Closed-loop identification: application to the estimation of limb impedance in a compliant environment |
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Authors: | Westwick David T Perreault Eric J |
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Affiliation: | Department of Electrical and Computer Engineering, Schulich School of Engineering at the University of Calgary, AB T2N 1N4, Canada. dwestwic@ucalgary.ca |
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Abstract: | The force and position data used to construct models of limb impedance are often obtained from closed-loop experiments. If the system is tested in a stiff environment, it is possible to treat the data as if they were obtained in open loop. However, when limb impedance is studied in a compliant environment, the presence of feedback cannot be ignored. While unbiased estimates of a system can be obtained directly using the prediction error method, the same cannot be said when linear regression or correlation analysis is used to fit nonparametric time- or frequency-domain models. We develop a prediction error minimization-based identification method for a nonparametric time-domain model augmented with a parametric noise model. The identification algorithm is tested on a dynamic mass-spring-damper system and returns consistent estimates of the system's properties under both stiff and compliant feedback control. The algorithm is then used to estimate the impedance of a human elbow joint in both stiff and compliant environments. |
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