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Sensing and Compensating the Thermal Deformation of a Computer-numerical-control Grinding Machine Using a Hybrid Deep-learning Neural Network Scheme

机译:混合深度学习神经网络方案感知和补偿计算机数控磨床的热变形

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摘要

Thermal error plays a deterministic role in the machining precision of computer-numerical-control (CNC) tool machinery. Previously, three ways had been proposed to overcome thermal error problems: prevention, restraint, and compensation. The first two ways may be performed in the initial design stage. The last one includes the challengeable features of case-by-case simulation of cutting paths, searching for characteristic temperature points, thermal deformation measurement, and establishing an accurate thermal model. Different from most of the previous studies concerning mathematical thermal models, which have many restrictions and disadvantages, in this study, we propose a novel hybrid thermal error modelling scheme of the Grey system theorem and deep-learning neural network. Specifically, a linear-guide-way grinding machine, never seen in previous thermal-error-compensation-related studies, was chosen as the target to identify the usefulness of our proposed scheme. Results show that the proposed hybrid model has a comprehensive prediction ability of thermal behavior for the target CNC grinding machine.
机译:热误差在计算机数控(CNC)工具机械的加工精度中起决定性作用。以前,已经提出了三种方法来克服热误差问题:预防,约束和补偿。前两种方式可以在初始设计阶段执行。最后一个具有挑战性的功能包括:对切削路径进行逐案模拟,搜索特征温度点,热变形测量以及建立精确的热模型。与以往关于数学热模型的大多数研究存在很多限制和缺点不同,在本研究中,我们提出了一种基于格雷系统定理和深度学习神经网络的新型混合热误差建模方案。具体而言,选择了在以前的热误差补偿相关研究中从未见过的直线导轨磨床作为目标,以确定我们提出的方案的有用性。结果表明,所提出的混合模型对目标数控磨床具有综合的热行为预测能力。

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