研磨
特征提取
聚类分析
声发射
快速傅里叶变换
计算机科学
特征(语言学)
模式识别(心理学)
人工智能
砂轮
工程类
声学
机械工程
算法
语言学
哲学
物理
作者
Daniel J. Gonzalez,J. Álvarez,J.A. Sánchez,Leire Godino,I. Pombo
出处
期刊:Sensors
[Multidisciplinary Digital Publishing Institute]
日期:2022-09-13
卷期号:22 (18): 6911-6911
被引量:13
摘要
Tool wear monitoring is a critical issue in advanced manufacturing systems. In the search for sensing devices that can provide information about the grinding process, Acoustic Emission (AE) appears to be a promising technology. The present paper presents a novel deep learning-based proposal for grinding wheel wear status monitoring using an AE sensor. The most relevant finding is the possibility of efficient feature extraction form frequency plots using CNNs. Feature extraction from FFT plots requires sound domain-expert knowledge, and thus we present a new approach to automated feature extraction using a pre-trained CNN. Using the features extracted for different industrial grinding conditions, t-SNE and PCA clustering algorithms were tested for wheel wear state identification. Results are compared for different industrial grinding conditions. The initial state of the wheel, resulting from the dressing operation, is clearly identified for all the experiments carried out. This is a very important finding, since dressing strongly affects operation performance. When grinding parameters produce acute wear of the wheel, the algorithms show very good clustering performance using the features extracted by the CNN. Performance of both t-SNE and PCA was very much the same, thus confirming the excellent efficiency of the pre-trained CNN for automated feature extraction from FFT plots.
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