Zi Xintian, Gao Shangshang, Xie Yang
School of Mechanical Engineering, Jiangsu University of Science and Technology, Zhenjiang, 212000, China.
Taian Haina Spindle Science & Technology Co., Ltd, Taian, 271000, China.
Sci Rep. 2024 Feb 29;14(1):4956. doi: 10.1038/s41598-024-55551-2.
Real-time online tracking of tool wear is an indispensable element in automated machining, and tool wear directly impacts the processing quality of workpieces and overall productivity. For the milling tool wear state is difficult to real-time visualization monitoring and individual tool wear prediction model deviation is large and is not stable and so on, a digital twin-driven ensemble learning milling tool wear online monitoring novel method is proposed in this paper. Firstly, a digital twin-based milling tool wear monitoring system is built and the system model structure is clarified. Secondly, through the digital twin (DT) data multi-level processing system to optimize the signal characteristic data, combined with the ensemble learning model to predict the milling cutter wear status and wear values in real-time, the two will be verified with each other to enhance the prediction accuracy of the system. Finally, taking the milling wear experiment as an application case, the outcomes display that the predictive precision of the monitoring method is more than 96% and the prediction time is below 0.1 s, which verifies the effectiveness of the presented method, and provides a novel idea and a new approach for real-time on-line tracking of milling cutter wear in intelligent manufacturing process.
刀具磨损的实时在线跟踪是自动化加工中不可或缺的要素,刀具磨损直接影响工件的加工质量和整体生产率。针对铣刀磨损状态难以实时可视化监测、单个刀具磨损预测模型偏差大且不稳定等问题,本文提出一种数字孪生驱动的集成学习铣刀磨损在线监测新方法。首先,构建基于数字孪生的铣刀磨损监测系统并明确系统模型结构。其次,通过数字孪生(DT)数据多级处理系统优化信号特征数据,结合集成学习模型实时预测铣刀磨损状态和磨损值,二者相互验证以提高系统预测精度。最后,以铣削磨损实验为应用案例,结果表明该监测方法的预测精度高于96%,预测时间低于0.1秒,验证了所提方法的有效性,为智能制造过程中铣刀磨损的实时在线跟踪提供了新思路和新方法。