Perspective Chapter: Fault Detection and Predictive Maintenance of Electrical Machines

  • Ashraf Raja H
  • Kudelina K
  • Asad B
  • et al.
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Abstract

Nowadays, most domestic and industrial fields are moving toward Industry 4.0 standards and integration with information technology. To decrease shutdown costs and minimize downtime, manufacturers switch their production to predictive maintenance. Algorithms based on machine learning can be used to make predictions and detect timely potential faults in modern energy systems. For this, trained models with the usage of data analysis, cloud, and edge computing are implemented. The main challenge is the amount and quality of the data used for model training. This chapter discusses a specific version of a condition monitoring system, including maintenance approaches and machine learning algorithms and their general application issues.

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Ashraf Raja, H., Kudelina, K., Asad, B., & Vaimann, T. (2023). Perspective Chapter: Fault Detection and Predictive Maintenance of Electrical Machines. In New Trends in Electric Machines - Technology and Applications. IntechOpen. https://doi.org/10.5772/intechopen.107167

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