Abu-Mahfouz Issam, Banerjee Amit, Rahman Esfakur
School of Science, Engineering, and Technology, Penn State Harrisburg, Middletown, PA 17057, USA.
Materials (Basel). 2021 Sep 3;14(17):5050. doi: 10.3390/ma14175050.
In metal-cutting processes, the interaction between the tool and workpiece is highly nonlinear and is very sensitive to small variations in the process parameters. This causes difficulties in controlling and predicting the resulting surface finish quality of the machined surface. In this work, vibration signals along the major cutting force direction in the turning process are measured at different combinations of cutting speeds, feeds, and depths of cut using a piezoelectric accelerometer. The signals are processed to extract features in the time and frequency domains. These include statistical quantities, Fast Fourier spectral signatures, and various wavelet analysis extracts. Various feature selection methods are applied to the extracted features for dimensionality reduction, followed by applying several outlier-resistant unsupervised clustering algorithms on the reduced feature set. The objective is to ascertain if partitions created by the clustering algorithms correspond to experimentally obtained surface roughness data for specific combinations of cutting conditions. We find 75% accuracy in predicting surface finish from the Noise Clustering Fuzzy C-Means (NC-FCM) and the Density-Based Spatial Clustering Applications with Noise (DBSCAN) algorithms, and upwards of 80% accuracy in identifying outliers. In general, wrapper methods used for feature selection had better partitioning efficacy than filter methods for feature selection. These results are useful when considering real-time steel turning process monitoring systems.
在金属切削加工过程中,刀具与工件之间的相互作用具有高度非线性,并且对加工参数的微小变化非常敏感。这给控制和预测加工表面的最终表面光洁度质量带来了困难。在这项工作中,使用压电加速度计在不同的切削速度、进给量和切削深度组合下,测量了车削过程中沿主切削力方向的振动信号。对这些信号进行处理,以提取时域和频域中的特征。这些特征包括统计量、快速傅里叶频谱特征以及各种小波分析提取量。将各种特征选择方法应用于提取的特征以进行降维,然后对降维后的特征集应用几种抗离群点的无监督聚类算法。目的是确定聚类算法创建的分区是否与特定切削条件组合下实验获得的表面粗糙度数据相对应。我们发现,噪声聚类模糊C均值(NC-FCM)算法和基于密度的带噪声空间聚类应用(DBSCAN)算法在预测表面光洁度方面的准确率为75%,在识别离群点方面的准确率超过80%。一般来说,用于特征选择的包装器方法比用于特征选择的过滤方法具有更好的分区效果。当考虑实时钢件车削过程监测系统时,这些结果是有用的。