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Dynamic linearization modeling approach for spindle thermal errors of machine tools

机译:机床主轴热误差动态线性化建模方法

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摘要

Conventional model-based prediction (MBP) methods for spindle thermal errors have three serious contradictions: those between unmodeled dynamics and robustness, between model precision and model complexity, and between partial linearization and overall complexity. To avoid these contradictions, a new data-driven prediction (DDP) approach is applied to the dynamic linearization modeling for spindle thermal errors. In this model, the current thermal errors are predicted by history temperature data without the information of physical mechanisms. Four points along the spindle front bearing circle (left, right, front and back sides) are selected, whose temperatures are recorded in real time via thermocouples, and the average values are calculated. Then the temperature gradients of these four points are selected as the input to predict the axial and radial offsets and the tilt angle errors. The hysteresis phenomenon between temperature and deformation is determined via thermal characteristic tests, and the time interval for data input is identified. Furthermore, sufficient experimental tests verify that the DDP model is significantly better than the general model-based method in terms of accuracy and robustness.
机译:用于主轴热误差的传统基于模型的预测(MBP)方法具有三种严重矛盾:在模型精度和模型复杂性之间以及部分线性化与整体复杂性之间的未拼件动态和鲁棒性之间的那些。为避免这些矛盾,将新的数据驱动预测(DDP)方法应用于主轴热误差的动态线性化建模。在该模型中,通过历史温度数据预测电流的热误差,而无需物理机制的信息。选择沿主轴前轴承圆(左,右侧,前侧)的四个点,其温度通过热电偶实时记录,并且计算平均值。然后选择这四个点的温度梯度作为输入以预测轴向和径向偏移和倾斜角误差。通过热特性测试确定温度和变形之间的滞后现象,并且识别数据输入的时间间隔。此外,足够的实验测试验证DDP模型在准确性和鲁棒性方面明显优于基于一般模型的方法。

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