Evaluation of Bearing Fault Detection on Different _K-Folds using Deep Learning Ensemble Models

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Deep Prakash Singh, Sandip Kumar Singh

Abstract

One of the most crucial parts of contemporary machinery and industrial equipment is the induction motor. Therefore, it is essential to create a fault diagnosis system that can identify induction motor problems and operating circumstances before they become serious. In this study, an induction motor's defect diagnosis is carried out in three different states, including normal, rotor fault, and bearing fault. The suggested fault diagnostic system is also described, along with a GUI. The experimental findings support the suitability of the suggested approach for rotor and bearing defects in induction motor diagnosis. A GUI for defect diagnostics was also created and used in a real-world setting. We have used Chi-Square method for high score attributes values. For the normal, rotor fault, and bearing fault states of induction motors identified by DBN, CNN, SNN, SVM and RF respectively, the fault detection system's accuracy in the actual world. In the experiment, we find Algorithms model-II, K-Folds (5, 10 & 15) , Accuracy (%), Training loss, Validation loss value for RF-SVM-CNN are 89.2, 0.260013, 0.304936 for k fold 5, 98.4, 0.155960, 0.154133 for k-fold 10 and 98.3, 0.155759, 0.144127 for k- fold 15 respectively.

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How to Cite
Deep Prakash Singh, et al. (2023). Evaluation of Bearing Fault Detection on Different _K-Folds using Deep Learning Ensemble Models. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 1395–1401. https://doi.org/10.17762/ijritcc.v11i9.9104
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Articles
Author Biography

Deep Prakash Singh, Sandip Kumar Singh

Deep Prakash Singh1, Sandip Kumar Singh2

1Department of Mechanical Engineering

VBS Purvanchal University,

Jaunpur, UP, India.

e-mail: deepprakashsinghvbspu@gmail.com

ORCID ID: https://orcid.org/0009-0008-8931-0393

2Department of Mechanical Engineering

VBS Purvanchal University,

Jaunpur, UP, India.

e-mail: sandipkumarsingh25@gmail.com

ORCID ID:https://orcid.org/0000-0001-9001-3355