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首页> 外文期刊>Journal of Intelligent Manufacturing >Tool wear predicting based on multi-domain feature fusion by deep convolutional neural network in milling operations
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Tool wear predicting based on multi-domain feature fusion by deep convolutional neural network in milling operations

机译:基于多域特征融合的刀具磨损预测铣削操作中深卷积神经网络

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摘要

Tool wear monitoring has been increasingly important in intelligent manufacturing to increase machining efficiency. Multi-domain features can effectively characterize tool wear condition, but manual feature fusion lowers monitoring efficiency and hinders the further improvement of predicting accuracy. In order to overcome these deficiencies, a new tool wear predicting method based on multi-domain feature fusion by deep convolutional neural network (DCNN) is proposed in this paper. In this method, multi-domain (including time-domain, frequency domain and time-frequency domain) features are respectively extracted from multisensory signals (e.g. three-dimensional cutting force and vibration) as health indictors of tool wear condition, then the relationship between these features and real-time tool wear is directly established based on the designed DCNN model to combine adaptive feature fusion with automatic continuous prediction. The performance of the proposed tool wear predicting method is experimentally validated by using three tool run-to-failure datasets measured from three-flute ball nose tungsten carbide cutter of high-speed CNC machine under dry milling operations. The experimental results show that the predicting accuracy of the proposed method is significantly higher than other advanced methods.
机译:工具磨损监测在智能制造中越来越重要,以提高加工效率。多域特征可有效地表征工具磨损条件,但手动特征融合降低了监控效率,阻碍了预测精度的进一步提高。为了克服这些缺陷,本文提出了一种基于深卷积神经网络(DCNN)的多域特征融合的新工具磨损预测方法。在该方法中,多域(包括时域,频域和时频域)特征分别从多扰声信号(例如三维切割力和振动)提取,作为刀具磨损条件的健康指示器,那么关系基于设计的DCNN模型,直接建立了这些特性和实时工具磨损,以将自适应特征融合与自动连续预测相结合。通过使用从干铣削操作下的高速CNC机碳化钨碳化钨碳化钨碳化钨碳化刀碳化钨刀具测量的三个工具碰到失效数据集进行了实验验证的实验验证。实验结果表明,所提出的方法的预测精度明显高于其他先进方法。

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