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Estimation of physical parameters in mechanical systems for predictive monitoring and diagnosis.

机译:估计机械系统中的物理参数,以进行预测性监视和诊断。

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Monitoring, diagnosis and prediction of failures play key roles in automatic supervision of machine tools. They have received much attention because of the potential for reduced maintenance expenses, down time, and an increase in the equipment utilization level. At present, signal analysis techniques are predominantly used. But methods involving system analysis are capable of providing more reliable information, especially for predictive applications of supervision. System analysis involves comprehensive analytical models combined with techniques developed in control theory, and experimental modal analysis.; The primary objective of this research is to develop a methodology to monitor critical physical parameters of mechanical systems, which are difficult to measure directly. These parameters are inherent features of constitutive rigid body models. A method for computer aided model generation developed in this thesis leads to a gray box model structure by which physical parameters can be estimated from experimental data. Lagrange's energy formalism, linear algebra and homogenous transformations are used to promote parsimonious three-dimensional model building. A software environment allowing symbolic and arbitrary precision computations facilitates efficient mapping of physical properties of the actual system into specific quantities of the analytical model.; Six different methods are postulated and analyzed in this thesis to estimate physical parameters such as masses, stiffnesses and damping coefficients. Implementation of this methodology is a prerequisite for the design of an on-line monitoring and diagnosis system, which can detect and predict process faults. Two mechanical systems are used to validate the proposed methods: (1) A simple multi degree-of-freedom (MDOF) system and (2) a machine tool spindle assembly.; A practical application of physical parameter estimation is proposed for preload monitoring in high-speed spindles. Preload variations in the bearing can lead to thermal instability and bearing seizure. The feasibility of using accelerometers located on the spindle housing to estimate bearing preload is evaluated.; The optimal environment for continuation of this research is collaboration with machine tool companies to incorporate the proposed methodology (or parts of it) into current design practices.
机译:故障的监视,诊断和预测在机床的自动监视中起着关键作用。由于降低了维护费用,减少了停机时间并提高了设备​​利用率,因此它们受到了广泛关注。目前,主要使用信号分析技术。但是涉及 system 分析的方法能够提供更可靠的信息,特别是对于监督的预测性应用。系统分析涉及综合分析模型,结合控制理论中开发的技术和实验模态分析。这项研究的主要目的是开发一种方法来监视机械系统的关键物理参数,这些参数很难直接测量。这些参数是本构刚体模型的固有特征。本文提出的一种计算机辅助模型生成方法可以得到灰箱模型结构,通过该结构可以从实验数据中估计物理参数。拉格朗日的能量形式主义,线性代数和齐次变换用于促进简约的三维模型构建。允许进行符号和任意精度计算的软件环境有助于将实际系统的物理属性有效映射到特定数量的分析模型中。本文假设并分析了六种不同的方法来估计物理参数,例如质量,刚度和阻尼系数。该方法的实施是设计可检测和预测过程故障的在线监视和诊断系统的前提。使用两个机械系统来验证所提出的方法:(1)简单的多自由度(MDOF)系统和(2)机床主轴组件。提出了物理参数估计的实际应用,用于高速主轴中的预紧监控。轴承中的预紧力变化会导致热不稳定和轴承卡死。评估了使用位于主轴箱上的加速度计来估计轴承预紧力的可行性。继续进行这项研究的最佳环境是与机床公司合作,以将建议的方法论(或其中的一部分)纳入当前的设计实践中。

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