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Data-Driven Model Identification of Unbalanced Induction Motor Dynamics and Forces using SINDYc

Emma Vancayseele, Philip Desenfans, Zifeng Gong, Dries Vanoost, Herbert De Gersem, Davy Pissoort

发表年份
2025
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摘要

This paper identifies the stator currents, torque and unbalanced magnetic pull (UMP) of an unbalanced induction motor by the System Identification of Nonlinear Dynamics with Control (SINDYc) method from time-series data of measurable quantities. The SINDYc model has been trained on data coming from a nonlinear magnetic equivalent circuit model for three rotor eccentricity configurations. When evaluating the SINDYc model for static eccentricity, torques and UMPs with excellent accuracies, i.e., 8.8 mNm and 4.87 N of mean absolute error, respectively, are found. When compared with a reference torque equation, this amounts to a 65% error reduction. For dynamic eccentricity, the estimation is more difficult. The SINDYc model is fast enough to be embedded in a control procedure.

关键词

eess.SYphysics.app-ph

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