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Tool Wear Detection Using Lipschitz Exponent and Harmonic Wavelet

机译:使用Lipschitz指数和谐波小波检测刀具磨损

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摘要

The paper researches a novel engineering application of Lipschitz exponent function and harmonic wavelet for detecting tool condition. Tool wear affects often the quality grade of products and is gradually formed during cutting process. Meanwhile, since cutting noise is very strong, we think tool wear belongs to detecting weak singularity signals in strong noise. It is difficult to obtain a reliable worn result by raw sampled data. We propose singularity analysis with harmonic wavelet for data processing and a new concept of Lipschitz exponent function. The method can be quantitative tool condition and make maintaining decision. Test result was validated with 27 kinds of cutting conditions with the sharp tool and the worn tool; 54 group data are sampled by acoustic emission (AE).
机译:研究了Lipschitz指数函数和谐波小波在刀具状态检测中的新工程应用。刀具磨损通常会影响产品的质量等级,并在切削过程中逐渐形成。同时,由于切削噪声非常强,我们认为刀具磨损属于检测强噪声中的弱奇异信号。通过原始采样数据很难获得可靠的磨损结果。我们提出用谐波小波进行数据处理的奇异性分析和Lipschitz指数函数的新概念。该方法可以是定量工具条件并做出维护决策。用锋利的刀具和磨损的刀具在27种切削条件下对测试结果进行了验证;通过声发射(AE)采样了54个组数据。

著录项

  • 来源
    《Mathematical Problems in Engineering》 |2013年第14期|489261.1-489261.8|共8页
  • 作者单位

    College of Electronic and Electrical Engineering, Shanghai University of Engineering and Science, Shanghai 201620, China;

    College of Electronic and Electrical Engineering, Shanghai University of Engineering and Science, Shanghai 201620, China;

    College of Electronic and Electrical Engineering, Shanghai University of Engineering and Science, Shanghai 201620, China;

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