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2020 | OriginalPaper | Chapter

Simplified Rotor Angular Velocity Estimation for a Permanent Magnets Synchronous Motor by Current and Voltage Measurements

Authors : Anastasiia O. Vediakova, Alexey A. Vedyakov

Published in: Convergent Cognitive Information Technologies

Publisher: Springer International Publishing

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Abstract

This paper is devoted to the rotor angular velocity estimation of the permanent-magnet synchronous motor (PMSM). It is an actual problem, for example, in sensorless control. We consider a classical, two-phase model in the stator frame of the unsaturated, non-salient PMSM in the state-space representation. All parameters of the model except the stator windings resistance and rotor inertia are assumed to be known. On the first step, we find the relation between measured signals and angular velocity and excluding the unknown parameters of the motor. This relation is simplified using properties of the measured signals and represented as the first-order regression model, where the unknown parameter is the angular velocity. On the next step, we propose the estimation scheme, which is based on the gradient descent method. The efficiency is illustrated through a set of numerical simulations.

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Metadata
Title
Simplified Rotor Angular Velocity Estimation for a Permanent Magnets Synchronous Motor by Current and Voltage Measurements
Authors
Anastasiia O. Vediakova
Alexey A. Vedyakov
Copyright Year
2020
DOI
https://doi.org/10.1007/978-3-030-37436-5_23

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