Some of the most widely recognized online parameter estimation techniques used in different servomech-anism are the extended Kalman filter (EKF) and recursive least squares (RLS) methods. Without loss of generality, these methods are based on a prior knowledge of the model structure of the system to be identified, and thus, they can be regarded as parametric identification methods. This paper proposes an on-line non-parametric frequency response identification routine that is based on a fixed-coefficient Kalman filter, which is configured to perform like a Fourier transform. The approach exploits the knowledge of the excitation signal by updating the Kalman filter gains with the known time-varying frequency of chirp signal. The experimental results demonstrate the effectiveness of the proposed online identification method to estimate a non-parametric model of the closed loop controlled servomechanism in a selected band of frequencies.
CITATION STYLE
Nevaranta, N., Derammelaere, S., Parkkinen, J., Vervisch, B., Lindh, T., Niemelä, M., & Pyrhönen, O. (2016). Online identification of a two-mass system in frequency domain using a Kalman filter. Modeling, Identification and Control, 37(2), 133–147. https://doi.org/10.4173/mic.2016.2.5
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