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Tool wear monitoring in turning operations using ultrasonic waves and artificial neural networks.

机译:使用超声波和人工神经网络监控车削操作中的刀具磨损。

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摘要

Ultrasound waves propagating at 10MHz nominal frequency were used to monitor the gradual wear of carbide inserts on-line during turning operations. A dual-mode ultrasound transducer was placed behind the cutting inserts in a modified tool holder assembly. Ultrasound waves were pulsed at a rate of 10KHz inside the cutting inserts towards the flank and nose surfaces of the tool in a pulse-echo mode. The reflected ultrasound waves, received by the same transducer, were digitized at 100MHz sampling rate and processed using discrete wavelet transform. The powers of coefficients, yielded from the frequency decomposition of the ultrasound signals, were used to search for an optimum artificial neural network architecture that correlates between the reflected ultrasound wave processing parameters and the true state of wear on the cutting inserts. Machine vision was used to measure the gradual wear dimensions at the flank face of the tools during interrupted intervals of cutting.; An analytical model that describes the theoretical behavior of ultrasound waves inside the cutting inserts and the effect of tool wear on the reflected waves was derived. The theoretical relation between the gradual wear level and the change in the ultrasound waves was used to verify the soundness of the empirical results.; The results indicate that the powers of coefficients extracted from the fourth level of decomposition of the ultrasound signal using discrete wavelet transforms yield optimum correlation to the true state of wear on the cutting tools using a three-layer Multi-Layer Perceptron artificial neural network. The best correlation coefficient was found to be 95.9% with an estimated error less than 0.003 inches.
机译:使用以10MHz标称频率传播的超声波来监测车削过程中在线的硬质合金刀片的逐渐磨损。将双模超声换能器放置在改进的刀架组件中的切削刀片后面。超声波以脉冲回波模式在切削刀片内部以10KHz的频率朝着工具的侧面和鼻子表面发出脉冲。由同一换能器接收的反射超声波以100MHz采样率进行数字化处理,并使用离散小波变换进行处理。由超声信号的频率分解产生的系数的幂被用来搜索最佳的人工神经网络架构,该架构将反射的超声波处理参数与切削刀片的真实磨损状态关联起来。机器视觉被用来测量在中断的切割间隔期间工具侧面的逐渐磨损尺寸。得出了一个分析模型,该模型描述了切削刀片内部超声波的理论行为以及刀具磨损对反射波的影响。逐渐磨损水平与超声波变化之间的理论关系被用来验证实验结果的合理性。结果表明,使用三层多层Perceptron人工神经网络,使用离散小波变换从超声信号的第四分解级别提取的系数的幂与切削刀具的真实磨损状态产生最佳相关性。发现最佳相关系数为95.9%,估计误差小于0.003英寸。

著录项

  • 作者

    Yu, Gang.;

  • 作者单位

    The University of Wisconsin - Milwaukee.;

  • 授予单位 The University of Wisconsin - Milwaukee.;
  • 学科 Engineering Industrial.
  • 学位 Ph.D.
  • 年度 2002
  • 页码 94 p.
  • 总页数 94
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 一般工业技术;
  • 关键词

  • 入库时间 2022-08-17 11:46:36

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