2015
DOI: 10.1016/j.neucom.2015.05.112
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Modeling and recognition of smart grid faults by a combined approach of dissimilarity learning and one-class classification

Abstract: Detecting faults in electrical power grids is of paramount importance, both from the electricity operator and consumer point of view. Modern electric power grids (smart grids) are equipped with smart sensors that allow to gather real-time information regarding the physical status of all components belonging to the whole infrastructure (e.g., cables and related insulation, transformers, and breakers). In real-world smart grid systems, usually, additional information that are related to the operational status of… Show more

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Cited by 62 publications
(30 citation statements)
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“…C10. SG failures fault status detection [41], [46], [61], [62], [126], [127], [142], [176], fault type classification [197], power distribution reliability [149], [195] As it can be seen, there is large variability in the aspects covered by the research. Themes that are covered by more articles are consumption prediction (69 papers), load profile clustering (19), forecast renewable power sources (19), false data injection attacks (14), consumption clustering (12), power quality disturbances classification (11), and power data compression (11).…”
Section: Sms Resultsmentioning
confidence: 99%
“…C10. SG failures fault status detection [41], [46], [61], [62], [126], [127], [142], [176], fault type classification [197], power distribution reliability [149], [195] As it can be seen, there is large variability in the aspects covered by the research. Themes that are covered by more articles are consumption prediction (69 papers), load profile clustering (19), forecast renewable power sources (19), false data injection attacks (14), consumption clustering (12), power quality disturbances classification (11), and power data compression (11).…”
Section: Sms Resultsmentioning
confidence: 99%
“…Several data mining methods have been used for load forecasting, including time series, Kalman filter, neural networks, wavelet transform, pattern recognition, and hybrid methods, which achieve attractive results via the historical time series data. The approaches can be divided into two categories: parametric regression models and non‐parametric regression models.…”
Section: Related Workmentioning
confidence: 99%
“…However, fault information such as complex cause of power failure, malfunction of switch and protection, refusing action and signal interference of channel are likely to be confused with other faults or normal signals [3,4]. On the other hand, it is a low probability that large number or types of fault problems occur in one area [5,6].…”
Section: Introductionmentioning
confidence: 99%