A fault detection, identification, and location approach is proposed and studied in this paper. This approach is based on matching pursuit decomposition (MPD) using Gaussian atom dictionary, hidden Markov model (HMM) of real-time frequency and voltage variation features, and fault contour maps generated by machine learning algorithms in smart grid (SG) systems. Specifically, the time-frequency features are extracted by MPD from the frequency and voltage signals, which are sampled by the frequency disturbance recorders in SG. A hybrid clustering algorithm is then developed and used to cluster the frequency and voltage signal features into various symbols. Using the symbols, two detection HMMs are trained for fault detection to distinguish be...
The rapidly growing demand for electric power leads to interconnection in distribution power systems...
The Computational Intelligence paradigm has proven to be a useful approach when facing problems rela...
This paper proposes statistical feature extraction methods combined with artificial intelligence (AI...
The worldwide power grid can be thought as a System of Systems deeply embedded in a time-varying, no...
There has been a growing interest in using smart grids due to their capability in delivering automat...
Faults in distribution networks occur unpredictably, causing a threat to public safety and resulting...
Due to the advancements of electrical networks, the operators are able to employ a gamut of informat...
This paper deals with the fault cause identification problem in smart grids through a data-driven di...
This paper deals with the fault cause identification problem in smart grids through a data-driven di...
In a modern power grid known also as a Smart Grid (SG) its of paramount importance detecting a fault...
This article proposes a clustering-based hierarchical framework that includes a consensus decision s...
This article focuses on the design of a hierarchical framework for locating faults in smart grids by...
Computational intelligence-based diagnostic frameworks have emerged as rapidly evolving but highly e...
The analysis and recognition of fault status in the Smart Grid field is a challenging problem. Compu...
Nowadays, the main grid is facing several challenges related to the integration of renewable energy ...
The rapidly growing demand for electric power leads to interconnection in distribution power systems...
The Computational Intelligence paradigm has proven to be a useful approach when facing problems rela...
This paper proposes statistical feature extraction methods combined with artificial intelligence (AI...
The worldwide power grid can be thought as a System of Systems deeply embedded in a time-varying, no...
There has been a growing interest in using smart grids due to their capability in delivering automat...
Faults in distribution networks occur unpredictably, causing a threat to public safety and resulting...
Due to the advancements of electrical networks, the operators are able to employ a gamut of informat...
This paper deals with the fault cause identification problem in smart grids through a data-driven di...
This paper deals with the fault cause identification problem in smart grids through a data-driven di...
In a modern power grid known also as a Smart Grid (SG) its of paramount importance detecting a fault...
This article proposes a clustering-based hierarchical framework that includes a consensus decision s...
This article focuses on the design of a hierarchical framework for locating faults in smart grids by...
Computational intelligence-based diagnostic frameworks have emerged as rapidly evolving but highly e...
The analysis and recognition of fault status in the Smart Grid field is a challenging problem. Compu...
Nowadays, the main grid is facing several challenges related to the integration of renewable energy ...
The rapidly growing demand for electric power leads to interconnection in distribution power systems...
The Computational Intelligence paradigm has proven to be a useful approach when facing problems rela...
This paper proposes statistical feature extraction methods combined with artificial intelligence (AI...