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Comparison of Sensitivity-Guided and Black-Box Machine Tool Parameter Identification

机译:灵敏度引导与黑匣子机床参数辨识的比较

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摘要

Dynamic machine tool simulation models can be used for various applications such as process simulations, design optimization, and condition monitoring. However, all these applications require that the model replicates the real system's behavior as accurately as possible. Next to carefully building the model, the parameterization of the model, that is, determining the parameter values the model is based upon, is the most crucial step. This paper describes the application of both sensitivity-based and black-box parameter identification to a machine tool. It further provides a comparison between these two methods and the method of sequential assembly. It is shown that both methods can increase the mode shape conformity by more than 25 and significantly reduce damping deviations. However, sensitivity-based parameter identification is the most economical method, offering the chance to update a dynamic machine tool model within minutes.
机译:动态机床仿真模型可用于各种应用,例如过程仿真、设计优化和状态监测。但是,所有这些应用程序都要求模型尽可能准确地复制真实系统的行为。除了仔细构建模型之外,模型的参数化,即确定模型所基于的参数值,是最关键的一步。本文介绍了基于灵敏度和黑盒参数识别在机床上的应用。它进一步提供了这两种方法与顺序组装方法之间的比较。结果表明,两种方法均能使振型一致性提高25%以上,并显著减小阻尼偏差。然而,基于灵敏度的参数识别是最经济的方法,它提供了在几分钟内更新动态机床模型的机会。

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