Litcius/Paper detail

Artificial intelligence techniques for ground fault line selection in power systems: State-of-the-art and research challenges

Fuhua Wang, Zongdong Zhang, Kai Wu, Dongxiang Jian, Qiang Chen, Chao Zhang, Yanling Dong, Xiaotong He, Lin Dong

2023Mathematical Biosciences & Engineering14 citationsDOIOpen Access PDF

Abstract

In modern power systems, efficient ground fault line selection is crucial for maintaining stability and reliability within distribution networks, especially given the increasing demand for energy and integration of renewable energy sources. This systematic review aims to examine various artificial intelligence (AI) techniques employed in ground fault line selection, encompassing artificial neural networks, support vector machines, decision trees, fuzzy logic, genetic algorithms, and other emerging methods. This review separately discusses the application, strengths, limitations, and successful case studies of each technique, providing valuable insights for researchers and professionals in the field. Furthermore, this review investigates challenges faced by current AI approaches, such as data collection, algorithm performance, and real-time requirements. Lastly, the review highlights future trends and potential avenues for further research in the field, focusing on the promising potential of deep learning, big data analytics, and edge computing to further improve ground fault line selection in distribution networks, ultimately enhancing their overall efficiency, resilience, and adaptability to evolving demands.

Topics & Concepts

AdaptabilityComputer scienceArtificial intelligenceResilience (materials science)Field (mathematics)Artificial neural networkMachine learningReliability (semiconductor)Electric power systemSelection (genetic algorithm)Big dataData scienceEngineeringRisk analysis (engineering)Data miningPower (physics)PhysicsPure mathematicsBiologyMedicineEcologyQuantum mechanicsThermodynamicsMathematicsPower Systems Fault DetectionElectrical Fault Detection and ProtectionPower System Reliability and Maintenance