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A novel approach to machining condition monitoring of deep hole boring

机译:深孔镗削加工状态监测的新方法

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摘要

In the optimization of deep hole boring processes, machining condition monitoring (MCM) plays an important role for efficient tool change policies, product quality control and lower tool costs. This paper proposes a novel approach to the MCM of deep hole boring on the basis of the pseudo non-dyadic second generation wavelet transform (PNSGWT). This approach is developed via constructing a valuable indicator, i.e., the wavelet energy ratio around the natural frequency of boring bar. Self-excited vibration occurs at the frequency of the most dominant mode of the machine tool structure. Via modeling dynamic cutting process and performing its simulation analysis during deep hole boring, it is found that the vibration amplitudes at the nature frequency of the machine tool rise with the tool wear. The PNSGWT that has relative adjustable dyadic time-frequency partition grids, good time-frequency localizability and exact shift-invariance is used to extract the wavelet energy in the specified frequency band. Accordingly, the MCM of deep hole boring can be implemented by means of normalizing the wavelet energy. Finally, a field experiment on deep hole boring machine tool is conducted, and the result shows that the proposed method is effective in the process of monitoring tool wear and surface finish quality for deep hole boring.
机译:在优化深孔镗削过程中,加工状态监控(MCM)对于有效的刀具更换政策,产品质量控制和较低的刀具成本起着重要作用。本文基于伪非二阶第二代小波变换(PNSGWT),提出了一种新型的深孔MCM方法。通过构造有价值的指标(即,镗杆自然频率附近的小波能量比)来开发这种方法。自激振动以机床结构的最主要模式的频率发生。通过对动态切削过程进行建模并在深孔镗削过程中进行仿真分析,发现机床自然频率下的振动幅度随刀具磨损而增大。 PNSGWT具有相对可调节的二分频时频划分网格,良好的时频定位能力和精确的移不变性,可用于提取指定频带中的小波能量。因此,可以通过归一化小波能量来实现深孔的MCM。最后,对深孔镗床进行了现场试验,结果表明,该方法在监测深孔镗床的刀具磨损和表面光洁度的过程中是有效的。

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