This paper describes a machine learning approach to determine the abrasive belt wear of wide belt sanders used in industrial processes based on acoustic data, regardless of the sanding process-related parameters, Feed speed, Grit Size, and Type of material. Our approach utilizes Decision Tree, Random Forest, k-nearest Neighbors, and Neural network Classifiers to detect the belt wear from Spectrograms, Mel Spectrograms, MFCC, IMFCC, and LFCC, yielding an accuracy of up to 86.1% on five levels of belt wear. A 96% accuracy could be achieved with different Decision Tree Classifiers specialized in different sanding parameter configurations. The classifiers could also determine with an accuracy of 97% if the machine is currently sanding or is idle and with an accuracy of 98.4% and 98.8% detect the sanding parameters Feed speed and Grit Size. We can show that low-dimensional mappings of high-dimensional features can be used to visualize belt wear and sanding parameters meaningfully.
翻译:本文介绍了一种机器学习方法,用以根据声学数据确定工业过程中使用的宽带沙子带的磨损带穿戴宽带,而不论其与沙子过程有关的参数、进料速度、Grit大小和材料类型。我们的方法是使用决定树、随机森林、K-近距离邻居和神经网络分类器,检测来自spectrograms、Mel Spectrograms、MFCC、IMFCC和LFCC的磁带磨损带磨损,在5个带磨损级别上得出86.1%的精确度。如果不同决定树分类器具有不同的沙子参数配置,则可以达到96%的精确度。如果机器目前是沙子或闲晃,而且精确度为98.4%和98.8%的测量沙子参数,那么我们可以表明,高维特征的低维绘图可用于对腰带磨损和砂质参数进行有意义的可视化。