利用激光r -测试系统建立LSTM和TCN主轴热补偿模型

Hsieh Tung-Hsien, Jywe Wen-Yuh, Lai Hsin-Yu, Yi-Hao Chou, Wu Tsai-Hsu
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引用次数: 0

摘要

机床的热误差是影响加工精度的关键因素。目前,大多数检测方法采用电容探头构建一套3轴或5轴非接触式测量系统。然而,由于设备昂贵且不易设置,大多数机床的热误差模型只能事先建模。因此,一旦人工智能模型出现故障,往往无法修复,或者可能需要将设备再次带到制造现场进行安装、设置、数据收集和模型构建。鉴于此,本研究采用课题组前期研制的光学非接触式主轴测温系统,该系统包括三维位置传感模块、标准玻璃球(安装在标准刀架接口上)、PT100测温模块、边缘计算机、人机界面。在验证过程中,系统可以有效地采集机床热数据,包括XYZ位移、主轴转速、温度等。通过设计快速刀架夹具,可以将标准玻璃球的中心放置在3D位置传感器的中心,大大缩短了安装时间。在建模方面,本研究使用XGBoost建立温度参数与位移之间的相关性,进行初步的传感器选择。然后比较剩余传感器的RMSE和MSE。在传感器选择之后,本研究将传感器的数量减少到5、7、10和14。然后,利用LSTM和TCN建立热误差模型,以Day-1(2022/07/15)的数据作为训练数据集。使用研究中提到的软件和硬件模块,测试数据集Day-2(2022/07/17)和Day-3(2022/08/15)的热误差降低了70%以上,这也适用于其他日期。
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Development of LSTM and TCN Spindle Thermal Compensation Model by Using the Laser R-Test System
The thermal error of machine tools is a key factor which affects machining accuracy. Currently, most inspection methods build a set of 3-axis or 5-axis non-contact measurement system using capacitance probes. However, since the equipment is expensive and not easy to set up, most thermal error model of machine tools can only be modeled beforehand. Therefore, once the AI model fails, it is often impossible to repair, or the equipment may be required to be brought to the manufacturing site again for installation, set-up, data collection and model building. In view of this, the study uses an optical non-contact spindle temperature measurement system previously developed by the team, which includes a 3D position sensing module, a standard glass ball (mounted on a standard tool holder interface), a PT100 temperature sensing module, an edge computer, and a human-machine interface. During the verification process, the system can effectively collect machine tool thermal data, including XYZ displacements, spindle speed, temperature, etc. By designing a quick tool holder jig, the center of the standard glass ball can be placed at the center of the 3D position sensor, significantly reducing the setup time. As for model building, this study uses XGBoost to establish correlation between temperature parameters and displacement in order to perform preliminary sensor selection. The RMSE and MSE of remaining sensors were then compared. After sensor selection, this study reduces the number of sensors used to 5, 7, 10, and 14. Then, LSTM and TCN is applied to build the thermal error model, with data from Day-1 (2022/07/15) as the training dataset. Using software and hardware modules mentioned in the study, thermal error for the test datasets Day-2 (2022/07/17) and Day-3 (2022/08/15) were decreased by more than 70%, which is also applicable to other dates.
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