...
首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Application of machine learning for acoustic emissions waveform to classify galling wear on sheet metal stamping tools
【24h】

Application of machine learning for acoustic emissions waveform to classify galling wear on sheet metal stamping tools

机译:应用机器学习的声发射波形对钣金冲压模具的磨损进行分类

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Galling wear in sheet metal stamping processes can degrade the product quality and adversely affect mass production. Studies have shown that acoustic emission (AE) sensors can be used to measure galling. In the literature, attempts have been made to correlate the AE features and galling wear in the sheet metal stamping process. However, there is very little attempt made to implement machine learning (ML) techniques to detect AE features that can classify non-galling and galling wear as well as provide additional wear-state information in the form of strong visualisations. In the first part of the paper, time domain and frequency domain analysis is used to determine the AE features that can be used for unsupervised classification. Due to galling wear progression on the stamping tools, the behaviour of AE waveform changes from stationary to a non-stationary state. The initial change in AE waveform behaviour due to galling wear initiation is very difficult to observe due to the ratio of change against the large data size of the waveform. Therefore, a time-frequency technique "Hilbert Huang transform" is applied to the AE waveform as that is sensitive to change of wear state and is used for the classification of "non-galling" and the "transition of galling." Also, the unsupervised learning algorithm fuzzy clustering is used as comparison against the supervised learning techniques. Despite not knowing a priori the wear-state labels, fuzzy clustering is able to define three relatively accurate distinct classes: "unworn", "transition to galling" and "severe galling". In the second part of the paper, the AE features are used as an input to the supervised ML algorithms to classify AE features related to non-galling and galling wear. An accuracy of 96 was observed for the prediction of non-galling and galling wear using classification, regression tree (CART) and neural network techniques. In the last part, a reduced short time Fourier transform of top 10 absolute maximum component AE feature sets that correlates to wear measurement data "profile depth" is used to train and test supervised neural network and CART algorithms. The algorithms predicted the profile depth of 530 unseen parts (530 unseen cases), which did not have any associated labelled depth data. This shows the power of using ML techniques that can use a small data training set to provide additional predicted wear state on a much larger data set. Furthermore, the ML techniques presented in this paper can be used further to develop a real-time measurement system to detect the transition of galling wear from measured AE features.
机译:钣金冲压过程中的磨损会降低产品质量并对批量生产产生不利影响。研究表明,声发射 (AE) 传感器可用于测量磨损。在文献中,已经尝试将钣金冲压过程中的 AE 特征和磨损相关联。然而,很少有人尝试实施机器学习 (ML) 技术来检测 AE 特征,这些特征可以对非磨损和磨损进行分类,并以强可视化的形式提供额外的磨损状态信息。在本文的第一部分,使用时域和频域分析来确定可用于无监督分类的声发射特征。由于冲压模具上的磨损进展,声发射波形的行为从静止状态变为非静止状态。由于磨损启动导致的声发射波形行为的初始变化非常难以观察到,因为变化与波形的大数据量之比。因此,将时频技术“Hilbert Huang变换”应用于AE波形,因为它对磨损状态的变化很敏感,用于“非磨损”和“磨损过渡”的分类。此外,还使用了无监督学习算法模糊聚类与监督学习技术进行了比较。尽管不能先验地知道磨损状态标签,但模糊聚类能够定义三个相对准确的不同类别:“未磨损”、“过渡到磨损”和“严重磨损”。在本文的第二部分,AE 特征用作监督 ML 算法的输入,以对与非磨损和磨损相关的 AE 特征进行分类。使用分类、回归树 (CART) 和神经网络技术预测非磨损和磨损的准确率为 96%。在最后一部分中,使用与磨损测量数据“轮廓深度”相关的前 10 个绝对最大分量 AE 特征集的简化短时傅里叶变换来训练和测试监督神经网络和 CART 算法。这些算法预测了 530 个看不见的部分(530 个看不见的情况)的剖面深度,这些部分没有任何相关的标记深度数据。这显示了使用 ML 技术的强大功能,该技术可以使用小型数据训练集在更大的数据集上提供额外的预测磨损状态。此外,本文中介绍的ML技术可以进一步用于开发实时测量系统,以检测从测量的AE特征中磨损的过渡。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号