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AE monitoring and analysis of tool wear of numerical control lathe

机译:数控车床刀具磨损的AE监测与分析

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To study the mechanism and characteristics of tool wear, the frequency band energy analysis method of acoustic emission(AE) signal based on wavelet packet decomposition were used. The experiments were conducted on the FTC20numericalcontrol lathe using carbide tool. The band components of the AE signals during turning machining were analyzed and the friction signal was extracted from the raw AE signal. Then the percentages of the energy and the main frequency range distribution of friction signals and chip forming signals in the raw AE signals were investigated. The worn amount of tool nose δ was used as a quantitative measuring index of the tool wear, and the center frequency of signal was defined. The AE signals captured under different tool wears and broken states were analyzed by wavelet packet decomposition, and the total energy, the energy of each frequency band and the center frequency of AE signal was obtained. By analyzing the results, the energies of each frequency band and the center frequency of AE signal changing with the tool wear in the process of turning was obtained. The results showed that the chip forming signal was the key components of the AE signals; and with the increase of the amount of tool nose δ, the energy of 20-40kHz band decreased and the energy of 40-60kHz band as well as the center frequencies of AE signals increased. When the tool broke resulting from the development of the crater wear, the total energy and the root mean square of the AE signals increased greatly and the variation trends of the energy of different frequency bands were the same as those of tool wear.
机译:为了研究刀具磨损的机理和特性,采用了基于小波包分解的声发射(AE)信号的频带能量分析方法。实验是使用硬质合金刀具在FTC20数控机床上进行的。分析了车削加工过程中AE信号的带分量,并从原始AE信号中提取了摩擦信号。然后研究了原始AE信号中摩擦信号和切屑形成信号的能量百分比和主频率范围分布。刀尖δ的磨损量被用作刀具磨损的定量测量指标,并且定义了信号的中心频率。通过小波包分解分析了在不同刀具磨损和破损状态下捕获的声发射信号,得到了声发射信号的总能量,各频带能量和中心频率。通过分析结果,求出车削过程中各频段的能量和AE信号的中心频率随刀具磨损的变化。结果表明,芯片形成信号是声发射信号的关键成分。随着刀尖δ的增加,20-40kHz频段的能量减小,40-60kHz频段的能量以及AE信号的中心频率增加。当工具因月牙洼磨损的发展而破裂时,总能量和AE信号的均方根会大大增加,并且不同频段能量的变化趋势与工具磨损相同。

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