Berus Lucijano, Hernavs Jernej, Potocnik David, Sket Kristijan, Ficko Mirko
Intelligent Manufacturing Laboratory, Production Engineering Institute, Faculty of Mechanical Engineering, University of Maribor, Smetanova ulica 17, 2000 Maribor, Slovenia.
Lab3D Laboratory, Rudolfovo-Science and Technology Centre Novo Mesto, Podbreznik 15, 8000 Novo Mesto, Slovenia.
Sensors (Basel). 2024 Dec 31;25(1):169. doi: 10.3390/s25010169.
Direct verification of the geometric accuracy of machined parts cannot be performed simultaneously with active machining operations, as it usually requires subsequent inspection with measuring devices such as coordinate measuring machines (CMMs) or optical 3D scanners. This sequential approach increases production time and costs. In this study, we propose a novel indirect measurement method that utilizes motor current data from the controller of a Computer Numerical Control (CNC) machine in combination with machine learning algorithms to predict the geometric accuracy of machined parts in real-time. Different machine learning algorithms, such as Random Forest (RF), k-nearest neighbors (k-NN), and Decision Trees (DT), were used for predictive modeling. Feature extraction was performed using Tsfresh and ROCKET, which allowed us to capture the patterns in the motor current data corresponding to the geometric features of the machined parts. Our predictive models were trained and validated on a dataset that included motor current readings and corresponding geometric measurements of a mounting rail later used in an engine block. The results showed that the proposed approach enabled the prediction of three geometric features of the mounting rail with an accuracy (MAPE) below 0.61% during the learning phase and 0.64% during the testing phase. These results suggest that our method could reduce the need for post-machining inspections and measurements, thereby reducing production time and costs while maintaining required quality standards.
对加工零件的几何精度进行直接验证无法与主动加工操作同时进行,因为这通常需要随后使用诸如坐标测量机(CMM)或光学3D扫描仪等测量设备进行检测。这种顺序方法增加了生产时间和成本。在本研究中,我们提出了一种新颖的间接测量方法,该方法利用来自计算机数控(CNC)机床控制器的电机电流数据,并结合机器学习算法来实时预测加工零件的几何精度。不同的机器学习算法,如随机森林(RF)、k近邻(k-NN)和决策树(DT),被用于预测建模。使用Tsfresh和ROCKET进行特征提取,这使我们能够捕捉电机电流数据中与加工零件几何特征相对应的模式。我们的预测模型在一个数据集上进行了训练和验证,该数据集包括一个安装导轨的电机电流读数和相应的几何测量值,该安装导轨后来用于发动机缸体。结果表明,所提出的方法能够在学习阶段预测安装导轨的三个几何特征,平均绝对百分比误差(MAPE)低于0.61%,在测试阶段低于0.64%。这些结果表明,我们的方法可以减少加工后检查和测量的需求,从而在保持所需质量标准的同时减少生产时间和成本。