On-line monitoring for cutting tool wear reliability analysis

Feng Ding, Lijuan Zhang, Zhengjia He
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引用次数: 4

Abstract

Aiming at operational reliability analysis and assessment based on condition monitoring information in this paper, a methodology of reliability modeling and assessment based on cutting tool vibration signal feature extraction using proportional hazards model is proposed. Root Mean Square and Peak of time domain index from vibration signals, which are closely related to tool wear degradation states, are selected as covariates introduced to proportional hazards model for the tool wear reliability analysis. The proposed approach shows a considerable advantage of establishing significant association relationship between the tool condition monitoring information and the life distribution of tool wear. It is appropriate to provide individual cutting tool operational reliability assessment effectively. The experimental study on the CNC lathe turning process is given to validate the effectiveness of the proposed method. The results have shown that the approach are promising and give good estimation ability of reliability for tool wear degradation states.
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刀具磨损可靠性在线监测分析
针对基于状态监测信息的刀具运行可靠性分析与评估,提出了一种基于比例风险模型的刀具振动信号特征提取的可靠性建模与评估方法。选取与刀具磨损退化状态密切相关的振动信号时域指标的均方根和峰值作为协变量引入到比例风险模型中,进行刀具磨损可靠性分析。该方法在刀具状态监测信息与刀具磨损寿命分布之间建立了显著的关联关系,具有显著的优越性。有效地提供单个刀具运行可靠性评估是合适的。通过对数控车床车削过程的实验研究,验证了该方法的有效性。结果表明,该方法对刀具磨损退化状态具有良好的可靠性估计能力。
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