Process damping identification using Bayesian learning and time domain simulation

Aaron Cornelius, Jaydeep Karandikar, Christopher Tyler, Tony Schmitz
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Abstract

Process damping can provide improved machining productivity by increasing the stability limit at low spindle speeds. However, existing methods for identifying process damping models experimentally require specialized setups and/or multiple cutting tests. While the phenomenon is well known, the modeling challenges limit pre-process parameter selection that leverages the potential increases in material removal rates. This paper proposes a physics-informed Bayesian method that can identify the cutting force and process damping models from a limited set of test cuts without requiring direct measurements of cutting force or vibration. The method uses time domain simulation to incorporate process damping and provide a basis for test selection. New strategies for efficient sampling and dimensionality reduction are applied to lower computation time and minimize the effect of model error. The proposed method is demonstrated and the identified cutting and damping force coefficients are compared to values obtained using machining tests and least-squares fitting.
利用贝叶斯学习和时域模拟进行过程阻尼识别
加工阻尼可通过提高低主轴转速下的稳定性极限来提高加工生产率。然而,现有的工艺阻尼模型实验识别方法需要专门的设置和/或多次切削测试。虽然这一现象已广为人知,但建模方面的挑战限制了预加工参数的选择,无法充分利用潜在的材料去除率提升。本文提出了一种物理信息贝叶斯方法,可从有限的测试切削中识别切削力和加工阻尼模型,而无需直接测量切削力或振动。该方法利用时域模拟将过程阻尼纳入其中,并为测试选择提供依据。该方法采用了高效采样和降维的新策略,以降低计算时间并最大限度地减少模型误差的影响。对所提出的方法进行了演示,并将确定的切削力和阻尼力系数与通过加工测试和最小二乘拟合获得的值进行了比较。
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