Survey on Methods for Detection, Classification and Location of Faults in Power Systems Using Artificial Intelligence
Juan A. Martinez-Velasco, Alexandre Serrano-Fontova, Ricard Bosch-Tous, Pau Casals-Torrens

TL;DR
This survey reviews AI-based methods for detecting, classifying, and locating faults in power systems, highlighting recent advances and challenges in improving system reliability and fault management.
Contribution
It provides a comprehensive overview of AI techniques applied to fault diagnosis in power systems, comparing them with traditional methods and discussing future prospects.
Findings
AI methods enhance fault detection accuracy
AI techniques enable faster fault localization
Challenges include data requirements and training complexity
Abstract
Components of electrical power systems are susceptible to failures caused by lightning strikes, aging or human errors. These faults can cause equipment damage, affect system reliability, and results in expensive repair costs. As electric power systems are becoming more complex, traditional protection methods face limitations and shortcomings. Faults in power systems can occur at anytime and anywhere, can be caused by a natural disaster or an accident, and their occurrence can be hardly predicted or avoided; therefore, it is crucial to accurately estimate the fault location and quickly restore service. The development of methods capable of accurately detecting, locating and removing faults is essential (i.e. fast isolation of faults is necessary to maintain the system stability at transmission levels; accurate and fast detection and location of faults are essential for increasing…
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