不同热损坏而言,磨削烧伤值得特别注意,因为它影响了加工组件的美学方面。由于对生产力和高质量产品的需求越来越大,当全球竞争力有证据时,使用系统来监控磨损的系统变得至关重要。在本研究中,提出了一种基于声发射信号的时频图像和卷积神经网络的新方法来监控磨损。在不同切割条件下从N2711级钢的研磨试验获得了实验数据。使用三种不同的时频分析,包括短时傅里叶变换,连续小波变换和希尔伯特 - 黄变换,用于生成作为CNN模型的输入的图像。通过所提出的方法,成功认识到磨削烧伤,因为模型获得的最高精度在测试数据集上的99.4%。当考虑文献中报告的那些时,该结果是优越的,其中用于研磨烧伤监测的传统机器学习技术。

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