基于长-短时记忆算法的车削刀具磨损预测

Benvolence Chinomona, C. Chung, Po-Chieh Wang
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引用次数: 0

摘要

提出了一种基于电流信号的刀具磨损预测模型。该系统可适应不同的零件几何形状,并能准确预测刀具在加工过程中的磨损。利用电流传感器对刀具磨损监测提供了一种实用和更好的选择,该传感器价格低廉,无需附加在工作台或主轴上。为了避免加工过程中的中断,刀具磨损只在加工结束时测量。采用长短期记忆模型开发了刀具磨损预测系统。刀具磨损预测结果表明,在1/3的仿形加工和直车削加工后,所有测试样品的平均误差分别为23.92%和36.41%。当刀具磨损预测在2/3的加工后进行时,得到了良好的结果,仿形加工误差为6.15%,直车削加工误差为9.44%。加工结束时的预测结果表明,仿形和直车削的误差分别为0.18%和0.68%。采用电流传感器的模型性能表明,该模型可以在不干扰车削过程的情况下,在2/3的车削操作后以小于10%的误差预测刀具磨损。
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Pass-Wise Tool Wear Prediction in Turning Based on Long-Short Term Memory Algorithm Using Current Signals
A novel tool wear predictive model was developed based on the current signals in this study. The system adapts to different part geometry with accurate prediction of the tool wear during the operation. The current sensor was utilized presenting a practical and better choice for tool wear monitoring which is inexpensive and no need to be attached to the working table or spindle. To avoid interruptions during the machining process, the tool wear was only measured at the end of the operation. The Long Short-Term Memory model was used to develop the tool wear prediction system. The tool wear prediction results indicate 23.92% and 36.41% average error for all the testing samples after 1/3 of the operations for profiling and straight turning, respectively. When the tool wear prediction was carried out after 2/3 of the operations, excellent results are observed with 6.15% error for profiling and 9.44% error for straight turning. The prediction results at the end of the operation shows 0.18% and 0.68% error for profiling and straight turning. The performance of the model using the current sensor shows that the model can predict the tool wear with less than 10% error after 2/3 of the turning operation without interfering with the turning process.
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