Stiffness estimation of a lumped mass-spring system using sliding DFT

Foeke Vanbecelaere, M. Monte, K. Stockman
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Abstract

Obtaining an accurate parametric model of a mechanism enables optimised control. System identification through noise injection is a common method for obtaining frequency responses which are suited for control design, but not for feedforward control and motion profile optimisation as the response is non-parametric. Especially when the mechanism consists of multiple sources of flexibility, extracting parameters from frequency responses is challenging and often requires model order reduction. Moreover, if the parameters are either time or position-dependent, an on-line estimator is required for enabling adaptive control and optimisation. This paper therefore presents a computationally efficient approach, based on the sliding Discrete Fourier Transform, for tracking stiffness during operation. A lumped mass-spring system with 4 degrees of freedom is used as a proof of concept. Through simulations, the expected accuracy of the developed estimator is analysed and its ability to deal with noise is demonstrated.
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用滑动DFT估计集总质量-弹簧系统的刚度
获得机构的精确参数模型可以实现优化控制。通过噪声注入进行系统识别是一种获得频率响应的常用方法,这种方法适用于控制设计,但不适用于前馈控制和运动轮廓优化,因为响应是非参数的。特别是当机构由多个灵活性源组成时,从频率响应中提取参数具有挑战性,并且通常需要降低模型阶数。此外,如果参数是时间或位置相关的,则需要在线估计器来实现自适应控制和优化。因此,本文提出了一种基于滑动离散傅里叶变换的计算效率高的方法来跟踪运行过程中的刚度。用一个4自由度的集总质量-弹簧系统作为概念的证明。通过仿真,分析了该估计器的期望精度,并验证了其处理噪声的能力。
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