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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Thermal Errors Classification Compensation without Sensor for CNC Machine Tools
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Thermal Errors Classification Compensation without Sensor for CNC Machine Tools

机译:热误差对CNC机床的传感器进行分类补偿

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摘要

Both multicollinearity and utilization deficiency of temperature sensors affect the robustness and the prediction precision of traditional thermal error prediction models. To address the problem, a thermal error prediction model without temperature sensors is proposed. Firstly, the paper analyzes the temperature field and thermal deformation mechanisms of the spindle of a CNC gear grinding machine in accordance with the parameters, efficiencies, and structures of the machine spindle and bearing. A preliminary theoretical model is established on the basis of the mechanism analysis. Secondly, the theoretical model is corrected according to the actual operation parameters of the machine. Thirdly, verification experiments are carried out on machine tools of the same type. It is found that the corrected model has higher precision in predicting thermal errors at the same rotational velocity. The standard deviation and the maximum residual error are reduced by at least 39% and 48% separately. The prediction precision decreases with the increase in prediction range when predicting thermal errors at different rotational velocities. The model has high prediction precision and strong robustness in the case of reasonable prediction range and classified prediction. In a word, prediction precision and robustness of the model without temperature sensors can be effectively ensured by reasonably determining the prediction range and practicing classified prediction and compensation for thermal errors at different rotational velocities. The model established can be applied to machine tools that have difficulties in arranging sensors or those whose sensors are significantly disturbed.
机译:温度传感器的多色性和利用率缺乏影响传统热误差预测模型的鲁棒性和预测精度。为了解决问题,提出了一种没有温度传感器的热误差预测模型。首先,本文根据机械主轴和轴承的参数,效率和结构分析了CNC齿轮磨床的主轴的温度场和热变形机构。基于机制分析建立了初步理论模型。其次,根据机器的实际操作参数校正理论模型。第三,在相同类型的机床上进行验证实验。发现校正模型在预测相同旋转速度的热误差方面具有更高的精度。标准偏差和最大剩余误差减少至少39%和48%分别地。当预测不同旋转速度的热误差时,预测精度随预测范围的增加而降低。该模型在合理的预测范围和分类预测的情况下具有高预测精度和强大的鲁棒性。总之,通过合理地确定预测范围和实践分类的预测和对不同旋转速度的热误差的分类预测和补偿,可以有效地确保没有温度传感器的模型的预测精度和鲁棒性。建立的模型可以应用于在布置传感器中具有困难的机床或传感器显着受到干扰的机床。

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