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Understanding the Bibliometric Patterns of Publications in IEEE Access

Dr. Namrata Sinha is a medical professional specializing in oncopathology and histopathology at Medanta Patna. IEEE Access: A Hub for Rapid Innovation sinha namrata ieee access link

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Abstract (150–200 words) This paper presents a robust deep learning framework for early detection and classification of faults in three-phase induction motors using vibration and stator-current signals. We design a data-preprocessing pipeline that includes resampling, denoising with wavelet thresholding, and time–frequency feature extraction via short-time Fourier transform (STFT) and continuous wavelet transform (CWT). A convolutional neural network (CNN) processes spectrogram/CWT images while a parallel 1D-CNN processes raw waveform data; features are fused and fed to fully connected layers for multi-class fault classification (bearing defects, rotor bar faults, eccentricity, healthy). We evaluate the model on an industrial testbed and the publicly available CWRU and Paderborn datasets, achieving average accuracy >98%, F1-score >0.97, and robust performance under variable loads and noise. Ablation studies quantify the contribution of each sensor modality and preprocessing step. The proposed method is computationally efficient for edge deployment and includes guidelines for transfer learning to adapt to new motor types. rotor bar faults

sinha namrata ieee access link sinha namrata ieee access link sinha namrata ieee access link sinha namrata ieee access link

Understanding the Bibliometric Patterns of Publications in IEEE Access

Dr. Namrata Sinha is a medical professional specializing in oncopathology and histopathology at Medanta Patna. IEEE Access: A Hub for Rapid Innovation

In the search results sidebar, look for → Check “IEEE Access” . This will narrow results to only her articles in that journal.

Abstract (150–200 words) This paper presents a robust deep learning framework for early detection and classification of faults in three-phase induction motors using vibration and stator-current signals. We design a data-preprocessing pipeline that includes resampling, denoising with wavelet thresholding, and time–frequency feature extraction via short-time Fourier transform (STFT) and continuous wavelet transform (CWT). A convolutional neural network (CNN) processes spectrogram/CWT images while a parallel 1D-CNN processes raw waveform data; features are fused and fed to fully connected layers for multi-class fault classification (bearing defects, rotor bar faults, eccentricity, healthy). We evaluate the model on an industrial testbed and the publicly available CWRU and Paderborn datasets, achieving average accuracy >98%, F1-score >0.97, and robust performance under variable loads and noise. Ablation studies quantify the contribution of each sensor modality and preprocessing step. The proposed method is computationally efficient for edge deployment and includes guidelines for transfer learning to adapt to new motor types.