In electric power systems, power cable operation under normal conditions is very important. Various cable faults will happen in practical applications. Recognizing the cable faults correctly and in a timely manner is crucial. In this paper we propose a method that an annealed chaotic competitive learning network recognizes power cable types. The result shows a good performance using the support vector machine (SVM) and improved Particle Swarm Optimization (IPSO)-SVM method. The experimental result shows that the fault recognition accuracy reached was 96.2%, using 54 data samples. The network training time is about 0.032 second. The method can achieve cable fault classification effectively
Artificial Intelligence (AI) methods are increasingly being used for problem solving. This paper con...
Abstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for ...
Post-fault studies of recent major power failures around the world reveal that mal-operation and/or ...
Detection and localization of partial discharge are very important in condition monitoring of power ...
Applying the fault diagnosis techniques to twisted pair copper cable is beneficial to improve the s...
The safety and stability of the power supply system are affected by some faults that often occur in ...
Electrical utilities and system operators (SOs) are constantly looking for solutions to problems in ...
Non-intrusive transmission cable monitoring is the latest advanced measurement technology for smart ...
Undesirable operation of a distant relay at the occurrence of stressed conditions is a reason for bl...
The authors describe a learning classifier system (LCS) which employs genetic algorithms (GA) for ad...
This paper presents an approach for identifying the faulted line section and fault location on trans...
We introduce a new approach for online and offline soft fault diagnosis in motor power cables, utili...
Real time fault detection and diagnosis (FDD) is an important area of research interest in knowledge...
With increasing demands and competitive business environment, the structure of power system has beco...
Intelligent power grid fault diagnosis is of great significance for speeding up fault processing and...
Artificial Intelligence (AI) methods are increasingly being used for problem solving. This paper con...
Abstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for ...
Post-fault studies of recent major power failures around the world reveal that mal-operation and/or ...
Detection and localization of partial discharge are very important in condition monitoring of power ...
Applying the fault diagnosis techniques to twisted pair copper cable is beneficial to improve the s...
The safety and stability of the power supply system are affected by some faults that often occur in ...
Electrical utilities and system operators (SOs) are constantly looking for solutions to problems in ...
Non-intrusive transmission cable monitoring is the latest advanced measurement technology for smart ...
Undesirable operation of a distant relay at the occurrence of stressed conditions is a reason for bl...
The authors describe a learning classifier system (LCS) which employs genetic algorithms (GA) for ad...
This paper presents an approach for identifying the faulted line section and fault location on trans...
We introduce a new approach for online and offline soft fault diagnosis in motor power cables, utili...
Real time fault detection and diagnosis (FDD) is an important area of research interest in knowledge...
With increasing demands and competitive business environment, the structure of power system has beco...
Intelligent power grid fault diagnosis is of great significance for speeding up fault processing and...
Artificial Intelligence (AI) methods are increasingly being used for problem solving. This paper con...
Abstract This paper presents a novel integrated multi‐Machine Learning (ML) system architecture for ...
Post-fault studies of recent major power failures around the world reveal that mal-operation and/or ...