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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part J: Journal of Engineering Tribology >Fractal analysis of vibration signals for monitoring the condition of milling tool wear
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Fractal analysis of vibration signals for monitoring the condition of milling tool wear

机译:振动信号的分形分析,用于监控铣刀磨损状况

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摘要

Tool wear depends on the common effect of many factors in the milling process and it is a very complicated random motion process in its evolution process. In order to reveal the inherent law of such a seemingly random evolution process, pattern recognition is described for the milling tool wear conditions by means of chaotic theory. Factors that influence the consistency of the calculated fractal dimension based on fractal dimension of vibration signals are analysed in this study. The angle domain tracing method is adopted during acquisition of vibration signals to minimize the effect from spindle speed. A new method for calculating the fractal unscale range is proposed for determining the fractal dimension. This method is based on multi-segments’ average and threshold, which can extend the scope of the fractal unscale range. The experimental results show that the fractal theory can be applied in the monitoring field for milling tool wear to be practicable.
机译:刀具磨损取决于铣削过程中许多因素的共同影响,并且在其演变过程中是一个非常复杂的随机运动过程。为了揭示这种看似随机演化过程的内在规律,通过混沌理论描述了铣刀磨损条件的模式识别。本研究分析了影响基于振动信号分形维数的分形维数一致性的因素。采集振动信号时采用角域跟踪方法,以最小化主轴转速的影响。提出了一种计算分形不标度范围的新方法来确定分形维数。此方法基于多个细分的平均值和阈值,可以扩展不规则分形范围的范围。实验结果表明,分形理论可应用于铣刀磨损监测领域。

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