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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Multi-scale statistical signal processing of cutting force in cutting tool condition monitoring
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Multi-scale statistical signal processing of cutting force in cutting tool condition monitoring

机译:刀具状态监测中切削力的多尺度统计信号处理

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摘要

In a machining system, accurate tool wear condition monitoring is paramount for guaranteeing the quality of the workpiece and tool life. The cutting force signal has been proved to be the most sensitive signal to depict the tool wear variation during the machining process. This paper introduces a data-driven modeling framework for tool wear monitoring in a machining process, which is based on statistical processing of cutting force wavelet transform by a hidden Markov tree. As a kind of data-driven prognostic approach, this method exploits the tool wear states feature from a deeply data mining perspective while the Markov dependence of wavelet transformation at different frequencies or scales is captured. With lathe turning as the research object, a detailed study on the statistical analysis of cutting force in different tool conditions is presented. A two phases monitoring process that assesses the tool wear conditions from generated model by using the statistical features of cutting force wavelet transform is built. Compared to the traditional classifiers, which usually have a difficult condition in distinguishing tool wear states when given a limited amount of samples, the proposed approach make more efficient use of the training data with high sensitivity to the tool wear conditions. Experimental studies of Inconel 718 cutting show that this approach is robust and makes the cutting force information exploited effectively in data mining. Based on the experimental results, the proposed method for tool condition monitoring outperforms the traditional used Hidden Markov model and Gaussian mixture model approach.
机译:在加工系统中,精确的刀具磨损状态监控对于保证工件质量和刀具寿命至关重要。事实证明切削力信号是最敏感的信号,用于描述加工过程中刀具的磨损变化。本文介绍了一种数据驱动的建模框架,该框架基于加工隐身马尔可夫树对切削力小波变换的统计处理,用于加工过程中的刀具磨损监测。作为一种数据驱动的预测方法,该方法从深度数据挖掘的角度出发利用刀具磨损状态特征,同时捕获不同频率或尺度下小波变换的马尔可夫依赖性。以车床车削为研究对象,对不同工况下切削力的统计分析进行了详细的研究。建立了一个分为两个阶段的监视过程,该过程通过使用切削力小波变换的统计特征从生成的模型评估刀具磨损状况。与传统的分类器相比,当给定有限的样本量时,传统的分类器通常很难区分刀具磨损状态,因此,该方法可以更有效地利用训练数据,并且对刀具磨损条件具有较高的敏感性。 Inconel 718切削的实验研究表明,这种方法是可靠的,并且可以在数据挖掘中有效地利用切削力信息。根据实验结果,提出的刀具状态监测方法优于传统的隐马尔可夫模型和高斯混合模型方法。

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