声发射信号混沌特性与刀具磨损状况的关系分析

Jianhui Xi, Wenlan Han, Yanmei Liu
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引用次数: 6

摘要

本文主要是在分析刀具切削过程中声发射信号混沌特性的基础上,建立一种监测刀具磨损状态的方法。首先,根据不同刀具切削周期的声发射信号,通过重构奇异吸引子轨迹和庞加莱映射、计算相关维数和最大Lyapunov指数等多种混沌描述来证明序列存在混沌特征;然后,利用最小二乘法对计算得到的特征点进行拟合,包括相关维数和最大Lyapunov指数。进一步讨论了这两个参数的发展趋势。结果表明,声发射信号中存在混沌现象,且混沌特征如相关维数和最大李雅普诺夫指数等会随着刀具磨损过程的发展而发生变化。因此,分析声发射序列混沌特性与刀具磨损状况之间的关系,为刀具切削过程的在线监测提供了新的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relationship analysis between chaotic characteristics of acoustic emission signal and tool wear condition
The paper is mainly aimed at building a method to monitor tool wear condition based on analysis of chaotic characteristics of acoustic emission (AE) signal generated during tool cutting process. First, according to the AE signals from different tool cutting periods, multiple chaos descriptions, such as reconstructing the strange attractor track and Poincare map, computing correlation dimension and the max Lyapunov exponent, are used to prove the existing of chaotic characteristics in the series. Then, use the least square method to fit a curve to the computed characteristics points, including the correlation dimension and the max Lyapunov exponent. Furthermore, the developing trend of these two parameters is discussed. The results show that chaotic phenomena exist in the acoustic emission signal, and the chaotic characteristics, like correlation dimension and the max Lyapunov exponent, will change with the development of tool wear process. Therefore relationship analysis between chaotic characteristics of AE series and the tool wear condition may provide a new path for online monitoring of tool cutting process.
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