Since a smart distribution grid has a diversity of components and complicated topology; it is very hard to achieve fault early warning for each part. A fault early warning model for smart distribution grid combining a back propagation (BP) neural network with a gene sequence alignment algorithm is proposed. Firstly; the operational state of smart distribution grid is divided into four states; and a BP neural network is adopted to explore the operational state from the historical fault data of the smart distribution grid. This obtains the relationship between each state transition time sequence and corresponding fault, and is used to construct the fault gene table. Then; a state transition time sequence is obtained online periodically, which...
Faults in distribution networks can result in severe transients, equipment failure, and power outage...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
Introduction: This paper proposes a power system fault prediction method that utilizes a GA-CNN-BiGR...
Since a smart distribution grid has a diversity of components and complicated topology; it is very h...
This paper presents a back propagation (BP) neural network method to identify fault types and phases...
Power transmission networks play an important role in smart girds. Fast and accurate faulty-equipmen...
The most common power system (PS) distribution network fault, single lineto-ground fault (SLGF), cau...
Due to the advancements of electrical networks, the operators are able to employ a gamut of informat...
The authors describe a learning classifier system (LCS) which employs genetic algorithms (GA) for ad...
Accurate warning information of potential fault risk in the distribution network is essential to the...
In smart grid power systems, fast and accurate fault detection and diagnosis (FDD) is vital for isol...
The demand for energy is steadily increasing. The global community is working towards a society supp...
There has been a growing interest in using smart grids due to their capability in delivering automat...
Abnormal state accumulation over a long period will cause an electrical equipment fault. Therefore, ...
This article presents a classification methodology based on probabilistic neural networks. To automa...
Faults in distribution networks can result in severe transients, equipment failure, and power outage...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
Introduction: This paper proposes a power system fault prediction method that utilizes a GA-CNN-BiGR...
Since a smart distribution grid has a diversity of components and complicated topology; it is very h...
This paper presents a back propagation (BP) neural network method to identify fault types and phases...
Power transmission networks play an important role in smart girds. Fast and accurate faulty-equipmen...
The most common power system (PS) distribution network fault, single lineto-ground fault (SLGF), cau...
Due to the advancements of electrical networks, the operators are able to employ a gamut of informat...
The authors describe a learning classifier system (LCS) which employs genetic algorithms (GA) for ad...
Accurate warning information of potential fault risk in the distribution network is essential to the...
In smart grid power systems, fast and accurate fault detection and diagnosis (FDD) is vital for isol...
The demand for energy is steadily increasing. The global community is working towards a society supp...
There has been a growing interest in using smart grids due to their capability in delivering automat...
Abnormal state accumulation over a long period will cause an electrical equipment fault. Therefore, ...
This article presents a classification methodology based on probabilistic neural networks. To automa...
Faults in distribution networks can result in severe transients, equipment failure, and power outage...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
Introduction: This paper proposes a power system fault prediction method that utilizes a GA-CNN-BiGR...