首页> 外文学位 >STOCHASTIC THRESHOLD MODELING FOR LINEAR AND NONLINEAR SYSTEM MONITORING AND DIAGNOSIS (DYNAMIC DATA, NONPARAMETRIC, PARAMETRIC ON-LINE ADAPTIVE MODELING, ARMA).
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STOCHASTIC THRESHOLD MODELING FOR LINEAR AND NONLINEAR SYSTEM MONITORING AND DIAGNOSIS (DYNAMIC DATA, NONPARAMETRIC, PARAMETRIC ON-LINE ADAPTIVE MODELING, ARMA).

机译:用于线性和非线性系统监测和诊断的随机阈值建模(动态数据,非参数,参数在线自适应建模,ARMA)。

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摘要

This thesis presents both the theory and applications of a threshold-type adaptive modeling algorithm for the identification of parameters in systems containing multi-valued nonlinearities. Hysteretic restoring force and mechanical backlash in a single-degree-of-freedom dynamic system are represented by a class of threshold-type nonlinear autoregressive moving average models with unknown parameters identifiable by the nonlinear least squares methods. All the possible nonlinearities are searched by means of a systematic signal processing approach.; The choices of the numbers, values, lags and orders of a threshold model were here investigated in detail; it was determined which parameters are identifiable and to what accuracy. In order to force the nonlinear system to exceed the yield deflection point and enter the plastic region, sufficiently large input excitations were selected. The effects of measurement noise on the parameter estimates were studied by means of numerical experiments. Indetification was successful with 20% additive measurement noise in the univariate (self-limiting), and bivariate sequences. Five synthetic processes (nonlinear spring, nonlinear damping, saturation, hysteresis and deadband) and a real data set (Canadian lynx cycle) were employed to demonstrate the effectiveness of the present approach.; The application of Threshold Nonlinear Dynamic Data System (TNLDDS) methodology to the real process--drill wear prediction and monitoring--was carried out for an automatic tool replacement system. The present methodology offers, especially for multi-leveled nonlinear systems, a significant improvement in prediction accuracy over a linear modeling approach.; Advances in computer technology have made the manipulation of time series more feasible and practical. With the aid of digital computation and on-line algorithm development, the Dynamic Data System (DDS) modeling technique has become more attractive for problems in several fields of engineering and science. This thesis enhances the feasibility of such an approach and extends it to deal with multi-valued nonlinear problems and it has made possible a unified treatment of on-line system monitoring and signature analysis.
机译:本文介绍了阈值型自适应建模算法在多值非线性系统中参数辨识的理论和应用。单自由度动态系统中的磁滞恢复力和机械反冲由一类阈值类型的非线性自回归移动平均模型表示,该模型具有可通过非线性最小二乘法识别的未知参数。通过系统的信号处理方法搜索所有可能的非线性。这里详细研究了阈值模型的数量,值,滞后和阶数的选择;确定了哪些参数是可识别的以及达到什么精度。为了迫使非线性系统超过屈服变形点并进入塑性区域,选择了足够大的输入激励。通过数值实验研究了测量噪声对参数估计的影响。单变量(自限)和双变量序列中20%的加性测量噪声成功完成了个体化。五个合成过程(非线性弹簧,非线性阻尼,饱和度,磁滞和死区)和真实数据集(加拿大山猫循环)被用来证明本方法的有效性。阈值非线性动态数据系统(TNLDDS)方法在实际过程中的应用-钻头磨损预测和监控-是针对自动工具更换系统进行的。本方法论,特别是对于多级非线性系统,与线性建模方法相比,在预测精度上有显着提高。计算机技术的进步使时间序列的操纵更加可行和实用。借助数字计算和在线算法开发,动态数据系统(DDS)建模技术对于工程和科学多个领域的问题变得越来越有吸引力。本论文增强了这种方法的可行性,并将其扩展到处理多值非线性问题,并且使得对在线系统监视和签名分析的统一处理成为可能。

著录项

  • 作者

    HSIEH, SU-HUA.;

  • 作者单位

    The University of Wisconsin - Madison.;

  • 授予单位 The University of Wisconsin - Madison.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 1985
  • 页码 330 p.
  • 总页数 330
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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