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Rafia Nishat Toma

Showing results (1-10 of 5) with videos related to

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Sensors (Basel, Switzerland)|December 28, 2021
A Deep Autoencoder-Based Convolution Neural Network Framework for Bearing Fault Classification in Induction MotorsRafia Nishat Toma, Farzin Piltan, Jong-Myon Kim
Sensors (Basel, Switzerland)|April 2, 2020
Bearing Fault Diagnosis of Induction Motors Using a Genetic Algorithm and Machine Learning ClassifiersRafia Nishat Toma, Alexander E Prosvirin, Jong-Myon Kim
Sensors (Basel, Switzerland)|January 22, 2022
Strict-Feedback Backstepping Digital Twin and Machine Learning Solution in AE Signals for Bearing Crack IdentificationFarzin Piltan, Rafia Nishat Toma, Dongkoo Shon, et al.
Sensors (Basel, Switzerland)|July 9, 2022
A Bearing Fault Classification Framework Based on Image Encoding Techniques and a Convolutional Neural Network under Different Operating ConditionsRafia Nishat Toma, Farzin Piltan, Kichang Im, et al.
Sensors (Basel, Switzerland)|November 26, 2022
Classification Framework of the Bearing Faults of an Induction Motor Using Wavelet Scattering Transform-Based FeaturesRafia Nishat Toma, Yangde Gao, Farzin Piltan, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
Sensors (Basel, Switzerland)|December 28, 2021
A Deep Autoencoder-Based Convolution Neural Network Framework for Bearing Fault Classification in Induction MotorsRafia Nishat Toma, Farzin Piltan, Jong-Myon Kim
Sensors (Basel, Switzerland)|April 2, 2020
Bearing Fault Diagnosis of Induction Motors Using a Genetic Algorithm and Machine Learning ClassifiersRafia Nishat Toma, Alexander E Prosvirin, Jong-Myon Kim
Sensors (Basel, Switzerland)|January 22, 2022
Strict-Feedback Backstepping Digital Twin and Machine Learning Solution in AE Signals for Bearing Crack IdentificationFarzin Piltan, Rafia Nishat Toma, Dongkoo Shon, et al.
Sensors (Basel, Switzerland)|July 9, 2022
A Bearing Fault Classification Framework Based on Image Encoding Techniques and a Convolutional Neural Network under Different Operating ConditionsRafia Nishat Toma, Farzin Piltan, Kichang Im, et al.
Sensors (Basel, Switzerland)|November 26, 2022
Classification Framework of the Bearing Faults of an Induction Motor Using Wavelet Scattering Transform-Based FeaturesRafia Nishat Toma, Yangde Gao, Farzin Piltan, et al.
Pageof 1