Classification of Induction Motor Fault and Imbalance Based on Vibration Signal Using Single Antenna's Reactive Near Field
Sagar Dutta, Banani Basu, Fazal Ahmed Talukdar

TL;DR
This paper introduces a cost-effective, noninvasive method using an antenna to detect and classify faults in induction motors through vibration signal analysis, achieving high accuracy with deep learning.
Contribution
It presents a novel antenna-based sensing technique combined with deep learning for fault detection in induction motors, offering a less expensive and easier alternative to traditional sensors.
Findings
Achieved 98.2% classification accuracy using combined magnitude and phase of S11.
Validated fault frequencies with FFT analysis on S11 data.
Demonstrated robustness across different operating conditions.
Abstract
Early fault diagnosis is imperative for the proper functioning of rotating machines. It can reduce economic losses in the industry due to unexpected failures. Existing fault analysis methods are either expensive or demand expertise for the installation of the sensors. This article proposes a novel method for the detection of bearing faults and imbalance in induction motors using an antenna as the sensor, which is noninvasive and cost-efficient. Time-varying S11 is measured using an omnidirectional antenna, and it is seen that the spectrogram of S11 shows unique characteristics for different fault conditions. The experimental setup has analytically evaluated the vibration frequencies due to fault and validated the characteristic fault frequency by applying FFT analysis on the captured S11 data. This article has evaluated the average power content of the detected signals at normal and…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Advanced SAR Imaging Techniques · Electrical Fault Detection and Protection
