Department of Mechanical Engineering, School of Technology, PDEU, Gandhinagar 382426, Gujarat, India.
Mechanical Engineering Department, Medi-Caps University, Indore 453331, Madhya Pradesh, India.
Sensors (Basel). 2023 Apr 8;23(8):3833. doi: 10.3390/s23083833.
Tool wear is an important concern in the manufacturing sector that leads to quality loss, lower productivity, and increased downtime. In recent years, there has been a rise in the popularity of implementing TCM systems using various signal processing methods and machine learning algorithms. In the present paper, the authors propose a TCM system that incorporates the Walsh-Hadamard transform for signal processing, DCGAN aims to circumvent the issue of the availability of limited experimental dataset, and the exploration of three machine learning models: support vector regression, gradient boosting regression, and recurrent neural network for tool wear prediction. The mean absolute error, mean square error and root mean square error are used to assess the prediction errors from three machine learning models. To identify these relevant features, three metaheuristic optimization feature selection algorithms, Dragonfly, Harris hawk, and Genetic algorithms, were explored, and prediction results were compared. The results show that the feature selected through Dragonfly algorithms exhibited the least MSE (0.03), RMSE (0.17), and MAE (0.14) with a recurrent neural network model. By identifying the tool wear patterns and predicting when maintenance is required, the proposed methodology could help manufacturing companies save money on repairs and replacements, as well as reduce overall production costs by minimizing downtime.
刀具磨损是制造业中一个令人关注的重要问题,它会导致质量损失、生产力下降和停机时间增加。近年来,人们越来越倾向于使用各种信号处理方法和机器学习算法来实施 TCM 系统。在本文中,作者提出了一种 TCM 系统,该系统将 Walsh-Hadamard 变换用于信号处理,DCGAN 旨在解决实验数据集有限的问题,并探索了三种机器学习模型:支持向量回归、梯度提升回归和递归神经网络,用于刀具磨损预测。使用均方误差、均方根误差和平均绝对误差来评估来自三种机器学习模型的预测误差。为了识别这些相关特征,探索了三种元启发式优化特征选择算法,即蜻蜓算法、猎鹰算法和遗传算法,并对预测结果进行了比较。结果表明,通过蜻蜓算法选择的特征在递归神经网络模型中表现出最小的均方误差 (0.03)、均方根误差 (0.17) 和平均绝对误差 (0.14)。通过识别刀具磨损模式并预测何时需要维护,该方法可以帮助制造公司节省维修和更换成本,并通过最小化停机时间来降低整体生产成本。