Wei Xinyuan, Ye Honghan, Feng Xugang
School of Electrical and Information Engineering, Anhui University of Technology, Ma'anshan 243032, China.
Department of Industrial and Systems Engineering, University of Wisconsin-Madison, Madison, WI 53705, USA.
Sensors (Basel). 2022 Jul 6;22(14):5085. doi: 10.3390/s22145085.
The modeling and compensation method is a common method for reducing the influence of thermal error on the accuracy of machine tools. The prediction accuracy and robustness of the thermal error model are two key performance measures for evaluating the compensation effect. However, it is difficult to maintain the prediction accuracy and robustness at the desired level when the ambient temperature exhibits strong seasonal variations. Therefore, a year-round thermal error modeling and compensation method for the spindle of machine tools based on ambient temperature intervals (ATIs) is proposed in this paper. First, the ATIs applicable to the thermal error prediction models (TEPMs) under different ambient temperatures are investigated, where the C-Means clustering algorithm is utilized to determine ATIs. Furthermore, the prediction effect of different numbers of ATIs is analyzed to obtain the optimal number of ATIs. Then, the TEPMs corresponding to different ATIs in the annual ambient temperature range are established. Finally, the established TEPMs of ATIs are used to predict the experimental data of the entire year, and the prediction accuracy and robustness of the proposed ATI model are analyzed and compared with those of the low and high ambient temperature models. The prediction accuracies of the ATI model are 20.6% and 41.7% higher than those of the low and high ambient temperature models, respectively, and the robustness is improved by 48.8% and 62.0%, respectively. This indicates that the proposed ATI method can achieve high prediction accuracy and robustness regardless of the seasonal temperature variations throughout the year.
建模与补偿方法是减少热误差对机床精度影响的常用方法。热误差模型的预测精度和鲁棒性是评估补偿效果的两个关键性能指标。然而,当环境温度呈现强烈的季节性变化时,很难将预测精度和鲁棒性维持在期望水平。因此,本文提出了一种基于环境温度区间(ATI)的机床主轴全年热误差建模与补偿方法。首先,研究适用于不同环境温度下热误差预测模型(TEPM)的ATI,利用C均值聚类算法确定ATI。此外,分析不同数量ATI的预测效果以获得最优ATI数量。然后,建立全年环境温度范围内不同ATI对应的TEPM。最后,利用建立的ATI的TEPM对全年实验数据进行预测,并分析所提ATI模型的预测精度和鲁棒性,与低环境温度模型和高环境温度模型进行比较。ATI模型的预测精度分别比低环境温度模型和高环境温度模型高20.6%和41.7%,鲁棒性分别提高了48.8%和62.0%。这表明所提ATI方法无论全年季节性温度变化如何,都能实现较高的预测精度和鲁棒性。