Eccentricity Severity Estimation of Induction Machines using a Sparsity-Driven Regression Model

Published in 2022 IEEE Energy Conversion Congress and Exposition (ECCE), 2022

Recommended citation: Zheng, Xiangtian, Hiroshi Inoue, Makoto Kanemaru, and Dehong Liu. "Eccentricity Severity Estimation of Induction Machines using a Sparsity-Driven Regression Model." In 2022 IEEE Energy Conversion Congress and Exposition (ECCE), pp. 1-6. IEEE, 2022. https://ieeexplore.ieee.org/abstract/document/9947498

  • Abstract. Eccentricity severity level estimation is of great importance in rotary machine fault detection. However, in practice machine operation conditions may influence the magnitude of fault signatures, making eccentricity severity estimation a challenging problem. In this paper, we develop a linear regression model incorporating multiple fault signature features to estimate the eccentricity severity level of induction machines under different operating conditions. In particular, the eccentricity severity level is modeled as a function of operating conditions and fault signature features including rotating speed, load torque, vibration, as well as current harmonics, etc, with corresponding weights to be determined. By imposing sparsity of weights, we learn from training data which dominant features have relatively larger impacts on the estimation. Experimental results show that our trained model exhibits satisfactory accuracy in quantitatively estimating eccentricity under various operating conditions.

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