数控机床数字孪生测量点布局和误差建模的集成优化方法

Guodong Sa , Zhengyang Jiang , Zhenyu Liu , Jiacheng Sun , Chan Qiu , Liang He , Jianrong Tan
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引用次数: 0

摘要

热误差会严重影响精密计算机数控(CNC)机床的精度。补偿热误差的关键在于选择合适的温度测量点和建立精确的误差预测模型。传统方法将测点选择和预测建模分开,即先选择温度测点,然后利用这些测点建立预测模型。这些方法难以实现测量点与预测模型之间的最佳匹配,导致建模精度不高。为解决这些难题,本文提出了一种数控机床数字孪生测点布局和误差建模的集成优化方法。提出了一种基于双阶段注意力的长短期记忆结合卷积神经网络(DA-CLSTM)误差建模方法,以准确预测不同温度测量点数量下的热误差。然后,提出了虚实温度测点布局与误差建模的集成方法,确保温度测点与误差预测模型紧密匹配,实现合理的传感器布局和高精度预测。最后,在主轴系统试验台上进行了实验,验证了本研究提出的方法。通过对测量点布局和预测模型的综合优化,所提出的方法实现了不同传感器数量下的高精度热误差预测,并且在减少传感器数量时仍能保持可靠的预测能力。该方法应用于 MKL7150 磨床的数字孪生系统,有效提高了实际加工的精度。
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An integrated optimization method for measurement points layout and error modeling for digital twin of CNC machine tools

Thermal error significantly influences the accuracy of precision computer numerical control (CNC) machine tools. The key to compensating thermal error lies in selecting appropriate temperature measurement points and establishing an accurate error prediction model. Traditional methods separate measurement points selection and prediction modeling, that is, selecting temperature measurement points first and then establishing the prediction model using these points. These methods are difficult to achieve optimal matching between measurement points and the prediction model, resulting in shortcomings in modeling accuracy. To address these challenges, an integrated optimization method for measurement points layout and error modeling for digital twin of CNC machine tools is proposed. A dual-stage attention-based long short-term memory combined with convolutional neural network (DA-CLSTM) error modeling method is proposed to accurately predict the thermal error for different numbers of temperature measurement points. Then, an integrated method of virtual-real temperature measurement points layout and error modeling is proposed, which ensures the temperature measurement points and the error prediction model are closely matched, offering rational sensors layout and high-accuracy prediction. Finally, experiments are conducted on the spindle system test bench to validate the method proposed in this research. Through integrated optimization of measurement points layout and the prediction model, the proposed method achieves high-accuracy thermal error prediction across various sensor counts and maintains reliable prediction ability when the number of sensors is reduced. This method is applied to a digital twin system of MKL7150 grinding machine, and effectively improves the accuracy of actual machining.

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来源期刊
CiteScore
7.40
自引率
5.60%
发文量
177
审稿时长
46 days
期刊介绍: Precision Engineering - Journal of the International Societies for Precision Engineering and Nanotechnology is devoted to the multidisciplinary study and practice of high accuracy engineering, metrology, and manufacturing. The journal takes an integrated approach to all subjects related to research, design, manufacture, performance validation, and application of high precision machines, instruments, and components, including fundamental and applied research and development in manufacturing processes, fabrication technology, and advanced measurement science. The scope includes precision-engineered systems and supporting metrology over the full range of length scales, from atom-based nanotechnology and advanced lithographic technology to large-scale systems, including optical and radio telescopes and macrometrology.
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