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    • ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
    • ADCAIJ - 2022
    • ADCAIJ, Vol.11, n.3
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    •   Gredos Principal
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    • ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal
    • ADCAIJ - 2022
    • ADCAIJ, Vol.11, n.3
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    Título
    Regression Based Performance Analysis and Fault Detection in Induction Motors by Using Deep Learning Technique
    Autor(es)
    Katta, Pradeep
    Kandasamy, Karunanithi
    Soosaimarian Peter Raj, Raja
    Subramanian, Ramesh
    Perumal, Chandrasekar
    Palabras clave
    induction motor
    DBN
    RBM
    Fast Fourier Transform (FFT)
    regression modeling
    Fecha de publicación
    2023-01-24
    Editor
    Ediciones Universidad de Salamanca (España)
    Citación
    ADCAIJ: Advances in Distributed Computing and Artificial Intelligence Journal, 11 (2022)
    Resumen
    The recent improvements related to the area of electric locomotive, power electronics, assembly processes and manufacturing of machines have increased the robustness and reliability of induction motors. Regardless of the increased availability, the application of induction motors in many fields alleges the need for operating state supervision and condition monitoring. In other words, fault identification at the initial stage helps make appropriate control decisions, influencing product quality as well as providing safety. Inspired by these demands, this work proposes a regression based modeling for the analysis of performance in induction motors. In this approach, the feature extraction process is combined with classification for efficient fault detection. Deep Belief Network (DBN) stacked with multiple Restricted Boltzmann Machine (RBM) is exploited for the robust diagnosis of faults with the adoption of training process. The influences of harmonics over induction motors are identified and the losses are mitigated. The simulation of the suggested approach and its comparison with traditional approaches are executed. An overall accuracy of 99.5% is obtained which in turn proves the efficiency of DBN in detecting faults.
    URI
    https://hdl.handle.net/10366/151985
    ISSN
    2255-2863
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    • ADCAIJ, Vol.11, n.3 [7]
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