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首页> 外文期刊>Journal of low frequency noise, vibration and active control >Intelligent real-time monitoring of Computer Numerical Control tool wear based on a fractional-order chaotic self-synchronization system
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Intelligent real-time monitoring of Computer Numerical Control tool wear based on a fractional-order chaotic self-synchronization system

机译:基于分数秩序混沌自同步系统的计算机数控工具磨损智能实时监控

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摘要

Tool wear and damage are unavoidable in machines which operate for long periods. The main objective of this study was the prediction and understanding of tool wear ahead of time. To achieve this a real-time monitoring system was needed which incidentally also improves product yield and efficiency. Traditionally, tool wear and working life have been estimated by past experience. To monitor the state of the tool, we used a method employing fractional-order chaotic selfsynchronization system matched with extension theory to analyze, extract, and measure tool vibration signals. The fractional-order Chen-Lee chaotic system was used to detect differences in micro vibrations, resulting from different degrees of tool wear, and these were introduced into the master and slave systems. The extreme changes produced by micro differences in the chaotic system, and matter element module design based on the extension theory, were used to accurately determine tool status. Chaos theory, wavelet packet analysis, and Fast Fourier transform were then used to compare the results. This method can reduce the number of sensors and the time required for real-time monitoring of expected life compared to previous determination methods where temperature and current diagnostics must be included.
机译:工具磨损和损坏在长时间运行的机器中是不可避免的。本研究的主要目标是提前对工具磨损的预测和理解。为实现这一达到实时监控系统,而是还提高了产品产量和效率。传统上,通过过去的经验估计了工具磨损和工作寿命。为了监视工具的状态,我们使用了采用与扩展理论匹配的分数顺序混沌自同步系统的方法来分析,提取和测量工具振动信号。使用不同程度的刀具磨损导致的微振动的分数秩序陈李混沌系统用于检测微振动的差异,并将其引入主机和从系统中。通过混沌系统的微差异产生的极端变化,以及基于扩展理论的物质元件模块设计,用于准确确定工具状态。然后使用混沌理论,小波包分析和快速傅里叶变换来比较结果。该方法可以减少传感器的数量和与必须包括温度和当前诊断的先前确定方法相比实时监测预期诊断所需的时间。

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