Liu Tongshun, Wang Qian, Wang Weisu
School of Mechanical and Electric Engineering, Soochow University, Suzhou 215021, China.
Micromachines (Basel). 2022 Jun 14;13(6):943. doi: 10.3390/mi13060943.
Mechanistic cutting force model has the potential for monitoring micro-milling tool wear. However, the existing studies mainly consider the linear cutting force model, and they are incompetent to monitor the micro-milling tool wear which has a significant nonlinear effect on the cutting force due to the cutting-edge radius size effect. In this study, a nonlinear mechanistic cutting force model considering the comprehensive effect of cutting-edge radius and tool wear on the micro-milling force is constructed for micro-milling tool wear monitoring. A stepwise offline optimization approach is proposed to estimate the multiple parameters of the model. By minimizing the gap between the theoretical force expressed by the nonlinear model and the force measured in real-time, the tool wear condition is online monitored. Experiments show that, compared with the linear model, the nonlinear model has significantly improved cutting force prediction accuracy and tool wear monitoring accuracy.
机理切削力模型具有监测微铣刀磨损的潜力。然而,现有研究主要考虑线性切削力模型,由于刃口半径尺寸效应,这些模型无法监测对切削力有显著非线性影响的微铣刀磨损。在本研究中,构建了一种考虑刃口半径和刀具磨损对微铣削力综合影响的非线性机理切削力模型,用于微铣刀磨损监测。提出了一种逐步离线优化方法来估计模型的多个参数。通过最小化非线性模型表示的理论力与实时测量力之间的差距,在线监测刀具磨损状态。实验表明,与线性模型相比,非线性模型显著提高了切削力预测精度和刀具磨损监测精度。