2023
DOI: 10.1109/access.2023.3266865
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An Intelligent Hybrid Feature Selection Approach for SCIM Inter-Turn Fault Classification at Minor Load Conditions Using Supervised Learning

Abstract: In industries, squirrel cage induction motors are critical for supplying rotary motion in power tools. This research presents a robust but simple framework for an inter-turn fault classification at minor loading across diverse fault occurrence conditions, which is one of the most common defects in a squirrel cage induction motor. Early detection of this issue is critical to prevent the system from completely failing as a result of it evolving to a more severe stator winding fault. This study employs a hybrid f… Show more

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Cited by 6 publications
(3 citation statements)
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References 32 publications
(69 reference statements)
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“…In addition, the paper [25] offers an online method that utilizes vibration measurements to distinguish the condition of the transformer core. Notably, the researchers in [12,26] also demonstrated the effectiveness of an electric current and Pearson correlation filter-based statistical feature selection approach in analyzing faults in moving machines such as motors. These findings highlight the potential of advanced signal processing and machine learning techniques to revolutionize the field of fault detection and prognosis modeling.…”
Section: Motivation and Review Of The Related Literaturementioning
confidence: 99%
“…In addition, the paper [25] offers an online method that utilizes vibration measurements to distinguish the condition of the transformer core. Notably, the researchers in [12,26] also demonstrated the effectiveness of an electric current and Pearson correlation filter-based statistical feature selection approach in analyzing faults in moving machines such as motors. These findings highlight the potential of advanced signal processing and machine learning techniques to revolutionize the field of fault detection and prognosis modeling.…”
Section: Motivation and Review Of The Related Literaturementioning
confidence: 99%
“…The correlation coefficient has generally been used successfully in academia for feature reduction, selection, diagnostics, prognosis, and other tasks. The Pearson coefficient was used in this study to extract meaningful and discriminant features, which is essential for effective problem diagnosis and fault detection [7,8,43,45].…”
Section: Correlation Coefficientsmentioning
confidence: 99%
“…Anormality detection seeks to distinguish uncommon datasets, known as anomaly datasets, from normal datasets. Many strategies have been developed in academia to detect anomalies [3,8,45,56,57], such as statistical methods, machine learning algorithms and data visualization approaches; supervised, semi-supervised, and unsupervised learning approaches; outlier detection; the clustering technique; and so on, are some of the commonly used techniques employed for anomaly detection, where presented models learn the normal patterns or structures from the data without explicitly labeled anomalies. Once trained, the models can detect outliers from learned usual behavior and highlight them as potential abnormalities.…”
Section: The Proposed Outlier Detection Modelmentioning
confidence: 99%