LGNov 3, 2017

Fault Detection of Broken Rotor Bar in LS-PMSM Using Random Forests

arXiv:1711.02510v1133 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for industrial monitoring and preventive maintenance of LS-PMSM motors.

The paper tackled fault detection of broken rotor bars in line start-permanent magnet synchronous motors using random forests on transient current signals, achieving 98.8% accuracy with all features and 98.4% with only two selected features.

This paper proposes a new approach to diagnose broken rotor bar failure in a line start-permanent magnet synchronous motor (LS-PMSM) using random forests. The transient current signal during the motor startup was acquired from a healthy motor and a faulty motor with a broken rotor bar fault. We extracted 13 statistical time domain features from the startup transient current signal, and used these features to train and test a random forest to determine whether the motor was operating under normal or faulty conditions. For feature selection, we used the feature importances from the random forest to reduce the number of features to two features. The results showed that the random forest classifies the motor condition as healthy or faulty with an accuracy of 98.8% using all features and with an accuracy of 98.4% by using only the mean-index and impulsion features. The performance of the random forest was compared with a decision tree, Naïve Bayes classifier, logistic regression, linear ridge, and a support vector machine, with the random forest consistently having a higher accuracy than the other algorithms. The proposed approach can be used in industry for online monitoring and fault diagnostic of LS-PMSM motors and the results can be helpful for the establishment of preventive maintenance plans in factories.

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