首页> 外文学位 >ON-LINE IDENTIFICATION AND CONTROL OF MACHINING CHATTER IN TURNING THROUGH DYNAMIC DATA SYSTEM METHODOLOGY.
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ON-LINE IDENTIFICATION AND CONTROL OF MACHINING CHATTER IN TURNING THROUGH DYNAMIC DATA SYSTEM METHODOLOGY.

机译:通过动态数据系统方法学对加工过程进行在线识别和控制。

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摘要

The time-varying stability of the machining process necessitates a technique of on-line chatter identification and control. In a six-stage study, such a technique was sought. (1) Mathematical models of the machining process with an inherent stochastic nature were developed as discrete ARMA (n,n-1) models. Based on off-line analysis, the peak of power spectral density corresponding to the dynamic mode of workpiece fundamental natural frequency serves as a simple and reliable index of stability for on-line chatter identification. (2) The workpiece fundamental natural frequency of a given CNC lathe was identified using random excitation and impulse response methods. A band pass filter in the range of 70-170 Hz served to isolate the vibration signal. The bivariate ARMA modeling technique was employed for modal analysis of the chuck-workpiece-tailstock system. (3) A self-learning scheme to determine the dynamic stability limit, based on the quality control chart technique, has been established so that the threshold stability limit of each cutting process need not be initialized before cutting. (4) A simple and fast linearized adaptive AR modeling technique was adopted for on-line machining process identification. An AR model of order six was determined as an adequate linearized approximation of the machining process. (5) The strategy of changing speed and feed incrementally to find stable cutting conditions without sacrificing productivity was proposed. (6) A Chatter Suppression Controller was designed and interfaced to the PT15CNC lathe. Cutting tests demonstrated the successful use of the above strategies.;The theoretical derivation and developed strategy presented in this study have provided a solid basis for developing a chatter free lathe.
机译:加工过程的时变稳定性需要在线颤振识别和控制技术。在六阶段研究中,寻求了这样的技术。 (1)具有固有随机性的加工过程数学模型被开发为离散ARMA(n,n-1)模型。基于离线分析,与工件基本固有频率的动态模式相对应的功率谱密度峰值可作为一种简单而可靠的稳定性指标,用于在线颤振识别。 (2)使用随机激励和脉冲响应方法确定给定CNC车床的工件基本固有频率。 70-170 Hz范围内的带通滤波器用于隔离振动信号。采用双变量ARMA建模技术对卡盘-工件-尾料系统进行模态分析。 (3)建立了一种基于质量控制图技术确定动态稳定性极限的自学习方案,从而无需在切割之前初始化每个切割过程的阈值稳定性极限。 (4)采用简单快速的线性自适应AR建模技术进行在线加工过程识别。确定六阶的AR模型是加工过程的足够线性近似。 (5)提出了在不牺牲生产率的情况下逐步改变速度和进给量以找到稳定切削条件的策略。 (6)设计了Chatter抑制控制器,并将其连接到PT15CNC车床。切削试验证明了上述策略的成功应用。本研究提出的理论推导和发展策略为开发无颤动车床提供了坚实的基础。

著录项

  • 作者

    TSAI, SHING-YUAN.;

  • 作者单位

    The University of Wisconsin - Madison.;

  • 授予单位 The University of Wisconsin - Madison.;
  • 学科 Mechanical engineering.
  • 学位 Ph.D.
  • 年度 1983
  • 页码 286 p.
  • 总页数 286
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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