Kim Hyein, Nam Soohyun, Nam Eunseok
Smart Manufacturing System R&D Department, Korea Institute of Industrial Technology (KITECH), Cheonan 31056, Republic of Korea.
Digital Transformation R&D Department, Korea Institute of Industrial Technology (KITECH), Ansan 15588, Republic of Korea.
Sensors (Basel). 2023 Nov 26;23(23):9416. doi: 10.3390/s23239416.
Recently, extensive research has actively been conducted in relation to intelligent manufacturing systems. During the machining process, various factors, such as geometric errors, vibrations, and cutting force fluctuations, lead to shape errors. When a shape error exceeds the tolerance, it results in improper assembly or functionality issues in the assembled part. Predicting shape errors before or during the machining process helps increase production efficiency. In this paper, we propose a methodology that uses monitoring signals and on-machine measurement (OMM) results to predict machining quality in real time. We investigate the correlation between monitoring signals and OMM results and then construct a machine learning model for shape error estimation. The developed model implements a tool offset compensation strategy. The performance of the proposed method is evaluated under various sliding window sizes and the compensation weights. The experimental results confirmed that the proposed algorithm is effective for obtaining a uniform machining quality.
近年来,针对智能制造系统开展了广泛的研究。在加工过程中,诸如几何误差、振动和切削力波动等各种因素会导致形状误差。当形状误差超过公差时,会导致装配不当或装配部件出现功能问题。在加工过程之前或期间预测形状误差有助于提高生产效率。在本文中,我们提出了一种利用监测信号和机上测量(OMM)结果实时预测加工质量的方法。我们研究了监测信号与OMM结果之间的相关性,然后构建了一个用于形状误差估计的机器学习模型。所开发的模型实施了刀具偏置补偿策略。在所提出的方法在各种滑动窗口大小和补偿权重下进行了性能评估。实验结果证实,所提出的算法对于获得均匀的加工质量是有效的。